首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Is the Random Forest Algorithm Suitable for Predicting Parkinson’s Disease with Mild Cognitive Impairment out of Parkinson’s Disease with Normal Cognition?
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Is the Random Forest Algorithm Suitable for Predicting Parkinson’s Disease with Mild Cognitive Impairment out of Parkinson’s Disease with Normal Cognition?

机译:随机森林算法是否适合预测具有正常认知能力的帕金森氏病中的患有轻度认知障碍的帕金森氏病?

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摘要

Because it is possible to delay the progression of dementia if it is detected and treated in an early stage, identifying mild cognitive impairment (MCI) is an important primary goal of dementia treatment. The objectives of this study were to develop a random forest-based Parkinson’s disease with mild cognitive impairment (PD-MCI) prediction model considering health behaviors, environmental factors, medical history, physical functions, depression, and cognitive functions using the Parkinson’s Dementia Clinical Epidemiology Data (a national survey conducted by the Korea Centers for Disease Control and Prevention) and to compare the prediction accuracy of our model with those of decision tree and multiple logistic regression models. We analyzed 96 subjects (PD-MCI = 45; Parkinson’s disease with normal cognition (PD-NC) = 51 subjects). The prediction accuracy of the model was calculated using the overall accuracy, sensitivity, and specificity. Based on the random forest analysis, the major risk factors of PD-MCI were, in descending order of magnitude, Clinical Dementia Rating (CDR) sum of boxes, Untitled Parkinson’s Disease Rating (UPDRS) motor score, the Korean Mini Mental State Examination (K-MMSE) total score, and the K- Korean Montreal Cognitive Assessment (K-MoCA) total score. The random forest method achieved a higher sensitivity than the decision tree model. Thus, it is advisable to develop a protocol to easily identify early stage PDD based on the PD-MCI prediction model developed in this study, in order to establish individualized monitoring to track high-risk groups.
机译:因为如果在早期发现并治疗痴呆症,有可能延缓痴呆症的进展,所以识别轻度认知障碍(MCI)是痴呆症治疗的重要主要目标。这项研究的目的是使用帕金森氏痴呆症临床流行病学,考虑健康行为,环境因素,病史,身体功能,抑郁和认知功能,开发一种基于森林的随机性帕金森氏病,具有轻度认知障碍(PD-MCI)预测模型数据(由韩国疾病预防控制中心进行的全国性调查),并将我们的模型的预测准确性与决策树和多元逻辑回归模型的预测准确性进行比较。我们分析了96位受试者(PD-MCI = 45;具有正常认知能力的帕金森氏病(PD-NC)= 51位受试者)。使用整体准确性,敏感性和特异性计算模型的预测准确性。根据随机森林分析,PD-MCI的主要危险因素按大小顺序依次为:临床痴呆评分(CDR)盒总和,无标题帕金森氏病评分(UPDRS)运动评分,韩国迷你精神状态检查( K-MMSE)总分,以及K-韩国蒙特利尔认知评估(K-MoCA)总分。随机森林方法比决策树模型具有更高的灵敏度。因此,建议根据本研究开发的PD-MCI预测模型,开发一种协议,以轻松识别早期PDD,以建立个性化监测以追踪高危人群。

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