Ling Tsai-Chieh, Chang Chiung-Chih, Wu Jia-Ling, Lin Wei-Ren, Sun Chien-Yao, Huang Chieh-Hsin, Tsai Kuen-Jer, Chang Yu-Tzu
Department of Internal Medicine, National Cheng Kung University Hospital, College of Medicine, National Cheng Kung University, Tainan, Taiwan.
Department of Neurology, Cognition and Aging Center, Kaohsiung Chang Gung Memorial Hospital, Chang Gung University College of Medicine, Kaohsiung, Taiwan.
Eur J Neurol. 2025 Jun;32(6):e70246. doi: 10.1111/ene.70246.
Cognitive impairment is common but frequently undiagnosed in the dialysis population. We aimed to develop and validate a quick and accurate screening tool using machine-learning-based approaches in them.
In this cross-sectional observational study, we administered the Mini-Mental State Examination (MMSE) and Cognitive Abilities Screening Instrument (CASI) in 508 hemodialysis patients and randomly divided them into a derivation set (70%) and a validation set (30%). Using three to five key items from MMSE and CASI as predictors, we developed six machine learning models, including Lasso, classification and regression tree (CART), random forest (RF), extreme gradient boosting, support vector machine (SVM), and artificial neural networks to identify those with a CASI score below the 20th percentile of age- and education-matched norms in the derivation set. We then evaluated the predictive performance of these models in the validation set.
The derivation samples (n = 357) had a mean (SD) age of 64.13 (11.92) years and a mean education level of 8.76 (4.91) years. Around 40% of participants had a CASI score below the 20th percentile. Among all models, the RF model achieved the highest performance of prediction, with an accuracy of 0.94, an area under the curve (AUC) of 0.95, and an F1 score of 0.92 in the validation set. The other models, except for CART, performed equally well in terms of AUC.
Our study demonstrates that using machine-learning models, we can identify patients with impaired cognition with only several questions in CASI and MMSE within 5 min.
认知障碍在透析人群中很常见,但常常未被诊断出来。我们旨在开发并验证一种基于机器学习方法的快速、准确的筛查工具,用于该人群。
在这项横断面观察性研究中,我们对508例血液透析患者进行了简易精神状态检查表(MMSE)和认知能力筛查量表(CASI)测试,并将他们随机分为推导集(70%)和验证集(30%)。我们使用MMSE和CASI中的三到五个关键项目作为预测指标,开发了六种机器学习模型,包括套索回归、分类与回归树(CART)、随机森林(RF)、极端梯度提升、支持向量机(SVM)和人工神经网络,以在推导集中识别出CASI评分低于年龄和教育程度匹配规范第20百分位数的患者。然后,我们在验证集中评估了这些模型的预测性能。
推导样本(n = 357)的平均(标准差)年龄为64.13(11.92)岁,平均教育水平为8.76(4.91)年。约40%的参与者CASI评分低于第20百分位数。在所有模型中,RF模型在验证集中的预测性能最高,准确率为0.94,曲线下面积(AUC)为0.95,F1分数为0.92。除CART外,其他模型在AUC方面表现相当。
我们的研究表明,使用机器学习模型,我们可以在5分钟内仅通过CASI和MMSE中的几个问题识别出认知受损的患者。