Conditional survival and prognostic nomogram for distant metastatic differentiated thyroid cancer after total thyroidectomy

全甲状腺切除术后远处转移性分化型甲状腺癌的条件生存率和预后列线图

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Abstract

The long-term prognosis of patients with distant metastasis of differentiated thyroid cancer (DM-DTC) after total thyroidectomy remains poorly defined. This study aims to assess the conditional survival (CS) of DM-DTC patients following total thyroidectomy and to analyze the key prognostic factors, with the objective of developing a more accurate survival prediction tool for clinical application. We retrospectively analyzed data from patients diagnosed with DM-DTC who underwent total thyroidectomy between 2004 and 2019, retrieved from the Surveillance, Epidemiology, and End Results (SEER) database. Overall survival (OS) was estimated using the Kaplan-Meier method. CS rates were calculated using the formula CS(y/x) = OS(y + x)/OS(x), where CS(y/x) represents the probability of surviving an additional y years after already surviving x years. Prognostic factors were identified using the least absolute shrinkage and selection operator (LASSO) regression and incorporated into a CS-nomogram model developed through multivariate Cox regression. The CS-nomogram was validated, and predictive factors were assigned point values. A risk stratification system was subsequently established using the optimal threshold of the total score. A total of 1,235 patients with DM-DTC who underwent total thyroidectomy were included, with a median follow-up of 51 months. Kaplan-Meier survival analysis revealed 3-year, 5-year, and 10-year OS rates of 81.7%, 70.4%, and 46.9%, respectively. CS analysis demonstrated a progressive increase in survival rates over time. The 10-year cumulative survival rate increased from 46.9% to 51.1%, 54.4%, 57.5%, 61.5%, 66.7%, 72.3%, 79.6%, and 85.5%, ultimately reaching 93.5% after surviving 1 to 9 years. Prognostic factors identified through LASSO regression and multivariate Cox regression analysis included age, sex, histological type, tumor size, and radioactive iodine therapy. A novel CS-nomogram for dynamic real-time survival prediction was successfully developed and validated, enabling identification of high- and low-risk patient groups. This study represents the first evaluation of CS patterns in DM-DTC patients following total thyroidectomy, demonstrating a gradual improvement in postoperative survival rates over time. A novel CS-nomogram model was successfully developed and validated, offering clinicians a personalized, dynamic, and real-time survival prediction tool. The risk stratification system derived from this model effectively distinguishes high- and low-risk patients, providing valuable guidance for follow-up and risk assessment.

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