Correlative Assessment of Machine Learning-Based Cobb Angle Measurements and Human-Based Measurements in Adolescent Idiopathic and Congenital Scoliosis.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Samantha M Stott, Yujie Wu, Shahob Hosseinpour, Chaojun Chen, Khashayar Namdar, Afsaneh Amirabadi, Manohar Shroff, Farzad Khalvati, Andrea S Doria
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引用次数: 0

Abstract

Purpose: Scoliosis is a complex spine deformity with direct functional and cosmetic impacts on the individual. The reference standard for assessing scoliosis severity is the Cobb angle which is measured on radiographs by human specialists, carrying interobserver variability and inaccuracy of measurements. These limitations may result in lack of timely referral for management at a time the scoliotic deformity progression can be saved from surgery. We aimed to create a machine learning (ML) model for automatic calculation of Cobb angles on 3-foot standing spine radiographs of children and adolescents with clinical suspicion of scoliosis across 2 clinical scenarios (idiopathic, group 1 and congenital scoliosis, group 2). Methods: We retrospectively measured Cobb angles of 130 patients who had a 3-foot spine radiograph for scoliosis within a 10-year period for either idiopathic or congenital anomaly scoliosis. Cobb angles were measured both manually by radiologists and by an ML pipeline (segmentation-based approach-Augmented U-Net model with non-square kernels). Results: Our Augmented U-Net architecture achieved a Symmetric Mean Absolute Percentage Error (SMAPE) of 11.82% amongst a combined idiopathic and congenital scoliosis cohort. When stratifying for idiopathic and congenital scoliosis individually a SMAPE of 13.02% and 11.90% were achieved, respectively. Conclusion: The ML model used in this study is promising at providing automated Cobb angle measurement in both idiopathic scoliosis and congenital scoliosis. Nevertheless, larger studies are needed in the future to confirm the results of this study prior to translation of this ML algorithm into clinical practice.

在青少年特发性和先天性脊柱侧凸中,基于机器学习的 Cobb 角度测量与基于人工测量的相关性评估。
目的:脊柱侧弯是一种复杂的脊柱畸形,对个人的功能和外观有直接影响。评估脊柱侧弯严重程度的参考标准是 Cobb 角度,该角度由人类专家在 X 光片上测量,存在观察者之间的差异和测量的不准确性。这些局限性可能导致在脊柱侧弯畸形发展到可以通过手术挽救的时候,没有及时转诊进行治疗。我们的目的是创建一个机器学习(ML)模型,用于自动计算临床怀疑患有脊柱侧弯的儿童和青少年的三英尺站立脊柱X光片上的Cobb角,该模型适用于两种临床情况(特发性脊柱侧弯,第1组;先天性脊柱侧弯,第2组)。测量方法我们回顾性地测量了 130 名患者的 Cobb 角,这些患者在 10 年内因特发性或先天性异常脊柱侧凸而接受过脊柱侧凸三尺X光检查。Cobb角由放射科医生手动测量,并通过ML管道(基于分割的方法--非方形核的增强U-Net模型)进行测量。结果在特发性和先天性脊柱侧凸的联合队列中,我们的增强 U-Net 架构达到了 11.82% 的对称平均绝对百分比误差 (SMAPE)。在对特发性和先天性脊柱侧凸进行单独分层时,SMAPE 分别为 13.02% 和 11.90%。结论:本研究中使用的 ML 模型有望为特发性脊柱侧凸和先天性脊柱侧凸提供自动 Cobb 角测量。尽管如此,在将这种ML算法应用于临床实践之前,未来还需要进行更大规模的研究,以确认本研究的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.20
自引率
12.90%
发文量
98
审稿时长
6-12 weeks
期刊介绍: The Canadian Association of Radiologists Journal is a peer-reviewed, Medline-indexed publication that presents a broad scientific review of radiology in Canada. The Journal covers such topics as abdominal imaging, cardiovascular radiology, computed tomography, continuing professional development, education and training, gastrointestinal radiology, health policy and practice, magnetic resonance imaging, musculoskeletal radiology, neuroradiology, nuclear medicine, pediatric radiology, radiology history, radiology practice guidelines and advisories, thoracic and cardiac imaging, trauma and emergency room imaging, ultrasonography, and vascular and interventional radiology. Article types considered for publication include original research articles, critically appraised topics, review articles, guest editorials, pictorial essays, technical notes, and letter to the Editor.
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