Comparison Analysis of Machine Learning Algorithms to Rank Alzheimer’s Disease Risk Factors by Importance

M. Mahyoub, M. Randles, T. Baker, Po Yang
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引用次数: 11

Abstract

People have always feared aging, and the increasing rate of dementia disease caused this fear to twofold. Dementia is irreversible, unstoppable and has no known cure. According to Alzheimer's Disease International 2015 and World Alzheimer Report 2015, the estimated financial cost for healthcare services of Alzheimer's Disease is $1 Trillion in 2018. This paper discusses the importance of investigating Alzheimer's Disease using machine learning, the need to use both behavioural and biological markers data, and a computational method to rank Alzheimer's Disease risk factors by importance using different machine learning models on Alzheimer's Disease clinical assessment data from ADNI. The dataset contains Alzheimer's Disease risk factors data related to medical history, family dementia history, demographical, and some lifestyle data for 1635 subjects. There are 387 normal control, 87 significant memory concerns, 289 early mild cognitive impairment, 539 late mild cognitive impairment and 333 Alzheimer's Disease subjects. We deployed different machine learning models on the dataset to rank the importance of the variables (risk factors). The results show that some risk factors in subjects genetically, demography and lifestyle are more important than some medical history risk factors. Having APOE4, education level, age, weight, family dementia history, and type of work rank as more influential among Alzheimer's Disease subjects.
机器学习算法对阿尔茨海默病危险因素重要性排序的比较分析
人们一直害怕衰老,而痴呆症发病率的上升使这种恐惧翻了一番。痴呆症是不可逆转的,不可阻挡的,并且没有已知的治疗方法。根据《2015年国际阿尔茨海默病报告》和《2015年世界阿尔茨海默病报告》,2018年阿尔茨海默病医疗保健服务的估计财务成本为1万亿美元。本文讨论了使用机器学习研究阿尔茨海默病的重要性,使用行为和生物标记数据的必要性,以及使用不同的机器学习模型对来自ADNI的阿尔茨海默病临床评估数据按重要性对阿尔茨海默病危险因素进行排序的计算方法。该数据集包含1635名受试者的阿尔茨海默病风险因素数据,包括病史、家族痴呆史、人口统计数据和一些生活方式数据。有387名正常对照组,87名显著记忆问题,289名早期轻度认知障碍,539名晚期轻度认知障碍和333名阿尔茨海默病受试者。我们在数据集上部署了不同的机器学习模型,对变量(风险因素)的重要性进行排序。结果表明,遗传因素、人口统计学因素和生活方式因素比某些病史风险因素更重要。APOE4水平、受教育程度、年龄、体重、家族史、工作类型对阿尔茨海默病的影响较大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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