Department of Thyroid Surgery, The First Hospital of China Medical University, Shenyang, China.
Front Endocrinol (Lausanne). 2024 Sep 30;15:1419125. doi: 10.3389/fendo.2024.1419125. eCollection 2024.
The prediction efficiency of long-term cancer-specific survival (CSS) in guiding the treatment of differentiated thyroid carcinoma (DTC) patients is still unsatisfactory. We need to refine the system so that it more accurately correlates with survival.
This is a retrospective study using the Surveillance, Epidemiology, and End Results (SEER) database, and included patients who underwent surgical treatment and were diagnosed with DTC from 2004 to 2020. Patients were divided into a training cohort (2004-2015) and validation cohort (2016-2020). Decision tree methodology was used to build the model in the training cohort. The newly identified groups were verified in the validation cohort.
DTC patient totals of 52,917 and 48,896 were included in the training and validation cohorts, respectively. Decision tree classification of DTC patients consisted of five categorical variables, which in order of importance were as follows: M categories, age, extrathyroidal extension, tumor size, and N categories. Then, we identified five TNM groups with similar within-group CSS. More patients were classified as stage I, and the number of stage IV patients decreased significantly. The new system had a higher proportion of variance explained (PVE) (5.04%) and lower Akaike information criterion (AIC) (18,331.906) than the 8th TNM staging system (a PVE of 4.11% and AIC of 18,692.282). In the validation cohort, the new system also showed better discrimination for survival.
The new system for DTC appeared to be more accurate in distinguishing stages according to the risk of mortality and provided more accurate risk stratifications and potential treatment selections.
长期癌症特异性生存(CSS)预测效率在指导分化型甲状腺癌(DTC)患者治疗方面仍不尽如人意。我们需要改进该系统,使其更准确地与生存相关。
这是一项使用监测、流行病学和最终结果(SEER)数据库的回顾性研究,纳入了 2004 年至 2020 年间接受手术治疗并被诊断为 DTC 的患者。患者被分为训练队列(2004-2015 年)和验证队列(2016-2020 年)。决策树方法用于构建训练队列中的模型。新确定的组别在验证队列中进行验证。
训练队列和验证队列分别纳入了 52917 例和 48896 例 DTC 患者。DTC 患者的决策树分类包括五个分类变量,按重要性依次为:M 类别、年龄、甲状腺外延伸、肿瘤大小和 N 类别。然后,我们确定了五个具有相似组内 CSS 的 TNM 组。更多患者被归类为 I 期,IV 期患者数量显著减少。新系统的方差解释率(PVE)更高(5.04%),Akaike 信息准则(AIC)更低(18331.906),优于第 8 版 TNM 分期系统(PVE 为 4.11%,AIC 为 18692.282)。在验证队列中,新系统在预测生存方面也表现出更好的区分能力。
新的 DTC 系统在根据死亡率风险区分阶段方面似乎更为准确,提供了更准确的风险分层和潜在的治疗选择。