Am J Ophthalmol. 2021 Aug;228:142-151. doi: 10.1016/j.ajo.2021.03.040. Epub 2021 May 11.
To determine classification criteria for tubercular uveitis.
Machine learning of cases with tubercular uveitis and 14 other uveitides.
Cases of noninfectious posterior uveitis or panuveitis, and of infectious posterior uveitis or panuveitis, were collected in an informatics-designed preliminary database, and a final database was constructed of cases achieving supermajority agreement on the diagnosis, using formal consensus techniques. Cases were analyzed by anatomic class, and each class was split into a training set and a validation set. Machine learning using multinomial logistic regression was used on the training set to determine a parsimonious set of criteria that minimized the misclassification rate among the intermediate uveitides. The resulting criteria were evaluated on the validation sets.
Two hundred seventy-seven cases of tubercular uveitis were evaluated by machine learning against other uveitides. Key criteria for tubercular uveitis were a compatible uveitic syndrome, including (1) anterior uveitis with iris nodules, (2) serpiginous-like tubercular choroiditis, (3) choroidal nodule (tuberculoma), (4) occlusive retinal vasculitis, and (5) in hosts with evidence of active systemic tuberculosis, multifocal choroiditis; and evidence of tuberculosis, including histologically or microbiologically confirmed infection, positive interferon-γ release assay test, or positive tuberculin skin test. The overall accuracy of the diagnosis of tubercular uveitis vs other uveitides in the validation set was 98.2% (95% confidence interval 96.5, 99.1). The misclassification rates for tubercular uveitis were training set, 3.4%; and validation set, 3.6%.
The criteria for tubercular uveitis had a low misclassification rate and seemed to perform sufficiently well for use in clinical and translational research.
确定结核性葡萄膜炎的分类标准。
对结核性葡萄膜炎病例和其他 14 种葡萄膜炎病例进行机器学习。
收集非感染性后葡萄膜炎或全葡萄膜炎和感染性后葡萄膜炎或全葡萄膜炎病例,在一个信息学设计的初步数据库中,并使用正式共识技术对诊断达成多数一致意见的病例构建最终数据库。根据解剖学分类对病例进行分析,将每个类别分为训练集和验证集。使用多项逻辑回归对训练集进行机器学习,以确定一组尽可能简化的标准,使中间葡萄膜炎的分类错误率最小化。然后在验证集上评估得出的标准。
对 277 例结核性葡萄膜炎病例进行机器学习,与其他葡萄膜炎进行比较。结核性葡萄膜炎的关键标准是具有相符的葡萄膜炎综合征,包括(1)前葡萄膜炎伴虹膜结节,(2)匐行性样结核性脉络膜炎,(3)脉络膜结节(结核瘤),(4)闭塞性视网膜血管炎,和(5)宿主有活动性全身结核的证据,多灶性脉络膜炎;和结核病的证据,包括组织学或微生物学证实的感染、干扰素-γ释放试验阳性或结核菌素皮肤试验阳性。在验证集中,结核性葡萄膜炎与其他葡萄膜炎的诊断总准确率为 98.2%(95%置信区间 96.5,99.1)。结核性葡萄膜炎在训练集和验证集中的分类错误率分别为 3.4%和 3.6%。
结核性葡萄膜炎的标准分类错误率较低,似乎足以用于临床和转化研究。