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
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