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A machine learning algorithm for simulating immunohistochemistry: development of SOX10 virtual IHC and evaluation on primarily melanocytic neoplasms

机译:一种模拟免疫组织化学的机器学习算法:SOX10虚拟IHC的发展和主要素细胞瘤的评价

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Immunohistochemistry (IHC) is a diagnostic technique used throughout pathology. A machine learning algorithm that could predict individual cell immunophenotype based on hematoxylin and eosin (HE) staining would save money, time, and reduce tissue consumed. Prior approaches have lacked the spatial accuracy needed for cell-specific analytical tasks. Here IHC performed on destained HE slides is used to create a neural network that is potentially capable of predicting individual cell immunophenotype. Twelve slides were stained with HE and scanned to create digital whole slide images. The HE slides were then destained, and stained with SOX10 IHC. The SOX10 IHC slides were scanned, and corresponding HE and IHC digital images were registered. Color-thresholding and machine learning techniques were applied to the registered HE and IHC images to segment 3,396,668 SOX10-negative cells and 306,166 SOX10-positive cells. The resulting segmentation was used to annotate the original HE images, and a convolutional neural network was trained to predict SOX10 nuclear staining. Sixteen thousand three hundred and nine image patches were used to train the virtual IHC (vIHC) neural network, and 1,813 image patches were used to quantitatively evaluate it. The resulting vIHC neural network achieved an area under the curve of 0.9422 in a receiver operator characteristics analysis when sorting individual nuclei. The vIHC network was applied to additional images from clinical practice, and was evaluated qualitatively by a board-certified dermatopathologist. Further work is needed to make the process more efficient and accurate for clinical use. This proof-of-concept demonstrates the feasibility of creating neural network-driven vIHC assays.
机译:免疫组织化学(IHC)是整个病理学的诊断技术。一种机器学习算法,可以预测基于苏木精和曙红(HE)染色的单个细胞免疫蛋白型将节省金钱,时间和减少消耗的组织。现有方法缺乏特定于特定于细胞的分析任务所需的空间准确性。这里IHC在攻击他的幻灯片上进行了用于创建一个神经网络,该神经网络可能能够预测单个细胞免疫蛋白型。用他染色了十二次幻灯片并扫描以创建数字整体幻灯片图像。然后他的幻灯片被剥夺,并用SOX10 IHC染色。 SOX10 IHC幻灯片被扫描,并注册了相应的HE和IHC数字图像。将颜色阈值和机器学习技术应用于登记的HE和IHC图像以分段为3,396,668 SOX10阴性细胞和306,166 SOX10阳性细胞。所得到的分割用于注释原始HE图像,训练卷积神经网络以预测SOX10核染色。使用六千三百九百个图像贴片来训练虚拟IHC(VIHC)神经网络,并且使用1,813个图像贴片来定量评估它。在分类单个核时,在接收器操作者特性分析中,所得到的VIHC神经网络在0.9422的曲线下实现了一个区域。 VIHC网络应用于来自临床实践的额外图像,并通过液板认证的皮甲病理学评估。需要进一步的工作来使过程更有效和准确地用于临床使用。这种概念证明演示了创建神经网络驱动的VIHC测定的可行性。

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