Convolutional Neural Networks for Cellular Drug Response Prediction Using Immunofluorescence Images of Intracellular Actin Filament Networks

R. W. Oei, Jiewen Zhang, Jin Zhong, Guanqun Hou, Nuntawat Chanajarunvit, N. Xu
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Abstract

Actin cytoskeleton has been identified as a potential therapeutic target for cancer. Therefore, to identify cell responses to such chemical agents has been an essential part in the past studies, which is often measured visually. This kind of visual recognition task currently is performed by human experts, which poses a great challenge since the features can hardly be detected using only human eyes. This article presents the application of convolutional neural networks (CNNs) in classifying human breast epithelial cells based on different dosages of drug exposure. MCF-10A cell line was chosen for the experiments and was treated with 90 nM and 400 nM cytochalasin D. The CNNs were evaluated on a large immunofluorescence images of intracellular actin filament networks captured after the exposure of different drug concentrations. During the image pre-processing, we implemented image enhancement and data augmentation approaches. Two well-known CNNs, VGG-16 and ResNet-50, were trained with or without transfer learning. The study revealed that the CNN performed better in the classification task compared to human experts. In conclusion, ResN et-50 with transfer learning achieved the best performance.
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基于细胞内肌动蛋白丝网络免疫荧光图像的卷积神经网络药物反应预测
肌动蛋白细胞骨架已被确定为癌症的潜在治疗靶点。因此,在过去的研究中,识别细胞对这些化学试剂的反应一直是一个重要的部分,这通常是目测的。这种视觉识别任务目前是由人类专家来完成的,这是一个很大的挑战,因为仅凭人眼很难检测到这些特征。本文介绍了卷积神经网络(cnn)在基于不同剂量药物暴露的人类乳腺上皮细胞分类中的应用。实验选择MCF-10A细胞系,分别用90 nM和400 nM的细胞松弛素d处理,通过不同浓度药物暴露后捕获的细胞内肌动蛋白丝网络的大免疫荧光图像来评估cnn。在图像预处理过程中,我们实现了图像增强和数据增强方法。两个著名的cnn, VGG-16和ResNet-50,使用或不使用迁移学习进行训练。研究表明,与人类专家相比,CNN在分类任务中的表现更好。综上所述,带迁移学习的ResN et-50的学习效果最好。
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