Reducing Readmission for Sepsis by Improving Risk Prediction Algorithms.

IF 2.7 3区 医学 Q2 CRITICAL CARE MEDICINE
Valerie J Renard, Parisa Farahani, Leanne M Boehm, Marianna LaNoue, Oluwatosin Akingbule, Hanzhang Xu, Amy L B Frazier, David Edelman, Truls Østbye, Lana Wahid
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引用次数: 0

Abstract

Unplanned readmissions after sepsis, rates of which range from 17.5% to 32%, pose substantial challenges for health care systems. Associated costs for sepsis surpass those for other critical conditions. Existing readmission risk models rely primarily on clinical indicators, which limits their predictive accuracy for patients with sepsis. This review explores how integrating social determinants of health into readmission models can enhance model precision and applicability for predicting 30-day readmission among sepsis survivors. Although socioeconomic status, neighborhood deprivation, and access to health care are known to influence postdischarge outcomes, these social determinants of health are underused in current risk algorithms. Evidence shows that incorporating social determinants of health into predictive models significantly improves model performance. Furthermore, failure to account for health disparities driven by social determinants of health in high-risk populations can exacerbate existing inequities in health care outcomes. The integration of social determinants of health into sepsis readmission risk models offers a promising avenue for improving prediction accuracy, reducing readmissions, and optimizing care for vulnerable populations. Future research should focus on refining these models and exploring postdischarge monitoring strategies to further mitigate the burden of sepsis readmissions.

通过改进风险预测算法减少败血症的再入院。
败血症后的意外再入院率从17.5%到32%不等,对卫生保健系统构成了重大挑战。败血症的相关费用超过了其他危重疾病的相关费用。现有的再入院风险模型主要依赖于临床指标,这限制了其对脓毒症患者的预测准确性。本综述探讨了如何将健康的社会决定因素整合到再入院模型中,以提高模型的精度和预测败血症幸存者30天再入院的适用性。虽然已知社会经济地位、社区贫困和获得卫生保健会影响出院后的结果,但在当前的风险算法中,这些健康的社会决定因素未得到充分利用。有证据表明,将健康的社会决定因素纳入预测模型可显著提高模型的性能。此外,如果不考虑高风险人群中由健康的社会决定因素造成的健康差异,可能会加剧卫生保健结果方面现有的不公平现象。将健康的社会决定因素整合到败血症再入院风险模型中,为提高预测准确性、减少再入院率和优化弱势群体的护理提供了一条有希望的途径。未来的研究应侧重于完善这些模型并探索出院后监测策略,以进一步减轻败血症再入院的负担。
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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来源期刊
CiteScore
4.30
自引率
3.70%
发文量
103
审稿时长
6-12 weeks
期刊介绍: The editors of the American Journal of Critical Care (AJCC) invite authors to submit original manuscripts describing investigations, advances, or observations from all specialties related to the care of critically and acutely ill patients. Papers promoting collaborative practice and research are encouraged. Manuscripts will be considered on the understanding that they have not been published elsewhere and have been submitted solely to AJCC.
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