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深度学习结合放射组学对颈淋巴结肿大的分类。

Deep learning combined with radiomics for the classification of enlarged cervical lymph nodes.

机构信息

Department of Radiology, The First Affiliated Hospital of Chongqing Medical University, Chongqing, 400016, China.

The Center for Clinical Molecular Medical Detection, The First Affiliated Hospital of Chongqing Medical University, Chongqing, 400016, China.

出版信息

J Cancer Res Clin Oncol. 2022 Oct;148(10):2773-2780. doi: 10.1007/s00432-022-04047-5. Epub 2022 May 13.

Abstract

PURPOSE

To investigate the application of deep learning combined with traditional radiomics methods for classifying enlarged cervical lymph nodes.

METHODS

The clinical and computed tomography (CT) imaging data of 276 patients with enlarged cervical lymph nodes (150 with lymph-node metastasis, 65 with lymphoma, and 61 with benign lymphadenopathy) who were treated at the hospital from January 2015 to January 2021 were retrospectively analysed. The patients were randomly divided into a training group and a test group at a ratio of 8:2. The radiomics features were extracted using one-by-one convolution and neural network activation, filtered with the least absolute shrinkage and selection operator (LASSO) model, and used to construct a discrimination model with PyTorch. Then, the performance of the model was compared with the radiologists' diagnostic performance. The neural network model was evaluated using the area under the receiver-operator characteristic curve (AUC), and the accuracy, sensitivity, and specificity were analysed.

RESULTS

A total of 102 features, comprising five traditional radiomic features and 97 deep learning features, were selected with LASSO and used to construct a discrimination model, which achieved a total accuracy of 87.50%. The AUC value, specificity, and sensitivity were, respectively, 0.92, 92.30%, and 90.00% for metastatic lymph nodes, 0.87, 95.45%, and 83.33% for benign lymphadenopathy, and 0.88, 90.47%, and 85.71% for lymphoma. The accuracies of the radiologists' diagnoses were 62.68% and 62.68%. The diagnostic performance of the model was significantly different from that of the radiologists (p < 0.05).

CONCLUSION

CT-based deep learning combined with the traditional radiomics methods has a high diagnostic value for the classification of cervical enlarged lymph nodes.

摘要

目的

探讨深度学习结合传统放射组学方法在颈淋巴结肿大分类中的应用。

方法

回顾性分析 2015 年 1 月至 2021 年 1 月在医院治疗的 276 例颈淋巴结肿大患者(淋巴结转移 150 例,淋巴瘤 65 例,良性淋巴结病 61 例)的临床和计算机断层扫描(CT)影像学资料。患者按 8:2 的比例随机分为训练组和测试组。使用逐个卷积和神经网络激活提取放射组学特征,使用最小绝对值收缩和选择算子(LASSO)模型进行过滤,并用 PyTorch 构建判别模型。然后,将模型的性能与放射科医生的诊断性能进行比较。使用受试者工作特征曲线(AUC)下面积评估神经网络模型,并分析准确性、敏感性和特异性。

结果

使用 LASSO 选择了 102 个特征,包括 5 个传统放射组学特征和 97 个深度学习特征,用于构建判别模型,总准确率为 87.50%。转移性淋巴结的 AUC 值、特异性和敏感性分别为 0.92、92.30%和 90.00%,良性淋巴结病为 0.87、95.45%和 83.33%,淋巴瘤为 0.88、90.47%和 85.71%。放射科医生的诊断准确率为 62.68%。模型的诊断性能与放射科医生的诊断性能有显著差异(p<0.05)。

结论

基于 CT 的深度学习结合传统放射组学方法对颈淋巴结肿大的分类具有较高的诊断价值。

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