Abstract
We consider the structure of directed acyclic Boolean (DAB) networks as a tool for exploring
biological pathways. In a DAB network, the basic objects are binary elements and their
Boolean duals. A DAB is characterized by two kinds of pairwise relations: similarity and
prerequisite. The latter is a partial order relation, namely, the on-status of one element is
necessary for the on-status of another element. A DAB network is uniquely determined by
the state space of its elements. We arrange samples from the state space of a DAB network
in a binary array and introduce a random mechanism of measurement error. Our inference
strategy consists of two stages. First, we consider each pair of elements and try to identify
their most likely relation. In the meantime, we assign a score, s-p-score, to this relation.
Second, we rank the s-p-scores obtained from the first stage. We expect that relations with
smaller s-p-scores are more likely to be true, and those with larger s-p-scores are more
likely to be false. The key idea is the definition of s-scores (referring to similarity), p-scores
(referring to prerequisite), and s-p-scores. As with classical statistical tests, control of false
negatives and false positives are our primary concerns. We illustrate the method by a simulated
example, the classical arginine biosynthetic pathway, and show some exploratory
results on a published microarray expression dataset of yeast
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