Beispiel #1
0
        parents = ancestor_list(ID, population_tree)
        i = 0
        for p_ID in parents:
            i += 1
        if i > 0:
            return p_ID
        else:
            return ''


for population in config.populations:
    popindex += 1

    max_barcode = config.max_barcode[population]

    clone_list, times, clone_dict, lineage_dict, population_tree = read_clone_data(
        population)

    population_tree = {"": population_tree}
    mutant_tree = population_tree[""]
    clone_list.append("")

    mean_average_fitness = numpy.zeros(inference_params.INTERVALS_PER_EPOCH *
                                       max_barcode)
    for ID in clone_list:
        clone = clone_dict[ID]
        mean_average_fitness += 100. * clone.evolution_fitness * clone.freqs[:inference_params
                                                                             .INTERVALS_PER_EPOCH
                                                                             *
                                                                             max_barcode]
        mean_average_fitness += clone.barcoding_fitness * clone.freqs[:inference_params
                                                                      .INTERVALS_PER_EPOCH
population = args.pop_name

ENVIRONMENT = 'evolution'

coverage_directory = config.barcode_data_root_directory + population + '/'

count_file = glob.glob(coverage_directory + population +
                       '*read_coverage.txt')[0]
count_dict = file_parser.parse_count_file(count_file)
counts = numpy.asarray([count_dict[key] for key in sorted(count_dict.keys())])

kappas = file_parser.read_kappas_from_file(config.error_model_directory +
                                           population + '-kappas.tsv')

clone_list, times, clone_dict, lineage_dict, population_tree = read_clone_data(
    population, read_fitness=False, assign_colors=False)

max_barcode = config.max_barcode[population]

bc_fitness_dict = {}
bc_fitness_ci_dict = {}

converged = False
it = 0
max_iterations = 100
negative_llhs = [10**40]

for clone_ID in clone_dict.keys():
    bc_fitness_dict.update({clone_ID: 0.})
    bc_fitness_ci_dict.update({clone_ID: np.zeros(2)})
def main(args):
    population = args.pop_name

    ENVIRONMENT = 'barcoding'

    coverage_directory = config.barcode_data_root_directory + population +'/'

    count_file = glob.glob(coverage_directory+population+'*read_coverage.txt')[0]
    count_dict = file_parser.parse_count_file(count_file)
    counts = numpy.asarray([count_dict[key] for key in sorted(count_dict.keys())])

    kappas = file_parser.read_kappas_from_file(config.error_model_directory + population + '-kappas.tsv')

    clone_list, times, clone_dict, lineage_dict, population_tree  = read_clone_data(population, read_fitness = False, assign_colors = False)

    max_barcode = config.max_barcode[population]

    bc_fitness_dict = {}
    bc_fitness_ci_dict = {}

    converged = False
    it = 0
    max_iterations = 100
    negative_llhs = [10**40]

    for clone_ID in clone_dict.keys():
        bc_fitness_dict.update({clone_ID : 0. })
        bc_fitness_ci_dict.update({clone_ID : numpy.zeros(2) })

    population_mean_fitness = numpy.zeros(2*max_barcode-2)

    barcoding_kappas = kappas[10::11][:max_barcode-1]

    bc_count_ratios = counts[11::11]*1./(counts[10::11][:-1])
    bc_count_ratios = bc_count_ratios[:max_barcode-1]


    num_fitnesses = inference_params.num_fitnesses
    fitness_grid = inference_params.fitness_grid[ENVIRONMENT]*inference_params.scale_fitness_per_interval[ENVIRONMENT]

    bc_fitness_dict = {}
    bc_fitness_ci_dict = {}

    total_intervals = inference_params.BARCODING_INTERVALS_PER_EPOCH*(max_barcode -1)

    # initialize clone fitnesses to zero

    current_clone_fitnesses = numpy.zeros( (len(clone_dict.keys())) )
    current_clone_fitness_CI_lower = numpy.zeros( (len(clone_dict.keys())) )
    current_clone_fitness_CI_upper = numpy.zeros( (len(clone_dict.keys())) )
    # initialize up matrices fo clone counts before and after barcoding
    clone_counts_before = numpy.ones( (len(clone_dict.keys()),total_intervals) )
    clone_counts_after = numpy.ones( (len(clone_dict.keys()),total_intervals) )
    clone_freqs_before = numpy.ones( (len(clone_dict.keys()),total_intervals) )
    clone_freqs_after = numpy.ones( (len(clone_dict.keys()),total_intervals) )

    for i,key in enumerate(clone_dict.keys()):
        lineage = clone_dict[key]

        clone_counts_before[i] = (lineage.freqs*counts)[10::11][:-1][:max_barcode-1]
        clone_counts_after[i] = (lineage.freqs*counts)[11::11][:max_barcode-1]

        clone_freqs_before[i] = (lineage.freqs)[10::11][:-1][:max_barcode-1]
        clone_freqs_after[i] = (lineage.freqs)[11::11][:max_barcode-1]

    # initialize grid containing expectations of frequencies given fitness vectors
    expectation_grid = numpy.ones( (len(clone_dict.keys()),total_intervals,len(fitness_grid)) )

    #initialize mask for low frequency counts
    mask = clone_counts_before > inference_params.threshold_lineage_size

    #now for the coordinate descent

    #iterate until convergence or until max_iterations have been completed
    it = -1
    while it < max_iterations:
        it += 1
        #loop through clones
        for this_clone_index, this_clone in enumerate(clone_dict.keys()):
            if sum(mask[this_clone_index]) > 0:
                other_clones = numpy.ones(len(clone_dict.keys()),dtype = bool)
                other_clones[this_clone_index] = False

                other_lineages_unnormalized_frequencies = numpy.einsum('ij,i->ij',clone_freqs_before[other_clones],numpy.exp(current_clone_fitnesses[other_clones]))
                other_lineages_total_unnormalized_frequency = numpy.sum(clone_freqs_before[other_clones].T * numpy.exp(current_clone_fitnesses[other_clones]),axis = 1)
                this_lineage_unnormalized_frequency = numpy.outer(clone_freqs_before[this_clone_index],numpy.exp(fitness_grid))
                total_unnormalized_frequency = numpy.outer(other_lineages_total_unnormalized_frequency,numpy.ones(len(fitness_grid))) + this_lineage_unnormalized_frequency

                expectation_grid[other_clones] = numpy.repeat(other_lineages_unnormalized_frequencies[:, :, numpy.newaxis], len(fitness_grid), axis=2)
                expectation_grid[this_clone_index] = this_lineage_unnormalized_frequency

                expectation_grid = expectation_grid/total_unnormalized_frequency
                expectation_grid = numpy.einsum('ijk,j->ijk', expectation_grid, counts[11::11][:max_barcode-1])

                expectation_grid[expectation_grid < 1] = 1
                clone_counts_after[clone_counts_after<1] = 1

                #calculate negative log likelihoods
                llhs = (numpy.sqrt(expectation_grid) - numpy.sqrt(clone_counts_after[:,:,numpy.newaxis]))**2
                llhs = numpy.einsum('ijk,j->ijk',llhs,1./barcoding_kappas)
                llhs += 0.75* numpy.log(clone_counts_after[:,:,numpy.newaxis])
                llhs += -0.25* numpy.log(expectation_grid)
                llhs += 0.5 * numpy.log(4*numpy.pi*barcoding_kappas[numpy.newaxis,:,numpy.newaxis])


                llhs = numpy.einsum('ijk,ij->ijk',llhs,mask)

                llhs = numpy.einsum('ijk->k',llhs)

                current_clone_fitnesses[this_clone_index] = fitness_grid[llhs == min(llhs)][0]
                fitness_CI_range = fitness_grid[llhs < 2+ min(llhs)]
                current_clone_fitness_CI_lower[this_clone_index] = fitness_CI_range[0]
                current_clone_fitness_CI_upper[this_clone_index] = fitness_CI_range[-1]

                if this_clone == "":
                    # pin ancestor fitness at 0
                    current_clone_fitnesses -= current_clone_fitnesses[this_clone_index]
                    current_clone_fitness_CI_lower -= current_clone_fitnesses[this_clone_index]
                    current_clone_fitness_CI_upper -= current_clone_fitnesses[this_clone_index]

                if len(fitness_grid[llhs == min(llhs)]) > 1:
                    print(len(fitness_grid[llhs == min(llhs)]), "solutions work equally well")
                    print(sum(mask[this_clone_index]))
            else:
                # if there are no good barcoding intervals,
                # look for ancestor, and copy their fitness onto this child
                ancestors = list(ancestor_list(this_clone, population_tree))
                if len(ancestors)>0:
                    parent_ID = ancestors[-1]
                else:
                    parent_ID = ''
                parent_index = [i for i, s in enumerate(clone_dict.keys()) if parent_ID == s][0]
                current_clone_fitnesses[this_clone_index] = current_clone_fitnesses[parent_index]
                current_clone_fitness_CI_lower[this_clone_index] = fitness_grid[0]
                current_clone_fitness_CI_upper[this_clone_index] = fitness_grid[-1]

        negative_llhs.append(min(llhs))
        if abs(negative_llhs[-1] - negative_llhs[-2])<0.001:
            print('Converged after', it, 'iterations.')
            print('Negative log-likelihood for each iteration:')
            print(negative_llhs)
            break
    for this_clone_index,this_clone in enumerate(clone_dict.keys()):
        ID = this_clone
        bc_fitness_dict[ID] = current_clone_fitnesses[this_clone_index]
        bc_fitness_ci_dict[ID] = [current_clone_fitness_CI_lower[this_clone_index],current_clone_fitness_CI_upper[this_clone_index]]

    with open(config.clone_data_directory+'%s-%s_fitnesses.tsv' % (population,ENVIRONMENT), 'w') as csvfile:
        out_writer = csv.writer(csvfile, delimiter='\t', quotechar='|', quoting=csv.QUOTE_MINIMAL)
        out_writer.writerow(['BC'] + ['Barcoding Fitness (per barcoding procedure)', 'CI_lower', 'CI_upper'])

        clone_list.append("")
        for ID in clone_list:
            lineage = clone_dict[ID]
            if lineage.ID == '':
                row = ['ancestor']
            else:
                row = [lineage.ID]
            row.extend([bc_fitness_dict[lineage.ID]])
            row.extend(bc_fitness_ci_dict[lineage.ID])
            out_writer.writerow(row)
Beispiel #4
0
def main(args):

    population = args.pop_name

    ENVIRONMENT = 'evolution'

    coverage_directory = config.barcode_data_root_directory + population + '/'

    count_file = glob.glob(coverage_directory + population +
                           '*read_coverage.txt')[0]
    count_dict = file_parser.parse_count_file(count_file)
    counts = numpy.asarray(
        [count_dict[key] for key in sorted(count_dict.keys())])

    kappas = file_parser.read_kappas_from_file(config.error_model_directory +
                                               population + '-kappas.tsv')

    clone_list, times, clone_dict, lineage_dict, population_tree = read_clone_data(
        population, read_fitness=False, assign_colors=False)

    max_barcode = config.max_barcode[population]

    bc_fitness_dict = {}
    bc_fitness_ci_dict = {}

    converged = False
    it = 0
    max_iterations = 100
    negative_llhs = [10**40]

    for clone_ID in clone_dict.keys():
        bc_fitness_dict.update({clone_ID: 0.})
        bc_fitness_ci_dict.update({clone_ID: numpy.zeros(2)})

    population_mean_fitness = numpy.zeros(
        inference_params.INTERVALS_PER_EPOCH * max_barcode)

    evolution_kappas = []
    evolution_count_ratios = []
    evolution_total_counts = []

    for epoch in range(0, max_barcode):

        begin = inference_params.INTERVALS_PER_EPOCH * epoch
        end = inference_params.INTERVALS_PER_EPOCH * epoch + inference_params.EVOLUTION_INTERVALS_PER_EPOCH

        evolution_kappas.extend(kappas[begin:end])
        evolution_count_ratios.extend(1. * counts[begin + 1:end + 1] /
                                      counts[begin:end])
        evolution_total_counts.extend(1. * counts[begin + 1:end + 1])

    evolution_kappas = numpy.asarray(evolution_kappas)
    evolution_count_ratios = numpy.asarray(evolution_count_ratios)
    evolution_total_counts = numpy.asarray(evolution_total_counts)

    num_fitnesses = inference_params.num_fitnesses
    fitness_grid = inference_params.fitness_grid[
        ENVIRONMENT] * inference_params.scale_fitness_per_interval[ENVIRONMENT]

    total_intervals = inference_params.EVOLUTION_INTERVALS_PER_EPOCH * max_barcode

    # initialize clone fitnesses to zero

    current_clone_fitnesses = numpy.zeros((len(clone_dict.keys())))
    current_clone_fitness_CI_lower = numpy.zeros((len(clone_dict.keys())))
    current_clone_fitness_CI_upper = numpy.zeros((len(clone_dict.keys())))
    # initialize up matrices fo clone counts before and after barcoding
    clone_counts_before = numpy.ones((len(clone_dict.keys()), total_intervals))
    clone_counts_after = numpy.ones((len(clone_dict.keys()), total_intervals))
    clone_freqs_before = numpy.ones((len(clone_dict.keys()), total_intervals))
    clone_freqs_after = numpy.ones((len(clone_dict.keys()), total_intervals))

    # for i in range(0,len(clone_dict.keys())):
    for i, lineage in enumerate(clone_dict.values()):
        for epoch in range(0, max_barcode):
            copy_begin = inference_params.EVOLUTION_INTERVALS_PER_EPOCH * epoch
            copy_end = inference_params.EVOLUTION_INTERVALS_PER_EPOCH * (
                epoch + 1)

            begin = inference_params.INTERVALS_PER_EPOCH * epoch
            end = begin + inference_params.EVOLUTION_INTERVALS_PER_EPOCH

            clone_counts_before[i][copy_begin:copy_end] = (lineage.freqs *
                                                           counts)[begin:end]
            clone_counts_after[i][copy_begin:copy_end] = (lineage.freqs *
                                                          counts)[begin +
                                                                  1:end + 1]

            clone_freqs_before[i][copy_begin:copy_end] = (
                lineage.freqs)[begin:end]
            clone_freqs_after[i][copy_begin:copy_end] = (lineage.freqs)[begin +
                                                                        1:end +
                                                                        1]

    # initialize grid containing expectations of frequencies given fitness vectors
    expectation_grid = numpy.ones(
        (len(clone_dict.keys()), total_intervals, len(fitness_grid)))

    #initialize mask for low frequency counts
    mask = clone_counts_before > inference_params.threshold_lineage_size

    #now for the coordinate descent

    #iterate until convergence or until max_iterations have been completed
    it = -1

    while it < max_iterations:
        it += 1
        print("iteration", it)
        #loop through clones
        for this_clone_index, this_clone in enumerate(clone_dict.keys()):
            if sum(mask[this_clone_index]) > 0:
                other_clones = numpy.ones(len(clone_dict.keys()), dtype=bool)
                other_clones[this_clone_index] = False

                other_lineages_unnormalized_frequencies = numpy.einsum(
                    'ij,i->ij', clone_freqs_before[other_clones],
                    numpy.exp(current_clone_fitnesses[other_clones]))
                other_lineages_total_unnormalized_frequency = numpy.sum(
                    clone_freqs_before[other_clones].T *
                    numpy.exp(current_clone_fitnesses[other_clones]),
                    axis=1)
                this_lineage_unnormalized_frequency = numpy.outer(
                    clone_freqs_before[this_clone_index],
                    numpy.exp(fitness_grid))
                total_unnormalized_frequency = numpy.outer(
                    other_lineages_total_unnormalized_frequency,
                    numpy.ones(len(
                        fitness_grid))) + this_lineage_unnormalized_frequency

                expectation_grid[other_clones] = numpy.repeat(
                    other_lineages_unnormalized_frequencies[:, :,
                                                            numpy.newaxis],
                    len(fitness_grid),
                    axis=2)
                expectation_grid[
                    this_clone_index] = this_lineage_unnormalized_frequency

                expectation_grid = expectation_grid / total_unnormalized_frequency
                expectation_grid = numpy.einsum('ijk,j->ijk', expectation_grid,
                                                evolution_total_counts)

                expectation_grid[expectation_grid < 1] = 1
                clone_counts_after[clone_counts_after < 1] = 1

                llhs = (numpy.sqrt(expectation_grid) -
                        numpy.sqrt(clone_counts_after[:, :, numpy.newaxis]))**2
                llhs = numpy.einsum('ijk,j->ijk', llhs, 1. / evolution_kappas)
                llhs += 0.75 * numpy.log(clone_counts_after[:, :,
                                                            numpy.newaxis])
                llhs += -0.25 * numpy.log(expectation_grid)
                llhs += 0.5 * numpy.log(
                    4 * numpy.pi *
                    evolution_kappas[numpy.newaxis, :, numpy.newaxis])

                llhs = numpy.einsum('ijk,ij->ijk', llhs, mask)

                llhs = numpy.einsum('ijk->k', llhs)

                current_clone_fitnesses[this_clone_index] = fitness_grid[
                    llhs == min(llhs)][0]
                fitness_CI_range = fitness_grid[llhs < 2 + min(llhs)]
                current_clone_fitness_CI_lower[
                    this_clone_index] = fitness_CI_range[0]
                current_clone_fitness_CI_upper[
                    this_clone_index] = fitness_CI_range[-1]

                if this_clone == "":
                    # pin ancestor fitness at 0
                    current_clone_fitnesses -= current_clone_fitnesses[
                        this_clone_index]
                    current_clone_fitness_CI_lower -= current_clone_fitnesses[
                        this_clone_index]
                    current_clone_fitness_CI_upper -= current_clone_fitnesses[
                        this_clone_index]

            else:
                current_clone_fitness_CI_lower[
                    this_clone_index] = fitness_grid[0]
                current_clone_fitness_CI_upper[
                    this_clone_index] = fitness_grid[-1]

        negative_llhs.append(min(llhs))
        if abs(negative_llhs[-1] - negative_llhs[-2]) < 0.001:
            print('Converged after', it, 'iterations.')
            print('Negative log-likelihood for each iteration:')
            print(negative_llhs)
            break

    for this_clone_index, this_clone in enumerate(clone_dict.keys()):
        ID = this_clone
        bc_fitness_dict[ID] = current_clone_fitnesses[this_clone_index]
        bc_fitness_ci_dict[ID] = [
            current_clone_fitness_CI_lower[this_clone_index],
            current_clone_fitness_CI_upper[this_clone_index]
        ]

    with open(
            config.clone_data_directory + '%s-%s_fitnesses.tsv' %
        (population, ENVIRONMENT), 'w') as csvfile:
        out_writer = csv.writer(csvfile,
                                delimiter='\t',
                                quotechar='|',
                                quoting=csv.QUOTE_MINIMAL)
        out_writer.writerow(['BC'] + [
            'Evolution Fitness (per 10-generation interval)', 'CI_lower',
            'CI_upper'
        ])

        clone_list.append("")
        for ID in clone_list:
            lineage = clone_dict[ID]
            if lineage.ID == '':
                row = ['ancestor']
            else:
                row = [lineage.ID]
            row.extend([bc_fitness_dict[lineage.ID]])
            row.extend(bc_fitness_ci_dict[lineage.ID])
            out_writer.writerow(row)