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基于CT的深度学习模型用于肺腺癌侵袭性分类和微乳头模式预测

CT-Based Deep Learning Model for Invasiveness Classification and Micropapillary Pattern Prediction Within Lung Adenocarcinoma.

作者信息

Ding Hanlin, Xia Wenjie, Zhang Lei, Mao Qixing, Cao Bowen, Zhao Yihang, Xu Lin, Jiang Feng, Dong Gaochao

机构信息

Jiangsu Cancer Hospital, Jiangsu Institute of Cancer Research, The Affiliated Cancer Hospital of Nanjing Medical University, Nanjing, China.

Thoracic Surgery Department of Jiangsu Cancer Hospital, Nanjing, China.

出版信息

Front Oncol. 2020 Jul 22;10:1186. doi: 10.3389/fonc.2020.01186. eCollection 2020.

DOI:10.3389/fonc.2020.01186
PMID:32775302
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7388896/
Abstract

Identification of tumor invasiveness of pulmonary adenocarcinomas before surgery is one of the most important guides to surgical planning. Additionally, preoperative diagnosis of lung adenocarcinoma with micropapillary patterns is also critical for clinical decision making. We aimed to evaluate the accuracy of deep learning models on classifying invasiveness degree and attempted to predict the micropapillary pattern in lung adenocarcinoma. The records of 291 histopathologically confirmed lung adenocarcinoma patients were retrospectively analyzed and consisted of 61 adenocarcinoma , 80 minimally invasive adenocarcinoma, 117 invasive adenocarcinoma, and 33 invasive adenocarcinoma with micropapillary components (>5%). We constructed two diagnostic models, the Lung-DL model and the Dense model, based on the LeNet and the DenseNet architecture, respectively. For distinguishing the nodule invasiveness degree, the area under the curve (AUC) value of the diagnosis with the Lung-DL model is 0.88 and that with the Dense model is 0.86. In the prediction of the micropapillary pattern, overall accuracies of 92 and 72.91% were obtained for the Lung-DL model and the Dense model, respectively. Deep learning was successfully used for the invasiveness classification of pulmonary adenocarcinomas. This is also the first time that deep learning techniques have been used to predict micropapillary patterns. Both tasks can increase efficiency and assist in the creation of precise individualized treatment plans.

摘要

术前识别肺腺癌的肿瘤侵袭性是手术规划的最重要指导之一。此外,术前诊断具有微乳头模式的肺腺癌对于临床决策也至关重要。我们旨在评估深度学习模型对肺腺癌侵袭程度分类的准确性,并尝试预测其微乳头模式。回顾性分析了291例经组织病理学确诊的肺腺癌患者的记录,包括61例腺癌、80例微浸润腺癌、117例浸润性腺癌和33例具有微乳头成分(>5%)的浸润性腺癌。我们分别基于LeNet和DenseNet架构构建了两个诊断模型,即Lung-DL模型和Dense模型。对于区分结节侵袭程度,Lung-DL模型诊断的曲线下面积(AUC)值为0.88,Dense模型为0.86。在微乳头模式的预测中,Lung-DL模型和Dense模型的总体准确率分别为92%和72.91%。深度学习成功用于肺腺癌的侵袭性分类。这也是深度学习技术首次用于预测微乳头模式。这两项任务都可以提高效率,并有助于制定精确的个体化治疗方案。

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