University of Ottawa, Department of Physics, Ottawa, Ontario, Canada.
Tampere University of Technology, Laboratory of Photonics, Tampere, Finland.
J Biomed Opt. 2018 Jun;23(6):1-7. doi: 10.1117/1.JBO.23.6.066002.
Histopathological image analysis of stained tissue slides is routinely used in tumor detection and classification. However, diagnosis requires a highly trained pathologist and can thus be time-consuming, labor-intensive, and potentially risk bias. Here, we demonstrate a potential complementary approach for diagnosis. We show that multiphoton microscopy images from unstained, reproductive tissues can be robustly classified using deep learning techniques. We fine-train four pretrained convolutional neural networks using over 200 murine tissue images based on combined second-harmonic generation and two-photon excitation fluorescence contrast, to classify the tissues either as healthy or associated with high-grade serous carcinoma with over 95% sensitivity and 97% specificity. Our approach shows promise for applications involving automated disease diagnosis. It could also be readily applied to other tissues, diseases, and related classification problems.
对染色组织切片的组织病理学图像分析通常用于肿瘤检测和分类。然而,诊断需要高度训练有素的病理学家,因此可能会耗费大量时间、劳力,并且存在潜在的偏见风险。在这里,我们展示了一种用于诊断的潜在互补方法。我们证明,使用深度学习技术可以对未染色的生殖组织的多光子显微镜图像进行稳健分类。我们使用超过 200 张基于二次谐波产生和双光子激发荧光对比的鼠组织图像对四个预先训练的卷积神经网络进行微调,以将组织分类为健康或与高级别浆液性癌相关,其灵敏度超过 95%,特异性超过 97%。我们的方法为涉及自动疾病诊断的应用提供了希望。它也可以很容易地应用于其他组织、疾病和相关分类问题。