高含量筛选
表型筛选
计算生物学
药物发现
表型
选择(遗传算法)
高通量筛选
计算机科学
药品
生物
细胞
生物信息学
人工智能
遗传学
基因
药理学
作者
Jungseog Kang,Chien-Hsiang Hsu,Qi Wu,Shanshan Liu,Adam D Coster,Bruce A. Posner,Steven J. Altschuler,Lani F. Wu
摘要
High-content, image-based screens enable the identification of compounds that induce cellular responses similar to those of known drugs but through different chemical structures or targets. A central challenge in designing phenotypic screens is choosing suitable imaging biomarkers. Here we present a method for systematically identifying optimal reporter cell lines for annotating compound libraries (ORACLs), whose phenotypic profiles most accurately classify a training set of known drugs. We generate a library of fluorescently tagged reporter cell lines, and let analytical criteria determine which among them--the ORACL--best classifies compounds into multiple, diverse drug classes. We demonstrate that an ORACL can functionally annotate large compound libraries across diverse drug classes in a single-pass screen and confirm high prediction accuracy by means of orthogonal, secondary validation assays. Our approach will increase the efficiency, scale and accuracy of phenotypic screens by maximizing their discriminatory power.
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