A Decade in a Systematic Review: The Evolution and Impact of Cell Painting

Srijit Seal, Maria-Anna Trapotsi, Ola Spjuth, Shantanu Singh, Jordi Carreras-Puigvert, Nigel Greene, Andreas Bender, Anne E. Carpenter
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Abstract

High-content image-based assays have fueled significant discoveries in the life sciences in the past decade (2013-2023), including novel insights into disease etiology, mechanism of action, new therapeutics, and toxicology predictions. Here, we systematically review the substantial methodological advancements and applications of Cell Painting. Advancements include improvements in the Cell Painting protocol, assay adaptations for different types of perturbations and applications, and improved methodologies for feature extraction, quality control, and batch effect correction. Moreover, machine learning methods recently surpassed classical approaches in their ability to extract biologically useful information from Cell Painting images. Cell Painting data have been used alone or in combination with other -omics data to decipher the mechanism of action of a compound, its toxicity profile, and many other biological effects. Overall, key methodological advances have expanded the ability of Cell Painting to capture cellular responses to various perturbations. Future advances will likely lie in advancing computational and experimental techniques, developing new publicly available datasets, and integrating them with other high-content data types.
十年系统回顾:细胞绘画的演变与影响
在过去十年(2013-2023 年)中,基于高内容图像的检测方法推动了生命科学领域的重大发现,包括对疾病病因学、作用机制、新疗法和毒理学预测的新见解。在此,我们系统地回顾了细胞绘画在方法学方面的重大进展和应用。这些进展包括细胞绘制方案的改进、针对不同类型扰动和应用的检测调整,以及特征提取、质量控制和批次效应校正方法的改进。此外,机器学习方法最近在从细胞绘制图像中提取生物有用信息的能力上超越了传统方法。细胞绘画数据可单独使用,也可与其他组学数据结合使用,以破译化合物的作用机制、毒性特征和许多其他生物效应。总之,关键方法学的进步扩大了细胞绘制捕捉细胞对各种干扰的反应的能力。未来的进步可能在于提高计算和实验技术,开发新的公开可用数据集,并将它们与其他高内容数据类型整合在一起。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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