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Detection of Lung Cancer Lymph Node Metastases from Whole-Slide Histopathologic Images Using a Two-Step Deep Learning Approach

机译:使用两步深度学习方法检测全载组织病理学图像的肺癌淋巴结转移

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The application of deep learning for the detection of lymph node metastases on histologic slides has attracted worldwide attention due to its potentially important role in patient treatment and prognosis. Despite this attention, false-positive predictions remain problematic, particularly in the case of reactive lymphoid follicles. In this study, a novel two-step deep learning algorithm was developed to address the issue of false-positive prediction while maintaining accurate cancer detection. Three-hundred and forty-nine whole-slide lung cancer lymph node images, including 233 slides for algorithm training, 10 slides for validation, and 106 slides for evaluation, were collected. In the first step, a deep learning algorithm was used to eliminate frequently misclassified noncancerous regions (lymphoid follicles). In the second step, a deep learning classifier was developed to detect cancer cells. Using this two-step approach, errors were reduced by 36.4% on average and up to 89% in slides with reactive lymphoid follicles. Furthermore, 100% sensitivity was reached in cases of macrometastases, micrometastases, and isolated tumor cells. To reduce the small number of remaining false positives, a receiver-operating characteristic curve was created using foci size thresholds of 0.6 mm and 0.7 mm, achieving sensitivity and specificity of 79.6 k and 96.5%, and 75.5% and 98.2%, respectively. A two-step approach can be used to detect lung cancer metastases in lymph node tissue effectively and with few false positives.
机译:深度学习在组织学幻灯片上检测淋巴结转移的应用引起了患者治疗和预后潜在重要作用的全世界注意。尽管存在这种注意,假阳性预测仍然存在问题,特别是在反应性淋巴卵泡的情况下。在这项研究中,开发了一种新的两步深度学习算法,以解决伪阳性预测的问题,同时保持准确的癌症检测。收集了三百四十九个全载肺癌淋巴结图像,包括233个算法训练的载玻片,用于验证的10个幻灯片和106次值进行评估。在第一步中,使用深度学习算法来消除经常错误分类的非癌症(淋巴卵泡)。在第二步中,开发了深度学习分类以检测癌细胞。使用这种两步的方法,误差平均减少了36.4%,具有反应性淋巴卵泡的载玻片中的平均值高达89%。此外,在宏观体积,微转移和分离的肿瘤细胞的情况下达到100%的灵敏度。为了减少少量剩余误报,使用0.6mm和0.7mm的焦点尺寸阈值来产生接收器操作特性曲线,达到79.6 k和96.5%的敏感性和特异性,分别为75.5%和98.2%。一种两步的方法可用于有效地检测淋巴结组织中的肺癌转移,并且具有少量误报。

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