Comparing Montreal Cognitive Assessment Performance in Parkinson's Disease Patients: Age- and Education-Adjusted Cutoffs vs. Machine Learning.

IF 2.5 4区 医学 Q2 CLINICAL NEUROLOGY
Journal of Movement Disorders Pub Date : 2024-04-01 Epub Date: 2024-02-13 DOI:10.14802/jmd.23271
Kyeongmin Baek, Young Min Kim, Han Kyu Na, Junki Lee, Dong Ho Shin, Seok-Jae Heo, Seok Jong Chung, Kiyong Kim, Phil Hyu Lee, Young H Sohn, Jeehee Yoon, Yun Joong Kim
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Abstract

Objective: The Montreal Cognitive Assessment (MoCA) is recommended for general cognitive evaluation in Parkinson's disease (PD) patients. However, age- and education-adjusted cutoffs specifically for PD have not been developed or systematically validated across PD cohorts with diverse education levels.

Methods: In this retrospective analysis, we utilized data from 1,293 Korean patients with PD whose cognitive diagnoses were determined through comprehensive neuropsychological assessments. Age- and education-adjusted cutoffs were formulated based on 1,202 patients with PD. To identify the optimal machine learning model, clinical parameters and MoCA domain scores from 416 patients with PD were used. Comparative analyses between machine learning.

Methods: and different cutoff criteria were conducted on an additional 91 consecutive patients with PD.

Results: The cutoffs for cognitive impairment decrease with increasing age within the same education level. Similarly, lower education levels within the same age group correspond to lower cutoffs. For individuals aged 60-80 years, cutoffs were set as follows: 25 or 24 years for those with more than 12 years of education, 23 or 22 years for 10-12 years, and 21 or 20 years for 7-9 years. Comparisons between age- and education-adjusted cutoffs and the machine learning method showed comparable accuracies. The cutoff method resulted in a higher sensitivity (0.8627), whereas machine learning yielded higher specificity (0.8250).

Conclusion: Both the age- and education-adjusted cutoff.

Methods: and machine learning.

Methods: demonstrated high effectiveness in detecting cognitive impairment in PD patients. This study highlights the necessity of tailored cutoffs and suggests the potential of machine learning to improve cognitive assessment in PD patients.

比较帕金森病患者的 MoCA 表现:年龄和教育程度调整临界值与机器学习。
背景和目的:蒙特利尔认知评估(MoCA)被推荐用于帕金森病(PD)的一般认知评估。然而,针对帕金森病的年龄和教育程度调整截断值尚未开发出来,也未在具有不同教育程度的帕金森病队列中进行系统性验证:这项回顾性分析利用了 1293 名韩国帕金森病患者的数据,这些患者的认知诊断是通过全面的神经心理学评估确定的。根据 1,202 名帕金森病患者的情况,制定了年龄和教育程度调整后的临界值。为确定最佳机器学习模型,使用了 416 名帕金森病患者的临床参数和 MoCA 领域得分。对另外91名连续的帕金森病患者进行了机器学习和不同截断值之间的比较分析:结果:在同一教育水平下,认知障碍的临界值随着年龄的增长而降低。同样,在同一年龄组中,教育水平越低,截值越低。对于年龄在 60-80 岁的患者,设定的临界值如下:教育年限超过 12 年的为 25 岁或 24 岁,10-12 年的为 23 岁或 22 岁,7-9 年的为 21 岁或 20 岁。将年龄和教育程度调整后的临界值与机器学习方法进行比较,结果显示两者的准确度相当。截止值法的灵敏度更高(0.8627),而机器学习法的特异性更高(0.8250):经年龄和教育程度调整的临界值法和机器学习在检测帕金森病认知功能障碍方面均表现出较高的有效性。这项研究强调了定制截断值的必要性,并表明了机器学习在增强帕金森病认知评估方面的潜力。
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来源期刊
Journal of Movement Disorders
Journal of Movement Disorders CLINICAL NEUROLOGY-
CiteScore
2.50
自引率
5.10%
发文量
49
审稿时长
12 weeks
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