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Machine learning: how much does it improve the prediction of unplanned hospital admissions?

机译:机器学习:它可以在多大程度上改善计划外住院的预测?

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IntroductionRisk prediction models can be used to inform decision-making in clinical settings. With large and detailed electronic medical record data, machine learning may improve predictions. The objective of this work is to determine the feasibility and accuracy of machine learning versus logistic regression to predict unplanned hospital admissions. Objectives and ApproachData from primary care electronic medical records for community-dwelling adults in Alberta, Canada available from the Canadian Primary Care Sentinel Surveillance Network will be linked to acute care administrative health data held by Alberta Health Services. Two regression methods (forward stepwise logistic, LASSO logistic) will be compared with three machine learning methods (classification tree, random forest, gradient boosted trees). Prior primary and acute care use will be used to predict three outcomes: ≥1 unplanned admission within 1 year, ≥1 unplanned admission within 90 days, and ≥1 unplanned admission within 1 year due to an ambulatory care sensitive condition. ResultsThe results of this work in progress will be presented at the conference. 41,142 patients will have their primary and acute care data linked. We anticipate that the machine learning methods will improve predictive performance but will be more challenging for clinicians and patients to understand, including why a given patient is predicted to be at higher risk. The primary comparison of machine learning and regression methods will be based on positive predictive values corresponding to the top 5% predicted risk threshold, and estimated via 10-fold cross-validation. Conclusion/ImplicationsThis project aims to help researchers decide which statistical methods to use for risk prediction models. When considering machine learning methods the best approach may be to try multiple methods, compare their predictive accuracy and interpretability, and then choose a final method.
机译:简介风险预测模型可用于为临床环境中的决策提供依据。借助庞大而详细的电子病历数据,机器学习可以改善预测。这项工作的目的是确定机器学习与Logistic回归以预测计划外的住院人数的可行性和准确性。目标和方法可从加拿大初级保健前哨监视网络获得的加拿大艾伯塔省成年人社区初级保健电子病历的数据将与艾伯塔省卫生服务部门持有的急性保健行政健康数据相关联。将比较两种回归方法(正向逐步逻辑,LASSO逻辑)与三种机器学习方法(分类树,随机森林,梯度提升树)。先前的初级和急性护理使用将被用于预测三个结果:1年内≥1次非计划性入院,90天之内≥1个非计划性入院,以及由于非卧床护理敏感状况而在1年内≥1个非计划性入院。结果这项正在进行的工作的结果将在会议上介绍。 41,142名患者的主要和急性护理数据相关联。我们预计,机器学习方法将改善预测性能,但对临床医生和患者而言将更具挑战性,包括为何预测给定患者的风险更高。机器学习和回归方法的主要比较将基于与最高5%预测风险阈值相对应的阳性预测值,并通过10倍交叉验证进行估算。结论/意义该项目旨在帮助研究人员确定用于风险预测模型的统计方法。在考虑机器学习方法时,最好的方法可能是尝试多种方法,比较它们的预测准确性和可解释性,然后选择最终方法。

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