Example #1
0
def log_likelihood_of_character(
    tree: CassiopeiaTree,
    character: int,
    use_internal_character_states: bool,
    mutation_probability_function_of_time: Callable[[float], float],
    missing_probability_function_of_time: Callable[[float], float],
    stochastic_missing_probability: float,
    implicit_root_branch_length: float,
) -> float:
    """Calculates the log likelihood of a given character on the tree.

    Calculates the log likelihood of a tree given the states at a given
    character in the leaves using Felsenstein's Pruning Algorithm, which sets
    up a recursive relation between the likelihoods of states at nodes for this
    character. The likelihood L(s, n) at a given state s at a given node n is:

    L(s, n) = Π_{n'}(Σ_{s'}(P(s'|s) * L(s', n')))

    for all n' that are children of n, and s' in the state space, with
    P(s'|s) being the transition probability from s to s'. That is,
    the likelihood at a given state at a given node is the product of
    the likelihoods of the states at this character at the children scaled by
    the probability of the current state transitioning to those states. This
    includes the missing state, as specified by `tree.missing_state_indicator`.

    We assume here that mutations are irreversible. Once a character mutates to
    a certain state that character cannot mutate again, with the exception of
    the fact that any non-missing state can mutate to a missing state.
    `mutation_probability_function_of_time` is expected to be a function that
    determine the probability of a mutation occuring given an amount of time.
    To determine the probability of acquiring a given (non-missing) state once
    a mutation occurs, the priors of the tree are used. Likewise,
    `missing_probability_function_of_time` determines the the probability of a
    missing data event occuring given an amount of time.

    The user can choose to use the character states annotated at internal
    nodes. If these are not used, then the likelihood is marginalized over
    all possible internal state characters. If the actual internal states
    are not provided, then the root is assumed to have the unmutated state
    at each character. Additionally, it is assumed that there is a single
    branch leading from the root that represents the roots' lifetime. If
    this branch does not exist and `use_internal_character_states` is set
    to False, then this branch is added with branch length equal to the
    average branch length of this tree.

    Args:
        tree: The tree on which to calculate the likelihood
        character: The index of the character to calculate the likelihood of
        use_internal_character_states: Indicates if internal node
            character states should be assumed to be specified exactly
        mutation_probability_function_of_time: The function defining the
            probability of a lineage acquiring a mutation within a given time
        missing_probability_function_of_time: The function defining the
            probability of a lineage acquiring heritable missing data within a
            given time
        stochastic_missing_probability: The probability that a cell/character
            pair acquires stochastic missing data at the end of the lineage
        implicit_root_branch_length: The length of the implicit root branch.
            Used if the implicit root needs to be added

    Returns:
        The log likelihood of the tree on one character
    """

    # This dictionary uses a nested dictionary structure. Each node is mapped
    # to a dictionary storing the likelihood for each possible state
    # (states that have non-0 likelihood)
    likelihoods_at_nodes = {}

    # Perform a DFS to propagate the likelihood from the leaves
    for n in tree.depth_first_traverse_nodes(postorder=True):
        state_at_n = tree.get_character_states(n)
        # If states are observed, their likelihoods are set to 1
        if tree.is_leaf(n):
            likelihoods_at_nodes[n] = {state_at_n[character]: 0}
            continue

        possible_states = []
        # If internal character states are to be used, then the likelihood
        # for all other states are ignored. Otherwise, marginalize over
        # only states that do not break irreversibility, as all states that
        # do have likelihood of 0
        if use_internal_character_states:
            possible_states = [state_at_n[character]]
        else:
            child_possible_states = []
            for c in [
                    set(likelihoods_at_nodes[child])
                    for child in tree.children(n)
            ]:
                if tree.missing_state_indicator not in c and "&" not in c:
                    child_possible_states.append(c)
            # "&" stands in for any non-missing state (including uncut), and
            # is a possible state when all children are missing, as any
            # state could have occurred at the parent if all missing data
            # events occurred independently. Used to avoid marginalizing
            # over the entire state space.
            if child_possible_states == []:
                possible_states = [
                    "&",
                    tree.missing_state_indicator,
                ]
            else:
                possible_states = list(
                    set.intersection(*child_possible_states))
                if 0 not in possible_states:
                    possible_states.append(0)

        # This stores the likelihood of each possible state at the current node
        likelihoods_per_state_at_n = {}

        # We calculate the likelihood of the states at the current node
        # according to the recurrence relation. For each state, we marginalize
        # over the likelihoods of the states that it could transition to in the
        # daughter nodes
        for s in possible_states:
            likelihood_for_s = 0
            for child in tree.children(n):
                likelihoods_for_s_marginalize_over_s_ = []
                for s_ in likelihoods_at_nodes[child]:
                    likelihood_s_ = (log_transition_probability(
                        tree,
                        character,
                        s,
                        s_,
                        tree.get_branch_length(n, child),
                        mutation_probability_function_of_time,
                        missing_probability_function_of_time,
                    ) + likelihoods_at_nodes[child][s_])
                    # Here we take into account the probability of
                    # stochastic missing data
                    if tree.is_leaf(child):
                        if (s_ == tree.missing_state_indicator
                                and s != tree.missing_state_indicator):
                            likelihood_s_ = np.log(
                                np.exp(likelihood_s_) +
                                (1 - missing_probability_function_of_time(
                                    tree.get_branch_length(n, child))) *
                                stochastic_missing_probability)
                        if s_ != tree.missing_state_indicator:
                            likelihood_s_ += np.log(
                                1 - stochastic_missing_probability)
                    likelihoods_for_s_marginalize_over_s_.append(likelihood_s_)
                likelihood_for_s += scipy.special.logsumexp(
                    np.array(likelihoods_for_s_marginalize_over_s_))
            likelihoods_per_state_at_n[s] = likelihood_for_s

        likelihoods_at_nodes[n] = likelihoods_per_state_at_n

    # If we are not to use the internal state annotations explicitly,
    # then we assume an implicit root where each state is the uncut state (0)
    # Thus, we marginalize over the transition from 0 in the implicit root
    # to all non-0 states in its child
    if not use_internal_character_states:
        # If the implicit root does not exist in the tree, then we impose it,
        # with the length of the branch being specified as
        # `implicit_root_branch_length`. Otherwise, we just use the existing
        # root with a singleton child as the implicit root
        if len(tree.children(tree.root)) != 1:

            likelihood_contribution_from_each_root_state = [
                log_transition_probability(
                    tree,
                    character,
                    0,
                    s_,
                    implicit_root_branch_length,
                    mutation_probability_function_of_time,
                    missing_probability_function_of_time,
                ) + likelihoods_at_nodes[tree.root][s_]
                for s_ in likelihoods_at_nodes[tree.root]
            ]
            likelihood_at_implicit_root = scipy.special.logsumexp(
                likelihood_contribution_from_each_root_state)

            return likelihood_at_implicit_root

        else:
            # Here we account for the edge case in which all of the leaves are
            # missing, in which case the root will have "&" in place of 0. The
            # likelihood at "&" will have the same likelihood as 0 based on the
            # transition rules regarding "&". As "&" is a placeholder when the
            # state is unknown, this can be thought of realizing "&" as 0.
            if 0 not in likelihoods_at_nodes[tree.root]:
                return likelihoods_at_nodes[tree.root]["&"]
            else:
                # Otherwise, we return the likelihood of the 0 state at the
                # existing implicit root
                return likelihoods_at_nodes[tree.root][0]

    # If we use the internal state annotations explicitly, then we return
    # the likelihood of the state annotated at this character at the root
    else:
        return list(likelihoods_at_nodes[tree.root].values())[0]
Example #2
0
def calculate_parsimony(
    tree: CassiopeiaTree,
    infer_ancestral_characters: bool = False,
    treat_missing_as_mutation: bool = False,
) -> int:
    """
    Calculates the number of mutations that have occurred on a tree.

    Calculates the parsimony, defined as the number of character/state
    mutations that occur on edges of the tree, from the character state
    annotations at the nodes. A mutation is said to have occurred on an
    edge if a state is present at a character at the child node and this
    state is not in the parent node.

    If `infer_ancestral_characters` is set to True, then the internal
    nodes' character states are inferred by Camin-Sokal Parsimony from the
    current character states at the leaves. Use
    `tree.set_character_states_at_leaves` to use a different layer to infer
    ancestral states. Otherwise, the current annotations at the internal
    states are used. If `treat_missing_as_mutations` is set to True, then
    transitions from a non-missing state to a missing state are counted in
    the parsimony calculation. Otherwise, they are not included.

    Args:
        tree: The tree to calculate parsimony over
        infer_ancestral_characters: Whether to infer the ancestral
            characters states of the tree
        treat_missing_as_mutations: Whether to treat missing states as
            mutations

    Returns:
        The number of mutations that have occurred on the tree

    Raises:
        TreeMetricError if the tree has not been initialized or if
            a node does not have character states initialized
    """

    if infer_ancestral_characters:
        tree.reconstruct_ancestral_characters()

    parsimony = 0

    if tree.get_character_states(tree.root) == []:
        raise TreeMetricError(
            f"Character states empty at internal node. Annotate"
            " character states or infer ancestral characters by"
            " setting infer_ancestral_characters=True.")

    for u, v in tree.depth_first_traverse_edges():
        if tree.get_character_states(v) == []:
            if tree.is_leaf(v):
                raise TreeMetricError(
                    "Character states have not been initialized at leaves."
                    " Use set_character_states_at_leaves or populate_tree"
                    " with the character matrix that specifies the leaf"
                    " character states.")
            else:
                raise TreeMetricError(
                    f"Character states empty at internal node. Annotate"
                    " character states or infer ancestral characters by"
                    " setting infer_ancestral_characters=True.")

        parsimony += len(
            tree.get_mutations_along_edge(u, v, treat_missing_as_mutation))

    return parsimony