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Appl Clin Inform. 2020 Aug;11(4):570-577. doi: 10.1055/s-0040-1715827. Epub 2020 Sep 2.
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Toward Understanding the Value of Missing Social Determinants of Health Data in Care Transition Planning.理解在医疗转介计划中缺失健康社会决定因素数据的价值。
Appl Clin Inform. 2020 Aug;11(4):556-563. doi: 10.1055/s-0040-1715650. Epub 2020 Aug 26.
3
Assessing the impact of social determinants of health on predictive models for potentially avoidable 30-day readmission or death.评估健康的社会决定因素对可避免的 30 天再入院或死亡预测模型的影响。
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Use of electronic medical records in development and validation of risk prediction models of hospital readmission: systematic review.电子病历在医院再入院风险预测模型的开发和验证中的应用:系统评价。
BMJ. 2020 Apr 8;369:m958. doi: 10.1136/bmj.m958.
5
Prediction of caregiver burden in amyotrophic lateral sclerosis: a machine learning approach using random forests applied to a cohort study.预测肌萎缩侧索硬化症患者的照护者负担:使用随机森林的机器学习方法对队列研究进行分析。
BMJ Open. 2020 Feb 28;10(2):e033109. doi: 10.1136/bmjopen-2019-033109.
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Development and Prospective Validation of a Machine Learning-Based Risk of Readmission Model in a Large Military Hospital.基于机器学习的大型军队医院再入院风险模型的建立与前瞻性验证。
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7
Comparison of logistic regression with machine learning methods for the prediction of fetal growth abnormalities: a retrospective cohort study.逻辑回归与机器学习方法预测胎儿生长异常的比较:一项回顾性队列研究。
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Prediction of 30-Day All-Cause Readmissions in Patients Hospitalized for Heart Failure: Comparison of Machine Learning and Other Statistical Approaches.预测因心力衰竭住院患者的 30 天全因再入院率:机器学习与其他统计学方法的比较。
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新加坡实时风险评分对 30 天再入院率降低的影响。

Effect of a Real-Time Risk Score on 30-day Readmission Reduction in Singapore.

机构信息

Quality, Innovation and Improvement, Ng Teng Fong General Hospital, Singapore.

Department of Medicine, Ng Teng Fong General Hospital, Singapore.

出版信息

Appl Clin Inform. 2021 Mar;12(2):372-382. doi: 10.1055/s-0041-1726422. Epub 2021 May 19.

DOI:10.1055/s-0041-1726422
PMID:34010978
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8154510/
Abstract

OBJECTIVE

To develop a risk score for the real-time prediction of readmissions for patients using patient specific information captured in electronic medical records (EMR) in Singapore to enable the prospective identification of high-risk patients for enrolment in timely interventions.

METHODS

Machine-learning models were built to estimate the probability of a patient being readmitted within 30 days of discharge. EMR of 25,472 patients discharged from the medicine department at Ng Teng Fong General Hospital between January 2016 and December 2016 were extracted retrospectively for training and internal validation of the models. We developed and implemented a real-time 30-day readmission risk score generation in the EMR system, which enabled the flagging of high-risk patients to care providers in the hospital. Based on the daily high-risk patient list, the various interfaces and flow sheets in the EMR were configured according to the information needs of the various stakeholders such as the inpatient medical, nursing, case management, emergency department, and postdischarge care teams.

RESULTS

Overall, the machine-learning models achieved good performance with area under the receiver operating characteristic ranging from 0.77 to 0.81. The models were used to proactively identify and attend to patients who are at risk of readmission before an actual readmission occurs. This approach successfully reduced the 30-day readmission rate for patients admitted to the medicine department from 11.7% in 2017 to 10.1% in 2019 ( < 0.01) after risk adjustment.

CONCLUSION

Machine-learning models can be deployed in the EMR system to provide real-time forecasts for a more comprehensive outlook in the aspects of decision-making and care provision.

摘要

目的

利用新加坡电子病历(EMR)中捕获的患者特定信息,开发一种风险评分,以实时预测患者再入院情况,从而能够前瞻性地识别高危患者,以便及时进行干预。

方法

构建机器学习模型来估计患者在出院后 30 天内再次入院的概率。回顾性提取了 2016 年 1 月至 2016 年 12 月从 Ng Teng Fong 综合医院内科出院的 25472 名患者的 EMR 进行模型的训练和内部验证。我们开发并实施了一种实时 30 天再入院风险评分生成系统,该系统能够为医院的护理人员标记高危患者。根据每日高危患者名单,根据各利益相关者(如住院内科医生、护士、个案管理、急诊室和出院后护理团队)的信息需求,对 EMR 中的各种界面和流程表进行了配置。

结果

总体而言,机器学习模型表现良好,其接收者操作特征曲线下面积范围为 0.77 至 0.81。这些模型用于主动识别和关注有再入院风险的患者,以便在实际再入院发生之前进行干预。这种方法成功地将内科住院患者的 30 天再入院率从 2017 年的 11.7%降低到 2019 年的 10.1%(调整风险后,P<0.01)。

结论

机器学习模型可以部署在 EMR 系统中,以提供实时预测,从而更全面地进行决策和护理。