Barfejani Arnavaz Hajizadeh, Balali Mohammad Reza, Younes Nabgouri, Kabiri Tameh Mohammad Taha, Borzooei Shiva, Roshanaei Ghodratollah, Tarokhian Aidin
Royal College of Surgeons in Ireland, Dublin, Ireland.
School of Medicine, Iran University of Medical Sciences, Tehran, Iran.
Eur Arch Otorhinolaryngol. 2025 Mar 14. doi: 10.1007/s00405-025-09299-8.
To evaluate the performance of machine learning models in predicting the 5-year overall survival of patients with Hurthle cell carcinoma, and to identify significant prognostic factors influencing survival.
A retrospective cohort study was conducted using data from the Surveillance, Epidemiology, and End Results database, encompassing patients treated between 2010 and 2015. Key variables included demographic information (age, sex, race), clinical characteristics (tumor size, T, N, M stages, and overall stage), and survival outcomes. Patients were included if they had complete data, were not censored before 60 months of follow-up, and had undergone thyroid surgery.
The study included 1,143 patients with a mean age of 57.7 years (standard deviation = 15.8). The cohort consisted of 770 females (67.4%) and was predominantly White (83.0%). Tumor classifications were varied, with T2 being most common (37.2%). The majority had no nodal involvement (94.1%) or distant metastasis (97.6%). The support vector model achieved the highest area under receiver characteristics operating curve of 0.8402 (95% CI: 0.7915 to 0.8847), indicating good predictive performance. Sensitivity and specificity were 81.16% and 73.72%, respectively. The Brier score for the model was 0.1223, demonstrating adequate calibration. Higher age and T classification were the most significant predictors of decreased survival, while being female was associated with increased survival.
Machine learning models, particularly the support vector model, effectively predicted 5-year overall survival in patients with Hurthle cell carcinoma. The study highlights age and tumor extent as critical prognostic factors.
评估机器学习模型预测甲状腺嗜酸细胞癌患者5年总生存率的性能,并确定影响生存的重要预后因素。
使用监测、流行病学和最终结果数据库的数据进行回顾性队列研究,纳入2010年至2015年期间接受治疗的患者。关键变量包括人口统计学信息(年龄、性别、种族)、临床特征(肿瘤大小、T、N、M分期及总分期)和生存结果。纳入标准为数据完整、随访60个月前未被截尾且接受过甲状腺手术的患者。
该研究纳入1143例患者,平均年龄57.7岁(标准差=15.8)。队列中女性770例(67.4%),主要为白人(83.0%)。肿瘤分类多样,T2最常见(37.2%)。大多数患者无淋巴结转移(94.1%)或远处转移(97.6%)。支持向量模型在受试者工作特征曲线下面积最高,为0.8402(95%CI:0.7915至0.8847),表明预测性能良好。敏感性和特异性分别为81.16%和73.72%。该模型的Brier评分为0.1223,显示校准良好。年龄较大和T分类是生存率降低的最显著预测因素,而女性与生存率增加相关。
机器学习模型,尤其是支持向量模型,能有效预测甲状腺嗜酸细胞癌患者的5年总生存率。该研究强调年龄和肿瘤范围是关键的预后因素。