Rossum Krista, Alexiuk Mackenzie R, Bohm Clara, Leslie William D, Tangri Navdeep
Chronic Disease Innovation Centre, Winnipeg, Manitoba, Canada; University of Manitoba, Winnipeg, Manitoba, Canada.
University of Manitoba, Winnipeg, Manitoba, Canada; St. Boniface General Hospital, Winnipeg, Manitoba, Canada.
J Clin Densitom. 2025 Apr-Jun;28(2):101560. doi: 10.1016/j.jocd.2024.101560. Epub 2025 Jan 4.
Sarcopenia is characterized by progressive muscle loss with reduced physical function and/or reduced muscle strength. Operational definitions of sarcopenia include a measurement of muscle mass, most often from dual-energy X-ray absorptiometry (DXA)-derived appendicular lean mass. Appendicular lean mass can be derived from whole-body dual-DXA scans; however, these scans are performed less commonly than hip and spine scans as part of clinical care. The objective of our study was to develop an algorithm to predict appendicular lean mass index (ALMI) from regional spine and hip dual-energy X-ray absorptiometry (DXA) scans.
We performed a retrospective cross-sectional study using a subset of patients from the Manitoba Bone Mineral Density Registry who had hip, spine, and whole-body DXA scans at the same visit. We developed the algorithm using the following candidate covariates: age, sex, height, weight, DXA-derived spine and hip fat fraction, DXA-derived spine and hip tissue thickness. We internally validated the algorithm using the bootstrap method. Mean bootstrap parameter estimates were used as the final equation.
DXA scans from 676 patients were included in the analytic dataset. Mean ALMI was 6.73 (SD 1.43) kg/m. The final predictive model included sex, age, height, weight, spine fat fraction and hip fat fraction. Sex also acted as an interaction term on weight and hip fat fraction. After bootstrap validation, model adjusted R2 was 0.863, root mean square error was 0.529 kg/m, and AUROC to predict low ALMI per the European Working Group on Sarcopenia version 2 was 0.88.
Hip and spine DXA scans can be used to predict appendicular lean mass index. Future studies should test whether these predictions can be used to assess relationships between sarcopenia and other clinical conditions.
肌肉减少症的特征是肌肉逐渐流失,身体功能下降和/或肌肉力量减弱。肌肉减少症的操作定义包括对肌肉质量的测量,最常见的是通过双能X线吸收法(DXA)得出的四肢瘦体重。四肢瘦体重可从全身双能DXA扫描中得出;然而,作为临床护理的一部分,这些扫描的执行频率低于髋部和脊柱扫描。我们研究的目的是开发一种算法,通过区域脊柱和髋部双能X线吸收法(DXA)扫描来预测四肢瘦体重指数(ALMI)。
我们进行了一项回顾性横断面研究,使用了来自曼尼托巴骨密度登记处的一部分患者,这些患者在同一次就诊时进行了髋部、脊柱和全身DXA扫描。我们使用以下候选协变量开发了该算法:年龄、性别、身高、体重、DXA得出的脊柱和髋部脂肪分数、DXA得出的脊柱和髋部组织厚度。我们使用自助法对该算法进行了内部验证。平均自助参数估计值用作最终方程。
分析数据集中包括了676名患者的DXA扫描结果。平均ALMI为6.73(标准差1.43)kg/m²。最终的预测模型包括性别、年龄、身高、体重、脊柱脂肪分数和髋部脂肪分数。性别也作为体重和髋部脂肪分数的交互项。经过自助验证后,模型调整后的R²为0.863,均方根误差为0.529 kg/m²,根据欧洲肌肉减少症工作组第2版预测低ALMI的受试者工作特征曲线下面积(AUROC)为0.88。
髋部和脊柱DXA扫描可用于预测四肢瘦体重指数。未来的研究应测试这些预测是否可用于评估肌肉减少症与其他临床状况之间的关系。