Department of Neurology, Faculty of Medicine, University of Muhammadiyah Prof. Dr. HAMKA, Jakarta, Indonesia,
Department of Epidemiology, Faculty of Public Health, University of Indonesia, Jakarta, Indonesia,
Neuroepidemiology. 2020;54(3):243-250. doi: 10.1159/000503830. Epub 2020 Apr 2.
Mild cognitive impairment (MCI) is predicted to be a common cognitive impairment in primary health care. Early detection and appropriate management of MCI can slow the rate of deterioration in cognitive deficits. The current methods for early detection of MCI have not been satisfactory for some doctors in primary health care. Therefore, an easy, fast, accurate and reliable method for screening of MCI in primary health care is needed. This study intends to develop a decision tree clinical algorithm based on a combination of simple neurological physical examination and brief cognitive assessment for distinguishing elderly with MCI from normal elderly in primary health care. This is a diagnostic study, comparative analysis in elderly with normal cognition and those presenting with MCI. We enrolled 212 elderly people aged 60.04-79.92 years old. Multivariate statistical analysis showed that the existence of subjective memory complaints, history of lack of physical exercise, abnormal verbal semantic fluency, and poor one-leg balance were found to be predictors of MCI diagnosis (p ≤ 0.001; p = 0.036; p ≤ 0.001; p = 0.013). The decision trees clinical algorithm, which is a combination of these variables, has a fairly good accuracy in distinguishing elderly with MCI from normal elderly (accuracy = 89.62%; sensitivity = 71.05%; specificity = 100%; positive predictive value = 100%; negative predictive value = 86.08%; negative likelihood ratio = 0.29; and time effectiveness ratio = 3.03). These results suggest that the decision tree clinical algorithm can be used for screening of MCI in the elderly in primary health care.
轻度认知障碍 (MCI) 预计将成为初级保健中的常见认知障碍。早期发现和适当管理 MCI 可以减缓认知缺陷的恶化速度。目前用于早期发现 MCI 的方法对一些初级保健医生来说并不令人满意。因此,需要一种简单、快速、准确和可靠的方法来筛选初级保健中的 MCI。本研究旨在开发一种基于简单神经体检和简短认知评估相结合的决策树临床算法,用于区分初级保健中的 MCI 老年患者和正常老年患者。这是一项诊断研究,对认知正常和存在 MCI 的老年患者进行比较分析。我们招募了 212 名年龄在 60.04-79.92 岁的老年人。多变量统计分析显示,存在主观记忆主诉、缺乏身体锻炼史、言语语义流畅性异常和单腿平衡差被发现是 MCI 诊断的预测因素(p ≤ 0.001;p = 0.036;p ≤ 0.001;p = 0.013)。结合这些变量的决策树临床算法在区分 MCI 老年患者和正常老年患者方面具有相当高的准确性(准确率 = 89.62%;灵敏度 = 71.05%;特异性 = 100%;阳性预测值 = 100%;阴性预测值 = 86.08%;阴性似然比 = 0.29;时间效率比 = 3.03)。这些结果表明,决策树临床算法可用于筛选初级保健中的 MCI 老年患者。