Closs Vera Elizabeth, Ziegelmann Patricia Klarmann, Flores João Henrique Ferreira, Gomes Irenio, Schwanke Carla Helena Augustin
Graduate Program in Biomedical Gerontology, Institute of Geriatrics and Gerontology (IGG), Pontifical Catholic University of Rio Grande do Sul (PUCRS), Av. Ipiranga 6681, Prédio 81, 7 Andar, Sala 703, 90619-900 Porto Alegre, RS, Brazil.
Postgraduate Program in Epidemiology and Postgraduate Program in Cardiovascular Sciences, Federal University of Rio Grande do Sul (UFRGS), Av. Bento Gonçalves 9500, Prédio 43-111, Agronomia, 91509-900 Porto Alegre, RS, Brazil.
Curr Gerontol Geriatr Res. 2017;2017:8703503. doi: 10.1155/2017/8703503. Epub 2017 Nov 20.
Anthropometry is a useful tool for assessing some risk factors for frailty. Thus, the aim of this study was to verify the discriminatory performance of anthropometric measures in identifying frailty in the elderly and to create an easy-to-use tool.
Cross-sectional study: a subset from the Multidimensional Study of the Elderly in the Family Health Strategy (EMI-SUS) evaluating 538 older adults. Individuals were classified using the Fried Phenotype criteria, and 26 anthropometric measures were obtained. The predictive ability of anthropometric measures in identifying frailty was identified through logistic regression and an artificial neural network. The accuracy of the final models was assessed with an ROC curve.
The final model comprised the following predictors: weight, waist circumference, bicipital skinfold, sagittal abdominal diameter, and age. The final neural network models presented a higher ROC curve of 0.78 (CI 95% 0.74-0.82) ( < 0.001) than the logistic regression model, with an ROC curve of 0.71 (CI 95% 0.66-0.77) ( < 0.001).
The neural network model provides a reliable tool for identifying prefrailty/frailty in the elderly, with the advantage of being easy to apply in the primary health care. It may help to provide timely interventions to ameliorate the risk of adverse events.
人体测量学是评估衰弱某些危险因素的有用工具。因此,本研究的目的是验证人体测量指标在识别老年人衰弱方面的鉴别性能,并创建一个易于使用的工具。
横断面研究:家庭健康战略中老年人多维研究(EMI-SUS)的一个子集,评估了538名老年人。根据弗里德表型标准对个体进行分类,并获取了26项人体测量指标。通过逻辑回归和人工神经网络确定人体测量指标在识别衰弱方面的预测能力。用ROC曲线评估最终模型的准确性。
最终模型包括以下预测指标:体重、腰围、肱二头肌皮褶厚度、腹矢状径和年龄。最终的神经网络模型的ROC曲线为0.78(95%置信区间0.74 - 0.82)(P < 0.001),高于逻辑回归模型,逻辑回归模型的ROC曲线为0.71(95%置信区间0.66 - 0.77)(P < 0.001)。
神经网络模型为识别老年人的衰弱前期/衰弱提供了一个可靠的工具,其优点是易于在初级卫生保健中应用。它可能有助于提供及时的干预措施,以降低不良事件的风险。