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Determining tumor cellularity in digital slides using ResNet

机译:使用ResNet测定数字幻灯片中的肿瘤细胞

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The residual cancer burden index is a, powerful prognostic factor which is used to measure neoadjuvant therapy response in invasive breast cancers. Tumor cellularity is one component of the residual cancer burden index and is currently measured manually through eyeballing. As such it is subject to inter- and intra-variability and is currently restricted to discrete values. We propose a method for automatically determining tumor cellularity in digital slides using deep learning techniques. We train a series of ResNet architectures to output both discrete and continuous values and compare our outcomes with scores acquired manually by an expert pathologist. Our configurations were validated on a dataset of image patches extracted from digital slides, each containing various degrees of tumor cellularity. Results showed that, in the case of discrete values, our models were able to distinguish between regions-of-interest containing tumor and healthy cells with over 97% test accuracy rates. Overall, we achieved 76% accuracy over four predefined tumor cellularity classes (no tumor/tumor; low. medium and high tumor cellularity). When computing tumor cellularity scores on a continuous scale, ResNet, showed good correlations with manually-identified scores, showing potential for computing reproducible scores consistent with expert opinion using deep learning techniques.
机译:残留癌症负担指数是一个强有力的预后因素,可用于测量浸润性乳腺癌中的新辅助治疗反应。肿瘤细胞性是残余癌症负荷指数的一个组成部分,目前是通过目测手动测量的。因此,它受内部和内部可变性的影响,目前仅限于离散值。我们提出了一种使用深度学习技术自动确定数字幻灯片中肿瘤细胞的方法。我们训练了一系列ResNet架构来输出离散值和连续值,并将我们的结果与专家病理学家手动获得的分数进行比较。我们的配置在从数字幻灯片中提取的图像补丁数据集上得到了验证,每个数字幻灯片都包含不同程度的肿瘤细胞。结果表明,在离散值的情况下,我们的模型能够以超过97%的测试准确率来区分包含感兴趣区域的肿瘤和健康细胞。总体而言,我们在四个预定的肿瘤细胞水平(无肿瘤/肿瘤;低,中和高肿瘤细胞水平)上达到了76%的准确度。当以连续规模计算肿瘤细胞分数时,ResNet与手动识别的分数显示出良好的相关性,显示出使用深度学习技术来计算与专家意见一致的可复制分数的潜力。

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