Insights from a machine learning model for predicting the hospital Length of Stay (LOS) at the time of admission

被引:61
|
作者
Turgeman, Lior [1 ]
May, Jerrold H. [1 ]
Sciulli, Roberta [2 ]
机构
[1] Univ Pittsburgh, Joseph M Katz Grad Sch Business, Mervis Hall, Pittsburgh, PA 15260 USA
[2] Vet Affairs Pittsburgh Healthcare Syst, Vet Engn Resource Ctr, Pittsburgh, PA 15215 USA
关键词
Cubist decision tree; Continuous association rule mining algorithm (CARMA); Support vector machine (SVM); Decision function; Error distribution; Length of Stay (LOS); CONGESTIVE-HEART-FAILURE; PHASE-TYPE; ELDERLY PATIENTS; READMISSION; MORTALITY; SURVIVAL; ANEMIA; ADULTS;
D O I
10.1016/j.eswa.2017.02.023
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
A model that accurately predicts, at the time of admission, the Length of Stay (LOS) for hospitalized patients could be an effective tool for healthcare providers. It could enable early interventions to prevent complications, enabling more efficient utilization of manpower and facilities in hospitals. In this study, we apply a regression tree (Cubist) model for predicting the LOS, based on static inputs, that is, values that are known at the time of admission and that do not change during patient's hospital stay. The model was trained and validated on de-identified administrative data from the Veterans Health Administration (VHA) hospitals in Pittsburgh, PA. We chose to use a Cubist model because it produced more accurate predictions than did alternative techniques. In addition, tree models enable us to examine the classification rules learned from the data, in order to better understand the factors that are most correlated with hospital LOS. Cubist recursively partitions the data set as it estimates linear regressions for each partition, and the error level differs for different partitions, so that it is possible to deduce what are the characteristics of patients whose LOS can be accurately predicted at admission, and what are the characteristics of patients for whom the LOS estimate at that point in time is more highly uncertain. For example, our model indicates that the prediction error is greater for patients who had more admissions in the recent past, and for those who had longer previous hospital stays. Our approach suggests that mapping the cases into a higher dimensional space, using a Radial Basis Function (RBF) kernel, helps to separate them by their level of Cubist error, using a Support Vector Machine (SVM). (C) 2017 Elsevier Ltd. All rights reserved.
引用
收藏
页码:376 / 385
页数:10
相关论文
共 50 条
  • [41] Predicting Length of Stay Across Hospital Departments
    Puentes Gutierrez, Jesus Manuel
    Sicilia, Miguel-Angel
    Sanchez-Alonso, Salvador
    Garcia-Barriocanal, Elena
    IEEE ACCESS, 2021, 9 : 44671 - 44680
  • [42] Predicting length of stay in an acute psychiatric hospital
    Huntley, DA
    Cho, DW
    Christman, J
    Csernansky, JG
    PSYCHIATRIC SERVICES, 1998, 49 (08) : 1049 - 1053
  • [43] Telehealth Factors for Predicting Hospital Length of Stay
    Murphy, Mary M.
    JOURNAL OF GERONTOLOGICAL NURSING, 2018, 44 (10): : 16 - 20
  • [44] Predicting the length-of-stay of pediatric patients using machine learning algorithms
    Medeiros, Natalia Boff
    Fogliatto, Flavio Sanson
    Rocha, Miriam Karla
    Tortorella, Guilherme Luz
    INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH, 2025, 63 (02) : 483 - 496
  • [45] Concurrent prediction of hospital mortality and length of stay from risk factors on admission
    Clark, DE
    Ryan, LM
    HEALTH SERVICES RESEARCH, 2002, 37 (03) : 631 - 645
  • [46] Predicting surgical department occupancy and patient length of stay in a paediatric hospital setting using machine learning: a pilot study
    Corren, Yuval Barak
    Merrill, Joshua
    Wilkinson, Ronald
    Cannon, Courtney
    Bickel, Jonathan
    Reis, Ben Y.
    BMJ HEALTH & CARE INFORMATICS, 2022, 29 (01)
  • [47] Predicting In-Hospital Mortality at Admission to the Medical Ward: A Big-Data Machine Learning Model
    Soffer, Shelly
    Klang, Eyal
    Barash, Yiftach
    Grossman, Ehud
    Zimlichman, Eyal
    AMERICAN JOURNAL OF MEDICINE, 2021, 134 (02): : 227 - +
  • [48] Predicting admission of prolonged length of stay in patients with subarachnoid hemorrhage
    Degos, V.
    Clarencon, F.
    Koubaa, W.
    Zeghal, C.
    Reina, V.
    Puybasset, L.
    ANNALES FRANCAISES D ANESTHESIE ET DE REANIMATION, 2013, 32 : A124 - A125
  • [49] Predicting the Length of Stay at Admission for Emergency General Surgery Patients
    Ward, T.
    Raybould, S.
    Mondal, A.
    Lambert, J.
    Patel, B.
    BRITISH JOURNAL OF SURGERY, 2020, 107 : 111 - 111
  • [50] An explainable machine learning framework for lung cancer hospital length of stay prediction
    Belal Alsinglawi
    Osama Alshari
    Mohammed Alorjani
    Omar Mubin
    Fady Alnajjar
    Mauricio Novoa
    Omar Darwish
    Scientific Reports, 12