Department of Ultrasound, the Second Affiliated Hospital, Medical School of Xi'an Jiaotong University, Xi'an, 710004, China.
School of Automation Science and Engineering, Faculty of Electronic and Information Engineering, Xi'an Jiaotong University, Xi'an, 710049, Shaanxi, China.
Eur Radiol. 2022 Mar;32(3):2120-2129. doi: 10.1007/s00330-021-08298-7. Epub 2021 Oct 18.
From the viewpoint of ultrasound (US) physicians, an ideal thyroid US computer-assisted diagnostic (CAD) system for thyroid cancer should perform well in suspicious thyroid nodules with atypical risk features and be able to output explainable results. This study aims to develop an explainable US CAD model for suspicious thyroid nodules.
A total of 2992 solid or almost-solid thyroid nodules were analyzed retrospectively. All nodules had pathological results (1070 malignancies and 1992 benignities) confirmed by ultrasound-guided fine-needle aspiration cytology and histopathology after thyroidectomy. A deep learning model (ResNet50) and a multiple risk features learning ensemble model (XGBoost) were used to train the US images of 2794 thyroid nodules. Then, an integrated AI model was generated by combining both models. The diagnostic accuracies of the three AI models (ResNet50, XGBoost, and the integrated model) were predicted in a testing set including 198 thyroid nodules and compared to the diagnostic efficacy of five ultrasonographers.
The accuracy of the integrated model was 76.77%, while the mean accuracy of the ultrasonographers was 68.38%. Of the risk features, microcalcifications showed the highest contribution to the diagnosis of malignant nodules.
The integrated AI model in our study can improve the diagnostic accuracy of suspicious thyroid nodules and output the known risk features simultaneously, thus aiding in training young ultrasonographers by linking the explainable results to their clinical experience and advancing the acceptance of AI diagnosis for thyroid cancer in clinical practice.
• We developed an artificial intelligence (AI) diagnosis model based on both deep learning and multiple risk feature ensemble learning methods. • The AI diagnosis model showed higher diagnostic accuracy for suspicious thyroid nodules than ultrasonographers. • The AI diagnosis model showed partial explainability by outputting the known risk features, thus aiding young ultrasonic doctors in increasing the diagnostic level for thyroid cancer.
从超声医师的角度来看,一个理想的甲状腺超声计算机辅助诊断(CAD)系统应能很好地应用于具有非典型风险特征的可疑甲状腺结节,并能输出可解释的结果。本研究旨在开发一种用于可疑甲状腺结节的可解释超声 CAD 模型。
回顾性分析了 2992 个实性或几乎实性甲状腺结节。所有结节均经超声引导下细针抽吸细胞学和组织病理学检查证实为甲状腺切除术后的病理结果(1070 例恶性和 1992 例良性)。使用深度学习模型(ResNet50)和多个风险特征学习集成模型(XGBoost)对 2794 个甲状腺结节的超声图像进行训练。然后,通过结合这两种模型生成一个集成 AI 模型。在包括 198 个甲状腺结节的测试集中预测了三个 AI 模型(ResNet50、XGBoost 和集成模型)的诊断准确性,并与 5 名超声医师的诊断效果进行了比较。
集成模型的准确率为 76.77%,而超声医师的平均准确率为 68.38%。在风险特征中,微钙化对恶性结节的诊断贡献最高。
本研究中的集成 AI 模型可以提高可疑甲状腺结节的诊断准确性,并同时输出已知的风险特征,从而通过将可解释的结果与他们的临床经验联系起来,帮助年轻的超声医师提高诊断水平,并在临床实践中推进甲状腺癌 AI 诊断的接受程度。
我们开发了一种基于深度学习和多个风险特征集成学习方法的人工智能(AI)诊断模型。
AI 诊断模型对可疑甲状腺结节的诊断准确性高于超声医师。
AI 诊断模型通过输出已知的风险特征显示出一定的可解释性,从而帮助年轻的超声医生提高对甲状腺癌的诊断水平。