Layer6 AI, Toronto, Ontario, Canada.
Department of Computer Science, University of Toronto, Toronto, Ontario, Canada.
BMJ Open. 2022 Apr 1;12(4):e051403. doi: 10.1136/bmjopen-2021-051403.
To predict older adults' risk of avoidable hospitalisation related to ambulatory care sensitive conditions (ACSC) using machine learning applied to administrative health data of Ontario, Canada.
DESIGN, SETTING AND PARTICIPANTS: A retrospective cohort study was conducted on a large cohort of all residents covered under a single-payer system in Ontario, Canada over the period of 10 years (2008-2017). The study included 1.85 million Ontario residents between 65 and 74 years old at any time throughout the study period.
Administrative health data from Ontario, Canada obtained from the (ICES formely known as the Institute for Clinical Evaluative Sciences Data Repository.
Risk of hospitalisations due to ACSCs 1 year after the observation period.
The study used a total of 1 854 116 patients, split into train, validation and test sets. The ACSC incidence rates among the data points were 1.1% for all sets. The final XGBoost model achieved an area under the receiver operating curve of 80.5% and an area under precision-recall curve of 0.093 on the test set, and the predictions were well calibrated, including in key subgroups. When ranking the model predictions, those at the top 5% of risk as predicted by the model captured 37.4% of those presented with an ACSC-related hospitalisation. A variety of features such as the previous number of ambulatory care visits, presence of ACSC-related hospitalisations during the observation window, age, rural residence and prescription of certain medications were contributors to the prediction. Our model was also able to capture the geospatial heterogeneity of ACSC risk in Ontario, and especially the elevated risk in rural and marginalised regions.
This study aimed to predict the 1-year risk of hospitalisation from ambulatory-care sensitive conditions in seniors aged 65-74 years old with a single, large-scale machine learning model. The model shows the potential to inform population health planning and interventions to reduce the burden of ACSC-related hospitalisations.
利用机器学习对加拿大安大略省的医疗保健数据进行分析,预测老年人因可避免的门诊护理敏感条件(ACSC)而住院的风险。
设计、地点和参与者:这是一项回顾性队列研究,对安大略省单一支付系统下的大量居民进行了研究,时间跨度为 10 年(2008 年至 2017 年)。研究包括 185 万在整个研究期间任何时候年龄在 65 至 74 岁之间的安大略省居民。
安大略省加拿大的医疗保健数据来自(ICES 前身为临床评估科学研究所数据资源库)。
观察期后 1 年内因 ACSC 住院的风险。
该研究共使用了 1854116 名患者,分为训练集、验证集和测试集。所有数据集的 ACSC 发病率为 1.1%。最终的 XGBoost 模型在测试集上的接收器操作曲线下面积为 80.5%,精度-召回曲线下面积为 0.093,预测结果校准良好,包括在关键亚组中。当对模型预测进行排名时,模型预测的风险前 5%的患者中,有 37.4%的患者因 ACSC 相关住院而接受治疗。各种特征,如之前的门诊就诊次数、观察期内是否存在 ACSC 相关住院、年龄、农村居住和某些药物的处方,都是预测的因素。我们的模型还能够捕捉安大略省 ACSC 风险的地理空间异质性,特别是农村和边缘化地区的风险升高。
本研究旨在利用单一的大型机器学习模型预测 65-74 岁老年人因门诊护理敏感条件而住院的 1 年风险。该模型显示出了为减少 ACSC 相关住院负担而进行人群健康规划和干预的潜力。