Liu Dan, Yang Ke, Zhang Chunquan, Xiao Dandan, Zhao Yu
Department of Ultrasound, The Second Affiliated Hospital of Nanchang University, Nanchang, 330006, People's Republic of China.
The First in-Patient Department, Jiangxi Provincial People's Hospital, The First Affiliated Hospital of Nanchang Medical College, Nanchang, 330006, People's Republic of China.
J Multidiscip Healthc. 2024 Apr 15;17:1641-1651. doi: 10.2147/JMDH.S439629. eCollection 2024.
Interpretation of ultrasound findings of thyroid nodules is subjective and labor-intensive for radiologists. Artificial intelligence (AI) is a relatively objective and efficient technology. We aimed to establish a fully automatic detection and diagnosis system for thyroid nodules based on AI technology by analyzing ultrasound video sequences.
We prospectively acquired dynamic ultrasound videos of 1067 thyroid nodules (804 for training and 263 for validation) from December 2018 to January 2021. All the patients underwent hemithyroidectomy or total thyroidectomy. Dynamic ultrasound videos were used to develop an AI system consisting of two deep learning models that could automatically detect and diagnose thyroid nodules. Average precision (AP) was used to estimate the performance of the detection model. The area under the receiver operating characteristic curve (AUC) was used to measure the performance of the diagnostic model.
Location and shape were accurately detected with a high AP of 0.914 in the validation cohort. The AUC of the diagnostic model was 0.953 in the validation cohort. The sensitivity and specificity of junior and senior radiologists were 76.9% vs 78.3% and 68.4% vs 81.1%, respectively. The diagnostic performance of the AI diagnostic model was superior to that of junior radiologists ( = 0.016) and was not significantly different from that of senior radiologists ( = 0.281).
We established a fully automatic detection and diagnosis system for thyroid nodules based on ultrasound video using an AI approach that can be conveniently applied to optimize the management of patients with thyroid nodules.
甲状腺结节超声检查结果的解读对放射科医生而言主观且耗时。人工智能(AI)是一种相对客观且高效的技术。我们旨在通过分析超声视频序列,基于AI技术建立一个用于甲状腺结节的全自动检测与诊断系统。
2018年12月至2021年1月,我们前瞻性收集了1067个甲状腺结节的动态超声视频(804个用于训练,263个用于验证)。所有患者均接受了甲状腺次全切除术或全甲状腺切除术。动态超声视频用于开发一个由两个深度学习模型组成的AI系统,该系统可自动检测和诊断甲状腺结节。平均精度(AP)用于评估检测模型的性能。受试者工作特征曲线下面积(AUC)用于衡量诊断模型的性能。
在验证队列中,位置和形状被准确检测,AP高达0.914。验证队列中诊断模型的AUC为0.953。初级和高级放射科医生的敏感性和特异性分别为76.9%对78.3%和68.4%对81.1%。AI诊断模型的诊断性能优于初级放射科医生(P = 0.016),与高级放射科医生的诊断性能无显著差异(P = 0.281)。
我们基于超声视频利用AI方法建立了一个用于甲状腺结节的全自动检测与诊断系统,该系统可方便地应用于优化甲状腺结节患者的管理。