چکیده
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Pathogens infect host organisms by exploiting host cellular mechanisms and evading host
defence mechanisms through molecular pathogen–host interactions (PHIs). Discovering
new interactions between pathogen and human proteins is very crucial in understanding
the infection mechanisms. By analysing interaction networks, the interactions responsible
for infectious diseases can be detected and new drugs disabling these interactions can be
delivered. In this paper, we propose a method based on Bayesian matrix factorization for
predicting PHIs along with a projection-based technique and combine the results by employing
an ensemble method. Furthermore, two features, target similarity and attacker similarity,
are utilized for the
first time in the literature for PHI prediction. The advantages of the
proposed methods are two folds. Firstly, they relieve the need for negative samples which is
significant since there is no available dataset providing negative samples for most of the
pathogenic systems. Secondly, the experiments demonstrate that the proposed approach
outperforms state-of-the-art methods; roughly 20% of top 50 predictions are among recently
validated interactions. So, the search space for wet-lab experiments to obtain validated
interactions can be considerably narrowed down from a huge number of possible interactions.
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