Department of Biological Sciences, Columbia University, New York, New York 10027, United States.
Department of Chemistry, Columbia University, New York, New York 10027, United States.
ACS Chem Biol. 2022 Mar 18;17(3):654-660. doi: 10.1021/acschembio.1c00953. Epub 2022 Mar 1.
Determining cell death mechanisms occurring in patient and animal tissues is a longstanding goal that requires suitable biomarkers and accurate quantification. However, effective methods remain elusive. To develop more powerful and unbiased analytic frameworks, we developed a machine learning approach for automated cell death classification. Image sets were collected of HT-1080 fibrosarcoma cells undergoing ferroptosis or apoptosis and stained with an anti-transferrin receptor 1 (TfR1) antibody, together with nuclear and F-actin staining. Features were extracted using high-content-analysis software, and a classifier was constructed by fitting a multinomial logistic lasso regression model to the data. The prediction accuracy of the classifier within three classes (control, ferroptosis, apoptosis) was 93%. Thus, TfR1 staining, combined with nuclear and F-actin staining, can reliably detect both apoptotic and ferroptotis cells when cell features are analyzed in an unbiased manner using machine learning, providing a method for unbiased analysis of modes of cell death.
确定发生在患者和动物组织中的细胞死亡机制是一个长期目标,需要合适的生物标志物和准确的定量分析。然而,目前仍然缺乏有效的方法。为了开发更强大和无偏倚的分析框架,我们开发了一种用于自动细胞死亡分类的机器学习方法。收集了 HT-1080 纤维肉瘤细胞发生铁死亡或细胞凋亡的图像集,并使用抗转铁蛋白受体 1(TfR1)抗体与核和 F-肌动蛋白染色相结合进行染色。使用高内涵分析软件提取特征,并通过将多项逻辑斯谛套索回归模型拟合到数据中构建分类器。分类器在三个类别(对照、铁死亡、凋亡)中的预测准确率为 93%。因此,当使用机器学习以无偏倚的方式分析细胞特征时,TfR1 染色与核和 F-肌动蛋白染色相结合,可以可靠地检测凋亡和铁死亡细胞,为细胞死亡方式的无偏倚分析提供了一种方法。