A binary matrix factorization algorithm for protein complex prediction
S Tu, R Chen, L Xu - Proteome Science, 2011 - Springer
S Tu, R Chen, L Xu
Proteome Science, 2011•SpringerBackground Identifying biologically relevant protein complexes from a large protein-protein
interaction (PPI) network, is essential to understand the organization of biological systems.
However, high-throughput experimental techniques that can produce a large amount of PPIs
are known to yield non-negligible rates of false-positives and false-negatives, making the
protein complexes difficult to be identified. Results We propose a binary matrix factorization
(BMF) algorithm under the Bayesian Ying-Yang (BYY) harmony learning, to detect protein …
interaction (PPI) network, is essential to understand the organization of biological systems.
However, high-throughput experimental techniques that can produce a large amount of PPIs
are known to yield non-negligible rates of false-positives and false-negatives, making the
protein complexes difficult to be identified. Results We propose a binary matrix factorization
(BMF) algorithm under the Bayesian Ying-Yang (BYY) harmony learning, to detect protein …
Background
Identifying biologically relevant protein complexes from a large protein-protein interaction (PPI) network, is essential to understand the organization of biological systems. However, high-throughput experimental techniques that can produce a large amount of PPIs are known to yield non-negligible rates of false-positives and false-negatives, making the protein complexes difficult to be identified.
Results
We propose a binary matrix factorization (BMF) algorithm under the Bayesian Ying-Yang (BYY) harmony learning, to detect protein complexes by clustering the proteins which share similar interactions through factorizing the binary adjacent matrix of a PPI network. The proposed BYY-BMF algorithm automatically determines the cluster number while this number is pre-given for most existing BMF algorithms. Also, BYY-BMF’s clustering results does not depend on any parameters or thresholds, unlike the Markov Cluster Algorithm (MCL) that relies on a so-called inflation parameter. On synthetic PPI networks, the predictions evaluated by the known annotated complexes indicate that BYY-BMF is more robust than MCL for most cases. On real PPI networks from the MIPS and DIP databases, BYY-BMF obtains a better balanced prediction accuracies than MCL and a spectral analysis method, while MCL has its own advantages, e.g., with good separation values.
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