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Deep learning predicts cervical lymph node metastasis in clinically node-negative papillary thyroid carcinoma

Zhou, Li-Qiang; Zeng, Shu-E.; Xu, Jian-Wei; Lv, Wen-Zhi; Mei, Dong; Tu, Jia-Jun; Jiang, Fan; Cui, Xin-Wu*; Dietrich, Christoph F.
Science Citation Index Expanded
安徽医科大学; 华中科技大学; 郑州大学; 1

摘要

ObjectivesPrecise determination of cervical lymph node metastasis (CLNM) involvement in patients with early-stage thyroid cancer is fairly significant for identifying appropriate cervical treatment options. However, it is almost impossible to directly judge lymph node metastasis based on the imaging information of early-stage thyroid cancer patients with clinically negative lymph nodes.MethodsPreoperative US images (BMUS and CDFI) of 1031 clinically node negative PTC patients definitively diagnosed on pathology from two independent hospitals were divided into training set, validation set, internal test set, and external test set. An ensemble deep learning model based on ResNet-50 was built integrating clinical variables, BMUS, and CDFI images using a bagging classifier to predict metastasis of CLN. The final ensemble model performance was compared with expert interpretation.ResultsThe ensemble deep convolutional neural network (DCNN) achieved high performance in predicting CLNM in the test sets examined, with area under the curve values of 0.86 (95% CI 0.78-0.94) for the internal test set and 0.77 (95% CI 0.68-0.87) for the external test set. Compared to all radiologists averaged, the ensemble DCNN model also exhibited improved performance in making predictions. For the external validation set, accuracy was 0.72 versus 0.59 (p = 0.074), sensitivity was 0.75 versus 0.58 (p = 0.039), and specificity was 0.69 versus 0.60 (p = 0.078).ConclusionsDeep learning can non-invasive predict CLNM for clinically node-negative PTC using conventional US imaging of thyroid cancer nodules and clinical variables in a multi-institutional dataset with superior accuracy, sensitivity, and specificity comparable to experts.Critical relevance statementDeep learning efficiently predicts CLNM for clinically node-negative PTC based on US images and clinical variables in an advantageous manner.Key points center dot A deep learning-based ensemble algorithm for predicting CLNM in PTC was developed.center dot Ultrasound AI analysis combined with clinical data has advantages in predicting CLNM.center dot Compared to all experts averaged, the DCNN model achieved higher test performance.Key points center dot A deep learning-based ensemble algorithm for predicting CLNM in PTC was developed.center dot Ultrasound AI analysis combined with clinical data has advantages in predicting CLNM.center dot Compared to all experts averaged, the DCNN model achieved higher test performance.Key points center dot A deep learning-based ensemble algorithm for predicting CLNM in PTC was developed.center dot Ultrasound AI analysis combined with clinical data has advantages in predicting CLNM.center dot Compared to all experts averaged, the DCNN model achieved higher test performance.

关键词

Deep learning LN metastasis prediction Papillary thyroid cancer US diagnosis