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基于数据的初级保健认知障碍筛查决策:一项使用 ELSA-Brasil 研究数据的机器学习方法。

Data-driven decision making for the screening of cognitive impairment in primary care: a machine learning approach using data from the ELSA-Brasil study.

机构信息

Centro de Pesquisa Clínica e Epidemiológica, Hospital Universitário, Universidade de São Paulo, São Paulo, SP, Brasil.

Hospital Israelita Albert Einstein, São Paulo, SP, Brasil.

出版信息

Braz J Med Biol Res. 2023 Jan 27;56:e12475. doi: 10.1590/1414-431X2023e12475. eCollection 2023.

Abstract

The systematic assessment of cognitive performance of older people without cognitive complaints is controversial and unfeasible. Identifying individuals at higher risk of cognitive impairment could optimize resource allocation. We aimed to develop and test machine learning models to predict cognitive impairment using variables obtainable in primary care settings. In this cross-sectional study, we included 8,291 participants of the baseline assessment of the ELSA-Brasil study, who were aged between 50 and 74 years and were free of dementia. Cognitive performance was assessed with a neuropsychological battery and cognitive impairment was defined as global cognitive z-score below 2 standard deviations. Variables used as input to the prediction models included demographics, social determinants, clinical conditions, family history, lifestyle, and laboratory tests. We developed machine learning models using logistic regression, neural networks, and gradient boosted trees. Participants' mean age was 58.3±6.2 years, 55% were female. Cognitive impairment was present in 328 individuals (4%). Machine learning algorithms presented fair to good discrimination (areas under the ROC curve between 0.801 and 0.873). Extreme Gradient Boosting presented the highest discrimination, high specificity (97%), and negative predictive value (97%). Seventy-six percent of the individuals with cognitive impairment were included among the highest ranked individuals by this algorithm. In conclusion, we developed and tested a machine learning model to predict cognitive impairment based on primary care data that presented good discrimination and high specificity. These characteristics could support the detection of patients who would not benefit from cognitive assessment, facilitating the allocation of human and economic resources.

摘要

对没有认知主诉的老年人进行认知表现的系统评估是有争议的,也是不可行的。识别认知障碍风险较高的个体可以优化资源分配。我们旨在开发和测试机器学习模型,使用初级保健环境中可获得的变量来预测认知障碍。在这项横断面研究中,我们纳入了 ELSA-Brasil 研究基线评估的 8291 名参与者,年龄在 50 至 74 岁之间,且无痴呆。使用神经心理学测试评估认知表现,将全球认知 z 分数低于 2 个标准差定义为认知障碍。作为预测模型输入的变量包括人口统计学、社会决定因素、临床情况、家族史、生活方式和实验室检查。我们使用逻辑回归、神经网络和梯度提升树开发了机器学习模型。参与者的平均年龄为 58.3±6.2 岁,55%为女性。328 人(4%)存在认知障碍。机器学习算法的区分度为中等至良好(ROC 曲线下面积在 0.801 至 0.873 之间)。极端梯度提升的区分度最高,特异性高(97%),阴性预测值高(97%)。该算法将 76%的认知障碍患者纳入了最高排名的患者中。总之,我们开发并测试了一种基于初级保健数据的机器学习模型,以预测认知障碍,该模型具有良好的区分度和高特异性。这些特征可以支持检测那些不会从认知评估中受益的患者,从而有助于分配人力和经济资源。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b199/9883002/c70236f2a3c0/1414-431X-bjmbr-56-e12475-gf001.jpg

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