Lee Seunghyun, Yu Jaeyong, Kim Yuri, Kim Myungjin, Lew Helen
Department of Ophthalmology, Konyang University, Kim's Eye Hospital, Myung-Gok Eye Research Institute, Seoul 07301, Republic of Korea.
Department of Biomedical System Informatics, Yonsei University College of Medicine, Seoul 03722, Republic of Korea.
J Clin Med. 2023 Apr 1;12(7):2640. doi: 10.3390/jcm12072640.
(1) Background: We constructed scores for moderate-to-severe and muscle-predominant types of Graves' orbitopathy (GO) risk prediction based on initial ophthalmic findings. (2) Methods: 400 patients diagnosed with GO and followed up at both endocrinology and ophthalmology clinics with at least 6 months of follow-up. The Score for Moderate-to-Severe type of GO risk Prediction (SMSGOP) and the Score for Muscle-predominant type of GO risk Prediction (SMGOP) were constructed using the machine learning-based automatic clinical score generation algorithm. (3) Results: 55.3% were classified as mild type and 44.8% were classified as moderate-to-severe type. In the moderate-to-severe type group, 32.3% and 12.5% were classified as fat-predominant and muscle-predominant type, respectively. SMSGOP included age, central diplopia, thyroid stimulating immunoglobulin, modified NOSPECS classification, clinical activity score and ratio of the inferior rectus muscle cross-sectional area to total orbit in initial examination. SMGOP included age, central diplopia, amount of eye deviation, serum FT4 level and the interval between diagnosis of GD and GO in initial examination. Scores ≥46 and ≥49 had predictive value, respectively. (4) Conclusions: This is the first study to analyze factors in initial findings that can predict the severity of GO and to construct scores for risk prediction for Korean. We set the predictive scores using initial findings.
(1) 背景:我们基于初始眼科检查结果构建了用于Graves眼病(GO)中重度及以肌肉为主型风险预测的评分系统。(2) 方法:400例被诊断为GO的患者在内分泌科和眼科门诊进行随访,随访时间至少6个月。使用基于机器学习的自动临床评分生成算法构建中重度GO风险预测评分(SMSGOP)和以肌肉为主型GO风险预测评分(SMGOP)。(3) 结果:55.3%被分类为轻度类型,44.8%被分类为中重度类型。在中重度类型组中,分别有32.3%和12.5%被分类为以脂肪为主型和以肌肉为主型。SMSGOP包括年龄、中心性复视、促甲状腺素受体抗体、改良NOSPECS分类、临床活动评分以及初始检查时下直肌横截面积与眼眶总面积之比。SMGOP包括年龄、中心性复视、眼位偏斜量、血清FT4水平以及初始检查时GD与GO诊断之间的间隔时间。评分≥46和≥49分别具有预测价值。(4) 结论:这是第一项分析初始检查结果中可预测GO严重程度的因素并为韩国人构建风险预测评分的研究。我们使用初始检查结果设定了预测评分。