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Convolutional neural networks can accurately distinguish four histologic growth patterns of lung adenocarcinoma in digital slides

机译:卷积神经网络可以准确区分数字幻灯片中肺腺癌的四种组织学生长模式

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摘要

During the diagnostic workup of lung adenocarcinomas (LAC), pathologists evaluate distinct histological tumor growth patterns. The percentage of each pattern on multiple slides bears prognostic significance. To assist with the quantification of growth patterns, we constructed a pipeline equipped with a convolutional neural network (CNN) and soft-voting as the decision function to recognize solid, micropapillary, acinar, and cribriform growth patterns, and non-tumor areas. Slides of primary LAC were obtained from Cedars-Sinai Medical Center (CSMC), the Military Institute of Medicine in Warsaw and the TCGA portal. Several CNN models trained with 19,924 image tiles extracted from 78 slides (MIMW and CSMC) were evaluated on 128 test slides from the three sites by F1-score and accuracy using manual tumor annotations by pathologist. The best CNN yielded F1-scores of 0.91 (solid), 0.76 (micropapillary), 0.74 (acinar), 0.6 (cribriform), and 0.96 (non-tumor) respectively. The overall accuracy of distinguishing the five tissue classes was 89.24%. Slide-based accuracy in the CSMC set (88.5%) was significantly better (p < 2.3E-4) than the accuracy in the MIMW (84.2%) and TCGA (84%) sets due to superior slide quality. Our model can work side-by-side with a pathologist to accurately quantify the percentages of growth patterns in tumors with mixed LAC patterns.
机译:在肺腺癌(LAC)的诊断检查中,病理学家评估了不同的组织学肿瘤生长模式。多个幻灯片上每个模式的百分比具有预后意义。为了帮助量化生长模式,我们构建了配备卷积神经网络(CNN)和软投票作为决策功能的管道,以识别固体,微乳头,腺泡和筛状生长模式以及非肿瘤区域。原发性LAC玻片可从Cedars-Sinai医学中心(CSMC),华沙军事医学研究所和TCGA门户网站获得。通过F1评分和来自病理学家手动肿瘤注释的准确性,在三个位置的128个测试幻灯片上评估了几种用从78张幻灯片(MIMW和CSMC)中提取的19,924张图像切片训练的CNN模型。最佳CNN产生的F1分数分别为0.91(实心),0.76(微乳头),0.74(针状),0.6(网状)和0.96(非肿瘤)。区分五个组织类别的总体准确性为89.24%。由于卓越的滑片质量,CSMC集中的基于滑片的准确性(88.5%)比MIMW(84.2%)和TCGA(84%)的准确性(p <2.3E-4)明显更好。我们的模型可以与病理学家并肩工作,以准确量化混合LAC模式的肿瘤中生长模式的百分比。

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