Liao Kehua, Wei Xiaojuan, Chen Yan, Meng Dongyun, Mo Shaozhou, Sun Zeyong, Song Fengyang, Lu Lu, Huang Wentan
Department of Nuclear Medicine, People's Hospital of Guangxi Zhuang Autonomous Region, Nanning, Guangxi Zhuang Autonomous Region, China.
Front Endocrinol (Lausanne). 2025 Aug 13;16:1628226. doi: 10.3389/fendo.2025.1628226. eCollection 2025.
To examine the factors influencing I-refractory Graves' disease (GD) hyperthyroidism in patients, develop a nomogram prediction model, and conduct its validation.
A total of 272 hyperthyroidism patients who received initial I treatment at our hospital from January 2021 to January 2022 were randomly selected. Patients were divided into refractory hyperthyroidism group (92 cases) and non-refractory hyperthyroidism group (180 cases) based on whether they were cured after one course of I treatment. They were randomly divided into a training group (n=190) and an internal validation group (n=82) in a 7:3 ratio. Multiple factors that might affect the efficacy of I treatment were collected, including 16 variables such as clinical characteristics, laboratory, and imaging examinations. LASSO regression was used for optimization and selection, and a multivariate logistic regression model was constructed to create a nomogram prediction model. The model's discrimination, calibration, and clinical validity were evaluated using the receiver operating characteristic (ROC) curve, Hosmer-Lemeshow calibration curve, and decision curve analysis (DCA).
There were no statistically significant differences (P>0.05) in the comparison of the 16 variables between the training and validation groups. Following LASSO regression analysis, six predictive variables associated with I-refractory hyperthyroidism were identified: the duration of hyperthyroidism, nighttime sleep quality, the presence of Graves' ophthalmopathy (GO), the effective half-life of thyroid I, thyroid uptake Tc value, and thyroid mass. The area under the ROC curve (AUC) for the risk of I refractory hyperthyroidism in the training group was 0.943 (95% CI: 0.909-0.977), and the AUC for the validation group was 0.926 (95% CI: 0.870-0.983). The Hosmer-Lemeshow calibration curve showed good fit (training group P=0.876; validation group P=0.202). DCA demonstrated that when the threshold probability for equal patients ranged from 0.04 to 0.86 in the training group and from 0.09 to 0.87 in the validation group, using the nomogram prediction model to predict the risk of refractory hyperthyroidism after I treatment was more beneficial.
This study found that the duration of GD hyperthyroidism, nighttime sleep quality, GO, effective half-life of thyroid I, thyroid uptake Tc value, and thyroid mass are independent influencing factors of I refractoriness. A risk prediction model including these six factors was established. This model provides guidance for the diagnosis and treatment decisions of I refractory GD hyperthyroidism, offers a quantitative tool for clinical assessment of I efficacy, and aids in personalized treatment decisions, reducing the burden of ineffective or inefficient treatments.
探讨影响患者碘难治性Graves病(GD)甲亢的因素,建立列线图预测模型并进行验证。
随机选取2021年1月至2022年1月在我院接受首次碘治疗的272例甲亢患者。根据患者在一个疗程碘治疗后是否治愈,分为难治性甲亢组(92例)和非难治性甲亢组(180例)。按7:3的比例随机分为训练组(n = 190)和内部验证组(n = 82)。收集可能影响碘治疗疗效的多个因素,包括临床特征、实验室及影像学检查等16个变量。采用LASSO回归进行优化筛选,构建多因素逻辑回归模型以创建列线图预测模型。使用受试者工作特征(ROC)曲线、Hosmer-Lemeshow校准曲线和决策曲线分析(DCA)对模型的区分度、校准度和临床有效性进行评估。
训练组和验证组在16个变量的比较中,差异无统计学意义(P>0.05)。经过LASSO回归分析,确定了6个与碘难治性甲亢相关的预测变量:甲亢病程、夜间睡眠质量、Graves眼病(GO)的存在、甲状腺碘有效半衰期、甲状腺摄取Tc值和甲状腺质量。训练组中碘难治性甲亢风险的ROC曲线下面积(AUC)为0.943(95%CI:0.909 - 0.977),验证组的AUC为0.926(95%CI:0.870 - 0.983)。Hosmer-Lemeshow校准曲线显示拟合良好(训练组P = 0.876;验证组P = 0.202)。DCA表明,当训练组中相等患者的阈值概率范围为0.04至0.86,验证组为0.09至0.87时,使用列线图预测模型预测碘治疗后难治性甲亢的风险更有益。
本研究发现GD甲亢病程、夜间睡眠质量、GO、甲状腺碘有效半衰期、甲状腺摄取Tc值和甲状腺质量是碘难治性的独立影响因素。建立了包含这6个因素的风险预测模型。该模型为碘难治性GD甲亢的诊断和治疗决策提供指导,为临床评估碘治疗疗效提供定量工具,有助于个性化治疗决策,减轻无效或低效治疗的负担。