def testCandidates(self): tree = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc6:0.11,(MOUSE:0.072818,RAT:0.081244)Anc5:0.260342)Anc4:0.023260,((DOG:0.07,CAT:0.07)Anc3:0.087381,(PIG:0.06,COW:0.06)Anc2:0.104728)Anc1:0.04)Anc0;' mcTree = MultiCactusTree(NXNewick().parseString(tree, addImpliedRoots = False)) mcTree.computeSubtreeRoots() og = GreedyOutgroup() og.importTree(mcTree) candidates = set(['HUMAN', 'CHIMP', 'RAT']) og.greedy(candidateSet=candidates, candidateChildFrac=0.5) assert og.ogMap['Anc1'][0][0] == 'Anc4' assert og.ogMap['Anc2'][0][0] == 'Anc4' assert og.ogMap['Anc3'][0][0] == 'Anc4' assert 'Anc4' not in og.ogMap assert og.ogMap['Anc5'][0][0] in ['HUMAN', 'CHIMP', 'Anc6', 'Anc7'] assert og.ogMap['Anc6'][0][0] in ['Anc5', 'MOUSE', 'RAT'] assert og.ogMap['Anc7'][0][0] in ['Anc5', 'MOUSE', 'RAT'] og = GreedyOutgroup() og.importTree(mcTree) candidates = set(['HUMAN', 'CHIMP', 'RAT']) candidateFrac = 1 og.greedy(candidateSet=candidates, candidateChildFrac=1.0) assert og.ogMap['Anc1'][0][0] == 'Anc7' assert og.ogMap['Anc2'][0][0] == 'Anc7' assert og.ogMap['Anc3'][0][0] == 'Anc7' assert 'Anc4' not in og.ogMap assert og.ogMap['Anc5'][0][0] in ['HUMAN', 'CHIMP', 'Anc7'] assert og.ogMap['Anc6'][0][0] == 'RAT' assert og.ogMap['Anc7'][0][0] == 'RAT'
def createMCProject(tree, experiment, config, options): """ Creates a properly initialized MultiCactusProject. TODO: This should really all be in the constructor for MultiCactusProject. """ mcTree = MultiCactusTree(tree) mcTree.nameUnlabeledInternalNodes(config.getDefaultInternalNodePrefix()) mcTree.computeSubtreeRoots() mcProj = MultiCactusProject() for genome in experiment.getGenomesWithSequence(): mcProj.inputSequenceMap[genome] = experiment.getSequenceID(genome) mcProj.mcTree = mcTree if config.getDoSelfAlignment(): mcTree.addSelfEdges() for name in mcProj.mcTree.getSubtreeRootNames(): expPath = "%s/%s/%s_experiment.xml" % (options.path, name, name) mcProj.expMap[name] = os.path.abspath(expPath) alignmentRootId = mcProj.mcTree.getRootId() if options.root is not None: try: alignmentRootId = mcProj.mcTree.getNodeId(options.root) except: raise RuntimeError("Specified root name %s not found in tree" % options.root) fillInOutgroups(mcProj, options.outgroupNames, config, alignmentRootId) # if necessary, we reroot the tree at the specified alignment root id. all leaf genomes # that are no longer in the tree, but still used as outgroups, are moved into special fields # so that we can remember to, say, get their paths for preprocessing. specifyAlignmentRoot(mcProj, experiment, alignmentRootId) return mcProj
def testDynamicOutgroupsJustLeaves(self): tree = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc6:0.11,(MOUSE:0.072818,RAT:0.081244)Anc5:0.260342)Anc4:0.023260,((DOG:0.07,CAT:0.07)Anc3:0.087381,(PIG:0.06,COW:0.06)Anc2:0.104728)Anc1:0.04)Anc0;' mcTree = MultiCactusTree(NXNewick().parseString(tree, addImpliedRoots = False)) mcTree.computeSubtreeRoots() og = DynamicOutgroup() og.importTree(mcTree, self.blanchetteSeqMap) og.compute(maxNumOutgroups=3, sequenceLossWeight=0.) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) # ordering is important! assert og.ogMap['Anc1'][0][0] == 'HUMAN' assert og.ogMap['Anc7'][0][0] == 'BABOON' og = DynamicOutgroup() og.importTree(mcTree, self.blanchetteSeqMap) og.compute(maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # we keep dynamic outgroups sorted by distance too assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values()))
def testAddSelf(self): trueSelf = '((((((((HUMAN:0.006969)HUMAN_self:0.006969,(CHIMP:0.009727)CHIMP_self:0.009727)Anc7:0.025291)Anc7_self:0.025291,(BABOON:0.044568)BABOON_self:0.044568)Anc3:0.11)Anc3_self:0.11,(((MOUSE:0.072818)MOUSE_self:0.072818,(RAT:0.081244)RAT_self:0.081244)Anc4:0.260342)Anc4_self:0.260342)Anc1:0.02326)Anc1_self:0.02326,(((((DOG:0.07)DOG_self:0.07,(CAT:0.07)CAT_self:0.07)Anc5:0.087381)Anc5_self:0.087381,(((PIG:0.06)PIG_self:0.06,(COW:0.06)COW_self:0.06)Anc6:0.104728)Anc6_self:0.104728)Anc2:0.04)Anc2_self:0.04)Anc0;' tree = MultiCactusTree(self.mcTree1) tree.nameUnlabeledInternalNodes() tree.computeSubtreeRoots() tree.addSelfEdges() treeString = NXNewick().writeString(tree) self.assertEqual(treeString, trueSelf)
def testAddSelf(self): trueSelf = "((((((((HUMAN:0.006969)HUMAN_self:0.006969,(CHIMP:0.009727)CHIMP_self:0.009727)Anc7:0.025291)Anc7_self:0.025291,(BABOON:0.044568)BABOON_self:0.044568)Anc3:0.11)Anc3_self:0.11,(((MOUSE:0.072818)MOUSE_self:0.072818,(RAT:0.081244)RAT_self:0.081244)Anc4:0.260342)Anc4_self:0.260342)Anc1:0.02326)Anc1_self:0.02326,(((((DOG:0.07)DOG_self:0.07,(CAT:0.07)CAT_self:0.07)Anc5:0.087381)Anc5_self:0.087381,(((PIG:0.06)PIG_self:0.06,(COW:0.06)COW_self:0.06)Anc6:0.104728)Anc6_self:0.104728)Anc2:0.04)Anc2_self:0.04)Anc0;" tree = MultiCactusTree(self.mcTree1) tree.nameUnlabeledInternalNodes() tree.computeSubtreeRoots() tree.addSelfEdges() treeString = NXNewick().writeString(tree) self.assertEqual(treeString, trueSelf)
def setUp(self): unittest.TestCase.setUp(self) self.trees = randomTreeSet() self.mcTrees = [] self.tempDir = getTempDirectory(os.getcwd()) self.tempFa = os.path.join(self.tempDir, "seq.fa") with open(self.tempFa, "w") as f: f.write(">temp\nNNNNNNNCNNNNAAAAAAAAAAAAAAANNNNNNN\n") self.dummySeqMaps = [] for tree in self.trees: if tree.size() < 50: mcTree = MultiCactusTree(tree) seqMap = dict() for i in mcTree.breadthFirstTraversal(): mcTree.setName(i, "Node%s" % str(i)) seqMap["Node%s" % str(i)] = self.tempFa mcTree.computeSubtreeRoots() mcTree.nameUnlabeledInternalNodes() self.mcTrees.append(mcTree) self.dummySeqMaps.append(seqMap) # Boreoeutherian tree borTree = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc6:0.11,(MOUSE:0.072818,RAT:0.081244)Anc5:0.260342)Anc4:0.023260,((DOG:0.07,CAT:0.07)Anc3:0.087381,(PIG:0.06,COW:0.06)Anc2:0.104728)Anc1:0.04)Anc0;' self.borMcTree = MultiCactusTree(NXNewick().parseString( borTree, addImpliedRoots=False)) self.borMcTree.computeSubtreeRoots() self.borMcTree.nameUnlabeledInternalNodes() self.mcTrees.append(self.borMcTree) # Eutherian backbone tree backbone = '(((((((((((Homo_sapiens:0.00655,Pan_troglodytes:0.00684):0.00422,Gorilla_gorilla_gorilla:0.008964):0.009693,Pongo_abelii:0.01894):0.015511,Macaca_mulatta:0.043601):0.08444,Aotus_nancymaae:0.08):0.08,Microcebus_murinus:0.10612):0.043494,Galeopterus_variegatus:0.134937):0.04,((((Jaculus_jaculus:0.1,(Microtus_ochrogaster:0.14,(Mus_musculus:0.084509,Rattus_norvegicus:0.091589):0.047773):0.06015):0.122992,(Heterocephalus_glaber:0.1,(Cavia_porcellus:0.065629,(Chinchilla_lanigera:0.06,Octodon_degus:0.1):0.06):0.05):0.06015):0.05,Marmota_marmota:0.1):0.05,Oryctolagus_cuniculus:0.21569):0.04):0.040593,(((Sus_scrofa:0.12,(Orcinus_orca:0.069688,(Bos_taurus:0.04,Capra_hircus:0.04):0.09):0.045488):0.02,((Equus_caballus:0.109397,(Felis_catus:0.098612,(Canis_lupus_familiaris:0.052458,Mustela_putorius_furo:0.08):0.02):0.049845):0.02,(Pteropus_alecto:0.1,Eptesicus_fuscus:0.08):0.033706):0.03):0.025,Erinaceus_europaeus:0.278178):0.021227):0.023664,(((Loxodonta_africana:0.022242,Procavia_capensis:0.145358):0.076687,Chrysochloris_asiatica:0.04):0.05,Dasypus_novemcinctus:0.169809):0.02)backbone_root:0.234728,(Monodelphis_domestica:0.125686,Sarcophilus_harrisii:0.12):0.2151);' self.backboneTree = MultiCactusTree(NXNewick().parseString( backbone, addImpliedRoots=False)) self.backboneTree.computeSubtreeRoots() self.backboneTree.nameUnlabeledInternalNodes() self.mcTrees.append(self.backboneTree) seqLens = dict() seqLens["HUMAN"] = 57553 seqLens["CHIMP"] = 57344 seqLens["BABOON"] = 58960 seqLens["MOUSE"] = 32750 seqLens["RAT"] = 38436 seqLens["DOG"] = 54187 seqLens["CAT"] = 50283 seqLens["PIG"] = 54843 seqLens["COW"] = 55508 self.blanchetteSeqMap = dict() for event, seqLen in seqLens.items(): p = os.path.join(self.tempDir, event + ".fa") with open(p, "w") as f: f.write(">%s\n" % event) f.write(''.join(['A'] * seqLen)) f.write('\n') self.blanchetteSeqMap[event] = p
def getTree(self, onlyThisSubtree=False): treeString = self.xmlRoot.attrib["species_tree"] ret = NXNewick().parseString(treeString, addImpliedRoots=False) if onlyThisSubtree: # Get a subtree containing only the reference node and its # children, rather than a species tree including the # outgroups as well multiCactus = MultiCactusTree(ret) multiCactus.nameUnlabeledInternalNodes() multiCactus.computeSubtreeRoots() ret = multiCactus.extractSubTree(self.getRootGenome()) return ret
def setUp(self): unittest.TestCase.setUp(self) self.trees = randomTreeSet() self.mcTrees = [] self.tempDir = getTempDirectory(os.getcwd()) self.tempFa = os.path.join(self.tempDir, "seq.fa") with open(self.tempFa, "w") as f: f.write(">temp\nNNNNNNNCNNNNAAAAAAAAAAAAAAANNNNNNN\n") self.dummySeqMaps = [] for tree in self.trees: if tree.size() < 50: mcTree = MultiCactusTree(tree, tree.degree()) seqMap = dict() for i in mcTree.breadthFirstTraversal(): mcTree.setName(i, "Node%s" % str(i)) seqMap["Node%s" % str(i)] = self.tempFa mcTree.computeSubtreeRoots() mcTree.nameUnlabeledInternalNodes() self.mcTrees.append(mcTree) self.dummySeqMaps.append(seqMap) # Boreoeutherian tree borTree = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc6:0.11,(MOUSE:0.072818,RAT:0.081244)Anc5:0.260342)Anc4:0.023260,((DOG:0.07,CAT:0.07)Anc3:0.087381,(PIG:0.06,COW:0.06)Anc2:0.104728)Anc1:0.04)Anc0;' self.borMcTree = MultiCactusTree(NXNewick().parseString(borTree, addImpliedRoots=False)) self.borMcTree.computeSubtreeRoots() self.borMcTree.nameUnlabeledInternalNodes() self.mcTrees.append(self.borMcTree) # Eutherian backbone tree backbone = '(((((((((((Homo_sapiens:0.00655,Pan_troglodytes:0.00684):0.00422,Gorilla_gorilla_gorilla:0.008964):0.009693,Pongo_abelii:0.01894):0.015511,Macaca_mulatta:0.043601):0.08444,Aotus_nancymaae:0.08):0.08,Microcebus_murinus:0.10612):0.043494,Galeopterus_variegatus:0.134937):0.04,((((Jaculus_jaculus:0.1,(Microtus_ochrogaster:0.14,(Mus_musculus:0.084509,Rattus_norvegicus:0.091589):0.047773):0.06015):0.122992,(Heterocephalus_glaber:0.1,(Cavia_porcellus:0.065629,(Chinchilla_lanigera:0.06,Octodon_degus:0.1):0.06):0.05):0.06015):0.05,Marmota_marmota:0.1):0.05,Oryctolagus_cuniculus:0.21569):0.04):0.040593,(((Sus_scrofa:0.12,(Orcinus_orca:0.069688,(Bos_taurus:0.04,Capra_hircus:0.04):0.09):0.045488):0.02,((Equus_caballus:0.109397,(Felis_catus:0.098612,(Canis_lupus_familiaris:0.052458,Mustela_putorius_furo:0.08):0.02):0.049845):0.02,(Pteropus_alecto:0.1,Eptesicus_fuscus:0.08):0.033706):0.03):0.025,Erinaceus_europaeus:0.278178):0.021227):0.023664,(((Loxodonta_africana:0.022242,Procavia_capensis:0.145358):0.076687,Chrysochloris_asiatica:0.04):0.05,Dasypus_novemcinctus:0.169809):0.02)backbone_root:0.234728,(Monodelphis_domestica:0.125686,Sarcophilus_harrisii:0.12):0.2151);' self.backboneTree = MultiCactusTree(NXNewick().parseString(backbone, addImpliedRoots=False)) self.backboneTree.computeSubtreeRoots() self.backboneTree.nameUnlabeledInternalNodes() self.mcTrees.append(self.backboneTree) seqLens = dict() seqLens["HUMAN"] = 57553 seqLens["CHIMP"] = 57344 seqLens["BABOON"] = 58960 seqLens["MOUSE"] = 32750 seqLens["RAT"] = 38436 seqLens["DOG"] = 54187 seqLens["CAT"] = 50283 seqLens["PIG"] = 54843 seqLens["COW"] = 55508 self.blanchetteSeqMap = dict() for event, seqLen in seqLens.items(): p = os.path.join(self.tempDir, event +".fa") with open(p, "w") as f: f.write(">%s\n" % event) f.write(''.join(['A'] * seqLen)) f.write('\n') self.blanchetteSeqMap[event] = p
def getTree(self, onlyThisSubtree=False): treeString = self.xmlRoot.attrib["species_tree"] ret = NXNewick().parseString(treeString, addImpliedRoots = False) if onlyThisSubtree: # Get a subtree containing only the reference node and its # children, rather than a species tree including the # outgroups as well multiCactus = MultiCactusTree(ret) multiCactus.nameUnlabeledInternalNodes() multiCactus.computeSubtreeRoots() ret = multiCactus.extractSubTree(self.getReferenceNameFromConfig()) return ret
def testJustLeaves(self): tree = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc6:0.11,(MOUSE:0.072818,RAT:0.081244)Anc5:0.260342)Anc4:0.023260,((DOG:0.07,CAT:0.07)Anc3:0.087381,(PIG:0.06,COW:0.06)Anc2:0.104728)Anc1:0.04)Anc0;' mcTree = MultiCactusTree(NXNewick().parseString(tree, addImpliedRoots = False)) mcTree.computeSubtreeRoots() og = GreedyOutgroup() og.importTree(mcTree) candidates = set([mcTree.getName(x) for x in mcTree.getLeaves()]) og.greedy(candidateSet=candidates, candidateChildFrac=2.) assert og.ogMap['Anc1'][0][0] == 'HUMAN' assert og.ogMap['Anc2'][0][0] in ['CAT', 'DOG'] assert og.ogMap['Anc3'][0][0] in ['PIG', 'COW'] assert og.ogMap['Anc4'][0][0] in ['CAT', 'DOG'] assert og.ogMap['Anc5'][0][0] == 'HUMAN' assert og.ogMap['Anc6'][0][0] in ['CAT', 'DOG'] assert og.ogMap['Anc7'][0][0] == 'BABOON'
def testAddOutgroup(self): trueOg = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc3:0.11,(MOUSE:0.072818,RAT:0.081244)Anc4:0.260342)Anc1:0.02326,((DOG:0.07,CAT:0.07)Anc5:0.087381,(PIG:0.06,COW:0.06)Anc6:0.104728)Anc2:0.04,outgroup:1.7)Anc0;' tree = MultiCactusTree(self.mcTree1) tree.nameUnlabeledInternalNodes() tree.computeSubtreeRoots() tree.addOutgroup("outgroup", 1.7) treeString = NXNewick().writeString(tree) self.assertEqual(treeString, trueOg) trueLeafOg = "(A:1.1,outgroup:1.1);" leafTreeString = "A;" parser = NXNewick() leafTree = MultiCactusTree(parser.parseString(leafTreeString, addImpliedRoots = False)) leafTree.nameUnlabeledInternalNodes() leafTree.computeSubtreeRoots() leafTree.addOutgroup("outgroup", 2.2) leafTreeOutString = NXNewick().writeString(leafTree) self.assertEqual(leafTreeOutString, trueLeafOg)
def testAddOutgroup(self): trueOg = "((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc3:0.11,(MOUSE:0.072818,RAT:0.081244)Anc4:0.260342)Anc1:0.02326,((DOG:0.07,CAT:0.07)Anc5:0.087381,(PIG:0.06,COW:0.06)Anc6:0.104728)Anc2:0.04,outgroup:1.7)Anc0;" tree = MultiCactusTree(self.mcTree1) tree.nameUnlabeledInternalNodes() tree.computeSubtreeRoots() tree.addOutgroup("outgroup", 1.7) treeString = NXNewick().writeString(tree) self.assertEqual(treeString, trueOg) trueLeafOg = "(A:1.1,outgroup:1.1);" leafTreeString = "A;" parser = NXNewick() leafTree = MultiCactusTree(parser.parseString(leafTreeString, addImpliedRoots=False)) leafTree.nameUnlabeledInternalNodes() leafTree.computeSubtreeRoots() leafTree.addOutgroup("outgroup", 2.2) leafTreeOutString = NXNewick().writeString(leafTree) self.assertEqual(leafTreeOutString, trueLeafOg)
def testMultipleOutgroups(self): tree = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc6:0.11,(MOUSE:0.072818,RAT:0.081244)Anc5:0.260342)Anc4:0.023260,((DOG:0.07,CAT:0.07)Anc3:0.087381,(PIG:0.06,COW:0.06)Anc2:0.104728)Anc1:0.04)Anc0;' mcTree = MultiCactusTree(NXNewick().parseString(tree, addImpliedRoots = False)) mcTree.computeSubtreeRoots() og = GreedyOutgroup() og.importTree(mcTree) og.greedy(candidateChildFrac=0.5, maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) # ordering is important! assert map(itemgetter(0), og.ogMap['Anc4']) == ['Anc1'] assert map(itemgetter(0), og.ogMap['Anc7']) == ['BABOON', 'Anc1', 'Anc5'] # We avoid cycles, and choose post-order first, so this only # uses leaves. assert map(itemgetter(0), og.ogMap['Anc1']) == ['HUMAN', 'CHIMP', 'BABOON']
def testMultipleOutgroupsJustLeaves(self): tree = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc6:0.11,(MOUSE:0.072818,RAT:0.081244)Anc5:0.260342)Anc4:0.023260,((DOG:0.07,CAT:0.07)Anc3:0.087381,(PIG:0.06,COW:0.06)Anc2:0.104728)Anc1:0.04)Anc0;' mcTree = MultiCactusTree(NXNewick().parseString(tree, addImpliedRoots = False)) mcTree.computeSubtreeRoots() og = GreedyOutgroup() og.importTree(mcTree) candidates = set([mcTree.getName(x) for x in mcTree.getLeaves()]) og.greedy(candidateSet=candidates, candidateChildFrac=2., maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) # ordering is important! assert map(itemgetter(0), og.ogMap['Anc1']) == ['HUMAN', 'CHIMP', 'BABOON'] assert og.ogMap['Anc7'][0][0] == 'BABOON' assert og.ogMap['Anc7'][1][0] in ['CAT', 'DOG'] assert og.ogMap['Anc7'][2][0] in ['CAT', 'DOG']
def setUp(self): unittest.TestCase.setUp(self) self.trees = randomTreeSet() self.mcTrees = [] self.tempDir = getTempDirectory(os.getcwd()) self.tempFa = os.path.join(self.tempDir, "seq.fa") with open(self.tempFa, "w") as f: f.write(">temp\nNNNNNNNCNNNNAAAAAAAAAAAAAAANNNNNNN\n") self.dummySeqMaps = [] for tree in self.trees: if tree.size() < 500: mcTree = MultiCactusTree(tree, tree.degree()) seqMap = dict() for i in mcTree.breadthFirstTraversal(): mcTree.setName(i, "Node%s" % str(i)) seqMap["Node%s" % str(i)] = self.tempFa mcTree.computeSubtreeRoots() self.mcTrees.append(mcTree) self.dummySeqMaps.append(seqMap) seqLens = dict() seqLens["HUMAN"] = 57553 seqLens["CHIMP"] = 57344 seqLens["BABOON"] = 58960 seqLens["MOUSE"] = 32750 seqLens["RAT"] = 38436 seqLens["DOG"] = 54187 seqLens["CAT"] = 50283 seqLens["PIG"] = 54843 seqLens["COW"] = 55508 self.blanchetteSeqMap = dict() for event, seqLen in seqLens.items(): p = os.path.join(self.tempDir, event +".fa") with open(p, "w") as f: f.write(">%s\n" % event) f.write(''.join(['A'] * seqLen)) f.write('\n') self.blanchetteSeqMap[event] = p
def createMCProject(tree, experiment, config, options): mcTree = MultiCactusTree(tree, config.getSubtreeSize()) mcTree.nameUnlabeledInternalNodes(config.getDefaultInternalNodePrefix()) mcTree.computeSubtreeRoots() mcProj = MultiCactusProject() mcProj.mcTree = mcTree mcProj.inputSequences = experiment.getSequences()[:] mcProj.outputSequenceDir = experiment.getOutputSequenceDir() if config.getDoSelfAlignment(): mcTree.addSelfEdges() for name in mcProj.mcTree.getSubtreeRootNames(): expPath = "%s/%s/%s_experiment.xml" % (options.path, name, name) mcProj.expMap[name] = os.path.abspath(expPath) alignmentRootId = mcProj.mcTree.getRootId() if options.root is not None: try: alignmentRootId = mcProj.mcTree.getNodeId(options.root) except Exception as e: raise RuntimeError("Specified root name %s not found in tree" % options.root) mcProj.outgroup = None if config.getOutgroupStrategy() == 'greedy': # use the provided outgroup candidates, or use all outgroups # as candidates if none are given mcProj.outgroup = GreedyOutgroup() mcProj.outgroup.importTree(mcProj.mcTree, alignmentRootId) mcProj.outgroup.greedy(threshold=config.getOutgroupThreshold(), candidateSet=options.outgroupNames, candidateChildFrac=config.getOutgroupAncestorQualityFraction(), maxNumOutgroups=config.getMaxNumOutgroups()) elif config.getOutgroupStrategy() == 'greedyLeaves': # use all leaves as outgroups, unless outgroup candidates are given mcProj.outgroup = GreedyOutgroup() mcProj.outgroup.importTree(mcProj.mcTree, alignmentRootId) ogSet = options.outgroupNames if ogSet is None: ogSet = set([mcProj.mcTree.getName(x) for x in mcProj.mcTree.getLeaves()]) mcProj.outgroup.greedy(threshold=config.getOutgroupThreshold(), candidateSet=ogSet, candidateChildFrac=2.0, maxNumOutgroups=config.getMaxNumOutgroups()) elif config.getOutgroupStrategy() == 'greedyPreference': # prefer the provided outgroup candidates, if any, but use # other nodes as "filler" if we can't find enough. mcProj.outgroup = GreedyOutgroup() mcProj.outgroup.importTree(mcProj.mcTree, alignmentRootId) mcProj.outgroup.greedy(threshold=config.getOutgroupThreshold(), candidateSet=options.outgroupNames, candidateChildFrac=config.getOutgroupAncestorQualityFraction(), maxNumOutgroups=config.getMaxNumOutgroups()) mcProj.outgroup.greedy(threshold=config.getOutgroupThreshold(), candidateSet=None, candidateChildFrac=config.getOutgroupAncestorQualityFraction(), maxNumOutgroups=config.getMaxNumOutgroups()) elif config.getOutgroupStrategy() == 'dynamic': # dynamic programming algorithm that exactly optimizes probability # that base in target node aligns to at least one base in the # outgroup set. Caveats are that it only returns leaves, and # the model used for optimization is super naive. Still, it does # some things better than greedy approaches such as properly account # for phylogenetic redundancy, as well as try to factor assembly # size/quality automatically. mcProj.outgroup = DynamicOutgroup() mcProj.outgroup.importTree(mcProj.mcTree, mcProj.getInputSequenceMap(), alignmentRootId, candidateSet=options.outgroupNames) mcProj.outgroup.compute(maxNumOutgroups=config.getMaxNumOutgroups()) elif config.getOutgroupStrategy() != 'none': raise RuntimeError("Could not understand outgroup strategy %s" % config.getOutgroupStrategy()) # if necessary, we reroot the tree at the specified alignment root id. all leaf genomes # that are no longer in the tree, but still used as outgroups, are moved into special fields # so that we can remember to, say, get their paths for preprocessing. specifyAlignmentRoot(mcProj, alignmentRootId) return mcProj
class TestCase(unittest.TestCase): def setUp(self): unittest.TestCase.setUp(self) self.trees = randomTreeSet() self.mcTrees = [] self.tempDir = getTempDirectory(os.getcwd()) self.tempFa = os.path.join(self.tempDir, "seq.fa") with open(self.tempFa, "w") as f: f.write(">temp\nNNNNNNNCNNNNAAAAAAAAAAAAAAANNNNNNN\n") self.dummySeqMaps = [] for tree in self.trees: if tree.size() < 50: mcTree = MultiCactusTree(tree, tree.degree()) seqMap = dict() for i in mcTree.breadthFirstTraversal(): mcTree.setName(i, "Node%s" % str(i)) seqMap["Node%s" % str(i)] = self.tempFa mcTree.computeSubtreeRoots() mcTree.nameUnlabeledInternalNodes() self.mcTrees.append(mcTree) self.dummySeqMaps.append(seqMap) # Boreoeutherian tree borTree = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc6:0.11,(MOUSE:0.072818,RAT:0.081244)Anc5:0.260342)Anc4:0.023260,((DOG:0.07,CAT:0.07)Anc3:0.087381,(PIG:0.06,COW:0.06)Anc2:0.104728)Anc1:0.04)Anc0;' self.borMcTree = MultiCactusTree(NXNewick().parseString(borTree, addImpliedRoots=False)) self.borMcTree.computeSubtreeRoots() self.borMcTree.nameUnlabeledInternalNodes() self.mcTrees.append(self.borMcTree) # Eutherian backbone tree backbone = '(((((((((((Homo_sapiens:0.00655,Pan_troglodytes:0.00684):0.00422,Gorilla_gorilla_gorilla:0.008964):0.009693,Pongo_abelii:0.01894):0.015511,Macaca_mulatta:0.043601):0.08444,Aotus_nancymaae:0.08):0.08,Microcebus_murinus:0.10612):0.043494,Galeopterus_variegatus:0.134937):0.04,((((Jaculus_jaculus:0.1,(Microtus_ochrogaster:0.14,(Mus_musculus:0.084509,Rattus_norvegicus:0.091589):0.047773):0.06015):0.122992,(Heterocephalus_glaber:0.1,(Cavia_porcellus:0.065629,(Chinchilla_lanigera:0.06,Octodon_degus:0.1):0.06):0.05):0.06015):0.05,Marmota_marmota:0.1):0.05,Oryctolagus_cuniculus:0.21569):0.04):0.040593,(((Sus_scrofa:0.12,(Orcinus_orca:0.069688,(Bos_taurus:0.04,Capra_hircus:0.04):0.09):0.045488):0.02,((Equus_caballus:0.109397,(Felis_catus:0.098612,(Canis_lupus_familiaris:0.052458,Mustela_putorius_furo:0.08):0.02):0.049845):0.02,(Pteropus_alecto:0.1,Eptesicus_fuscus:0.08):0.033706):0.03):0.025,Erinaceus_europaeus:0.278178):0.021227):0.023664,(((Loxodonta_africana:0.022242,Procavia_capensis:0.145358):0.076687,Chrysochloris_asiatica:0.04):0.05,Dasypus_novemcinctus:0.169809):0.02)backbone_root:0.234728,(Monodelphis_domestica:0.125686,Sarcophilus_harrisii:0.12):0.2151);' self.backboneTree = MultiCactusTree(NXNewick().parseString(backbone, addImpliedRoots=False)) self.backboneTree.computeSubtreeRoots() self.backboneTree.nameUnlabeledInternalNodes() self.mcTrees.append(self.backboneTree) seqLens = dict() seqLens["HUMAN"] = 57553 seqLens["CHIMP"] = 57344 seqLens["BABOON"] = 58960 seqLens["MOUSE"] = 32750 seqLens["RAT"] = 38436 seqLens["DOG"] = 54187 seqLens["CAT"] = 50283 seqLens["PIG"] = 54843 seqLens["COW"] = 55508 self.blanchetteSeqMap = dict() for event, seqLen in seqLens.items(): p = os.path.join(self.tempDir, event +".fa") with open(p, "w") as f: f.write(">%s\n" % event) f.write(''.join(['A'] * seqLen)) f.write('\n') self.blanchetteSeqMap[event] = p def tearDown(self): unittest.TestCase.tearDown(self) system("rm -rf %s" % self.tempDir) def testJustLeaves(self): og = GreedyOutgroup() og.importTree(self.borMcTree) candidates = set([self.borMcTree.getName(x) for x in self.borMcTree.getLeaves()]) og.greedy(candidateSet=candidates, candidateChildFrac=2.) assert og.ogMap['Anc1'][0][0] == 'HUMAN' assert og.ogMap['Anc2'][0][0] in ['CAT', 'DOG'] assert og.ogMap['Anc3'][0][0] in ['PIG', 'COW'] assert og.ogMap['Anc4'][0][0] in ['CAT', 'DOG'] assert og.ogMap['Anc5'][0][0] == 'HUMAN' assert og.ogMap['Anc6'][0][0] in ['CAT', 'DOG'] assert og.ogMap['Anc7'][0][0] == 'BABOON' def testHeightTable(self): """Make sure the height-table is calculated correctly.""" og = GreedyOutgroup() og.importTree(self.borMcTree) htable = og.heightTable() self.assertEquals(htable[self.borMcTree.getNodeId('HUMAN')], 0) self.assertEquals(htable[self.borMcTree.getNodeId('PIG')], 0) self.assertEquals(htable[self.borMcTree.getNodeId('RAT')], 0) self.assertEquals(htable[self.borMcTree.getNodeId('Anc7')], 1) self.assertEquals(htable[self.borMcTree.getNodeId('Anc1')], 2) self.assertEquals(htable[self.borMcTree.getNodeId('Anc0')], 4) def testZeroThreshold(self): """A threshold of 0 should produce outgroup sets that cause no additional depth in the resulting schedule.""" tree = self.backboneTree og = GreedyOutgroup() og.importTree(tree) og.greedy(candidateSet=set(['Homo_sapiens', 'Mus_musculus']),threshold=0, maxNumOutgroups=3, candidateChildFrac=0.75) og.greedy(threshold=0, maxNumOutgroups=3, candidateChildFrac=0.75) htable = og.heightTable() for node, outgroups in og.ogMap.items(): for outgroup, _ in outgroups: # For the outgroup assignment to create no # additional dependencies, each outgroup must have # a height lower than the node it's outgroup to # (or be a leaf) self.assertTrue(htable[tree.getNodeId(outgroup)] < htable[tree.getNodeId(node)] \ or htable[tree.getNodeId(outgroup)] == 0) def testCandidates(self): og = GreedyOutgroup() og.importTree(self.borMcTree) candidates = set(['HUMAN', 'CHIMP', 'RAT']) og.greedy(candidateSet=candidates, candidateChildFrac=0.5) assert og.ogMap['Anc1'][0][0] == 'Anc4' assert og.ogMap['Anc2'][0][0] == 'Anc4' assert og.ogMap['Anc3'][0][0] == 'Anc4' assert 'Anc4' not in og.ogMap assert og.ogMap['Anc5'][0][0] in ['HUMAN', 'CHIMP', 'Anc6', 'Anc7'] assert og.ogMap['Anc6'][0][0] in ['Anc5', 'MOUSE', 'RAT'] assert og.ogMap['Anc7'][0][0] in ['Anc5', 'MOUSE', 'RAT'] og = GreedyOutgroup() og.importTree(self.borMcTree) candidates = set(['HUMAN', 'CHIMP', 'RAT']) og.greedy(candidateSet=candidates, candidateChildFrac=1.0) assert og.ogMap['Anc1'][0][0] == 'Anc7' assert og.ogMap['Anc2'][0][0] == 'Anc7' assert og.ogMap['Anc3'][0][0] == 'Anc7' assert 'Anc4' not in og.ogMap assert og.ogMap['Anc5'][0][0] in ['HUMAN', 'CHIMP', 'Anc7'] assert og.ogMap['Anc6'][0][0] == 'RAT' assert og.ogMap['Anc7'][0][0] == 'RAT' def testGeneralBetterThanLeaves(self): for tree in self.mcTrees: og1 = GreedyOutgroup() og1.importTree(tree) candidates = set([tree.getName(x) for x in tree.getLeaves()]) og1.greedy(candidateSet=candidates, candidateChildFrac=2.) og2 = GreedyOutgroup() og2.importTree(tree) og2.greedy(candidateSet=None) for i in og1.ogMap: assert i in og2.ogMap dist1 = og1.ogMap[i][0][1] dist2 = og2.ogMap[i][0][1] assert dist2 <= dist1 def testGeneralConstrainedBetterThanLeaves(self): for tree in self.mcTrees: og1 = GreedyOutgroup() og1.importTree(tree) candidates = set([tree.getName(x) for x in tree.getLeaves()]) og1.greedy(candidateSet=candidates, candidateChildFrac=2.) og2 = GreedyOutgroup() og2.importTree(tree) og2.greedy(candidateSet=None, threshold=2) for i in og1.ogMap: assert i in og2.ogMap dist1 = og1.ogMap[i][0][1] dist2 = og2.ogMap[i][0][1] assert dist2 <= dist1 def testMultipleOutgroups(self): og = GreedyOutgroup() og.importTree(self.borMcTree) og.greedy(candidateChildFrac=0.5, maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) # ordering is important! assert map(itemgetter(0), og.ogMap['Anc4']) == ['Anc1'] assert map(itemgetter(0), og.ogMap['Anc7']) == ['BABOON', 'Anc1', 'Anc5'] # We avoid cycles, and choose post-order first, so this only # uses leaves. assert map(itemgetter(0), og.ogMap['Anc1']) == ['HUMAN', 'CHIMP', 'BABOON'] def testMultipleOutgroupsJustLeaves(self): og = GreedyOutgroup() og.importTree(self.borMcTree) candidates = set([self.borMcTree.getName(x) for x in self.borMcTree.getLeaves()]) og.greedy(candidateSet=candidates, candidateChildFrac=2., maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) # ordering is important! assert map(itemgetter(0), og.ogMap['Anc1']) == ['HUMAN', 'CHIMP', 'BABOON'] assert og.ogMap['Anc7'][0][0] == 'BABOON' assert og.ogMap['Anc7'][1][0] in ['CAT', 'DOG'] assert og.ogMap['Anc7'][2][0] in ['CAT', 'DOG'] def testMultipleOutgroupsOnRandomTrees(self): for tree in self.mcTrees: og = GreedyOutgroup() og.importTree(tree) og.greedy(candidateChildFrac=0.5, maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) def testDynamicOutgroupsOnRandomTrees(self): for tree, seqMap in zip(self.mcTrees, self.dummySeqMaps): degree = max([len(tree.getChildren(x)) for x in tree.breadthFirstTraversal()]) if degree < 8: og = DynamicOutgroup() og.edgeLen = 5 og.importTree(tree, seqMap) og.compute(maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. # (this will be true because all sequences are the same) assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) def testDynamicOutgroupsJustLeaves(self): og = DynamicOutgroup() og.importTree(self.borMcTree, self.blanchetteSeqMap) og.compute(maxNumOutgroups=3, sequenceLossWeight=0.) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) # ordering is important! assert og.ogMap['Anc1'][0][0] == 'HUMAN' assert og.ogMap['Anc7'][0][0] == 'BABOON' og = DynamicOutgroup() og.importTree(self.borMcTree, self.blanchetteSeqMap) og.compute(maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # we keep dynamic outgroups sorted by distance too assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) def testMultipleIdenticalRunsProduceSameResult(self): """The code now allows for multiple greedy() calls with different candidate sets, so that some outgroups can be 'preferred' over others without being the only candidates. Check that running greedy() multiple times with the same parameters gives the same result as running it once. """ for tree in self.mcTrees: ogOnce = GreedyOutgroup() ogOnce.importTree(tree) ogOnce.greedy(maxNumOutgroups=3) ogMultipleTimes = GreedyOutgroup() ogMultipleTimes.importTree(tree) ogMultipleTimes.greedy(maxNumOutgroups=3) ogMultipleTimes.greedy(maxNumOutgroups=3) ogMultipleTimes.greedy(maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, ogMultipleTimes.ogMap.values())) # and for all entries, the closest must be first. assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), ogMultipleTimes.ogMap.values())) # Check that the maps are equal. Can't compare them # directly since python will convert them to ordered # association lists. assert len(ogOnce.ogMap) == len(ogMultipleTimes.ogMap) for i in ogOnce.ogMap: assert i in ogMultipleTimes.ogMap assert ogOnce.ogMap[i] == ogMultipleTimes.ogMap[i] def testPreferredCandidateSets(self): """Test that running greedy() multiple times with different candidate sets will behave properly, i.e. keep all the existing outgroup assignments and fill in more on the second run.""" for tree in self.mcTrees: ogOnce = GreedyOutgroup() ogOnce.importTree(tree) nodes = [j for j in tree.postOrderTraversal()] candidateSet = set([tree.getName(i) for i in random.sample(nodes, min(20, len(nodes)))]) ogOnce.greedy(candidateSet=candidateSet, maxNumOutgroups=3) ogTwice = GreedyOutgroup() ogTwice.importTree(tree) ogTwice.greedy(candidateSet=candidateSet, maxNumOutgroups=3) ogTwice.greedy(maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, ogTwice.ogMap.values())) # and for all entries, the closest must be first. assert all(map(lambda x: x == sorted(x, key=itemgetter(1)), ogTwice.ogMap.values())) for node in ogTwice.ogMap: if node in ogOnce.ogMap: # the ogMap entry in ogOnce should be a subset of the ogMap entry for ogTwice oneRunOutgroups = ogOnce.ogMap[node] twoRunOutgroups = ogTwice.ogMap[node] assert len(twoRunOutgroups) >= len(oneRunOutgroups) for i in oneRunOutgroups: assert i in twoRunOutgroups def testNoOutgroupIsADescendantOfAnother(self): """No two outgroups should be on the same path to the root.""" for tree in self.mcTrees: tree.nameUnlabeledInternalNodes() og = GreedyOutgroup() og.importTree(tree) og.greedy(maxNumOutgroups=3) for source in og.ogMap: for (sink1, _) in og.ogMap[source]: for (sink2, _) in og.ogMap[source]: if sink1 != sink2: sink1Id = tree.nameToId[sink1] sink2Id = tree.nameToId[sink2] assert sink1Id not in tree.postOrderTraversal(sink2Id) assert sink2Id not in tree.postOrderTraversal(sink1Id)
class TestCase(unittest.TestCase): def setUp(self): unittest.TestCase.setUp(self) self.mcTree1 = None self.mcTree1a = None self.mcTree2 = None self.__generateTrees() def testSanity(self): parser = NXNewick() mcTree1 = MultiCactusTree(parser.parseString(self.tree1, addImpliedRoots=False)) tree1String = NXNewick().writeString(mcTree1) self.assertEqual(tree1String, self.tree1) mcTree2 = MultiCactusTree(parser.parseString(self.tree2, addImpliedRoots=False), subtreeSize=3) tree2String = NXNewick().writeString(mcTree2) self.assertEqual(tree2String, self.tree2) def testSubtrees(self): roots1 = ["Anc0", "Anc1", "Anc2", "Anc3", "Anc4", "Anc5", "Anc6", "Anc7"] roots1a = ["Anc0", "Anc3", "Anc4", "Anc5", "Anc6"] roots2 = ["Anc0", "Anc1", "Anc2", "Anc3", "Anc4"] subTree1_a3 = "(Anc7:0.025291,BABOON:0.044568)Anc3;" subTree1a_a0 = "((Anc3:0.11,Anc4:0.260342)Anc1:0.02326,(Anc5:0.087381,Anc6:0.104728)Anc2:0.04)Anc0;" subTree2_a3 = "(monkey:100.8593,cat:47.14069)Anc5;" trueRoots = [roots1, roots1a, roots2] trueSubtrees = [subTree1_a3, subTree1a_a0, subTree2_a3] trees = [self.mcTree1, self.mcTree1a, self.mcTree2] ancs = ["Anc3", "Anc0", "Anc5"] for i in range(0, 3): roots = trees[i].getSubtreeRootNames() self.assertEqual(sorted(roots), sorted(trueRoots[i])) subtree = trees[i].extractSubTree(ancs[i]) subtree = NXNewick().writeString(subtree) self.assertEqual(subtree, trueSubtrees[i]) def testAddSelf(self): trueSelf = "((((((((HUMAN:0.006969)HUMAN_self:0.006969,(CHIMP:0.009727)CHIMP_self:0.009727)Anc7:0.025291)Anc7_self:0.025291,(BABOON:0.044568)BABOON_self:0.044568)Anc3:0.11)Anc3_self:0.11,(((MOUSE:0.072818)MOUSE_self:0.072818,(RAT:0.081244)RAT_self:0.081244)Anc4:0.260342)Anc4_self:0.260342)Anc1:0.02326)Anc1_self:0.02326,(((((DOG:0.07)DOG_self:0.07,(CAT:0.07)CAT_self:0.07)Anc5:0.087381)Anc5_self:0.087381,(((PIG:0.06)PIG_self:0.06,(COW:0.06)COW_self:0.06)Anc6:0.104728)Anc6_self:0.104728)Anc2:0.04)Anc2_self:0.04)Anc0;" tree = MultiCactusTree(self.mcTree1) tree.nameUnlabeledInternalNodes() tree.computeSubtreeRoots() tree.addSelfEdges() treeString = NXNewick().writeString(tree) self.assertEqual(treeString, trueSelf) def testAddOutgroup(self): trueOg = "((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc3:0.11,(MOUSE:0.072818,RAT:0.081244)Anc4:0.260342)Anc1:0.02326,((DOG:0.07,CAT:0.07)Anc5:0.087381,(PIG:0.06,COW:0.06)Anc6:0.104728)Anc2:0.04,outgroup:1.7)Anc0;" tree = MultiCactusTree(self.mcTree1) tree.nameUnlabeledInternalNodes() tree.computeSubtreeRoots() tree.addOutgroup("outgroup", 1.7) treeString = NXNewick().writeString(tree) self.assertEqual(treeString, trueOg) trueLeafOg = "(A:1.1,outgroup:1.1);" leafTreeString = "A;" parser = NXNewick() leafTree = MultiCactusTree(parser.parseString(leafTreeString, addImpliedRoots=False)) leafTree.nameUnlabeledInternalNodes() leafTree.computeSubtreeRoots() leafTree.addOutgroup("outgroup", 2.2) leafTreeOutString = NXNewick().writeString(leafTree) self.assertEqual(leafTreeOutString, trueLeafOg) def testExtractSpanningTree(self): """Tests whether extracting a binary spanning tree works correctly.""" prevNewick1 = NXNewick().writeString(self.mcTree1) # Check a dead-simple spanning tree with 3 closely related leaves. spanHCB = self.mcTree1.extractSpanningTree(["HUMAN", "CHIMP", "BABOON"]) # Check that the existing tree hasn't been modified (OK, a bit # silly, but just in case). self.assertEqual(NXNewick().writeString(self.mcTree1), prevNewick1) # Check the actual spanning tree. self.assertEqual( NXNewick().writeString(spanHCB), "((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc3;" ) # Now test a more complicated tree, where we should remove as # many of the ancestors as possible (they will add extra # losses for no reason!). spanHCC = self.mcTree1.extractSpanningTree(["HUMAN", "CHIMP", "CAT"]) self.assertEqual(NXNewick().writeString(self.mcTree1), prevNewick1) self.assertEqual( NXNewick().writeString(spanHCC), "((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.158551,CAT:0.197381)Anc0;" ) def __generateTrees(self): self.tree1 = "((((HUMAN:0.006969,CHIMP:0.009727):0.025291,BABOON:0.044568):0.11,(MOUSE:0.072818,RAT:0.081244):0.260342):0.02326,((DOG:0.07,CAT:0.07):0.087381,(PIG:0.06,COW:0.06):0.104728):0.04);" self.tree2 = "((raccoon:19.19959,bear:6.80041):0.846,((sea_lion:11.997,seal:12.003):7.52973,((monkey:100.8593,cat:47.14069):20.59201,weasel:18.87953):2.0946):3.87382,dog:25.46154);" parser = NXNewick() self.mcTree1 = MultiCactusTree(parser.parseString(self.tree1, addImpliedRoots=False)) self.mcTree1a = MultiCactusTree(parser.parseString(self.tree1, addImpliedRoots=False), subtreeSize=4) self.mcTree2 = MultiCactusTree(parser.parseString(self.tree2, addImpliedRoots=False), subtreeSize=3) self.mcTree1.nameUnlabeledInternalNodes() self.mcTree1a.nameUnlabeledInternalNodes() self.mcTree2.nameUnlabeledInternalNodes() self.mcTree1.computeSubtreeRoots() self.mcTree1a.computeSubtreeRoots() self.mcTree2.computeSubtreeRoots()
class TestCase(unittest.TestCase): def setUp(self): unittest.TestCase.setUp(self) self.mcTree1 = None self.mcTree1a = None self.mcTree2 = None self.__generateTrees() def testSanity(self): parser = NXNewick() mcTree1 = MultiCactusTree( parser.parseString(self.tree1, addImpliedRoots=False)) tree1String = NXNewick().writeString(mcTree1) self.assertEqual(tree1String, self.tree1) mcTree2 = MultiCactusTree(parser.parseString(self.tree2, addImpliedRoots=False), subtreeSize=3) tree2String = NXNewick().writeString(mcTree2) self.assertEqual(tree2String, self.tree2) def testSubtrees(self): roots1 = [ "Anc0", "Anc1", "Anc2", "Anc3", "Anc4", "Anc5", "Anc6", "Anc7" ] roots1a = ["Anc0", "Anc3", "Anc4", "Anc5", "Anc6"] roots2 = ["Anc0", "Anc1", "Anc2", "Anc3", "Anc4"] subTree1_a3 = '(Anc7:0.025291,BABOON:0.044568)Anc3;' subTree1a_a0 = '((Anc3:0.11,Anc4:0.260342)Anc1:0.02326,(Anc5:0.087381,Anc6:0.104728)Anc2:0.04)Anc0;' subTree2_a3 = '(monkey:100.8593,cat:47.14069)Anc5;' trueRoots = [roots1, roots1a, roots2] trueSubtrees = [subTree1_a3, subTree1a_a0, subTree2_a3] trees = [self.mcTree1, self.mcTree1a, self.mcTree2] ancs = ["Anc3", "Anc0", "Anc5"] for i in range(0, 3): roots = trees[i].getSubtreeRootNames() self.assertEqual(sorted(roots), sorted(trueRoots[i])) subtree = trees[i].extractSubTree(ancs[i]) subtree = NXNewick().writeString(subtree) self.assertEqual(subtree, trueSubtrees[i]) def testAddSelf(self): trueSelf = '((((((((HUMAN:0.006969)HUMAN_self:0.006969,(CHIMP:0.009727)CHIMP_self:0.009727)Anc7:0.025291)Anc7_self:0.025291,(BABOON:0.044568)BABOON_self:0.044568)Anc3:0.11)Anc3_self:0.11,(((MOUSE:0.072818)MOUSE_self:0.072818,(RAT:0.081244)RAT_self:0.081244)Anc4:0.260342)Anc4_self:0.260342)Anc1:0.02326)Anc1_self:0.02326,(((((DOG:0.07)DOG_self:0.07,(CAT:0.07)CAT_self:0.07)Anc5:0.087381)Anc5_self:0.087381,(((PIG:0.06)PIG_self:0.06,(COW:0.06)COW_self:0.06)Anc6:0.104728)Anc6_self:0.104728)Anc2:0.04)Anc2_self:0.04)Anc0;' tree = MultiCactusTree(self.mcTree1) tree.nameUnlabeledInternalNodes() tree.computeSubtreeRoots() tree.addSelfEdges() treeString = NXNewick().writeString(tree) self.assertEqual(treeString, trueSelf) def testAddOutgroup(self): trueOg = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc3:0.11,(MOUSE:0.072818,RAT:0.081244)Anc4:0.260342)Anc1:0.02326,((DOG:0.07,CAT:0.07)Anc5:0.087381,(PIG:0.06,COW:0.06)Anc6:0.104728)Anc2:0.04,outgroup:1.7)Anc0;' tree = MultiCactusTree(self.mcTree1) tree.nameUnlabeledInternalNodes() tree.computeSubtreeRoots() tree.addOutgroup("outgroup", 1.7) treeString = NXNewick().writeString(tree) self.assertEqual(treeString, trueOg) trueLeafOg = "(A:1.1,outgroup:1.1);" leafTreeString = "A;" parser = NXNewick() leafTree = MultiCactusTree( parser.parseString(leafTreeString, addImpliedRoots=False)) leafTree.nameUnlabeledInternalNodes() leafTree.computeSubtreeRoots() leafTree.addOutgroup("outgroup", 2.2) leafTreeOutString = NXNewick().writeString(leafTree) self.assertEqual(leafTreeOutString, trueLeafOg) def testExtractSpanningTree(self): """Tests whether extracting a binary spanning tree works correctly.""" prevNewick1 = NXNewick().writeString(self.mcTree1) # Check a dead-simple spanning tree with 3 closely related leaves. spanHCB = self.mcTree1.extractSpanningTree( ["HUMAN", "CHIMP", "BABOON"]) # Check that the existing tree hasn't been modified (OK, a bit # silly, but just in case). self.assertEqual(NXNewick().writeString(self.mcTree1), prevNewick1) # Check the actual spanning tree. self.assertEqual( NXNewick().writeString(spanHCB), "((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc3;" ) # Now test a more complicated tree, where we should remove as # many of the ancestors as possible (they will add extra # losses for no reason!). spanHCC = self.mcTree1.extractSpanningTree(["HUMAN", "CHIMP", "CAT"]) self.assertEqual(NXNewick().writeString(self.mcTree1), prevNewick1) self.assertEqual( NXNewick().writeString(spanHCC), "((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.158551,CAT:0.197381)Anc0;") def __generateTrees(self): self.tree1 = '((((HUMAN:0.006969,CHIMP:0.009727):0.025291,BABOON:0.044568):0.11,(MOUSE:0.072818,RAT:0.081244):0.260342):0.02326,((DOG:0.07,CAT:0.07):0.087381,(PIG:0.06,COW:0.06):0.104728):0.04);' self.tree2 = '((raccoon:19.19959,bear:6.80041):0.846,((sea_lion:11.997,seal:12.003):7.52973,((monkey:100.8593,cat:47.14069):20.59201,weasel:18.87953):2.0946):3.87382,dog:25.46154);' parser = NXNewick() self.mcTree1 = MultiCactusTree( parser.parseString(self.tree1, addImpliedRoots=False)) self.mcTree1a = MultiCactusTree(parser.parseString( self.tree1, addImpliedRoots=False), subtreeSize=4) self.mcTree2 = MultiCactusTree(parser.parseString( self.tree2, addImpliedRoots=False), subtreeSize=3) self.mcTree1.nameUnlabeledInternalNodes() self.mcTree1a.nameUnlabeledInternalNodes() self.mcTree2.nameUnlabeledInternalNodes() self.mcTree1.computeSubtreeRoots() self.mcTree1a.computeSubtreeRoots() self.mcTree2.computeSubtreeRoots()
def createMCProject(tree, experiment, config, options): mcTree = MultiCactusTree(tree, config.getSubtreeSize()) mcTree.nameUnlabeledInternalNodes(config.getDefaultInternalNodePrefix()) mcTree.computeSubtreeRoots() mcProj = MultiCactusProject() mcProj.mcTree = mcTree mcProj.inputSequences = experiment.getSequences()[:] if config.getDoSelfAlignment(): mcTree.addSelfEdges() for name in mcProj.mcTree.getSubtreeRootNames(): expPath = "%s/%s/%s_experiment.xml" % (options.path, name, name) mcProj.expMap[name] = os.path.abspath(expPath) alignmentRootId = mcProj.mcTree.getRootId() if options.root is not None: try: alignmentRootId = mcProj.mcTree.getNodeId(options.root) except: raise RuntimeError("Specified root name %s not found in tree" % options.root) mcProj.outgroup = None if config.getOutgroupStrategy() == 'greedy': # use the provided outgroup candidates, or use all outgroups # as candidates if none are given mcProj.outgroup = GreedyOutgroup() mcProj.outgroup.importTree(mcProj.mcTree, alignmentRootId) mcProj.outgroup.greedy( threshold=config.getOutgroupThreshold(), candidateSet=options.outgroupNames, candidateChildFrac=config.getOutgroupAncestorQualityFraction(), maxNumOutgroups=config.getMaxNumOutgroups()) elif config.getOutgroupStrategy() == 'greedyLeaves': # use all leaves as outgroups, unless outgroup candidates are given mcProj.outgroup = GreedyOutgroup() mcProj.outgroup.importTree(mcProj.mcTree, alignmentRootId) ogSet = options.outgroupNames if ogSet is None: ogSet = set( [mcProj.mcTree.getName(x) for x in mcProj.mcTree.getLeaves()]) mcProj.outgroup.greedy(threshold=config.getOutgroupThreshold(), candidateSet=ogSet, candidateChildFrac=2.0, maxNumOutgroups=config.getMaxNumOutgroups()) elif config.getOutgroupStrategy() == 'greedyPreference': # prefer the provided outgroup candidates, if any, but use # other nodes as "filler" if we can't find enough. mcProj.outgroup = GreedyOutgroup() mcProj.outgroup.importTree(mcProj.mcTree, alignmentRootId) mcProj.outgroup.greedy( threshold=config.getOutgroupThreshold(), candidateSet=options.outgroupNames, candidateChildFrac=config.getOutgroupAncestorQualityFraction(), maxNumOutgroups=config.getMaxNumOutgroups()) mcProj.outgroup.greedy( threshold=config.getOutgroupThreshold(), candidateSet=None, candidateChildFrac=config.getOutgroupAncestorQualityFraction(), maxNumOutgroups=config.getMaxNumOutgroups()) elif config.getOutgroupStrategy() == 'dynamic': # dynamic programming algorithm that exactly optimizes probability # that base in target node aligns to at least one base in the # outgroup set. Caveats are that it only returns leaves, and # the model used for optimization is super naive. Still, it does # some things better than greedy approaches such as properly account # for phylogenetic redundancy, as well as try to factor assembly # size/quality automatically. mcProj.outgroup = DynamicOutgroup() mcProj.outgroup.importTree(mcProj.mcTree, mcProj.getInputSequenceMap(), alignmentRootId, candidateSet=options.outgroupNames) mcProj.outgroup.compute(maxNumOutgroups=config.getMaxNumOutgroups()) elif config.getOutgroupStrategy() != 'none': raise RuntimeError("Could not understand outgroup strategy %s" % config.getOutgroupStrategy()) # if necessary, we reroot the tree at the specified alignment root id. all leaf genomes # that are no longer in the tree, but still used as outgroups, are moved into special fields # so that we can remember to, say, get their paths for preprocessing. specifyAlignmentRoot(mcProj, alignmentRootId) return mcProj
class TestCase(unittest.TestCase): def setUp(self): unittest.TestCase.setUp(self) self.trees = randomTreeSet() self.mcTrees = [] self.tempDir = getTempDirectory(os.getcwd()) self.tempFa = os.path.join(self.tempDir, "seq.fa") with open(self.tempFa, "w") as f: f.write(">temp\nNNNNNNNCNNNNAAAAAAAAAAAAAAANNNNNNN\n") self.dummySeqMaps = [] for tree in self.trees: if tree.size() < 50: mcTree = MultiCactusTree(tree) seqMap = dict() for i in mcTree.breadthFirstTraversal(): mcTree.setName(i, "Node%s" % str(i)) seqMap["Node%s" % str(i)] = self.tempFa mcTree.computeSubtreeRoots() mcTree.nameUnlabeledInternalNodes() self.mcTrees.append(mcTree) self.dummySeqMaps.append(seqMap) # Boreoeutherian tree borTree = '((((HUMAN:0.006969,CHIMP:0.009727)Anc7:0.025291,BABOON:0.044568)Anc6:0.11,(MOUSE:0.072818,RAT:0.081244)Anc5:0.260342)Anc4:0.023260,((DOG:0.07,CAT:0.07)Anc3:0.087381,(PIG:0.06,COW:0.06)Anc2:0.104728)Anc1:0.04)Anc0;' self.borMcTree = MultiCactusTree(NXNewick().parseString( borTree, addImpliedRoots=False)) self.borMcTree.computeSubtreeRoots() self.borMcTree.nameUnlabeledInternalNodes() self.mcTrees.append(self.borMcTree) # Eutherian backbone tree backbone = '(((((((((((Homo_sapiens:0.00655,Pan_troglodytes:0.00684):0.00422,Gorilla_gorilla_gorilla:0.008964):0.009693,Pongo_abelii:0.01894):0.015511,Macaca_mulatta:0.043601):0.08444,Aotus_nancymaae:0.08):0.08,Microcebus_murinus:0.10612):0.043494,Galeopterus_variegatus:0.134937):0.04,((((Jaculus_jaculus:0.1,(Microtus_ochrogaster:0.14,(Mus_musculus:0.084509,Rattus_norvegicus:0.091589):0.047773):0.06015):0.122992,(Heterocephalus_glaber:0.1,(Cavia_porcellus:0.065629,(Chinchilla_lanigera:0.06,Octodon_degus:0.1):0.06):0.05):0.06015):0.05,Marmota_marmota:0.1):0.05,Oryctolagus_cuniculus:0.21569):0.04):0.040593,(((Sus_scrofa:0.12,(Orcinus_orca:0.069688,(Bos_taurus:0.04,Capra_hircus:0.04):0.09):0.045488):0.02,((Equus_caballus:0.109397,(Felis_catus:0.098612,(Canis_lupus_familiaris:0.052458,Mustela_putorius_furo:0.08):0.02):0.049845):0.02,(Pteropus_alecto:0.1,Eptesicus_fuscus:0.08):0.033706):0.03):0.025,Erinaceus_europaeus:0.278178):0.021227):0.023664,(((Loxodonta_africana:0.022242,Procavia_capensis:0.145358):0.076687,Chrysochloris_asiatica:0.04):0.05,Dasypus_novemcinctus:0.169809):0.02)backbone_root:0.234728,(Monodelphis_domestica:0.125686,Sarcophilus_harrisii:0.12):0.2151);' self.backboneTree = MultiCactusTree(NXNewick().parseString( backbone, addImpliedRoots=False)) self.backboneTree.computeSubtreeRoots() self.backboneTree.nameUnlabeledInternalNodes() self.mcTrees.append(self.backboneTree) seqLens = dict() seqLens["HUMAN"] = 57553 seqLens["CHIMP"] = 57344 seqLens["BABOON"] = 58960 seqLens["MOUSE"] = 32750 seqLens["RAT"] = 38436 seqLens["DOG"] = 54187 seqLens["CAT"] = 50283 seqLens["PIG"] = 54843 seqLens["COW"] = 55508 self.blanchetteSeqMap = dict() for event, seqLen in seqLens.items(): p = os.path.join(self.tempDir, event + ".fa") with open(p, "w") as f: f.write(">%s\n" % event) f.write(''.join(['A'] * seqLen)) f.write('\n') self.blanchetteSeqMap[event] = p def tearDown(self): unittest.TestCase.tearDown(self) system("rm -rf %s" % self.tempDir) def testJustLeaves(self): og = GreedyOutgroup() og.importTree(self.borMcTree) candidates = set( [self.borMcTree.getName(x) for x in self.borMcTree.getLeaves()]) og.greedy(candidateSet=candidates, candidateChildFrac=2.) assert og.ogMap['Anc1'][0][0] == 'HUMAN' assert og.ogMap['Anc2'][0][0] in ['CAT', 'DOG'] assert og.ogMap['Anc3'][0][0] in ['PIG', 'COW'] assert og.ogMap['Anc4'][0][0] in ['CAT', 'DOG'] assert og.ogMap['Anc5'][0][0] == 'HUMAN' assert og.ogMap['Anc6'][0][0] in ['CAT', 'DOG'] assert og.ogMap['Anc7'][0][0] == 'BABOON' def testHeightTable(self): """Make sure the height-table is calculated correctly.""" og = GreedyOutgroup() og.importTree(self.borMcTree) htable = og.heightTable() self.assertEquals(htable[self.borMcTree.getNodeId('HUMAN')], 0) self.assertEquals(htable[self.borMcTree.getNodeId('PIG')], 0) self.assertEquals(htable[self.borMcTree.getNodeId('RAT')], 0) self.assertEquals(htable[self.borMcTree.getNodeId('Anc7')], 1) self.assertEquals(htable[self.borMcTree.getNodeId('Anc1')], 2) self.assertEquals(htable[self.borMcTree.getNodeId('Anc0')], 4) def testZeroThreshold(self): """A threshold of 0 should produce outgroup sets that cause no additional depth in the resulting schedule.""" tree = self.backboneTree og = GreedyOutgroup() og.importTree(tree) og.greedy(candidateSet=set(['Homo_sapiens', 'Mus_musculus']), threshold=0, maxNumOutgroups=3, candidateChildFrac=0.75) og.greedy(threshold=0, maxNumOutgroups=3, candidateChildFrac=0.75) htable = og.heightTable() for node, outgroups in og.ogMap.items(): for outgroup, _ in outgroups: # For the outgroup assignment to create no # additional dependencies, each outgroup must have # a height lower than the node it's outgroup to # (or be a leaf) self.assertTrue(htable[tree.getNodeId(outgroup)] < htable[tree.getNodeId(node)] \ or htable[tree.getNodeId(outgroup)] == 0) def testCandidates(self): og = GreedyOutgroup() og.importTree(self.borMcTree) candidates = set(['HUMAN', 'CHIMP', 'RAT']) og.greedy(candidateSet=candidates, candidateChildFrac=0.5) assert og.ogMap['Anc1'][0][0] == 'Anc4' assert og.ogMap['Anc2'][0][0] == 'Anc4' assert og.ogMap['Anc3'][0][0] == 'Anc4' assert 'Anc4' not in og.ogMap assert og.ogMap['Anc5'][0][0] in ['HUMAN', 'CHIMP', 'Anc6', 'Anc7'] assert og.ogMap['Anc6'][0][0] in ['Anc5', 'MOUSE', 'RAT'] assert og.ogMap['Anc7'][0][0] in ['Anc5', 'MOUSE', 'RAT'] og = GreedyOutgroup() og.importTree(self.borMcTree) candidates = set(['HUMAN', 'CHIMP', 'RAT']) og.greedy(candidateSet=candidates, candidateChildFrac=1.0) assert og.ogMap['Anc1'][0][0] == 'Anc7' assert og.ogMap['Anc2'][0][0] == 'Anc7' assert og.ogMap['Anc3'][0][0] == 'Anc7' assert 'Anc4' not in og.ogMap assert og.ogMap['Anc5'][0][0] in ['HUMAN', 'CHIMP', 'Anc7'] assert og.ogMap['Anc6'][0][0] == 'RAT' assert og.ogMap['Anc7'][0][0] == 'RAT' def testGeneralBetterThanLeaves(self): for tree in self.mcTrees: og1 = GreedyOutgroup() og1.importTree(tree) candidates = set([tree.getName(x) for x in tree.getLeaves()]) og1.greedy(candidateSet=candidates, candidateChildFrac=2.) og2 = GreedyOutgroup() og2.importTree(tree) og2.greedy(candidateSet=None) for i in og1.ogMap: assert i in og2.ogMap dist1 = og1.ogMap[i][0][1] dist2 = og2.ogMap[i][0][1] assert dist2 <= dist1 def testGeneralConstrainedBetterThanLeaves(self): for tree in self.mcTrees: og1 = GreedyOutgroup() og1.importTree(tree) candidates = set([tree.getName(x) for x in tree.getLeaves()]) og1.greedy(candidateSet=candidates, candidateChildFrac=2.) og2 = GreedyOutgroup() og2.importTree(tree) og2.greedy(candidateSet=None, threshold=2) for i in og1.ogMap: assert i in og2.ogMap dist1 = og1.ogMap[i][0][1] dist2 = og2.ogMap[i][0][1] assert dist2 <= dist1 def testMultipleOutgroups(self): og = GreedyOutgroup() og.importTree(self.borMcTree) og.greedy(candidateChildFrac=0.5, maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all( map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) # ordering is important! assert map(itemgetter(0), og.ogMap['Anc4']) == ['Anc1'] assert map(itemgetter(0), og.ogMap['Anc7']) == ['BABOON', 'Anc1', 'Anc5'] # We avoid cycles, and choose post-order first, so this only # uses leaves. assert map(itemgetter(0), og.ogMap['Anc1']) == ['HUMAN', 'CHIMP', 'BABOON'] def testMultipleOutgroupsJustLeaves(self): og = GreedyOutgroup() og.importTree(self.borMcTree) candidates = set( [self.borMcTree.getName(x) for x in self.borMcTree.getLeaves()]) og.greedy(candidateSet=candidates, candidateChildFrac=2., maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all( map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) # ordering is important! assert map(itemgetter(0), og.ogMap['Anc1']) == ['HUMAN', 'CHIMP', 'BABOON'] assert og.ogMap['Anc7'][0][0] == 'BABOON' assert og.ogMap['Anc7'][1][0] in ['CAT', 'DOG'] assert og.ogMap['Anc7'][2][0] in ['CAT', 'DOG'] def testMultipleOutgroupsOnRandomTrees(self): for tree in self.mcTrees: og = GreedyOutgroup() og.importTree(tree) og.greedy(candidateChildFrac=0.5, maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all( map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) def testDynamicOutgroupsOnRandomTrees(self): for tree, seqMap in zip(self.mcTrees, self.dummySeqMaps): degree = max([ len(tree.getChildren(x)) for x in tree.breadthFirstTraversal() ]) if degree < 8: og = DynamicOutgroup() og.edgeLen = 5 og.importTree(tree, seqMap) og.compute(maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. # (this will be true because all sequences are the same) assert all( map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) def testDynamicOutgroupsJustLeaves(self): og = DynamicOutgroup() og.importTree(self.borMcTree, self.blanchetteSeqMap) og.compute(maxNumOutgroups=3, sequenceLossWeight=0.) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # and for all entries, the closest must be first. assert all( map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) # ordering is important! assert og.ogMap['Anc1'][0][0] == 'HUMAN' assert og.ogMap['Anc7'][0][0] == 'BABOON' og = DynamicOutgroup() og.importTree(self.borMcTree, self.blanchetteSeqMap) og.compute(maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, og.ogMap.values())) # we keep dynamic outgroups sorted by distance too assert all( map(lambda x: x == sorted(x, key=itemgetter(1)), og.ogMap.values())) def testMultipleIdenticalRunsProduceSameResult(self): """The code now allows for multiple greedy() calls with different candidate sets, so that some outgroups can be 'preferred' over others without being the only candidates. Check that running greedy() multiple times with the same parameters gives the same result as running it once. """ for tree in self.mcTrees: ogOnce = GreedyOutgroup() ogOnce.importTree(tree) ogOnce.greedy(maxNumOutgroups=3) ogMultipleTimes = GreedyOutgroup() ogMultipleTimes.importTree(tree) ogMultipleTimes.greedy(maxNumOutgroups=3) ogMultipleTimes.greedy(maxNumOutgroups=3) ogMultipleTimes.greedy(maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all( map(lambda x: len(x) <= 3, ogMultipleTimes.ogMap.values())) # and for all entries, the closest must be first. assert all( map(lambda x: x == sorted(x, key=itemgetter(1)), ogMultipleTimes.ogMap.values())) # Check that the maps are equal. Can't compare them # directly since python will convert them to ordered # association lists. assert len(ogOnce.ogMap) == len(ogMultipleTimes.ogMap) for i in ogOnce.ogMap: assert i in ogMultipleTimes.ogMap assert ogOnce.ogMap[i] == ogMultipleTimes.ogMap[i] def testPreferredCandidateSets(self): """Test that running greedy() multiple times with different candidate sets will behave properly, i.e. keep all the existing outgroup assignments and fill in more on the second run.""" for tree in self.mcTrees: ogOnce = GreedyOutgroup() ogOnce.importTree(tree) nodes = [j for j in tree.postOrderTraversal()] candidateSet = set([ tree.getName(i) for i in random.sample(nodes, min(20, len(nodes))) ]) ogOnce.greedy(candidateSet=candidateSet, maxNumOutgroups=3) ogTwice = GreedyOutgroup() ogTwice.importTree(tree) ogTwice.greedy(candidateSet=candidateSet, maxNumOutgroups=3) ogTwice.greedy(maxNumOutgroups=3) # make sure all entries have <= 3 outgroups. assert all(map(lambda x: len(x) <= 3, ogTwice.ogMap.values())) # and for all entries, the closest must be first. assert all( map(lambda x: x == sorted(x, key=itemgetter(1)), ogTwice.ogMap.values())) for node in ogTwice.ogMap: if node in ogOnce.ogMap: # the ogMap entry in ogOnce should be a subset of the ogMap entry for ogTwice oneRunOutgroups = ogOnce.ogMap[node] twoRunOutgroups = ogTwice.ogMap[node] assert len(twoRunOutgroups) >= len(oneRunOutgroups) for i in oneRunOutgroups: assert i in twoRunOutgroups def testNoOutgroupIsADescendantOfAnother(self): """No two outgroups should be on the same path to the root.""" for tree in self.mcTrees: tree.nameUnlabeledInternalNodes() og = GreedyOutgroup() og.importTree(tree) og.greedy(maxNumOutgroups=3) for source in og.ogMap: for (sink1, _) in og.ogMap[source]: for (sink2, _) in og.ogMap[source]: if sink1 != sink2: sink1Id = tree.nameToId[sink1] sink2Id = tree.nameToId[sink2] assert sink1Id not in tree.postOrderTraversal( sink2Id) assert sink2Id not in tree.postOrderTraversal( sink1Id)