Improving risk prediction in heart failure using machine learning

被引:133
作者
Adler, Eric D. [1 ]
Voors, Adriaan A. [2 ]
Klein, Liviu [3 ]
Macheret, Fima [4 ]
Braun, Oscar O. [5 ,6 ]
Urey, Marcus A. [1 ]
Zhu, Wenhong [4 ]
Sama, Iziah [2 ]
Tadel, Matevz [7 ]
Campagnari, Claudio [8 ]
Greenberg, Barry [1 ]
Yagil, Avi [1 ,7 ]
机构
[1] Univ Calif San Diego, Div Cardiol, Dept Med, 9452 Med Ctr Dr, La Jolla, CA 92037 USA
[2] Univ Groningen, Univ Med Ctr Groningen, Groningen, Netherlands
[3] UC San Francisco, Div Cardiol, Dept Med, San Francisco, CA USA
[4] Univ Calif San Diego, ACTRI, La Jolla, CA USA
[5] Lund Univ, Dept Clin Sci, Cardiol, Lund, Sweden
[6] Skane Univ Hosp, Lund, Sweden
[7] Univ Calif San Diego, Phys Dept, La Jolla, CA USA
[8] UC Santa Barbara, Phys Dept, Santa Barbara, CA USA
关键词
Heart failure; Outcomes; Machine learning; IN-HOSPITAL MORTALITY; NATRIURETIC PEPTIDE; SURVIVAL; SCORE; VALIDATION; PERFORMANCE; MODELS; TRENDS; DEATH;
D O I
10.1002/ejhf.1628
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background Predicting mortality is important in patients with heart failure (HF). However, current strategies for predicting risk are only modestly successful, likely because they are derived from statistical analysis methods that fail to capture prognostic information in large data sets containing multi-dimensional interactions. Methods and results We used a machine learning algorithm to capture correlations between patient characteristics and mortality. A model was built by training a boosted decision tree algorithm to relate a subset of the patient data with a very high or very low mortality risk in a cohort of 5822 hospitalized and ambulatory patients with HF. From this model we derived a risk score that accurately discriminated between low and high-risk of death by identifying eight variables (diastolic blood pressure, creatinine, blood urea nitrogen, haemoglobin, white blood cell count, platelets, albumin, and red blood cell distribution width). This risk score had an area under the curve (AUC) of 0.88 and was predictive across the full spectrum of risk. External validation in two separate HF populations gave AUCs of 0.84 and 0.81, which were superior to those obtained with two available risk scores in these same populations. Conclusions Using machine learning and readily available variables, we generated and validated a mortality risk score in patients with HF that was more accurate than other risk scores to which it was compared. These results support the use of this machine learning approach for the evaluation of patients with HF and in other settings where predicting risk has been challenging.
引用
收藏
页码:139 / 147
页数:9
相关论文
共 30 条
  • [1] Usefulness of the INTERMACS Scale to Predict Outcomes After Mechanical Assist Device Implantation
    Alba, Ana C.
    Rao, Vivek
    Ivanov, Joan
    Ross, Heather J.
    Delgado, Diego H.
    [J]. JOURNAL OF HEART AND LUNG TRANSPLANTATION, 2009, 28 (08) : 827 - 833
  • [2] Use of Risk Models to Predict Death in the Next Year Among Individual Ambulatory Patients With Heart Failure
    Allen, Larry A.
    Matlock, Daniel D.
    Shetterly, Susan M.
    Xu, Stanley
    Levy, Wayne C.
    Portalupi, Laura B.
    McIlvennan, Colleen K.
    Gurwitz, Jerry H.
    Johnson, Eric S.
    Smith, David H.
    Magid, David J.
    [J]. JAMA CARDIOLOGY, 2017, 2 (04) : 435 - 441
  • [3] ROOT - A C++ framework for petabyte data storage, statistical analysis and visualization
    Antcheva, I.
    Ballintijn, M.
    Bellenot, B.
    Biskup, M.
    Brun, R.
    Buncic, N.
    Canal, Ph
    Casadei, D.
    Couet, O.
    Fine, V.
    Franco, L.
    Ganis, G.
    Gheata, A.
    Maline, D. Gonzalez
    Goto, M.
    Iwaszkiewicz, J.
    Kreshuk, A.
    Segura, D. Marcos
    Maunder, R.
    Moneta, L.
    Naumann, A.
    Offermann, E.
    Onuchin, V.
    Panacek, S.
    Rademakers, F.
    Russo, P.
    Tadel, M.
    [J]. COMPUTER PHYSICS COMMUNICATIONS, 2011, 182 (06) : 1384 - 1385
  • [4] Performance of Prognostic Risk Scores in Chronic Heart Failure Patients Enrolled in the European Society of Cardiology Heart Failure Long-Term Registry
    Canepa, Marco
    Fonseca, Candida
    Chioncel, Ovidiu
    Laroche, Cecile
    Crespo-Leiro, Maria G.
    Coats, Andrew J. S.
    Mebazaa, Alexandre
    Piepoli, Massimo F.
    Tavazzi, Luigi
    Maggioni, Aldo P.
    [J]. JACC-HEART FAILURE, 2018, 6 (06) : 452 - 462
  • [5] Chatrchyan S, 2013, EUR PHYS J C, V73, DOI 10.1140/epjc/s10052-013-2677-2
  • [6] National and Regional Trends in Heart Failure Hospitalization and Mortality Rates for Medicare Beneficiaries, 1998-2008
    Chen, Jersey
    Normand, Sharon-Lise T.
    Wang, Yun
    Krumholz, Harlan M.
    [J]. JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2011, 306 (15): : 1669 - 1678
  • [7] Dokainish H, 2017, LANCET GLOB HEALTH, V5, pE665, DOI [10.1016/s2214-109x(17)30196-1, 10.1016/S2214-109X(17)30196-1]
  • [8] An Appraisal of Biomarker-Based Risk-Scoring Models in Chronic Heart Failure: Which One Is Best?
    Doumouras B.S.
    Lee D.S.
    Levy W.C.
    Alba A.C.
    [J]. Current Heart Failure Reports, 2018, 15 (1) : 24 - 36
  • [9] Risk stratification for in-hospital mortality in acutely decompensated heart failure - Classification and regression tree analysis
    Fonarow, GC
    Adams, KF
    Abraham, WT
    Yancy, CW
    Boscardin, WJ
    [J]. JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2005, 293 (05): : 572 - 580
  • [10] Comparative Analysis of Four Scores to Stratify Patients With Heart Failure and Reduced Ejection Fraction
    Freitas, Pedro
    Aguiar, Carlos
    Ferreira, Antonio
    Tralhao, Antonio
    Ventosa, Antonio
    Mendes, Miguel
    [J]. AMERICAN JOURNAL OF CARDIOLOGY, 2017, 120 (03) : 443 - 449