| Literature DB >> 32351968 |
Vaibhav Sharma1, Vishakha Sharma1, Ayesha Khan2, David J Wassmer2, Matthew D Schoenholtz3, Raquel Hontecillas4, Josep Bassaganya-Riera4, Ramin Zand2, Vida Abedi5.
Abstract
Nutrition plays a vital role in health and the recovery process. Deficiencies in macronutrients and micronutrients can impact the development and progression of various disorders. However, malnutrition screening tools and their utility in the clinical setting remain largely understudied. In this study, we summarize the importance of nutritional adequacy and its association with neurological, cardiovascular, and immune-related disorders. We also examine general and specific malnutrition assessment tools utilized in healthcare settings. Since the implementation of the screening process in 2016, malnutrition data from hospitalized patients in the Geisinger Health System is presented and discussed as a case study. Clinical data from five Geisinger hospitals shows that ~10% of all admitted patients are acknowledged for having some form of nutritional deficiency, from which about 60-80% of the patients are targeted for a more comprehensive assessment. Finally, we conclude that with a reflection on how technological advances, specifically machine learning-based algorithms, can be integrated into electronic health records to provide decision support system to care providers in the identification and management of patients at higher risk of malnutrition.Entities:
Keywords: ASPEN; artificial intelligence; machine learning; malnutrition; nutrition assessment tools
Year: 2020 PMID: 32351968 PMCID: PMC7174626 DOI: 10.3389/fnut.2020.00044
Source DB: PubMed Journal: Front Nutr ISSN: 2296-861X
Figure 1Specific nutritional deficiency and its cardiovascular outcome. Top row: Macronutrient and micronutrient deficiency induce various pathological changes to electrical properties leading to the development of atrial fibrillation. Middle row: B-vitamin deficiency disrupt the integrity of endothelial properties leading to the development of peripheral artery disease. Bottom row: Deficiencies of Vitamin D can result in pathological changes to the heart leading to cardiovascular disease.
The impact of malnutrition on immunological organs.
| Thymus | Thymic atrophy | Thymocyte depletion | Reduced Thymic hormone production | ( |
| Bone marrow | Bone marrow atrophy | Megaloblastic and dysplastic changes with erythroid-series hypoplasia | Altered cytokine microenvironment | ( |
| Blood | Reduced Number of neutrophils, lymphocytes, and monocytes | ( | ||
| Spleen & lymph nodes | Small spleen | Reduced proliferation of spleen cells | IL-2 reduction and IL-10 production | ( |
| Gut-associated lymphoid tissue | Diminished Peyer's patches and mesenteric lymph nodes | Increased NK cells | Reduced IgA in jejunal mucosa | ( |
General and specific nutritional assessment tools and their applications.
| Malnutrition Screening Tool (MST) | Weight | Useful in acute hospital setting | ( |
| Mini-Nutritional Assessment-Short Form (MNA-SF) | Weight | Valid nutritional screening tool for geriatric health care professionals | ( |
| Nutritional Risk Screening (NRS) | Weight | Valid tool to assess malnutrition risk in hospitalized adult population | ( |
| Short Nutritional Assessment Questionnaire (SNAQ) | Weight change | Early detection and treatment of malnourished hospital patient | ( |
| Simplified Nutritional Appetite Questionnaire (SNAQ) | Food intake | Used to evaluate the appetite loss and predict the weight loss in patients with liver cirrhosis. | ( |
| Generated-Subjective Global Assessment (PG-SGA) | Weight/Weight Loss | Easy tool for nutrition assessment tool in hospitalized cancer patients. Allows for easy and fast identification and prioritization. | ( |
| Nutrition Risk in the Critically Ill (NUTRIC) | Age | Identify critically ill patients who may receive benefit from aggressive nutritional therapy | ( |
| Modified Nutrition Risk in the Critically Ill (mNUTRIC) | Age | Good nutritional risk assessment tool for critically ill septic patients. | ( |
| American Society for Parenteral and Enteral Nutrition (ASPEN) | History & clinical diagnosis | Tool to understand malnutrition syndromes in adults and practical assessment for diagnosing malnutrition syndrome | ( |
APACHE II, Acute Physiology, Age, Chronic Health Evaluation II, is based on 12 physiological data elements (AaDO2 or PaO2 (depending on FiO2), Temperature (rectal), Mean arterial pressure, pH arterial, Heart rate, Respiratory rate, Sodium (serum), Potassium (serum), Creatinine, Hematocrit, White blood cell count, Glasgow Coma Scale) (.
Figure 2Percentage of BPA followed by care providers. Inpatient cases of malnutrition were marked as best practice alert (BPA). Percentage of BPA that was targeted for further in-depth nutritional assessment by healthcare providers in different departments among five Geisinger hospitals between July 2016–May 2019 was determined.