Department of Breast Surgery, Xuchang Central Hospital, Xuchang, China.
Health Management Center, Kaifeng Central Hospital, Kaifeng, China.
Front Endocrinol (Lausanne). 2022 Aug 8;13:886953. doi: 10.3389/fendo.2022.886953. eCollection 2022.
Hashimoto's thyroiditis (HT) frequently occurs among autoimmune diseases and may simultaneously appear with thyroid cancer. However, it is difficult to diagnose HT at an early stage just by clinical symptoms. Thus, it is urgent to integrate multiple clinical and laboratory factors for the early diagnosis and risk prediction of HT.
We recruited 1,303 participants, including 866 non-HT controls and 437 diagnosed HT patients. 44 HT patients also had thyroid cancer. Firstly, we compared the difference in thyroid goiter degrees between controls and patients. Secondly, we collected 15 factors and analyzed their significant differences between controls and HT patients, including age, body mass index, gender, history of diabetes, degrees of thyroid goiter, UIC, 25-(OH)D, FT3, FT4, TSH, TAG, TC, FPG, low-density lipoprotein cholesterol, and high-density lipoprotein cholesterol. Thirdly, logistic regression analysis demonstrated the risk factors for HT. For machine learning modeling of HT and thyroid cancer, we conducted the establishment and evaluation of six models in training and test sets.
The degrees of thyroid goiter were significantly different among controls, HT patients without cancer (HT-C), and HT patients with thyroid cancer (HT+C). Most factors had significant differences between controls and patients. Logistic regression analysis confirmed diabetes, UIC, FT3, and TSH as important risk factors for HT. The AUC scores of XGBoost, LR, SVM, and MLP models indicated appropriate predictive power for HT. The features were arranged by their importance, among which, 25-(OH)D, FT4, and TSH were the top three high-ranking factors.
We firstly analyzed comprehensive factors of HT patients. The proposed machine learning modeling, combined with multiple factors, are efficient for thyroid diagnosis. These discoveries will extensively promote precise diagnosis, personalized therapies, and reduce unnecessary cost for thyroid diseases.
桥本甲状腺炎(HT)常发生于自身免疫性疾病中,可能与甲状腺癌同时出现。然而,仅凭临床症状很难在早期诊断 HT。因此,迫切需要整合多种临床和实验室因素,以实现 HT 的早期诊断和风险预测。
我们招募了 1303 名参与者,包括 866 名非 HT 对照组和 437 名确诊 HT 患者。其中 44 名 HT 患者同时患有甲状腺癌。首先,我们比较了对照组和患者的甲状腺肿大程度差异。其次,我们收集了 15 个因素,并分析了它们在对照组和 HT 患者之间的显著差异,包括年龄、体重指数、性别、糖尿病史、甲状腺肿大程度、UIC、25-(OH)D、FT3、FT4、TSH、TAG、TC、FPG、低密度脂蛋白胆固醇和高密度脂蛋白胆固醇。然后,逻辑回归分析显示了 HT 的危险因素。对于 HT 和甲状腺癌的机器学习建模,我们在训练集和测试集中建立并评估了六个模型。
对照组、无甲状腺癌的 HT 患者(HT-C)和有甲状腺癌的 HT 患者(HT+C)之间的甲状腺肿大程度存在显著差异。大多数因素在对照组和患者之间存在显著差异。逻辑回归分析证实糖尿病、UIC、FT3 和 TSH 是 HT 的重要危险因素。XGBoost、LR、SVM 和 MLP 模型的 AUC 评分表明对 HT 具有适当的预测能力。特征按重要性排列,其中 25-(OH)D、FT4 和 TSH 是前三个高排名因素。
我们首次分析了 HT 患者的综合因素。所提出的机器学习建模结合了多种因素,可有效用于甲状腺诊断。这些发现将广泛促进甲状腺疾病的精准诊断、个性化治疗和降低不必要的成本。