Zhao Hai-Na, Yin Hao, Li Ming-Hao, Zhang He-Qing, He Yu-Shuang, Luo Hong-Hao, Ma Bu-Yun, Ma Lin, Liu Dong-Quan, Peng Yu-Lan
Department of Ultrasound, West China Hospital of Sichuan University, Chengdu, China.
Department of Software Engineering, College of Computer Science, Sichuan University, Chengdu, China.
Gland Surg. 2024 Aug 31;13(8):1437-1447. doi: 10.21037/gs-24-98. Epub 2024 Aug 28.
Thyroid cancer (TC) prone to cervical lymph node (CLN) metastasis both before and after surgery. Ultrasonography (US) is the first-line imaging method for evaluating the thyroid gland and CLNs. However, this assessment relies mainly on the subjective judgment of the sonographer and is very much dependent on the sonographer's experience. This prospective study was designed to construct a machine learning model based on contrast-enhanced ultrasound (CEUS) videos of CLNs to predict the risk of CLN metastasis in patients with TC.
Patients who were proposed for surgical treatment due to TC from August 2019 to May 2020 were prospectively included. All patients underwent US of CLNs suspected of metastasis, and a 2-minute imaging video was recorded. After target tracking, feature extraction, and feature selection through the lymph node imaging video, three machine learning models, namely, support vector machine, linear discriminant analysis (LDA), and decision tree (DT), were constructed, and the sensitivity, specificity, and accuracy of each model for diagnosing lymph nodes were calculated by leave-one-out cross-validation (LOOCV).
A total of 75 lymph nodes were included in the study, with 42 benign cases and 33 malignant cases. Among the machine learning models constructed, the support vector machine had the best diagnostic efficacy, with a sensitivity of 93.0%, a specificity of 93.8%, and an accuracy of 93.3%.
The machine learning model based on US video is helpful for the diagnosis of whether metastasis occurs in the CLNs of TC patients.
甲状腺癌(TC)在手术前后均易发生颈部淋巴结(CLN)转移。超声检查(US)是评估甲状腺和CLN的一线成像方法。然而,这种评估主要依赖于超声检查医师的主观判断,并且非常依赖于超声检查医师的经验。本前瞻性研究旨在基于CLN的超声造影(CEUS)视频构建机器学习模型,以预测TC患者CLN转移的风险。
前瞻性纳入2019年8月至2020年5月因TC拟行手术治疗的患者。所有患者均接受了对疑似转移的CLN的超声检查,并记录了一段2分钟的成像视频。通过淋巴结成像视频进行目标跟踪、特征提取和特征选择后,构建了支持向量机、线性判别分析(LDA)和决策树(DT)三种机器学习模型,并通过留一法交叉验证(LOOCV)计算每个模型诊断淋巴结的敏感性、特异性和准确性。
本研究共纳入75个淋巴结,其中良性病例42例,恶性病例33例。在所构建的机器学习模型中,支持向量机具有最佳的诊断效能,敏感性为93.0%,特异性为93.8%,准确性为93.3%。
基于超声视频的机器学习模型有助于诊断TC患者CLN是否发生转移。