Torrens University Australia, Adelaide, Australia; Fra. National Health and Medical Research Council of Australia Centre of Research Excellence Ilty Trans-Disciplinary Research to Achieve Healthy Ageing, Adelaide, Australia.
Torrens University Australia, Adelaide, Australia.
Int J Med Inform. 2020 Apr;136:104094. doi: 10.1016/j.ijmedinf.2020.104094. Epub 2020 Feb 4.
Research has shown that frailty, a geriatric syndrome associated with an increased risk of negative outcomes for older people, is highly prevalent among residents of residential aged care facilities (also called long term care facilities or nursing homes). However, progress on effective identification of frailty within residential care remains at an early stage, necessitating the development of new methods for accurate and efficient screening.
We aimed to determine the effectiveness of artificial intelligence (AI) algorithms in accurately identifying frailty among residents aged 75 years and over in comparison with a calculated electronic Frailty Index (eFI) based on a routinely-collected residential aged care administrative data set drawn from 10 residential care facilities located in Queensland, Australia. A secondary objective included the identification of best-performing candidate algorithms.
We designed a frailty prediction system based on the eFI identification of frailty, allocating 84.5 % and 15.5 % of the data to training and test data sets respectively. We compared the performance of 18 specific scenarios to predict frailty against eFI based on unique combinations of three ML algorithms (support vector machines [SVM], decision trees [DT] and K-nearest neighbours [KNN]) and six cases (6, 10, 11, 14, 39 and 70 input variables). We calculated accuracy, percentage positive and negative agreement, sensitivity, specificity, Cohen's kappa and Prevalence- and Bias- Adjusted Kappa (PABAK), table frequencies and positive and negative predictive values.
Of 592 eligible resident records, 500 were allocated to the training set and 92 to the test set. Three scenarios (10, 11 and 70 input variables), all based on SVM algorithm, returned overall accuracy above 75 %.
There is some potential for AI techniques to contribute towards better frailty identification within residential care. However, potential benefits will need to be weighed against administrative burden, data quality concerns and presence of potential bias.
研究表明,衰弱是一种与老年人负面结果风险增加相关的老年综合征,在居住在养老院(也称为长期护理机构或养老院)的老年人中非常普遍。然而,在养老院中进行衰弱的有效识别方面仍处于早期阶段,需要开发新的方法来进行准确和高效的筛查。
我们旨在确定人工智能(AI)算法在识别澳大利亚昆士兰州 10 家养老院中年龄在 75 岁及以上的居民衰弱方面的准确性,与基于常规收集的养老院管理数据集计算得出的电子衰弱指数(eFI)进行比较。次要目的包括确定表现最佳的候选算法。
我们设计了一个基于 eFI 识别衰弱的衰弱预测系统,将 84.5%和 15.5%的数据分别分配给训练数据集和测试数据集。我们比较了 18 种特定场景的性能,这些场景基于三种 ML 算法(支持向量机 [SVM]、决策树 [DT] 和 K-最近邻 [KNN])和六种情况(6、10、11、14、39 和 70 个输入变量)的独特组合来预测衰弱与 eFI 的关系。我们计算了准确性、阳性和阴性一致率、灵敏度、特异性、Cohen's kappa 和 Prevalence- and Bias- Adjusted Kappa(PABAK)、表格频率以及阳性和阴性预测值。
在 592 份符合条件的居民记录中,有 500 份被分配到训练集,92 份被分配到测试集。三种方案(10、11 和 70 个输入变量),均基于 SVM 算法,总体准确率均高于 75%。
人工智能技术有可能有助于更好地识别养老院中的衰弱。然而,需要权衡潜在的益处与行政负担、数据质量问题和潜在的偏见。