Predicting inpatient mortality in patients with inflammatory bowel disease: A machine learning approach

被引:3
|
作者
Charilaou, Paris [1 ]
Mohapatra, Sonmoon [4 ]
Doukas, Sotirios [5 ]
Kohli, Maanit [2 ]
Radadiya, Dhruvil [7 ]
Devani, Kalpit [8 ]
Broder, Arkady [6 ]
Elemento, Olivier [3 ]
Lukin, Dana J. [1 ]
Battat, Robert [9 ]
机构
[1] New York Presbyterian Hosp, Weill Cornell Med Coll, Weill Cornell Med, Jill Roberts Ctr Inflammatory Bowel Dis, New York, NY USA
[2] Icahn Sch Med Mt Sinai, Dept Med, New York, NY USA
[3] Israel Englander Inst Precis Med, Weill Cornell Med Coll Caryl, Weill Cornell Med, Inst Computat Biomed, New York, NY USA
[4] Mayo Clin, Div Gastroenterol & Hepatol, Scottsdale, AZ USA
[5] St Peters Univ Hosp, Rutgers RWJ Med Sch, Dept Med, New Brunswick, NJ USA
[6] St Peters Univ Hosp, Rutgers RWJ Med Sch, Div Gastroenterol & Hepatol, New Brunswick, NJ USA
[7] Univ Kansas, Med Ctr, Div Gastroenterol & Hepatol, Kansas City, KS USA
[8] Prisma Hlth Greenville Mem Hosp, Div Gastroenterol & Hepatol, Greenville, SC USA
[9] Ctr Hosp Univ Montreal, Dept Gastroenterol & Hepatol, Montreal, PQ, Canada
关键词
artificial intelligence; calculator; hospitalized patients; IBD; machine learning; prediction model; EARLY WARNING SCORE; VALIDATION; TRENDS; RATES;
D O I
10.1111/jgh.16029
中图分类号
R57 [消化系及腹部疾病];
学科分类号
摘要
Background and AimData are lacking on predicting inpatient mortality (IM) in patients admitted for inflammatory bowel disease (IBD). IM is a critical outcome; however, difficulty in its prediction exists due to infrequent occurrence. We assessed IM predictors and developed a predictive model for IM using machine-learning (ML). MethodsUsing the National Inpatient Sample (NIS) database (2005-2017), we extracted adults admitted for IBD. After ML-guided predictor selection, we trained and internally validated multiple algorithms, targeting minimum sensitivity and positive likelihood ratio (+LR) >= 80% and >= 3, respectively. Diagnostic odds ratio (DOR) compared algorithm performance. The best performing algorithm was additionally trained and validated for an IBD-related surgery sub-cohort. External validation was done using NIS 2018. ResultsIn 398 426 adult IBD admissions, IM was 0.32% overall, and 0.87% among the surgical cohort (n = 40 784). Increasing age, ulcerative colitis, IBD-related surgery, pneumonia, chronic lung disease, acute kidney injury, malnutrition, frailty, heart failure, blood transfusion, sepsis/septic shock and thromboembolism were associated with increased IM. The QLattice algorithm, provided the highest performance model (+LR: 3.2, 95% CI 3.0-3.3; area-under-curve [AUC]:0.87, 85% sensitivity, 73% specificity), distinguishing IM patients by 15.6-fold when comparing high to low-risk patients. The surgical cohort model (+LR: 8.5, AUC: 0.94, 85% sensitivity, 90% specificity), distinguished IM patients by 49-fold. Both models performed excellently in external validation. An online calculator () was developed allowing bedside model predictions. ConclusionsAn online prediction-model calculator captured > 80% IM cases during IBD-related admissions, with high discriminatory effectiveness. This allows for risk stratification and provides a basis for assessing interventions to reduce mortality in high-risk patients.
引用
收藏
页码:241 / 250
页数:10
相关论文
共 50 条
  • [41] Machine Learning Based Microbiome Signature to Predict Inflammatory Bowel Disease Subtypes
    Linares-Blanco, Jose
    Fernandez-Lozano, Carlos
    Seoane, Jose A.
    Lopez-Campos, Guillermo
    FRONTIERS IN MICROBIOLOGY, 2022, 13
  • [42] Machine Learning Models for Predicting Neonatal Mortality: A Systematic Review
    Mangold, Cheyenne
    Zoretic, Sarah
    Thallapureddy, Keerthi
    Moreira, Axel
    Chorath, Kevin
    Moreira, Alvaro
    NEONATOLOGY, 2021, 118 (04) : 394 - 405
  • [43] AISMPred: A Machine Learning Approach for Predicting Anti-Inflammatory Small Molecules
    Selvam, Subathra
    Balaji, Priya Dharshini
    Sohn, Honglae
    Madhavan, Thirumurthy
    PHARMACEUTICALS, 2024, 17 (12)
  • [44] Radiation exposure in patients with inflammatory bowel disease
    Jorissen, Thibaud
    Fierens, Liselotte
    Bosmans, Hilde
    Verstockt, Bram
    Sabino, Joao
    Vermeire, Severine
    Vanbeckevoort, Dirk
    Ferrante, Marc
    JOURNAL OF CROHNS & COLITIS, 2025, 19 (01)
  • [45] Supervised Machine Learning Classifies Inflammatory Bowel Disease Patients by Subtype Using Whole Exome Sequencing Data
    Stafford, Imogen S.
    Ashton, James J.
    Mossotto, Enrico
    Cheng, Guo
    Beattie, R. Mark
    Ennis, Sarah
    JOURNAL OF CROHNS & COLITIS, 2023, 17 (10) : 1672 - 1680
  • [46] Predicting ward transfer mortality with machine learning
    Lezama, Jose L.
    Alterovitz, Gil
    Jakey, Colleen E.
    Kraus, Ana L.
    Kim, Michael J.
    Borkowski, Andrew A.
    FRONTIERS IN ARTIFICIAL INTELLIGENCE, 2023, 6
  • [47] Venous Thromboembolism in Patients with Inflammatory Bowel Disease
    Dhaliwal, Galvin
    Patrone, Michael V.
    Bickston, Stephen J.
    JOURNAL OF CLINICAL MEDICINE, 2024, 13 (01)
  • [48] An improved machine learning approach for predicting granular flows
    Xu, Dan
    Shen, Yansong
    CHEMICAL ENGINEERING JOURNAL, 2022, 450
  • [49] Machine learning approach for predicting inhalation injury in patients with burns
    Yang, Shih-Yi
    Huang, Chih-Jung
    Yen, Cheng-, I
    Kao, Yu-Ching
    Hsiao, Yen-Chang
    Yang, Jui-Yung
    Chang, Shu-Yin
    Chuang, Shiow-Shuh
    Chen, Hung-Chang
    BURNS, 2023, 49 (07) : 1592 - 1601
  • [50] Predicting the Mortality and Readmission of In-Hospital Cardiac Arrest Patients With Electronic Health Records: A Machine Learning Approach
    Chi, Chien-Yu
    Ao, Shuang
    Winkler, Adrian
    Fu, Kuan-Chun
    Xu, Jie
    Ho, Yi-Lwun
    Huang, Chien-Hua
    Soltani, Rohollah
    JOURNAL OF MEDICAL INTERNET RESEARCH, 2021, 23 (09)