Prediction of Fusion Rod Curvature Angles in Posterior Scoliosis Correction Using Artificial Intelligence.

IF 1.2 Q3 ORTHOPEDICS
Rasoul Abedi, Nasser Fatouraee, Mahdi Bostanshirin, Navid Arjmand, Hasan Ghandhari
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引用次数: 0

Abstract

Objectives: This study aimed to estimate post-operative rod angles in both concave and convex sides of scoliosis curvature in patients who had undergone posterior surgery, using neural networks and support vector machine (SVM) algorithms.

Methods: Radiographs of 72 scoliotic individuals were obtained to predict post-operative rod angles at all fusion levels (all spinal joints fused by rods). Pre-operative radiographical indices and pre-operatively resolved net joint moments of the apical vertebrae were employed as inputs for neural networks and SVM with biomechanical modeling using inverse dynamics analysis. Various group combinations were considered as inputs, based on the number of pre-operative angles and moments. Rod angles on both the concave and convex sides of the Cobb angle were considered as outputs. To assess the outcomes, root mean square errors (RMSEs) were evaluated between actual and predicted rod angles.

Results: Among eight groups with various combinations of radiographical and biomechanical parameters (such as Cobb, kyphosis, and lordosis, as well as joint moments), RMSEs of groups 4 (with seven radiographical angles in each case, which is greater in quantity) and 5 (with four radiographical angles and one biomechanical moment in each case, which is the least possible number of inputs with both radiographical and biomechanical parameters) were minimum, particularly in prediction of the concave rod kyphosis angle (errors were 5.5° and 6.3° for groups 4 and 5, respectively). Rod lordosis angles had larger estimation errors than rod kyphosis ones.

Conclusion: Neural networks and SVM can be effective techniques for the post-operative estimation of rod angles at all fusion levels to assist surgeons with rod bending procedures before actual surgery. However, since rod lordosis fusion levels vary widely across scoliosis cases, it is simpler to predict rod kyphosis angles, which is more essential for surgeons.

利用人工智能预测后脊柱侧凸矫正中的融合杆曲率角
研究目的本研究旨在利用神经网络和支持向量机(SVM)算法估算接受后路手术的脊柱侧弯患者术后脊柱凹侧和凸侧的杆角度:方法:获取 72 名脊柱侧弯患者的 X 光片,以预测术后所有融合水平(所有脊柱关节均由杆件融合)的杆件角度。将术前放射学指数和术前解析的顶椎净关节力矩作为神经网络和 SVM 的输入,并使用反动力学分析建立生物力学模型。根据术前角度和力矩的数量,将不同的组别组合作为输入。Cobb 角凹面和凸面上的杆角被视为输出。为了评估结果,对实际角度和预测杆角度之间的均方根误差(RMSE)进行了评估:在八组不同的放射学和生物力学参数组合(如 Cobb、后凸和前凸以及关节力矩)中,第 4 组(每组有七个放射学角度,数量较多)和第 5 组(每组有四个放射学角度和一个生物力学力矩,是放射学和生物力学参数输入数量最少的一组)的均方根误差最小,尤其是在预测凹杆后凸角度方面(误差分别为 5.5°和 6.3°)。第 4 组和第 5 组的误差分别为 5.5° 和 6.3°)。杆状前凸角度的估计误差大于杆状后凸角度的估计误差:神经网络和 SVM 可以作为术后估算所有融合水平杆角度的有效技术,在实际手术前协助外科医生进行杆弯曲操作。然而,由于脊柱侧凸病例的杆状体融合水平差异很大,因此预测杆状体后凸角更为简单,这对外科医生来说更为重要。
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
128
期刊介绍: The Archives of Bone and Joint Surgery (ABJS) aims to encourage a better understanding of all aspects of Orthopedic Sciences. The journal accepts scientific papers including original research, review article, short communication, case report, and letter to the editor in all fields of bone, joint, musculoskeletal surgery and related researches. The Archives of Bone and Joint Surgery (ABJS) will publish papers in all aspects of today`s modern orthopedic sciences including: Arthroscopy, Arthroplasty, Sport Medicine, Reconstruction, Hand and Upper Extremity, Pediatric Orthopedics, Spine, Trauma, Foot and Ankle, Tumor, Joint Rheumatic Disease, Skeletal Imaging, Orthopedic Physical Therapy, Rehabilitation, Orthopedic Basic Sciences (Biomechanics, Biotechnology, Biomaterial..).
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