NCI Center for Modeling Cancer Development, Department of Systems Medicine and Bioengineering, The Methodist Hospital Research Institute, Weil Medical College of Cornell University, Houston, Texas, USA.
PLoS Comput Biol. 2013 Apr;9(4):e1003043. doi: 10.1371/journal.pcbi.1003043. Epub 2013 Apr 25.
Recent advances in automated high-resolution fluorescence microscopy and robotic handling have made the systematic and cost effective study of diverse morphological changes within a large population of cells possible under a variety of perturbations, e.g., drugs, compounds, metal catalysts, RNA interference (RNAi). Cell population-based studies deviate from conventional microscopy studies on a few cells, and could provide stronger statistical power for drawing experimental observations and conclusions. However, it is challenging to manually extract and quantify phenotypic changes from the large amounts of complex image data generated. Thus, bioimage informatics approaches are needed to rapidly and objectively quantify and analyze the image data. This paper provides an overview of the bioimage informatics challenges and approaches in image-based studies for drug and target discovery. The concepts and capabilities of image-based screening are first illustrated by a few practical examples investigating different kinds of phenotypic changes caEditorsused by drugs, compounds, or RNAi. The bioimage analysis approaches, including object detection, segmentation, and tracking, are then described. Subsequently, the quantitative features, phenotype identification, and multidimensional profile analysis for profiling the effects of drugs and targets are summarized. Moreover, a number of publicly available software packages for bioimage informatics are listed for further reference. It is expected that this review will help readers, including those without bioimage informatics expertise, understand the capabilities, approaches, and tools of bioimage informatics and apply them to advance their own studies.
近年来,自动化高分辨率荧光显微镜和机器人处理技术的进步使得在各种扰动下,例如药物、化合物、金属催化剂、RNA 干扰 (RNAi),对大量细胞中的各种形态变化进行系统且具有成本效益的研究成为可能。基于细胞群体的研究与对少数细胞的传统显微镜研究不同,它可以为得出实验观察和结论提供更强的统计能力。然而,从大量复杂的图像数据中手动提取和量化表型变化具有挑战性。因此,需要生物图像信息学方法来快速、客观地定量和分析图像数据。本文概述了用于药物和靶标发现的基于图像的研究中的生物图像信息学挑战和方法。首先通过一些实际示例说明了基于图像的筛选的概念和功能,这些示例研究了不同类型的表型变化,这些变化是由药物、化合物或 RNAi 引起的。然后描述了生物图像分析方法,包括目标检测、分割和跟踪。随后,总结了用于分析药物和靶标作用的定量特征、表型识别和多维轮廓分析。此外,还列出了许多用于生物图像信息学的公开可用软件包,以供进一步参考。预计这篇综述将帮助包括没有生物图像信息学专业知识的读者在内的读者了解生物图像信息学的功能、方法和工具,并应用它们来推进自己的研究。