Broad Institute of MIT and Harvard, United States.
Broad Institute of MIT and Harvard, United States.
Curr Opin Chem Biol. 2021 Dec;65:9-17. doi: 10.1016/j.cbpa.2021.04.001. Epub 2021 May 21.
A cell's phenotype is the culmination of several cellular processes through a complex network of molecular interactions that ultimately result in a unique morphological signature. Visual cell phenotyping is the characterization and quantification of these observable cellular traits in images. Recently, cellular phenotyping has undergone a massive overhaul in terms of scale, resolution, and throughput, which is attributable to advances across electronic, optical, and chemical technologies for imaging cells. Coupled with the rapid acceleration of deep learning-based computational tools, these advances have opened up new avenues for innovation across a wide variety of high-throughput cell biology applications. Here, we review applications wherein deep learning is powering the recognition, profiling, and prediction of visual phenotypes to answer important biological questions. As the complexity and scale of imaging assays increase, deep learning offers computational solutions to elucidate the details of previously unexplored cellular phenotypes.
细胞表型是细胞通过复杂的分子相互作用网络进行的多种细胞过程的综合表现,最终导致独特的形态特征。可视化细胞表型是对这些可观察细胞特征进行的特征描述和量化。最近,细胞表型在规模、分辨率和通量方面发生了巨大的改变,这归因于电子、光学和化学细胞成像技术的进步。加上基于深度学习的计算工具的快速加速,这些进步为各种高通量细胞生物学应用的创新开辟了新途径。在这里,我们回顾了深度学习在识别、分析和预测可视化表型以回答重要生物学问题方面的应用。随着成像分析的复杂性和规模的增加,深度学习为阐明以前未知的细胞表型的细节提供了计算解决方案。