Prioritizing Patient Selection in Clinical Trials: A Machine Learning Algorithm for Dynamic Prediction of In-Hospital Mortality for ICU Admitted Patients Using Repeated Measurement Data

被引:1
作者
Pedarzani, Emma [1 ]
Fogangolo, Alberto [2 ]
Baldi, Ileana [3 ]
Berchialla, Paola [4 ]
Panzini, Ilaria [1 ]
Khan, Mohd Rashid [3 ]
Valpiani, Giorgia [1 ]
Spadaro, Savino [2 ,5 ]
Gregori, Dario [3 ]
Azzolina, Danila [1 ,6 ]
机构
[1] Univ Hosp Ferrara, Res & Innovat Unit, Clin Trial & Biostat, I-44124 Ferrara, Italy
[2] Univ Hosp Ferrara, Intens Care Unit, I-44124 Ferrara, Italy
[3] Univ Padua, Dept Cardiac Thorac & Vasc Sci, Unit Biostat Epidemiol & Publ Hlth, I-35131 Padua, Italy
[4] Univ Turin, Dept Clin & Biol Sci, I-10043 Turin, Italy
[5] Univ Ferrara, Dept Translat Med & Romagna, I-44124 Ferrara, Italy
[6] Univ Ferrara, Dept Environm Sci & Prevent, I-44124 Ferrara, Italy
关键词
mortality prediction; machine learning; intensive care unit; clinical trial; patient recruitment; CELL DISTRIBUTION WIDTH; ACUTE PHYSIOLOGY SCORE; APACHE; MODELS; CARE;
D O I
10.3390/jcm14020612
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: A machine learning prognostic mortality scoring system was developed to address challenges in patient selection for clinical trials within the Intensive Care Unit (ICU) environment. The algorithm incorporates Red blood cell Distribution Width (RDW) data and other demographic characteristics to predict ICU mortality alongside existing ICU mortality scoring systems like Simplified Acute Physiology Score (SAPS). Methods: The developed algorithm, defined as a Mixed-effects logistic Random Forest for binary data (MixRFb), integrates a Random Forest (RF) classification with a mixed-effects model for binary outcomes, accounting for repeated measurement data. Performance comparisons were conducted with RF and the proposed MixRFb algorithms based solely on SAPS scoring, with additional evaluation using a descriptive receiver operating characteristic curve incorporating RDW's predictive mortality ability. Results: MixRFb, incorporating RDW and other covariates, outperforms the SAPS-based variant, achieving an area under the curve of 0.882 compared to 0.814. Age and RDW were identified as the most significant predictors of ICU mortality, as reported by the variable importance plot analysis. Conclusions: The MixRFb algorithm demonstrates superior efficacy in predicting in-hospital mortality and identifies age and RDW as primary predictors. Implementation of this algorithm could facilitate patient selection for clinical trials, thereby improving trial outcomes and strengthening ethical standards. Future research should focus on enriching algorithm robustness, expanding its applicability across diverse clinical settings and patient demographics, and integrating additional predictive markers to improve patient selection capabilities.
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页数:18
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共 57 条
  • [1] Continuity of Care in Intensive Care Units A Cluster-Randomized Trial of Intensivist Staffing
    Ali, Naeem A.
    Wolf, Karen M.
    Hammersley, Jeffrey
    Hoffmann, Stephen P.
    O'Brien, James M., Jr.
    Phillips, Gary S.
    Rashkin, Mitchell
    Warren, Edward
    Garland, Allan
    [J]. AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2011, 184 (07) : 803 - 808
  • [2] Machine Learning for Benchmarking Critical Care Outcomes
    Atallah, Louis
    Nabian, Mohsen
    Brochini, Ludmila
    Amelung, Pamela J.
    [J]. HEALTHCARE INFORMATICS RESEARCH, 2023, 29 (04) : 301 - 314
  • [3] The ethical conduct of clinical research involving critically ill patients in the United States and Canada - Principles and recommendations
    Bernard, GR
    Cook, DJ
    Hebert, P
    Karlawish, JHT
    Kiley, JP
    Korn, D
    Lemaire, F
    Lo, B
    Luce, JM
    Martin, TR
    Miller, FG
    Rubenfeld, G
    Schwetz, BA
    Silverman, HJ
    Steinbrook, R
    Thompson, BT
    Walsh, J
    Weijer, C
    Luce, JM
    Cook, DJ
    Martin, TR
    Angus, DC
    Boushey, HA
    Curtis, JR
    Heffner, JE
    Lanken, PN
    Levy, MM
    Polite, PY
    Rocker, GM
    Truog, RD
    [J]. AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2004, 170 (12) : 1375 - 1384
  • [4] Impact of a deep learning sepsis prediction model on quality of care and survival
    Boussina, Aaron
    Shashikumar, Supreeth P.
    Malhotra, Atul
    Owens, Robert L.
    El-Kareh, Robert
    Longhurst, Christopher A.
    Quintero, Kimberly
    Donahue, Allison
    Chan, Theodore C.
    Nemati, Shamim
    Wardi, Gabriel
    [J]. NPJ DIGITAL MEDICINE, 2024, 7 (01)
  • [5] Random forests
    Breiman, L
    [J]. MACHINE LEARNING, 2001, 45 (01) : 5 - 32
  • [6] Time-to-Death Longitudinal Characterization of Clinical Variables and Longitudinal Prediction of Mortality in COVID-19 Patients: A Two-Center Study
    Chen, Anne
    Zhao, Zirun
    Hou, Wei
    Singer, Adam J.
    Li, Haifang
    Duong, Tim Q.
    [J]. FRONTIERS IN MEDICINE, 2021, 8
  • [7] Machine learning-based in-hospital mortality risk prediction tool for intensive care unit patients with heart failure
    Chen, Zijun
    Li, Tingming
    Guo, Sheng
    Zeng, Deli
    Wang, Kai
    [J]. FRONTIERS IN CARDIOVASCULAR MEDICINE, 2023, 10
  • [8] Red Cell Distribution Width Is Independently Associated with Mortality in Sepsis
    Dankl, Daniel
    Rezar, Richard
    Mamandipoor, Behrooz
    Zhou, Zhichao
    Wernly, Sarah
    Wernly, Bernhard
    Osmani, Venet
    [J]. MEDICAL PRINCIPLES AND PRACTICE, 2022, 31 (02) : 187 - 194
  • [9] Delaney A, 2008, CRIT CARE, V12, DOI [10.1186/cc6576, 10.1186/cc6849]
  • [10] Duggal A, 2024, BMJ OPEN, V14, DOI 10.1136/bmjopen-2023-079243