Machine Learning-Enabled 30-Day Readmission Model for Stroke Patients

被引:22
|
作者
Darabi, Negar [1 ]
Hosseinichimeh, Niyousha [1 ]
Noto, Anthony [2 ]
Zand, Ramin [2 ]
Abedi, Vida [3 ,4 ]
机构
[1] Virginia Tech, Dept Ind & Syst Engn, Falls Church, VA 22043 USA
[2] Geisinger Hlth Syst, Geisinger Neurosci Inst, Danville, PA USA
[3] Geisinger Hlth Syst, Dept Mol & Funct Genom, Danville, PA 17822 USA
[4] Virginia Tech, Biocomplex Inst, Blacksburg, VA 24061 USA
来源
FRONTIERS IN NEUROLOGY | 2021年 / 12卷
关键词
ischemic stroke; 30-day readmissions; machine learning; statistical analysis; patient readmission;
D O I
10.3389/fneur.2021.638267
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background and Purpose: Hospital readmissions impose a substantial burden on the healthcare system. Reducing readmissions after stroke could lead to improved quality of care especially since stroke is associated with a high rate of readmission. The goal of this study is to enhance our understanding of the predictors of 30-day readmission after ischemic stroke and develop models to identify high-risk individuals for targeted interventions. Methods: We used patient-level data from electronic health records (EHR), five machine learning algorithms (random forest, gradient boosting machine, extreme gradient boosting-XGBoost, support vector machine, and logistic regression-LR), data-driven feature selection strategy, and adaptive sampling to develop 15 models of 30-day readmission after ischemic stroke. We further identified important clinical variables. Results: We included 3,184 patients with ischemic stroke (mean age: 71 +/- 13.90 years, men: 51.06%). Among the 61 clinical variables included in the model, the National Institutes of Health Stroke Scale score above 24, insert indwelling urinary catheter, hypercoagulable state, and percutaneous gastrostomy had the highest importance score. The Model's AUC (area under the curve) for predicting 30-day readmission was 0.74 (95%CI: 0.64-0.78) with PPV of 0.43 when the XGBoost algorithm was used with ROSE-sampling. The balance between specificity and sensitivity improved through the sampling strategy. The best sensitivity was achieved with LR when optimized with feature selection and ROSE-sampling (AUC: 0.64, sensitivity: 0.53, specificity: 0.69). Conclusions: Machine learning-based models can be designed to predict 30-day readmission after stroke using structured data from EHR. Among the algorithms analyzed, XGBoost with ROSE-sampling had the best performance in terms of AUC while LR with ROSE-sampling and feature selection had the best sensitivity. Clinical variables highly associated with 30-day readmission could be targeted for personalized interventions. Depending on healthcare systems' resources and criteria, models with optimized performance metrics can be implemented to improve outcomes.
引用
收藏
页数:10
相关论文
共 50 条
  • [21] Machine learning prediction of postoperative unplanned 30-day hospital readmission in older adult
    Li, Linji
    Wang, Linna
    Lu, Li
    Zhu, Tao
    FRONTIERS IN MOLECULAR BIOSCIENCES, 2022, 9
  • [22] Predictors of 30-Day Hospital Readmission Following Acute Stroke
    Stiles, Starla
    Strowd, Roy
    Bishop, Laura
    Umesi, Natalie
    Craig, Jeffrey
    Lefkowitz, David
    Reynolds, Patrick
    Arnan, Martinson
    Bushnell, Cheryl
    NEUROLOGY, 2013, 80
  • [23] Predictors of 30-day readmission based on machine learning in patients with heart failure: an essential assessment for precision care
    Dou, Bei
    Moons, Philip
    EUROPEAN JOURNAL OF CARDIOVASCULAR NURSING, 2024, 23 (07) : e134 - e135
  • [24] Machine learning-based 30-day readmission prediction models for patients with heart failure: a systematic review
    Yu, Min-Young
    Son, Youn-Jung
    EUROPEAN JOURNAL OF CARDIOVASCULAR NURSING, 2024, 23 (07) : 711 - 719
  • [25] Machine learning-based prediction for 30-day unplanned readmission in all-types cancer patients
    Jung, Hyojung
    Park, Hyun Woo
    Kim, Yumin
    Hwangbo, Yul
    2023 IEEE INTERNATIONAL CONFERENCE ON BIG DATA AND SMART COMPUTING, BIGCOMP, 2023, : 132 - 135
  • [26] Machine Learning Models for Predicting 30-Day Readmission of Elderly Patients Using Custom Target Encoding Approach
    Nazyrova, Nodira
    Chaussalet, Thierry J.
    Chahed, Salma
    COMPUTATIONAL SCIENCE - ICCS 2022, PT III, 2022, 13352 : 122 - 136
  • [27] A NOVEL RISK SCORE PREDICTING 30-DAY HOSPITAL READMISSION OF PATIENTS WITH ACUTE STROKE
    Mercurio, G.
    Gottardelli, B.
    Lenkowicz, J.
    Bellavia, S.
    Scala, I.
    Rizzo, P.
    Del Signore, A. B.
    De Belvis, A.
    Angioletti, C.
    Maviglia, R.
    Bocci, M. G.
    Patarnello, S.
    Antonelli, M.
    Calabresi, P.
    Della Marca, G.
    Frisullo, G.
    INTERNATIONAL JOURNAL OF STROKE, 2021, 16 (2_SUPPL) : 189 - 189
  • [28] High Mortality among 30-Day Readmission after Stroke: Predictors and Etiologies of Readmission
    Nouh, Amre M.
    McCormick, Lauren
    Modak, Janhavi
    Fortunato, Gilbert
    Staff, Ilene
    FRONTIERS IN NEUROLOGY, 2017, 8
  • [29] High Mortality Among 30-Day Readmission After Stroke: Predictors and Etiologies of Readmission
    McCormick, Lauren
    Modak, Janhavi
    Staff, Ilene
    Fortunato, Gilbert
    Nouh, Amre
    STROKE, 2017, 48
  • [30] Epidemiology and Predictors of 30-Day Readmission in Patients With Sepsis
    Gadre, Shruti K.
    Shah, Mahek
    Mireles-Cabodevila, Eduardo
    Patel, Brijesh
    Duggal, Abhijit
    CHEST, 2019, 155 (03) : 483 - 490