文化大學機構典藏 CCUR:Item 987654321/44640
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    Please use this identifier to cite or link to this item: https://irlib.pccu.edu.tw/handle/987654321/44640


    Title: NMD-12: A new machine-learning derived screening instrument to detect mild cognitive impairment and dementia
    Authors: Chiu, PY (Chiu, Pai-Yi)
    Tang, HP (Tang, Haipeng)
    Wei, CY (Wei, Cheng-Yu)
    Zhang, CY (Zhang, Chaoyang)
    Hung, GU (Hung, Guang-Uei)
    Zhou, WH (Zhou, Weihua)
    Contributors: 運動與健康促進學系
    Keywords: ALZHEIMERS ASSOCIATION WORKGROUPS
    AD8 INFORMANT INTERVIEW
    DIAGNOSTIC GUIDELINES
    NATIONAL INSTITUTE
    CUTOFF SCORES
    RELIABILITY
    VALIDITY
    DISEASE
    VERSION
    RECOMMENDATIONS
    Date: 2019-05-08
    Issue Date: 2019-06-25 12:42:57 (UTC+8)
    Abstract: Introduction

    Using machine learning techniques, we developed a brief questionnaire to aid neurologists and neuropsychologists in the screening of mild cognitive impairment (MCI) and dementia.

    Methods

    With the reduction of the survey size as a goal of this research, feature selection based on information gain was performed to rank the contribution of the 45 items corresponding to patient responses to the specified questions. The most important items were used to build the optimal screening model based on the accuracy, practicality, and interpretability. The diagnostic accuracy for discriminating normal cognition (NC), MCI, very mild dementia (VMD) and dementia was validated in the test group.

    Results

    The screening model (NMD-12) was constructed with the 12 items that were ranked the highest in feature selection. The receiver-operator characteristic (ROC) analysis showed that the area under the curve (AUC) in the test group was 0.94 for discriminating NC vs. MCI, 0.88 for MCI vs. VMD, 0.97 for MCI vs. dementia, and 0.96 for VMD vs. dementia, respectively.

    Discussion

    The NMD-12 model has been developed and validated in this study. It provides healthcare professionals with a simple and practical screening tool which accurately differentiates NC, MCI, VMD, and dementia.
    Relation: PLoS ONE 14(3): e0213430
    Appears in Collections:[Department of Exercise and Health Promotion] journal articles

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