Journal article
Knowledge-Transfer learning for prediction of matrix metalloprotease substrate-cleavage sites
Y Wang, J Song, TT Marquez-Lago, A Leier, C Li, T Lithgow, GI Webb, HB Shen
Scientific Reports | Published : 2017
Abstract
Matrix Metalloproteases (MMPs) are an important family of proteases that play crucial roles in key cellular and disease processes. Therefore, MMPs constitute important targets for drug design, development and delivery. Advanced proteomic technologies have identified type-specific target substrates; however, the complete repertoire of MMP substrates remains uncharacterized. Indeed, computational prediction of substrate-cleavage sites associated with MMPs is a challenging problem. This holds especially true when considering MMPs with few experimentally verified cleavage sites, such as for MMP-2,-3,-7, and-8. To fill this gap, we propose a new knowledge-Transfer computational framework which ef..
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Grants
Awarded by National Health and Medical Research Council