Can we diagnose sarcopenia using anterior femoral muscle thickness in patients with cardiovascular disease?

Author:

Fukuda Taira,Yokomachi Jun,Yamaguchi Suomi,Yagi Hiroshi,Shibasaki Ikuko,Ugata Yuusuke,Sakuma Masashi,Yasuda Tomohiro,Abe Shichiro,Fukuda Hirotsugu,Fujita Hideo,Toyoda Shigeru,Nakajima Toshiaki

Abstract

Objective: Making the diagnosis of sarcopenia is not always easy and this is especially true for those with cardiovascular disease. The purpose of this study is to investigate whether it is possible to diagnose sarcopenia by using ultrasound-guided measurements of anterior femoral muscle thickness. Methods: We investigated the utility of ultrasound-guided measurements of anterior femoral muscle thickness in 1075 hospitalized patients with cardiovascular disease (675 men). As a comparison, sarcopenia was assessed by skeletal muscle mass index using bioelectrical impedance analysis and the Asia Working Group for Sarcopenia criteria. Results: When the receiver operating characteristic curve using muscle thickness was examined, we found this could be used to make the diagnosis of sarcopenia (men: cutoff value 2.425 cm, area under the curve 0.796; women: cutoff value 1.995 cm, area under the curve 0.746). The prevalence of sarcopenia according to the criteria with skeletal muscle mass index was 34.2% in men and 51.8% in women, while its prevalence according to the cutoff value of muscle thickness was 29.2% in men and 36.7% in women. Conclusion: Ultrasound-guided measurement of the anterior femoral muscle thickness is a simple and useful method to help make the diagnosis of sarcopenia in patients with cardiovascular disease.

Publisher

MJS Publishing, Medical Journals Sweden AB

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