Malnutrition risk assessment using a machine learning‐based screening tool: A multicentre retrospective cohort

Author:

Parchure Prathamesh1ORCID,Besculides Melanie12,Zhan Serena12,Cheng Fu‐yuan1,Timsina Prem1,Cheertirala Satya Narayana1,Kersch Ilana3,Wilson Sara3,Freeman Robert14,Reich David5,Mazumdar Madhu126,Kia Arash15ORCID

Affiliation:

1. Icahn School of Medicine at Mount Sinai New York New York USA

2. Department of Population Health Science and Policy Icahn School of Medicine at Mount Sinai New York New York USA

3. Clinical Nutrition Icahn School of Medicine at Mount Sinai New York New York USA

4. Hospital Administration, Icahn School of Medicine at Mount Sinai New York New York USA

5. Anesthesiology, Perioperative and Pain Medicine, Icahn School of Medicine at Mount Sinai New York New York USA

6. Tisch Cancer Institute, Icahn School of Medicine at Mount Sinai New York New York USA

Abstract

AbstractBackgroundMalnutrition is associated with increased morbidity, mortality, and healthcare costs. Early detection is important for timely intervention. This paper assesses the ability of a machine learning screening tool (MUST‐Plus) implemented in registered dietitian (RD) workflow to identify malnourished patients early in the hospital stay and to improve the diagnosis and documentation rate of malnutrition.MethodsThis retrospective cohort study was conducted in a large, urban health system in New York City comprising six hospitals serving a diverse patient population. The study included all patients aged ≥ 18 years, who were not admitted for COVID‐19 and had a length of stay of ≤ 30 days.ResultsOf the 7736 hospitalisations that met the inclusion criteria, 1947 (25.2%) were identified as being malnourished by MUST‐Plus‐assisted RD evaluations. The lag between admission and diagnosis improved with MUST‐Plus implementation. The usability of the tool output by RDs exceeded 90%, showing good acceptance by users. When compared pre‐/post‐implementation, the rate of both diagnoses and documentation of malnutrition showed improvement.ConclusionMUST‐Plus, a machine learning‐based screening tool, shows great promise as a malnutrition screening tool for hospitalised patients when used in conjunction with adequate RD staffing and training about the tool. It performed well across multiple measures and settings. Other health systems can use their electronic health record data to develop, test and implement similar machine learning‐based processes to improve malnutrition screening and facilitate timely intervention.

Publisher

Wiley

Reference22 articles.

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3. WeissAJ FingarKR BarrettML ElixhauserA SteinerCA GuenterP et al. Characteristics of hospital stays involving malnutrition 2013: Statistical Brief #210. Rockville MD: Healthcare Cost and Utilization Project (HCUP) Statistical Briefs;2006.

4. Management of disease-related malnutrition for patients being treated in hospital

5. GLIM criteria for the diagnosis of malnutrition – A consensus report from the global clinical nutrition community

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