Predicting Mortality in Intensive Care Unit Patients With Heart Failure Using an Interpretable Machine Learning Model: Retrospective Cohort Study

被引:56
|
作者
Li, Jili [1 ]
Liu, Siru [2 ]
Hu, Yundi [3 ]
Zhu, Lingfeng [4 ]
Mao, Yujia [1 ]
Liu, Jialin [5 ,6 ]
机构
[1] Sichuan Univ, West China Sch Med, Chengdu, Peoples R China
[2] Vanderbilt Univ, Dept Biomed Informat, Med Ctr, Nashville, TN USA
[3] Fudan Univ, Sch Data Sci, Shanghai, Peoples R China
[4] Sichuan Univ, Dept Comp Sci, Chengdu, Peoples R China
[5] Sichuan Univ, West China Hosp, Dept Med Informat, Chengdu, Peoples R China
[6] Sichuan Univ, West China Hosp, Dept Med Informat, 37 Guoxue Rd, Chengdu 610041, Peoples R China
关键词
heart failure; mortality; intensive care unit; prediction; XGBoost; SHAP; SHapley Additive exPlanation; IN-HOSPITAL MORTALITY; ECONOMIC BURDEN; CLASSIFICATION; IMPACT;
D O I
10.2196/38082
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: Heart failure (HF) is a common disease and a major public health problem. HF mortality prediction is critical for developing individualized prevention and treatment plans. However, due to their lack of interpretability, most HF mortality prediction models have not yet reached clinical practice. Objective: We aimed to develop an interpretable model to predict the mortality risk for patients with HF in intensive care units (ICUs) and used the SHapley Additive exPlanation (SHAP) method to explain the extreme gradient boosting (XGBoost) model and explore prognostic factors for HF. Methods: In this retrospective cohort study, we achieved model development and performance comparison on the eICU Collaborative Research Database (eICU-CRD). We extracted data during the first 24 hours of each ICU admission, and the data set was randomly divided, with 70% used for model training and 30% used for model validation. The prediction performance of the XGBoost model was compared with three other machine learning models by the area under the curve. We used the SHAP method to explain the XGBoost model. Results: A total of 2798 eligible patients with HF were included in the final cohort for this study. The observed in-hospital mortality of patients with HF was 9.97%. Comparatively, the XGBoost model had the highest predictive performance among four models with an area under the curve (AUC) of 0.824 (95% CI 0.7766-0.8708), whereas support vector machine had the poorest generalization ability (AUC=0.701, 95% CI 0.6433-0.7582). The decision curve showed that the net benefit of the XGBoost model surpassed those of other machine learning models at 10%-28% threshold probabilities. The SHAP method reveals the top 20 predictors of HF according to the importance ranking, and the average of the blood urea nitrogen was recognized as the most important predictor variable. Conclusions: The interpretable predictive model helps physicians more accurately predict the mortality risk in ICU patients with HF, and therefore, provides better treatment plans and optimal resource allocation for their patients. In addition, the interpretable framework can increase the transparency of the model and facilitate understanding the reliability of the predictive model for the physicians.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] Hyperoxia effects on intensive care unit mortality: a retrospective pragmatic cohort study
    Mathilde Ruggiu
    Nadia Aissaoui
    Julien Nael
    Caroline Haw-Berlemont
    Bertrand Herrmann
    Jean-Loup Augy
    Sofia Ortuno
    Damien Vimpère
    Jean-Luc Diehl
    Clotilde Bailleul
    Emmanuel Guerot
    Critical Care, 22
  • [42] Predicting Intensive Care Unit Length of Stay and Mortality Using Patient Vital Signs: Machine Learning Model Development and Validation
    Alghatani, Khalid
    Ammar, Nariman
    Rezgui, Abdelmounaam
    Shaban-Nejad, Arash
    JMIR MEDICAL INFORMATICS, 2021, 9 (05)
  • [43] Hyperoxia effects on intensive care unit mortality: a retrospective pragmatic cohort study
    Ruggiu, Mathilde
    Aissaoui, Nadia
    Nael, Julien
    Haw-Berlemont, Caroline
    Herrmann, Bertrand
    Augy, Jean-Loup
    Ortuno, Sofia
    Vimpere, Damien
    Diehl, Jean-Luc
    Bailleul, Clotilde
    Guerot, Emmanuel
    CRITICAL CARE, 2018, 22
  • [44] Interpretable machine learning model predicting immune checkpoint inhibitor-induced hypothyroidism: A retrospective cohort study
    Zhu, Su-Yan
    Yang, Tong-Tong
    Zhao, Yi-Zhuo
    Sun, Yu
    Zheng, Xiao-Meng
    Xu, Hong-Bin
    CANCER SCIENCE, 2024, 115 (11) : 3767 - 3775
  • [45] The impact of age on mortality in the intensive care unit: a retrospective cohort study in Malaysia
    Ismail, Abdul Jabbar
    Hassan, W. Mohd Nazaruddin W.
    Nor, Mohd Basri Mat
    Shukeri, Wan Fadzlina Wan Muhd
    ACUTE AND CRITICAL CARE, 2024, 39 (03) : 390 - 399
  • [46] Predicting mortality in the intensive care unit: Man against machine
    Shapiro, NI
    Talmor, D
    CRITICAL CARE MEDICINE, 2006, 34 (03) : 932 - 933
  • [47] Association between comorbid cardiomyopathy and composite endpoints of patients with congestive heart failure in the intensive care unit: a retrospective cohort study
    Liang, Lifeng
    Sun, Jiayi
    Chen, Lizhu
    Li, Zejian
    Zhang, Wenjuan
    JOURNAL OF THORACIC DISEASE, 2022,
  • [48] Association between first 24-h mean body temperature and mortality in patients with diastolic heart failure in intensive care unit: A retrospective cohort study
    Xu, Hongyu
    Xie, Yonggang
    Sun, Xiaoling
    Feng, Nianhai
    FRONTIERS IN MEDICINE, 2022, 9
  • [49] Development and Validation of a Dynamic Nomogram for Predicting in-Hospital Mortality in Patients with Acute Pancreatitis: A Retrospective Cohort Study in the Intensive Care Unit
    Zou, Kang
    Huang, Shu
    Ren, Wensen
    Xu, Huan
    Zhang, Wei
    Shi, Xiaomin
    Shi, Lei
    Zhong, Xiaolin
    Peng, Yan
    Lu, Muhan
    Tang, Xiaowei
    INTERNATIONAL JOURNAL OF GENERAL MEDICINE, 2023, 16 : 2541 - 2553
  • [50] Development and validation of a dynamic nomogram for predicting in-hospital mortality in patients with gastrointestinal bleeding: a retrospective cohort study in the intensive care unit
    Zou, Kang
    Huang, Shu
    Ren, Wensen
    Xu, Huan
    Liu, Zhiying
    Zhang, Wei
    Shi, Lei
    Pu, Xinxin
    Lv, Yinqin
    Peng, Yan
    Yuan, Fangfang
    Tang, Xiaowei
    SCIENTIFIC REPORTS, 2024, 14 (01):