Suppr超能文献

基于实验室检查结果的机器学习模型对甲状腺毒症的鉴别诊断

Differential Diagnosis of Thyrotoxicosis by Machine Learning Models with Laboratory Findings.

作者信息

Kim Jinyoung, Baek Han-Sang, Ha Jeonghoon, Kim Mee Kyoung, Kwon Hyuk-Sang, Song Ki-Ho, Lim Dong-Jun, Baek Ki-Hyun

机构信息

Division of Endocrinology and Metabolism, Department of Internal Medicine, Yeouido St. Mary's Hospital, College of Medicine, The Catholic University of Korea, 10 63-ro, Yeongdeungpo-gu, Seoul 07345, Korea.

Division of Endocrinology and Metabolism, Department of Internal Medicine, Seoul St. Mary's Hospital, College of Medicine, The Catholic University of Korea, 222 Banpo-daero, Seocho-gu, Seoul 06591, Korea.

出版信息

Diagnostics (Basel). 2022 Jun 15;12(6):1468. doi: 10.3390/diagnostics12061468.

Abstract

Differential diagnosis of thyrotoxicosis is essential because therapeutic approaches differ based on disease etiology. We aimed to perform differential diagnosis of thyrotoxicosis using machine learning algorithms with initial laboratory findings. This is a retrospective study through medical records. Patients who visited a single hospital for thyrotoxicosis from June 2016 to December 2021 were enrolled. In total, 230 subjects were analyzed: 124 (52.6%) patients had Graves' disease, 65 (28.3%) suffered from painless thyroiditis, and 41 (17.8%) were diagnosed with subacute thyroiditis. In consideration that results for the thyroid autoantibody test cannot be immediately confirmed, two different models were devised: Model 1 included triiodothyronine (T3), free thyroxine (FT4), T3 to FT4 ratio, erythrocyte sediment rate, and C-reactive protein (CRP); and Model 2 included all Model 1 variables as well as thyroid autoantibody test results, including thyrotropin binding inhibitory immunoglobulin (TBII), thyroid-stimulating immunoglobulin, anti-thyroid peroxidase antibody, and anti-thyroglobulin antibody (TgAb). Differential diagnosis accuracy was calculated using seven machine learning algorithms. In the initial blood test, Graves' disease was characterized by increased thyroid hormone levels and subacute thyroiditis showing elevated inflammatory markers. The diagnostic accuracy of Model 1 was 65-70%, and Model 2 accuracy was 78-90%. The random forest model had the highest classification accuracy. The significant variables were CRP and T3 in Model 1 and TBII, CRP, and TgAb in Model 2. We suggest monitoring the initial T3 and CRP levels with subsequent confirmation of TBII and TgAb in the differential diagnosis of thyrotoxicosis.

摘要

甲状腺毒症的鉴别诊断至关重要,因为治疗方法会因疾病病因的不同而有所差异。我们旨在利用机器学习算法和初始实验室检查结果对甲状腺毒症进行鉴别诊断。这是一项通过病历进行的回顾性研究。纳入了2016年6月至2021年12月期间因甲状腺毒症前往一家医院就诊的患者。总共分析了230名受试者:124名(52.6%)患者患有格雷夫斯病,65名(28.3%)患有无痛性甲状腺炎,41名(17.8%)被诊断为亚急性甲状腺炎。考虑到甲状腺自身抗体检测结果不能立即得到确认,设计了两种不同的模型:模型1包括三碘甲状腺原氨酸(T3)、游离甲状腺素(FT4)、T3与FT4比值、红细胞沉降率和C反应蛋白(CRP);模型2包括模型1的所有变量以及甲状腺自身抗体检测结果,包括促甲状腺素结合抑制性免疫球蛋白(TBII)、促甲状腺素刺激性免疫球蛋白、抗甲状腺过氧化物酶抗体和抗甲状腺球蛋白抗体(TgAb)。使用七种机器学习算法计算鉴别诊断准确率。在初始血液检查中,格雷夫斯病的特征是甲状腺激素水平升高,亚急性甲状腺炎表现为炎症标志物升高。模型1的诊断准确率为65 - 70%,模型2的准确率为78 - 90%。随机森林模型具有最高的分类准确率。模型1中的显著变量是CRP和T3,模型2中的显著变量是TBII、CRP和TgAb。我们建议在甲状腺毒症的鉴别诊断中监测初始T3和CRP水平,随后确认TBII和TgAb。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/af29/9222156/840bcfc59d4f/diagnostics-12-01468-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验