Beijing Shijitan Hospital of Capital Medical University, Beijing 100038, China.
Laboratory of Cell Engineering, Institute of Biotechnology, Research Unit of Cell Death Mechanism, Chinese Academy of Medical Science, 2021RU008, Beijing 100071, China.
J Mol Cell Biol. 2022 Nov 26;14(6). doi: 10.1093/jmcb/mjac044.
Edited by Luonan Chen Whereas biochemical markers are available for most types of cell death, current studies on non-autonomous cell death by entosis rely strictly on the identification of cell-in-cell structures (CICs), a unique morphological readout that can only be quantified manually at present. Moreover, the manual CIC quantification is generally over-simplified as CIC counts, which represents a major hurdle against profound mechanistic investigations. In this study, we take advantage of artificial intelligence technology to develop an automatic identification method for CICs (AIM-CICs), which performs comprehensive CIC analysis in an automated and efficient way. The AIM-CICs, developed on the algorithm of convolutional neural network, can not only differentiate between CICs and non-CICs (the area under the receiver operating characteristic curve (AUC) > 0.99), but also accurately categorize CICs into five subclasses based on CIC stages and cell number involved (AUC > 0.97 for all subclasses). The application of AIM-CICs would systemically fuel research on CIC-mediated cell death, such as high-throughput screening.
由 Luonan Chen 编辑 虽然生化标志物可用于大多数类型的细胞死亡,但目前关于细胞吞噬作用的非自主细胞死亡的研究严格依赖于细胞 - 细胞结构(CICs)的鉴定,这是一种独特的形态学读出,目前只能手动定量。此外,手动 CIC 定量通常过于简化为 CIC 计数,这是对深入的机制研究的主要障碍。在这项研究中,我们利用人工智能技术开发了一种用于 CIC 的自动识别方法(AIM-CICs),该方法以自动化和高效的方式进行全面的 CIC 分析。基于卷积神经网络算法开发的 AIM-CICs 不仅可以区分 CIC 和非 CIC(接受者操作特征曲线下的面积(AUC)> 0.99),还可以根据 CIC 阶段和涉及的细胞数量准确地将 CIC 分为五类(所有子类的 AUC> 0.97)。AIM-CIC 的应用将系统地推动 CIC 介导的细胞死亡研究,例如高通量筛选。