Division of Electronics and Information System Research, Daegu Gyeongbuk Institute of Science and Technology (DGIST), Techno-Jungangdaero 333, Daegu, 42988, Republic of Korea.
Sci Rep. 2022 Apr 22;12(1):6610. doi: 10.1038/s41598-022-10643-9.
To facilitate rapid determination of cellular viability caused by the inhibitory effect of drugs, numerical deep learning algorithms was used for unlabeled cell culture images captured by a light microscope as input. In this study, A549, HEK293, and NCI-H1975 cells were cultured, each of which have different molecular shapes and levels of drug responsiveness to doxorubicin (DOX). The microscopic images of these cells following exposure to various concentrations of DOX were trained with the measured value of cell viability using a colorimetric cell proliferation assay. Convolutional neural network (CNN) models for the study cells were constructed using augmented image data; the predicted cell viability using CNN models was compared to the cell viability measured by colorimetric assay. The linear relationship coefficient (r) between measured and predicted cell viability was determined as 0.94-0.95 for the three cell types. In addition, the measured and predicted IC50 values were not statistically different. When drug responsiveness was estimated using allogenic models that were trained with a different cell type, the correlation coefficient decreased to 0.004085-0.8643. Our models could be applied to label-free cells to conduct rapid and large-scale tests while minimizing cost and labor, such as high-throughput screening for drug responsiveness.
为了快速确定药物抑制作用导致的细胞活力,将数字深度学习算法用于输入未经标记的细胞培养图像,这些图像由光学显微镜捕获。在这项研究中,培养了 A549、HEK293 和 NCI-H1975 细胞,它们分别具有不同的分子形状和对多柔比星(DOX)的药物反应性水平。用比色细胞增殖测定法测量细胞活力的方法,对这些细胞暴露于不同浓度 DOX 后的微观图像进行了训练。使用增强的图像数据构建了用于研究细胞的卷积神经网络(CNN)模型;使用 CNN 模型预测的细胞活力与比色测定法测量的细胞活力进行了比较。三种细胞类型的测量值和预测值之间的线性相关系数(r)为 0.94-0.95。此外,测量值和预测值的 IC50 值没有统计学差异。当使用不同细胞类型训练的同种异体模型来估计药物反应性时,相关系数降低至 0.004085-0.8643。我们的模型可应用于无标记细胞,以在最小化成本和劳动力的情况下进行快速和大规模的测试,例如药物反应性的高通量筛选。