Department of Thyroid & Parathyroid Surgery, Laboratory of Thyroid and Parathyroid Disease, Frontiers Science Center for Disease-Related Molecular Network, West China Hospital, Sichuan University, Chengdu, China.
J Endocrinol Invest. 2023 May;46(5):893-901. doi: 10.1007/s40618-022-01949-6. Epub 2022 Nov 15.
Tall cell variant (TCV) of papillary thyroid cancer (PTC) is the most common aggressive subtype of PTC. The factors that affect survival of patients with TCV remain unclear. We aimed to develop a model to predict the cancer-specific survival (CSS).
A total of 1615 patients diagnosed with TCV between 2004 and 2016 were identified from the Surveillance, Epidemiology, and End Results (SEER) database and randomized into training and validation cohorts (7:3). A predictive nomogram for predicting CSS was constructed by Cox proportional hazards regression and validated by concordance index (C-index), calibration curve, and decision curve analyses (DCA). A risk classification system was built based on the total nomogram scores of each case.
A nomogram was constructed including five independent prognostic factors (age, tumor size, T stage, M stage, and extent of surgery) associated with CSS in TCV patients. Various validations proved that the nomogram model had good consistency and discrimination for TCV prognosis. The risk classification system could perfectly classify TCV patients into three risk groups with significantly different CSS. Compared with traditional AJCC TNM staging system, the nomogram could better predict CSS in TCV patients.
A nomogram and corresponding risk classification system were developed for predicting CSS in TCV patients. The model has excellent performance and can be used to help clinicians make accurate prognostic assessment and individualized treatment.
甲状腺乳头状癌(PTC)的高细胞变体(TCV)是 PTC 最常见的侵袭性亚型。影响 TCV 患者生存的因素尚不清楚。我们旨在建立一个预测癌症特异性生存(CSS)的模型。
从监测、流行病学和最终结果(SEER)数据库中确定了 2004 年至 2016 年间诊断为 TCV 的 1615 例患者,并将其随机分为训练和验证队列(7:3)。通过 Cox 比例风险回归构建预测 CSS 的预测列线图,并通过一致性指数(C 指数)、校准曲线和决策曲线分析(DCA)进行验证。根据每个病例的总列线图评分建立风险分类系统。
构建了一个列线图,其中包含与 TCV 患者 CSS 相关的五个独立预后因素(年龄、肿瘤大小、T 分期、M 分期和手术范围)。各种验证证明,该列线图模型对 TCV 预后具有良好的一致性和区分度。风险分类系统可以将 TCV 患者完美地分为 CSS 差异显著的三个风险组。与传统的 AJCC TNM 分期系统相比,该列线图可以更好地预测 TCV 患者的 CSS。
为预测 TCV 患者的 CSS 开发了列线图和相应的风险分类系统。该模型具有出色的性能,可用于帮助临床医生进行准确的预后评估和个体化治疗。