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基于深度学习的大数据分析:腰背疾病患者腰椎脊柱肌肉的横截面积和脂肪浸润。

Cross-sectional area and fat infiltration of the lumbar spine muscles in patients with back disorders: a deep learning-based big data analysis.

机构信息

Schulthess Klinik, Lengghalde 2, 8008, Zurich, Switzerland.

IRCCS Galeazzi Orthopedic Institute, Milan, Italy.

出版信息

Eur Spine J. 2024 Jan;33(1):1-10. doi: 10.1007/s00586-023-07982-0. Epub 2023 Oct 24.

Abstract

PURPOSE

Validated deep learning models represent a valuable option to perform large-scale research studies aiming to evaluate muscle quality and quantity of paravertebral lumbar muscles at the population level. This study aimed to assess lumbar spine muscle cross-sectional area (CSA) and fat infiltration (FI) in a large cohort of subjects with back disorders through a validated deep learning model.

METHODS

T2 axial MRI images of 4434 patients (n = 2609 females, n = 1825 males; mean age: 56.7 ± 16.8) with back disorders, such as fracture, spine surgery or herniation, were retrospectively collected from a clinical database and automatically segmented. CSA, expressed as the ratio between total muscle area (TMA) and the vertebral body area (VBA), and FI, in percentages, of psoas major, quadratus lumborum, erector spinae, and multifidus were analyzed as primary outcomes.

RESULTS

Male subjects had significantly higher CSA (6.8 ± 1.7 vs. 5.9 ± 1.5 TMA/VBA; p < 0.001) and lower FI (21.9 ± 8.3% vs. 15.0 ± 7.3%; p < 0.001) than females. Multifidus had more FI (27.2 ± 10.6%; p < 0.001) than erector spinae (22.2 ± 9.7%), quadratus lumborum (17.5 ± 7.0%) and psoas (13.7 ± 5.8%) whereas CSA was higher in erector spinae than other lumbar muscles. A high positive correlation between age and total FI was detected (r = 0.73; p < 0.001) whereas a negligible negative correlation between total CSA and age was observed (r =  - 0.24; p < 0.001). Subjects with fractures had lower CSA and higher FI compared to those with herniations, surgery and with no clear pathological conditions.

CONCLUSION

CSA and FI values of paravertebral muscles vary a lot in accordance with subjects' sex, age and clinical conditions. Given also the large inter-muscle differences in CSA and FI, the choice of muscles needs to be considered with attention by spine surgeons or physiotherapists when investigating changes in lumbar muscle morphology in clinical practice.

摘要

目的

经过验证的深度学习模型是一种有价值的选择,可以用于开展旨在评估人群中椎旁腰椎肌肉质量和数量的大型研究。本研究旨在通过经过验证的深度学习模型评估患有背部疾病的大量患者的腰椎脊柱肌肉横截面积(CSA)和脂肪浸润(FI)。

方法

回顾性地从临床数据库中收集了 4434 名患有背部疾病(如骨折、脊柱手术或突出)的患者(n=2609 名女性,n=1825 名男性;平均年龄:56.7±16.8 岁)的 T2 轴向 MRI 图像,并对其进行自动分割。 CSA 以总肌肉面积(TMA)与椎体面积(VBA)的比值表示,主要结果为腰大肌、竖脊肌、多裂肌和腰方肌的 FI(百分比)。

结果

与女性相比,男性 CSA(6.8±1.7 比 5.9±1.5 TMA/VBA;p<0.001)更高,FI(21.9±8.3%比 15.0±7.3%;p<0.001)更低。与竖脊肌(22.2±9.7%)、腰方肌(17.5±7.0%)和腰大肌(13.7±5.8%)相比,多裂肌的 FI 更高(27.2±10.6%)。在年龄与总 FI 之间检测到高度正相关(r=0.73;p<0.001),而在总 CSA 与年龄之间观察到可以忽略不计的负相关(r=−0.24;p<0.001)。与突出症、手术和无明确病理情况相比,骨折患者的 CSA 更低,FI 更高。

结论

椎旁肌肉的 CSA 和 FI 值因性别、年龄和临床状况的不同而有很大差异。鉴于 CSA 和 FI 在肌肉间也存在很大差异,脊柱外科医生或物理治疗师在临床实践中研究腰椎肌肉形态变化时,需要注意选择肌肉。

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