Ren Wenhao, Zhu Yanli, Wang Qian, Song Yuntao, Fan Zhihui, Bai Yanhua, Lin Dongmei
Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education), Department of Pathology, Peking University Cancer Hospital and Institute, Beijing, China.
Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education), Department of Head and Neck Surgery, Peking University Cancer Hospital and Institute, Beijing, China.
Cancer Sci. 2023 Oct;114(10):4114-4124. doi: 10.1111/cas.15930. Epub 2023 Aug 13.
Controversy exists regarding whether patients with low-risk papillary thyroid microcarcinoma (PTMC) should undergo surgery or active surveillance; the inaccuracy of the preoperative clinical lymph node status assessment is one of the primary factors contributing to the controversy. It is imperative to accurately predict the lymph node status of PTMC before surgery. We selected 208 preoperative fine-needle aspiration (FNA) liquid-based preparations of PTMC as our research objects; all of these instances underwent lymph node dissection and, aside from lymph node status, were consistent with low-risk PTMC. We separated them into two groups according to whether the postoperative pathology showed central lymph node metastases. The deep learning model was expected to predict, based on the preoperative thyroid FNA liquid-based preparation, whether PTMC was accompanied by central lymph node metastases. Our deep learning model attained a sensitivity, specificity, positive prediction value (PPV), negative prediction value (NPV), and accuracy of 78.9% (15/19), 73.9% (17/23), 71.4% (15/21), 81.0% (17/21), and 76.2% (32/42), respectively. The area under the receiver operating characteristic curve (value was 0.8503. The predictive performance of the deep learning model was superior to that of the traditional clinical evaluation, and further analysis revealed the cell morphologies that played key roles in model prediction. Our study suggests that the deep learning model based on preoperative thyroid FNA liquid-based preparation is a reliable strategy for predicting central lymph node metastases in thyroid micropapillary carcinoma, and its performance surpasses that of traditional clinical examination.
对于低风险甲状腺微小乳头状癌(PTMC)患者是否应接受手术或积极监测存在争议;术前临床淋巴结状态评估的不准确是导致该争议的主要因素之一。术前准确预测PTMC的淋巴结状态至关重要。我们选择了208例PTMC术前细针穿刺(FNA)液基制剂作为研究对象;所有这些病例均接受了淋巴结清扫,除淋巴结状态外,均符合低风险PTMC。根据术后病理是否显示中央淋巴结转移将它们分为两组。期望深度学习模型基于术前甲状腺FNA液基制剂预测PTMC是否伴有中央淋巴结转移。我们的深度学习模型的敏感性、特异性、阳性预测值(PPV)、阴性预测值(NPV)和准确率分别为78.9%(15/19)、73.9%(17/23)、71.4%(15/21)、81.0%(17/21)和76.2%(32/42)。受试者工作特征曲线下面积(值为0.8503)。深度学习模型的预测性能优于传统临床评估,进一步分析揭示了在模型预测中起关键作用的细胞形态。我们的研究表明,基于术前甲状腺FNA液基制剂的深度学习模型是预测甲状腺微小乳头状癌中央淋巴结转移的可靠策略,其性能优于传统临床检查。