Am J Ophthalmol. 2021 Aug;228:255-261. doi: 10.1016/j.ajo.2021.03.041. Epub 2021 May 11.
To determine classification criteria for tubulointerstitial nephritis with uveitis (TINU).
Machine learning of cases with TINU and 8 other anterior uveitides.
Cases of anterior uveitides 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 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 anterior uveitides. The resulting criteria were evaluated on the validation set.
One thousand eighty-three cases of anterior uveitides, including 94 cases of TINU, were evaluated by machine learning. The overall accuracy for anterior uveitides was 97.5% in the training set and 96.7% in the validation set (95% confidence interval 92.4, 98.6). Key criteria for TINU included anterior chamber inflammation and evidence of tubulointerstitial nephritis with either (1) a positive renal biopsy or (2) evidence of nephritis (elevated serum creatinine and/or abnormal urine analysis) and an elevated urine β-2 microglobulin. The misclassification rates for TINU were 1.2% in the training set and 0% in the validation set.
The criteria for TINU had a low misclassification rate and seemed to perform well enough for use in clinical and translational research.
确定伴有葡萄膜炎的肾小管间质性肾炎(TINU)的分类标准。
采用机器学习方法对 TINU 和其他 8 种前葡萄膜炎病例进行分析。
在信息学设计的初步数据库中收集前葡萄膜炎病例,使用正式共识技术对诊断达成多数共识的病例构建最终数据库。将病例分为训练集和验证集。在训练集上使用多项逻辑回归的机器学习方法,确定一组能使前葡萄膜炎分类错误率最小化的简洁标准。在验证集上评估得出的标准。
通过机器学习评估了 1083 例前葡萄膜炎病例,其中 94 例为 TINU。训练集的总体准确率为 97.5%,验证集为 96.7%(95%置信区间 92.4,98.6)。TINU 的关键标准包括前房炎症和肾小管间质性肾炎的证据,其诊断标准为(1)肾活检阳性,或(2)肾炎证据(血清肌酐升高和/或尿液分析异常)和尿液β-2 微球蛋白升高。训练集的 TINU 误诊率为 1.2%,验证集为 0%。
TINU 的标准误诊率较低,似乎足以用于临床和转化研究。