征服科布角:用于脊柱侧凸患者x线片上科布角自动、硬件不变测量的深度学习算法。

IF 8.1 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Radiology-Artificial Intelligence Pub Date : 2023-07-01 DOI:10.1148/ryai.220158
Abhinav Suri, Sisi Tang, Daniel Kargilis, Elena Taratuta, Bruce J Kneeland, Grace Choi, Alisha Agarwal, Nancy Anabaraonye, Winnie Xu, James B Parente, Ashley Terry, Anita Kalluri, Katie Song, Chamith S Rajapakse
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引用次数: 0

摘要

据估计,美国有超过8%的成年人患有脊柱侧凸。通过人工测量x线片上最大倾斜椎体之间的角度(即Cobb角)来诊断。然而,这些测量是耗时的,限制了它们在脊柱侧凸手术计划和术后监测中的应用。在这项回顾性研究中,开发了一个管道(使用SpineTK架构),对1310张由低剂量立体放射扫描系统获得的前后图像和疑似脊柱侧凸患者的x线片进行了训练、验证和测试,以自动测量Cobb角。图像在六个中心(2005-2020)获得。该算法在内部(n = 460)和外部(n = 161)测试集上测量Cobb角,与两位经验丰富的放射科医生进行的地面真值测量相比,误差小于2°(类内相关系数,0.96)。测量结果在不到0.5秒的时间内产生,与实际测量结果没有显著差异(P = 0.05截止值),无论有无手术器械(P = 0.80)、年龄(P = 0.58)、性别(P = 0.83)、体重指数(P = 0.63)、脊柱侧凸严重程度(P = 0.44)或图像类型(低剂量立体放射图像vs x线片;P = .51)。这些发现表明,该算法在不同的临床特征中具有高度鲁棒性。由于其自动化、快速和准确的测量,该网络可用于监测患者脊柱侧凸的进展。关键词:Cobb角,卷积神经网络,深度学习算法,儿科学,机器学习算法,脊柱侧凸,脊柱。©rsna, 2023。
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Conquering the Cobb Angle: A Deep Learning Algorithm for Automated, Hardware-Invariant Measurement of Cobb Angle on Radiographs in Patients with Scoliosis.

Scoliosis is a disease estimated to affect more than 8% of adults in the United States. It is diagnosed with use of radiography by means of manual measurement of the angle between maximally tilted vertebrae on a radiograph (ie, the Cobb angle). However, these measurements are time-consuming, limiting their use in scoliosis surgical planning and postoperative monitoring. In this retrospective study, a pipeline (using the SpineTK architecture) was developed that was trained, validated, and tested on 1310 anterior-posterior images obtained with a low-dose stereoradiographic scanning system and radiographs obtained in patients with suspected scoliosis to automatically measure Cobb angles. The images were obtained at six centers (2005-2020). The algorithm measured Cobb angles on hold-out internal (n = 460) and external (n = 161) test sets with less than 2° error (intraclass correlation coefficient, 0.96) compared with ground truth measurements by two experienced radiologists. Measurements, produced in less than 0.5 second, did not differ significantly (P = .05 cutoff) from ground truth measurements, regardless of the presence or absence of surgical hardware (P = .80), age (P = .58), sex (P = .83), body mass index (P = .63), scoliosis severity (P = .44), or image type (low-dose stereoradiographic image vs radiograph; P = .51) in the patient. These findings suggest that the algorithm is highly robust across different clinical characteristics. Given its automated, rapid, and accurate measurements, this network may be used for monitoring scoliosis progression in patients. Keywords: Cobb Angle, Convolutional Neural Network, Deep Learning Algorithms, Pediatrics, Machine Learning Algorithms, Scoliosis, Spine Supplemental material is available for this article. © RSNA, 2023.

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来源期刊
CiteScore
16.20
自引率
1.00%
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期刊介绍: Radiology: Artificial Intelligence is a bi-monthly publication that focuses on the emerging applications of machine learning and artificial intelligence in the field of imaging across various disciplines. This journal is available online and accepts multiple manuscript types, including Original Research, Technical Developments, Data Resources, Review articles, Editorials, Letters to the Editor and Replies, Special Reports, and AI in Brief.
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