A machine learning model to predict the risk of 30-day readmissions in patients with heart failure: a retrospective analysis of electronic medical records data

被引:143
|
作者
Golas, Sara Bersche [1 ]
Shibahara, Takuma [4 ]
Agboola, Stephen [1 ,2 ,3 ]
Otaki, Hiroko [4 ]
Sato, Jumpei [4 ]
Nakae, Tatsuya [4 ]
Hisamitsu, Toru [4 ]
Kojima, Go [4 ]
Felsted, Jennifer [1 ]
Kakarmath, Sujay [1 ,2 ,3 ]
Kvedar, Joseph [1 ,2 ,3 ]
Jethwani, Kamal [1 ,2 ,3 ]
机构
[1] Partners HealthCare, Partners Connected Hlth Innovat, 25 New Chardon St,Suite 300, Boston, MA 02114 USA
[2] Massachusetts Gen Hosp, Boston, MA 02114 USA
[3] Harvard Med Sch, Boston, MA USA
[4] Hitachi Ltd, Res & Dev Grp, Tokyo, Japan
关键词
Heart failure; Machine learning; Deep learning; Deep unified networks; Readmission reduction; Value based care; NONCARDIAC COMORBIDITIES; HOSPITALIZATION; MORTALITY;
D O I
10.1186/s12911-018-0620-z
中图分类号
R-058 [];
学科分类号
摘要
Background: Heart failure is one of the leading causes of hospitalization in the United States. Advances in big data solutions allow for storage, management, and mining of large volumes of structured and semi-structured data, such as complex healthcare data. Applying these advances to complex healthcare data has led to the development of risk prediction models to help identify patients who would benefit most from disease management programs in an effort to reduce readmissions and healthcare cost, but the results of these efforts have been varied. The primary aim of this study was to develop a 30-day readmission risk prediction model for heart failure patients discharged from a hospital admission. Methods: We used longitudinal electronic medical record data of heart failure patients admitted within a large healthcare system. Feature vectors included structured demographic, utilization, and clinical data, as well as selected extracts of un-structured data from clinician-authored notes. The risk prediction model was developed using deep unified networks (DUNs), a new mesh-like network structure of deep learning designed to avoid over-fitting. The model was validated with 10-fold cross-validation and results compared to models based on logistic regression, gradient boosting, and maxout networks. Overall model performance was assessed using concordance statistic. We also selected a discrimination threshold based on maximum projected cost saving to the Partners Healthcare system. Results: Data from 11,510 patients with 27,334 admissions and 6369 30-day readmissions were used to train the model. After data processing, the final model included 3512 variables. The DUNs model had the best performance after 10-fold cross-validation. AUCs for prediction models were 0.664 +/- 0.015, 0.650 +/- 0.011, 0.695 +/- 0.016 and 0.705 +/- 0.015 for logistic regression, gradient boosting, maxout networks, and DUNs respectively. The DUNs model had an accuracy of 76.4% at the classification threshold that corresponded with maximum cost saving to the hospital. Conclusions: Deep learning techniques performed better than other traditional techniques in developing this EMR-based prediction model for 30-day readmissions in heart failure patients. Such models can be used to identify heart failure patients with impending hospitalization, enabling care teams to target interventions at their most high-risk patients and improving overall clinical outcomes.
引用
收藏
页数:17
相关论文
共 50 条
  • [21] Using Machine Learning to Predict 30-Day Hospital Readmissions in Patients with Atrial Fibrillation Undergoing Catheter Ablation
    Hung, Man
    Lauren, Evelyn
    Hon, Eric
    Xu, Julie
    Ruiz-Negron, Bianca
    Rosales, Megan
    Li, Wei
    Barton, Tanner
    O'Brien, Jacob
    Su, Weicong
    JOURNAL OF PERSONALIZED MEDICINE, 2020, 10 (03): : 1 - 10
  • [22] RISK STRATIFICATION TOOL USING ELECTRONIC MEDICAL RECORD DATA AT ADMISSION PREDICTS 30-DAY READMISSION AMONG HEART FAILURE PATIENTS
    Ross, Alicia
    Fine, Stephanie
    Gluckman, Tyler
    Rydell, Karen
    Webber, Suzanne
    Abraham, Jacob
    Buckendorf, Maylene
    Wang, Lian
    Zerr, Katheryn
    Grunkemeier, Gary
    JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2014, 63 (12) : A743 - A743
  • [23] Assessing Risk and Preventing 30-Day Readmissions in Decompensated Heart Failure: Opportunity to Intervene?
    Dunbar-Yaffe R.
    Stitt A.
    Lee J.J.
    Mohamed S.
    Lee D.S.
    Current Heart Failure Reports, 2015, 12 (5) : 309 - 317
  • [24] A Validated Risk Model for 30-Day Readmission for Heart Failure
    Mahajan, Satish M.
    Burman, Prabir
    Newton, Ana
    Heidenreich, Paul A.
    MEDINFO 2017: PRECISION HEALTHCARE THROUGH INFORMATICS, 2017, 245 : 506 - 510
  • [25] Predicting Risk of 30-Day Readmissions Using Two Emerging Machine Learning Methods
    Mahajan, Satish M.
    Mahajan, Amey S.
    King, Robert
    Negahban, Sahand
    NURSING INFORMATICS 2018: ICT TO IMPROVE QUALITY AND SAFETY AT THE POINT OF CARE, 2018, 250 : 250 - 255
  • [26] Personalized Risk Prediction for 30-Day Readmissions With Venous Thromboembolism Using Machine Learning
    Park, Jung In
    Kim, Doyub
    Lee, Jung-Ah
    Zheng, Kai
    Amin, Alpesh
    JOURNAL OF NURSING SCHOLARSHIP, 2021, 53 (03) : 278 - 287
  • [27] Prediction of 30-Day All-Cause Readmissions in Patients Hospitalized for Heart Failure Comparison of Machine Learning and Other Statistical Approaches
    Frizzell, Jarrod D.
    Liang, Li
    Schulte, Phillip J.
    Yancy, Clyde W.
    Heidenreich, Paul A.
    Hernandez, Adrian F.
    Bhatt, Deepak L.
    Fonarow, Gregg C.
    Laskey, Warren K.
    JAMA CARDIOLOGY, 2017, 2 (02) : 204 - 209
  • [28] Editorial: Transitional Care Clinics to Reduce 30-day Readmissions in Heart Failure Patients
    Smith, Katherine
    Fleming, Jeffrey P.
    Gros, Bernard
    CUREUS, 2018, 10 (01):
  • [29] A multidisciplinary transition of care approach to reduce 30-day readmissions in heart failure patients
    Craigo, Christina L.
    Dow, Claire M.
    Malkhasian, Yervant M.
    Minissian, Margo B.
    Zadikany, Ronit
    Zimmer, Raymond
    HEART & LUNG, 2025, 71 : 76 - 80
  • [30] Specific Causes of 30-Day and 1-Year Readmissions in Heart Failure Patients
    Eltelbany, Moemen
    Chan, Steven
    Gottlieb, Stephen
    JOURNAL OF CARDIAC FAILURE, 2019, 25 (08) : S131 - S131