Rankin Debbie, Black Michaela, Flanagan Bronac, Hughes Catherine F, Moore Adrian, Hoey Leane, Wallace Jonathan, Gill Chris, Carlin Paul, Molloy Anne M, Cunningham Conal, McNulty Helene
School of Computing, Engineering and Intelligent Systems, Ulster University, Derry~Londonderry, United Kingdom.
School of Biomedical Sciences, Nutrition Innovation Centre for Food and Health, Ulster University, Coleraine, United Kingdom.
JMIR Med Inform. 2020 Sep 16;8(9):e20995. doi: 10.2196/20995.
Machine learning techniques, specifically classification algorithms, may be effective to help understand key health, nutritional, and environmental factors associated with cognitive function in aging populations.
This study aims to use classification techniques to identify the key patient predictors that are considered most important in the classification of poorer cognitive performance, which is an early risk factor for dementia.
Data were used from the Trinity-Ulster and Department of Agriculture study, which included detailed information on sociodemographic, clinical, biochemical, nutritional, and lifestyle factors in 5186 older adults recruited from the Republic of Ireland and Northern Ireland, a proportion of whom (987/5186, 19.03%) were followed up 5-7 years later for reassessment. Cognitive function at both time points was assessed using a battery of tests, including the Repeatable Battery for the Assessment of Neuropsychological Status (RBANS), with a score <70 classed as poorer cognitive performance. This study trained 3 classifiers-decision trees, Naïve Bayes, and random forests-to classify the RBANS score and to identify key health, nutritional, and environmental predictors of cognitive performance and cognitive decline over the follow-up period. It assessed their performance, taking note of the variables that were deemed important for the optimized classifiers for their computational diagnostics.
In the classification of a low RBANS score (<70), our models performed well (F score range 0.73-0.93), all highlighting the individual's score from the Timed Up and Go (TUG) test, the age at which the participant stopped education, and whether or not the participant's family reported memory concerns to be of key importance. The classification models performed well in classifying a greater rate of decline in the RBANS score (F score range 0.66-0.85), also indicating the TUG score to be of key importance, followed by blood indicators: plasma homocysteine, vitamin B6 biomarker (plasma pyridoxal-5-phosphate), and glycated hemoglobin.
The results suggest that it may be possible for a health care professional to make an initial evaluation, with a high level of confidence, of the potential for cognitive dysfunction using only a few short, noninvasive questions, thus providing a quick, efficient, and noninvasive way to help them decide whether or not a patient requires a full cognitive evaluation. This approach has the potential benefits of making time and cost savings for health service providers and avoiding stress created through unnecessary cognitive assessments in low-risk patients.
机器学习技术,特别是分类算法,可能有助于理解与老年人群认知功能相关的关键健康、营养和环境因素。
本研究旨在使用分类技术来识别在较差认知表现分类中被认为最重要的关键患者预测因素,较差认知表现是痴呆的早期危险因素。
使用了来自三一学院-阿尔斯特大学和农业部研究的数据,其中包括从爱尔兰共和国和北爱尔兰招募的5186名老年人的社会人口统计学、临床、生化、营养和生活方式因素的详细信息,其中一部分人(987/5186,19.03%)在5至7年后接受随访重新评估。两个时间点的认知功能均使用一系列测试进行评估,包括可重复神经心理状态评估量表(RBANS),得分<70被归类为较差认知表现。本研究训练了3种分类器——决策树、朴素贝叶斯和随机森林——来对RBANS得分进行分类,并识别随访期间认知表现和认知衰退的关键健康、营养和环境预测因素。研究评估了它们的性能,并注意到对优化分类器的计算诊断而言被认为重要的变量。
在对低RBANS得分(<70)的分类中,我们的模型表现良好(F得分范围为0.73 - 0.93),均突出了计时起立行走测试(TUG)的个人得分、参与者停止接受教育的年龄以及参与者的家人是否报告有记忆问题最为重要。分类模型在对RBANS得分下降率较高的情况进行分类时表现良好(F得分范围为0.66 - 0.85),同样表明TUG得分最为重要,其次是血液指标:血浆同型半胱氨酸(又称血同型半胱氨酸)、维生素B6生物标志物(血浆磷酸吡哆醛)和糖化血红蛋白。
结果表明,医疗保健专业人员仅通过几个简短的非侵入性问题就有可能高度自信地对认知功能障碍的可能性进行初步评估,从而提供一种快速、高效且非侵入性的方法来帮助他们决定患者是否需要进行全面的认知评估。这种方法有可能为医疗服务提供者节省时间和成本,并避免给低风险患者进行不必要的认知评估所带来的压力。