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(Reference retrieved automatically from Web of Science through information on FAPESP grant and its corresponding number as mentioned in the publication by the authors.)

Prediction of Druggable Proteins Using Machine Learning and Systems Biology: A Mini-Review

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Author(s):
Kandoi, Gaurav [1] ; Acencio, Marcio L. [2] ; Lemke, Ney [2]
Total Authors: 3
Affiliation:
[1] Iowa State Univ, Dept Elect & Comp Engn, Ames, IA 50011 - USA
[2] UNESP Sao Paulo State Univ, Inst Biosci Botucatu, Dept Phys & Biophys, Botucatu, SP - Brazil
Total Affiliations: 2
Document type: Review article
Source: FRONTIERS IN PHYSIOLOGY; v. 6, DEC 8 2015.
Web of Science Citations: 7
Abstract

The emergence of -omics technologies has allowed the collection of vast amounts of data on biological systems. Although, the pace of such collection has been exponential, the impact of these data remains small on many critical biomedical applications such as drug development. Limited resources, high costs, and low hit-to-lead ratio have led researchers to search for more cost effective methodologies. A possible alternative is to incorporate computational methods of potential drug target prediction early during drug discovery workflow. Computational methods based on systems approaches have the advantage of taking into account the global properties of a molecule not limited to its sequence, structure or function. Machine learning techniques are powerful tools that can extract relevant information from massive and noisy data sets. In recent years the scientific community has explored the combined power of these fields to propose increasingly accurate and low cost methods to propose interesting drug targets. In this mini-review, we describe promising approaches based on the simultaneous use of systems biology and machine learning to access gene and protein druggability. Moreover, we discuss the state-of-the-art of this emerging and interdisciplinary field, discussing data sources, algorithms and the performance of the different methodologies. Finally, we indicate interesting avenues of research and some remaining open challenges. (AU)

FAPESP's process: 13/02018-4 - Machine learning for molecular systems biology (MLMSB) application on synthetic lethality, conditionally essential genes and cooperative transcription
Grantee:Ney Lemke
Support Opportunities: Regular Research Grants