Literature DB >> 32701397

MUST-Plus: A Machine Learning Classifier That Improves Malnutrition Screening in Acute Care Facilities.

Prem Timsina1, Himanshu N Joshi1,2, Fu-Yuan Cheng1, Ilana Kersch3, Sara Wilson3, Claudia Colgan4, Robert Freeman1,4, David L Reich4,5, Jeffrey Mechanick6, Madhu Mazumdar1,2, Matthew A Levin5, Arash Kia1.   

Abstract

OBJECTIVE: Malnutrition among hospital patients, a frequent, yet under-diagnosed problem is associated with adverse impact on patient outcome and health care costs. Development of highly accurate malnutrition screening tools is, therefore, essential for its timely detection, for providing nutritional care, and for addressing the concerns related to the suboptimal predictive value of the conventional screening tools, such as the Malnutrition Universal Screening Tool (MUST). We aimed to develop a machine learning (ML) based classifier (MUST-Plus) for more accurate prediction of malnutrition.
METHOD: A retrospective cohort with inpatient data consisting of anthropometric, lab biochemistry, clinical data, and demographics from adult (≥ 18 years) admissions at a large tertiary health care system between January 2017 and July 2018 was used. The registered dietitian (RD) nutritional assessments were used as the gold standard outcome label. The cohort was randomly split (70:30) into training and test sets. A random forest model was trained using 10-fold cross-validation on training set, and its predictive performance on test set was compared to MUST.
RESULTS: In all, 13.3% of admissions were associated with malnutrition in the test cohort. MUST-Plus provided 73.07% (95% confidence interval [CI]: 69.61%-76.33%) sensitivity, 76.89% (95% CI: 75.64%-78.11%) specificity, and 83.5% (95% CI: 82.0%-85.0%) area under the receiver operating curve (AUC). Compared to classic MUST, MUST-Plus demonstrated 30% higher sensitivity, 6% higher specificity, and 17% increased AUC.
CONCLUSIONS: ML-based MUST-Plus provided superior performance in identifying malnutrition compared to the classic MUST. The tool can be used for improving the operational efficiency of RDs by timely referrals of high-risk patients.

Entities:  

Keywords:  Malnutrition universal screening tool; hospital medicine; machine learning; random forest

Mesh:

Year:  2020        PMID: 32701397     DOI: 10.1080/07315724.2020.1774821

Source DB:  PubMed          Journal:  J Am Coll Nutr        ISSN: 0731-5724            Impact factor:   3.169


  1 in total

1.  Predicting malnutrition from longitudinal patient trajectories with deep learning.

Authors:  Boyang Tom Jin; Mi Hyun Choi; Meagan F Moyer; David A Kim
Journal:  PLoS One       Date:  2022-07-28       Impact factor: 3.752

  1 in total

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