Deep learning algorithm enables automated Cobb angle measurements with high accuracy.

IF 1.9 3区 医学 Q2 ORTHOPEDICS Skeletal Radiology Pub Date : 2024-12-17 DOI:10.1007/s00256-024-04853-7
Daichi Hayashi, Nor-Eddine Regnard, Jeanne Ventre, Vincent Marty, Lauryane Clovis, Ludovic Lim, Nicolas Nitche, Zekun Zhang, Antoine Tournier, Alexis Ducarouge, Andrew J Kompel, Chadi Tannoury, Ali Guermazi
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Abstract

Objective: To determine the accuracy of automatic Cobb angle measurements by deep learning (DL) on full spine radiographs.

Materials and methods: Full spine radiographs of patients aged > 2 years were screened using the radiology reports to identify radiographs for performing Cobb angle measurements. Two senior musculoskeletal radiologists and one senior orthopedic surgeon independently annotated Cobb angles exceeding 7° indicating the angle location as either proximal thoracic (apices between T3 and T5), main thoracic (apices between T6 and T11), or thoraco-lumbar (apices between T12 and L4). If at least two readers agreed on the number of angles, location of the angles, and difference between comparable angles was < 8°, then the ground truth was defined as the mean of their measurements. Otherwise, the radiographs were reviewed by the three annotators in consensus. The DL software (BoneMetrics, Gleamer) was evaluated against the manual annotation in terms of mean absolute error (MAE).

Results: A total of 345 patients were included in the study (age 33 ± 24 years, 221 women): 179 pediatric patients (< 22 years old) and 166 adult patients (22 to 85 years old). Fifty-three cases were reviewed in consensus. The MAE of the DL algorithm for the main curvature was 2.6° (95% CI [2.0; 3.3]). For the subgroup of pediatric patients, the MAE was 1.9° (95% CI [1.6; 2.2]) versus 3.3° (95% CI [2.2; 4.8]) for adults.

Conclusion: The DL algorithm predicted the Cobb angle of scoliotic patients with high accuracy.

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深度学习算法可实现高精度的自动科布角测量。
目的:探讨深度学习技术在全脊柱x线片上自动测量Cobb角的准确性。材料和方法:使用放射学报告筛选bb0 ~ 2岁患者的全脊柱x线片,以确定进行Cobb角测量的x线片。两名高级肌肉骨骼放射科医生和一名高级骨科医生独立标注了超过7°的Cobb角,表明角的位置可能是近胸(T3和T5之间的尖头)、主胸(T6和T11之间的尖头)或胸腰椎(T12和L4之间的尖头)。结果:共纳入345例患者(年龄33±24岁,221例女性):179例儿科患者(结论:DL算法预测脊柱侧凸患者的Cobb角具有较高的准确性。
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来源期刊
Skeletal Radiology
Skeletal Radiology 医学-核医学
CiteScore
4.40
自引率
9.50%
发文量
253
审稿时长
3-8 weeks
期刊介绍: Skeletal Radiology provides a forum for the dissemination of current knowledge and information dealing with disorders of the musculoskeletal system including the spine. While emphasizing the radiological aspects of the many varied skeletal abnormalities, the journal also adopts an interdisciplinary approach, reflecting the membership of the International Skeletal Society. Thus, the anatomical, pathological, physiological, clinical, metabolic and epidemiological aspects of the many entities affecting the skeleton receive appropriate consideration. This is the Journal of the International Skeletal Society and the Official Journal of the Society of Skeletal Radiology and the Australasian Musculoskelelal Imaging Group.
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