Developing a Predictive Tool for Hospital Discharge Disposition of Patients Poststroke with 30-Day Readmission Validation.

IF 1.8 Q3 PERIPHERAL VASCULAR DISEASE
Stroke Research and Treatment Pub Date : 2021-08-19 eCollection Date: 2021-01-01 DOI:10.1155/2021/5546766
Jin Cho, Krystal Place, Rebecca Salstrand, Monireh Rahmat, Misagh Mansouri, Nancy Fell, Mina Sartipi
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引用次数: 0

Abstract

After short-term, acute-care hospitalization for stroke, patients may be discharged home or other facilities for continued medical or rehabilitative management. The site of postacute care affects overall mortality and functional outcomes. Determining discharge disposition is a complex decision by the healthcare team. Early prediction of discharge destination can optimize poststroke care and improve outcomes. Previous attempts to predict discharge disposition outcome after stroke have limited clinical validations. In this study, readmission status was used as a measure of the clinical significance and effectiveness of a discharge disposition prediction. Low readmission rates indicate proper and thorough care with appropriate discharge disposition. We used Medicare beneficiary data taken from a subset of base claims in the years of 2014 and 2015 in our analyses. A predictive tool was created to determine discharge disposition based on risk scores derived from the coefficients of multivariable logistic regression related to an adjusted odds ratio. The top five risk scores were admission from a skilled nursing facility, acute heart attack, intracerebral hemorrhage, admission from "other" source, and an age of 75 or older. Validation of the predictive tool was accomplished using the readmission rates. A 75% probability for facility discharge corresponded with a risk score of greater than 9. The prediction was then compared to actual discharge disposition. Each cohort was further analyzed to determine how many readmissions occurred in each group. Of the actual home discharges, 95.7% were predicted to be there. However, only 47.8% of predictions for home discharge were actually discharged home. Predicted discharge to facility had 15.9% match to the actual facility discharge. The scenario of actual discharge home and predicted discharge to facility showed that 186 patients were readmitted. Following the algorithm in this scenario would have recommended continued medical management of these patients, potentially preventing these readmissions.

Abstract Image

Abstract Image

开发中风后患者出院处置预测工具,并进行 30 天再入院验证。
中风急性期短期住院治疗后,患者可能会出院回家或到其他机构继续接受医疗或康复治疗。出院后的护理地点会影响总死亡率和功能预后。确定出院处置是医疗团队的一项复杂决策。及早预测出院去向可以优化卒中后的护理并改善预后。以往预测脑卒中后出院处置结果的尝试临床验证有限。在本研究中,再入院情况被用来衡量出院处置预测的临床意义和有效性。再入院率低说明护理得当、彻底,出院处置得当。我们在分析中使用了从 2014 年和 2015 年基本报销单子集中提取的医疗保险受益人数据。我们创建了一个预测工具,根据与调整后几率比相关的多变量逻辑回归系数得出的风险评分来确定出院处置。排名前五位的风险评分分别是:从专业护理机构入院、急性心脏病发作、脑出血、"其他 "来源入院以及 75 岁或以上。利用再入院率对预测工具进行了验证。风险评分大于 9 时,75% 的患者有可能出院。然后将预测结果与实际出院情况进行比较。对每个组群进行进一步分析,以确定每个组群中有多少人再次入院。在实际出院患者中,有 95.7% 是预测到的。然而,只有 47.8% 的预测出院患者实际出院回家。预测的出院情况与实际出院情况的吻合率为 15.9%。实际出院回家和预测出院到医疗机构的情况显示,有 186 名患者再次入院。在这种情况下,如果按照算法建议对这些患者继续进行医疗管理,就有可能避免这些患者再次入院。
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来源期刊
Stroke Research and Treatment
Stroke Research and Treatment PERIPHERAL VASCULAR DISEASE-
CiteScore
3.20
自引率
0.00%
发文量
14
审稿时长
12 weeks
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