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ワカバヤシ ヒデタカ
WAKABAYASHI Hidetaka
若林 秀隆 所属 医学部 医学科(東京女子医科大学病院) 職種 教授・基幹分野長 |
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| 論文種別 | 原著 |
| 言語種別 | 英語 |
| 査読の有無 | 査読あり |
| 表題 | A practical estimation equation for appendicular skeletal muscle mass in stroke rehabilitation: validating diagnostic accuracy and predicting functional outcomes. |
| 掲載誌名 | 正式名:European geriatric medicine 略 称:Eur Geriatr Med ISSNコード:18787649/18787649 |
| 掲載区分 | 国外 |
| 巻・号・頁 | 16,pp.1 |
| 著者・共著者 | Kota Hori, Yoshihiro Yoshimura, Hidetaka Wakabayashi, Ayaka Matsumoto, Fumihiko Nagano, Sayuri Shimazu, Ai Shiraishi, Yoshifumi Kido, Takahiro Bise, Aomi Kuzuhara, Takenori Hamada, Kouki Yoneda |
| 発行年月 | 2025/07 |
| 概要 | BACKGROUND:The gold standard methods for assessing muscle mass in sarcopenia diagnosis are often impractical due to cost and accessibility, necessitating simpler tools. This study evaluates the validity of diagnosing sarcopenia using skeletal muscle mass estimated by a prediction equation in post-stroke rehabilitation patients.METHODS:This retrospective cohort study analyzed hospitalized post-stroke patients. Skeletal muscle mass was assessed using bioelectrical impedance analysis (BIA) and a validated prediction equation (ASM = 0.485 × 0.998^age × 0.814^[female] × 1.006^height × weight^0.680). Sarcopenia was diagnosed following the Asian Working Group for Sarcopenia 2019 criteria. The accuracy of the prediction equation was assessed by correlation with BIA-derived skeletal muscle mass and diagnostic metrics (κ and AUC). Functional outcomes, including motor and cognitive scores from the Functional Independence Measure (FIM), were analyzed using multivariate regression to adjust for confounders.RESULTS:A total of 748 participants were analyzed. The prediction equation demonstrated a strong correlation with BIA-derived skeletal muscle mass (R2 = 0.84, RMSE = 2.04). Diagnostic accuracy for sarcopenia was moderate (men κ = 0.47, AUC = 0.74; women κ = 0.55, AUC = 0.75), with high sensitivity (men 83%, women 96%) and moderate specificity (men 55%, women 65%). Sarcopenia diagnosed using the prediction equation was independently associated with lower FIM motor (men: 87 vs. 78, p < 0.001; women: 85 vs. 74, p < 0.001) and cognitive scores (men: 32 vs. 28, p < 0.001; women: 33 vs. 27, p < 0.001) at discharge.CONCLUSIONS:The prediction equation offers a practical and accessible tool for estimating skeletal muscle mass and diagnosing sarcopenia, demonstrating strong correlations with established methods and associations with functional outcomes. |
| DOI | 10.1007/s41999-025-01280-2 |
| PMID | 40707778 |