Effective hospital readmission prediction models using machine-learned features

被引:7
|
作者
Davis, Sacha [1 ]
Zhang, Jin [2 ]
Lee, Ilbin [2 ]
Rezaei, Mostafa [4 ]
Greiner, Russell [1 ,5 ]
McAlister, Finlay A. [3 ]
Padwal, Raj [3 ]
机构
[1] Univ Alberta, Dept Comp Sci, Edmonton, AB, Canada
[2] Univ Alberta, Alberta Sch Business, Edmonton, AB, Canada
[3] Univ Alberta, Med & Dent, Edmonton, AB, Canada
[4] ESCP Business Sch, Paris, France
[5] Alberta Machine Intelligence Inst, Edmonton, AB, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Hospitalization; Machine learning; Patient readmission; Area under curve; HEART-FAILURE; TRANSITIONAL CARE; AFTER-DISCHARGE; RISK; DEATH;
D O I
10.1186/s12913-022-08748-y
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Hospital readmissions are one of the costliest challenges facing healthcare systems, but conventional models fail to predict readmissions well. Many existing models use exclusively manually-engineered features, which are labor intensive and dataset-specific. Our objective was to develop and evaluate models to predict hospital readmissions using derived features that are automatically generated from longitudinal data using machine learning techniques. Methods: We studied patients discharged from acute care facilities in 2015 and 2016 in Alberta, Canada, excluding those who were hospitalized to give birth or for a psychiatric condition. We used population-level linked administrative hospital data from 2011 to 2017 to train prediction models using both manually derived features and features generated automatically from observational data. The target value of interest was 30-day all-cause hospital readmissions, with the success of prediction measured using the area under the curve (AUC) statistic. Results: Data from 428,669 patients (62% female, 38% male, 27% 65 years or older) were used for training and evaluating models: 24,974 (5.83%) were readmitted within 30 days of discharge for any reason. Patients were more likely to be readmitted if they utilized hospital care more, had more physician office visits, had more prescriptions, had a chronic condition, or were 65 years old or older. The LACE readmission prediction model had an AUC of 0.66 +/- 0.0064 while the machine learning model's test set AUC was 0.83 +/- 0.0045, based on learning a gradient boosting machine on a combination of machine-learned and manually-derived features. Conclusion: Applying a machine learning model to the computer-generated and manual features improved prediction accuracy over the LACE model and a model that used only manually-derived features. Our model can be used to identify high-risk patients, for whom targeted interventions may potentially prevent readmissions.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Charge and Exciton Transfer Simulations Using Machine-Learned Hamiltonians
    Kraemer, Mila
    Dohmen, Philipp M.
    Xie, Weiwei
    Holub, Daniel
    Christensen, Anders S.
    Elstner, Marcus
    [J]. JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2020, 16 (07) : 4061 - 4070
  • [32] Using diverse potentials and scoring functions for the development of improved machine-learned models for protein-ligand affinity and docking pose prediction
    Demerdash, Omar N. A.
    [J]. JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2021, 35 (11) : 1095 - 1123
  • [33] Evaluation of atrial anatomical remodeling in atrial fibrillation with machine-learned morphological features
    Fanli Zhou
    Zhidong Yuan
    Xianglin Liu
    Keyan Yu
    Bowei Li
    Xingyan Li
    Xin Liu
    Guanxun Cheng
    [J]. International Journal of Computer Assisted Radiology and Surgery, 2023, 18 : 603 - 610
  • [34] Forecasting influenza activity using machine-learned mobility map
    Venkatramanan, Srinivasan
    Sadilek, Adam
    Fadikar, Arindam
    Barrett, Christopher L.
    Biggerstaff, Matthew
    Chen, Jiangzhuo
    Dotiwalla, Xerxes
    Eastham, Paul
    Gipson, Bryant
    Higdon, Dave
    Kucuktunc, Onur
    Lieber, Allison
    Lewis, Bryan L.
    Reynolds, Zane
    Vullikanti, Anil K.
    Wang, Lijing
    Marathe, Madhav
    [J]. NATURE COMMUNICATIONS, 2021, 12 (01)
  • [35] Evaluation of atrial anatomical remodeling in atrial fibrillation with machine-learned morphological features
    Zhou, Fanli
    Yuan, Zhidong
    Liu, Xianglin
    Yu, Keyan
    Li, Bowei
    Li, Xingyan
    Liu, Xin
    Cheng, Guanxun
    [J]. INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2023, 18 (04) : 603 - 610
  • [36] Predicting subcellular localization of proteins using machine-learned classifiers
    Lu, Z
    Szafron, D
    Greiner, R
    Lu, P
    Wishart, DS
    Poulin, B
    Anvik, J
    Macdonell, C
    Eisner, R
    [J]. BIOINFORMATICS, 2004, 20 (04) : 547 - 556
  • [37] Forecasting influenza activity using machine-learned mobility map
    Srinivasan Venkatramanan
    Adam Sadilek
    Arindam Fadikar
    Christopher L. Barrett
    Matthew Biggerstaff
    Jiangzhuo Chen
    Xerxes Dotiwalla
    Paul Eastham
    Bryant Gipson
    Dave Higdon
    Onur Kucuktunc
    Allison Lieber
    Bryan L. Lewis
    Zane Reynolds
    Anil K. Vullikanti
    Lijing Wang
    Madhav Marathe
    [J]. Nature Communications, 12
  • [38] Range Estimation using Machine-learned Algorithms for Passive Sensors
    Morris, Clint
    Zutty, Jason
    [J]. SYNTHETIC DATA FOR ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING: TOOLS, TECHNIQUES, AND APPLICATIONS II, 2024, 13035
  • [39] Machine-Learned, Biophysical Prediction of Glucose Response for 1,000 Subjects
    Dalal, Parin
    Yazdani, Mehrdad
    Snyder, Michael
    Rahili, Salar
    Torbaghan, Solmaz S.
    [J]. DIABETES, 2020, 69
  • [40] Machine learning for hospital readmission prediction in pediatric population
    da Silva, Nayara Cristina
    Albertini, Marcelo Keese
    Backes, Andre Ricardo
    das Gracas Pena, Georgia
    [J]. COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2024, 244