An Algorithm, Integrating a Short Form of the Functional Autonomy Measurement System, to Predict Discharge Destination After Acute Care Post-Stroke

Pub Date : 2024-07-08 DOI:10.3138/ptc-2023-0102
Hélène Corriveau, Carol L. Richards, L. Trottier, Gina Bravo
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Abstract

This study develops a short form of the Functional Autonomy Measurement System (SMAF), the SF-SMAF, for measuring functional capacity in patients undergoing acute care post-stroke, identifies predictors of the discharge destination chosen by the care team, and derives an algorithm that integrates the SF-SMAF and other predictors to guide discharge planning. This multisite prospective cohort study involved 200 patients assessed with the SMAF within 8 days post-stroke. Sociodemographic and clinical data were extracted from patients’ medical records. We performed linear regressions to identify subsets of SMAF items that closely approximate the SMAF total score and asked a panel of experts to make the final selection. We used logistic regression to develop an algorithm that predicts discharge destinations using the SF-SMAF and other predictors. The SF-SMAF includes four items: “washing”, “walking inside”, “judgment”, and “budgeting”. It is highly correlated with the SMAF ( R2 = 0.94) and, alone, predicts 71% of discharge destinations. Adding obstacles to returning home, support required from caregivers, and the ability to communicate, raises the prediction of the proposed algorithm to 82%. The SF-SMAF results closely approximate those of the SMAF in the first week post-stroke. Following further validation, the proposed algorithm could guide clinicians in using the SF-SMAF for discharge planning.
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结合功能自主性测量系统简表的算法,预测脑卒中后急性期护理的出院去向
本研究开发了功能自主性测量系统(SMAF)的简表 SF-SMAF,用于测量脑卒中后接受急性期护理的患者的功能能力,确定了护理团队选择出院目的地的预测因素,并得出了一种综合 SF-SMAF 和其他预测因素的算法,以指导出院规划。这项多地点前瞻性队列研究涉及 200 名脑卒中后 8 天内接受 SMAF 评估的患者。社会人口学和临床数据均来自患者的医疗记录。我们通过线性回归来确定与 SMAF 总分接近的 SMAF 项目子集,并请专家小组进行最终筛选。我们使用逻辑回归法开发了一种算法,可通过 SF-SMAF 和其他预测因子预测出院目的地。SF-SMAF 包括四个项目:"洗涤"、"室内行走"、"判断 "和 "预算"。它与 SMAF 高度相关(R2 = 0.94),仅此一项就能预测 71% 的出院去向。如果再加上重返家园的障碍、需要护理人员的支持以及沟通能力等因素,该算法的预测率将提高到 82%。SF-SMAF 的结果与脑卒中后第一周的 SMAF 非常接近。在进一步验证后,所提出的算法可以指导临床医生使用 SF-SMAF 制定出院计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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