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Comparative Study of Machine-Learning and Chemometric Tools for Analysis of In-Vivo High-Throughput Screening Data
Author(s) -
Kirk Simmons,
John B. Kinney,
A. J. Owens,
D. A. KLEIER,
Karen M. Bloch,
Dave Argentar,
Alicia Walsh,
Ganesh Vaidyanathan
Publication year - 2008
Publication title -
journal of chemical information and modeling
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.24
H-Index - 160
eISSN - 1549-960X
pISSN - 1549-9596
DOI - 10.1021/ci800142d
Subject(s) - computer science , throughput , machine learning , high throughput screening , drug discovery , artificial intelligence , mechanism (biology) , data mining , bioinformatics , biology , telecommunications , philosophy , epistemology , wireless
High-throughput screening (HTS) has become a central tool of many pharmaceutical and crop-protection discovery operations. If HTS screening is carried out at the level of the intact organism, as is commonly done in crop protection, this strategy has the potential of uncovering a completely new mechanism of actions. The challenge in running a cost-effective HTS operation is to identify ways in which to improve the overall success rate in discovering new biologically active compounds. To this end, we describe our efforts directed at making full use of the data stream arising from HTS. This paper describes a comparative study in which several machine learning and chemometric methodologies were used to develop classifiers on the same data sets derived from in vivo HTS campaigns and their predictive performances compared in terms of false negative and false positive error profiles.

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