计算生物学
基因表达谱
生物
表型
基因表达
仿形(计算机编程)
基因
细胞
药物重新定位
药品
遗传学
计算机科学
药理学
操作系统
作者
Gregory P. Way,Ted Natoli,Adeniyi Adeboye,Lev Litichevskiy,Andrew Yang,Xiaodong Lü,Juan C. Caicedo,Beth A. Cimini,Kyle W. Karhohs,David J. Logan,Mohammad Hossein Rohban,Maria Kost‐Alimova,Kate Hartland,Michael Bornholdt,Niranj Chandrasekaran,Marzieh Haghighi,Shantanu Singh,Aravind Subramanian,Anne E. Carpenter
标识
DOI:10.1101/2021.10.21.465335
摘要
Summary Morphological and gene expression profiling can cost-effectively capture thousands of features in thousands of samples across perturbations by disease, mutation, or drug treatments, but it is unclear to what extent the two modalities capture overlapping versus complementary information. Here, using both the L1000 and Cell Painting assays to profile gene expression and cell morphology, respectively, we perturb A549 lung cancer cells with 1,327 small molecules from the Drug Repurposing Hub across six doses, providing a data resource including dose-response data from both assays. The two assays capture both shared and complementary information for mapping cell state. Cell Painting profiles from compound perturbations are more reproducible and show more diversity, but measure fewer distinct groups of features. Applying unsupervised and supervised methods to predict compound mechanisms of action (MOA) and gene targets, we find that the two assays provide a partially shared, but also a complementary view of drug mechanisms. Given the numerous applications of profiling in biology, our analyses provide guidance for planning experiments that profile cells for detecting distinct cell types, disease phenotypes, and response to chemical or genetic perturbations.
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