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Development of a practical screening tool to predict low muscle mass using NHANES 1999–2004

BACKGROUND: Skeletal muscle mass declines after the age of 50. Loss of skeletal muscle mass is associated with increased morbidity and mortality. OBJECTIVE: This study aims to identify predictors of low skeletal muscle mass in older adults toward development of a practical clinical assessment tool f...

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Autores principales: Goodman, Michael J., Ghate, Sameer R., Mavros, Panagiotis, Sen, Shuvayu, Marcus, Robin L., Joy, Elizabeth, Brixner, Diana I.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3774922/
https://www.ncbi.nlm.nih.gov/pubmed/23673689
http://dx.doi.org/10.1007/s13539-013-0107-9
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author Goodman, Michael J.
Ghate, Sameer R.
Mavros, Panagiotis
Sen, Shuvayu
Marcus, Robin L.
Joy, Elizabeth
Brixner, Diana I.
author_facet Goodman, Michael J.
Ghate, Sameer R.
Mavros, Panagiotis
Sen, Shuvayu
Marcus, Robin L.
Joy, Elizabeth
Brixner, Diana I.
author_sort Goodman, Michael J.
collection PubMed
description BACKGROUND: Skeletal muscle mass declines after the age of 50. Loss of skeletal muscle mass is associated with increased morbidity and mortality. OBJECTIVE: This study aims to identify predictors of low skeletal muscle mass in older adults toward development of a practical clinical assessment tool for use by clinicians to identify patients requiring dual-energy X-ray absorptiometry (DXA) screening for muscle mass. METHODS: Data were drawn from the National Health and Nutrition Examination Surveys (NHANES) from 1999 to 2004. Appendicular skeletal mass (ASM) was calculated based on DXA scans. Skeletal muscle mass index (SMI) was defined as the ratio of ASM divided by height in square centimeters. Elderly participants were classified as having low muscle mass if the SMI was 1 standard deviation (SD) below the mean SMI of young adults (20–40 years old). Logistic regression was conducted separately in males and females age ≥65 years of age to examine the relationship between patients identified as having low muscle mass and health behavior characteristics, adjusting for comorbid conditions. The model was validated on a separate sample of 200 patients. RESULTS: Among the NHANES study population, 551 (39.7 %) males and 374 (27.5 %) females had a SMI below the 1 SD cutoff point. NHANES study subjects with a low SMI were older (mean age, 76.2 vs. 72.7 for male; 76.0 vs. 73.7 for female; and both p < 0.0001) and had a lower body mass index (mean BMI, 24.1 vs. 29.4 for male; 22.9 vs. 29.7 for female; p < 0.0001). In adjusted logistic regression analyses, age (for males) and BMI (for both males and females) remained statistically significant. A parsimonious logistic regression model adjusting for age and BMI only had a C statistic of 0.89 for both males and females. The discriminatory power of the parsimonious model increased to 0.93 for males and 0.95 for females when the cutoff defining low SMI was set to 2 SD below the SMI of young adults. In the validation sample, the sensitivity was 81.6 % for males and 90.6 % for females. The specificity was 66.2 % for males and females. CONCLUSIONS: BMI was strongly associated with a low SMI and may be an informative predictor in the primary care setting. The predictive model worked well in a validation sample.
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spelling pubmed-37749222013-09-17 Development of a practical screening tool to predict low muscle mass using NHANES 1999–2004 Goodman, Michael J. Ghate, Sameer R. Mavros, Panagiotis Sen, Shuvayu Marcus, Robin L. Joy, Elizabeth Brixner, Diana I. J Cachexia Sarcopenia Muscle Original Article BACKGROUND: Skeletal muscle mass declines after the age of 50. Loss of skeletal muscle mass is associated with increased morbidity and mortality. OBJECTIVE: This study aims to identify predictors of low skeletal muscle mass in older adults toward development of a practical clinical assessment tool for use by clinicians to identify patients requiring dual-energy X-ray absorptiometry (DXA) screening for muscle mass. METHODS: Data were drawn from the National Health and Nutrition Examination Surveys (NHANES) from 1999 to 2004. Appendicular skeletal mass (ASM) was calculated based on DXA scans. Skeletal muscle mass index (SMI) was defined as the ratio of ASM divided by height in square centimeters. Elderly participants were classified as having low muscle mass if the SMI was 1 standard deviation (SD) below the mean SMI of young adults (20–40 years old). Logistic regression was conducted separately in males and females age ≥65 years of age to examine the relationship between patients identified as having low muscle mass and health behavior characteristics, adjusting for comorbid conditions. The model was validated on a separate sample of 200 patients. RESULTS: Among the NHANES study population, 551 (39.7 %) males and 374 (27.5 %) females had a SMI below the 1 SD cutoff point. NHANES study subjects with a low SMI were older (mean age, 76.2 vs. 72.7 for male; 76.0 vs. 73.7 for female; and both p < 0.0001) and had a lower body mass index (mean BMI, 24.1 vs. 29.4 for male; 22.9 vs. 29.7 for female; p < 0.0001). In adjusted logistic regression analyses, age (for males) and BMI (for both males and females) remained statistically significant. A parsimonious logistic regression model adjusting for age and BMI only had a C statistic of 0.89 for both males and females. The discriminatory power of the parsimonious model increased to 0.93 for males and 0.95 for females when the cutoff defining low SMI was set to 2 SD below the SMI of young adults. In the validation sample, the sensitivity was 81.6 % for males and 90.6 % for females. The specificity was 66.2 % for males and females. CONCLUSIONS: BMI was strongly associated with a low SMI and may be an informative predictor in the primary care setting. The predictive model worked well in a validation sample. Springer Berlin Heidelberg 2013-05-15 2013-09 /pmc/articles/PMC3774922/ /pubmed/23673689 http://dx.doi.org/10.1007/s13539-013-0107-9 Text en © Springer-Verlag Berlin Heidelberg 2013
spellingShingle Original Article
Goodman, Michael J.
Ghate, Sameer R.
Mavros, Panagiotis
Sen, Shuvayu
Marcus, Robin L.
Joy, Elizabeth
Brixner, Diana I.
Development of a practical screening tool to predict low muscle mass using NHANES 1999–2004
title Development of a practical screening tool to predict low muscle mass using NHANES 1999–2004
title_full Development of a practical screening tool to predict low muscle mass using NHANES 1999–2004
title_fullStr Development of a practical screening tool to predict low muscle mass using NHANES 1999–2004
title_full_unstemmed Development of a practical screening tool to predict low muscle mass using NHANES 1999–2004
title_short Development of a practical screening tool to predict low muscle mass using NHANES 1999–2004
title_sort development of a practical screening tool to predict low muscle mass using nhanes 1999–2004
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3774922/
https://www.ncbi.nlm.nih.gov/pubmed/23673689
http://dx.doi.org/10.1007/s13539-013-0107-9
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