Is it feasible to develop a supervised learning algorithm incorporating spinopelvic mobility to predict impingement in patients undergoing total hip arthroplasty?

IF 2.8 Q1 ORTHOPEDICS
Andreas Fontalis, Baixiang Zhao, Pierre Putzeys, Fabio Mancino, Shuai Zhang, Thomas Vanspauwen, Fabrice Glod, Ricci Plastow, Evangelos Mazomenos, Fares S Haddad
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引用次数: 0

Abstract

Aims: Precise implant positioning, tailored to individual spinopelvic biomechanics and phenotype, is paramount for stability in total hip arthroplasty (THA). Despite a few studies on instability prediction, there is a notable gap in research utilizing artificial intelligence (AI). The objective of our pilot study was to evaluate the feasibility of developing an AI algorithm tailored to individual spinopelvic mechanics and patient phenotype for predicting impingement.

Methods: This international, multicentre prospective cohort study across two centres encompassed 157 adults undergoing primary robotic arm-assisted THA. Impingement during specific flexion and extension stances was identified using the virtual range of motion (ROM) tool of the robotic software. The primary AI model, the Light Gradient-Boosting Machine (LGBM), used tabular data to predict impingement presence, direction (flexion or extension), and type. A secondary model integrating tabular data with plain anteroposterior pelvis radiographs was evaluated to assess for any potential enhancement in prediction accuracy.

Results: We identified nine predictors from an analysis of baseline spinopelvic characteristics and surgical planning parameters. Using fivefold cross-validation, the LGBM achieved 70.2% impingement prediction accuracy. With impingement data, the LGBM estimated direction with 85% accuracy, while the support vector machine (SVM) determined impingement type with 72.9% accuracy. After integrating imaging data with a multilayer perceptron (tabular) and a convolutional neural network (radiograph), the LGBM's prediction was 68.1%. Both combined and LGBM-only had similar impingement direction prediction rates (around 84.5%).

Conclusion: This study is a pioneering effort in leveraging AI for impingement prediction in THA, utilizing a comprehensive, real-world clinical dataset. Our machine-learning algorithm demonstrated promising accuracy in predicting impingement, its type, and direction. While the addition of imaging data to our deep-learning algorithm did not boost accuracy, the potential for refined annotations, such as landmark markings, offers avenues for future enhancement. Prior to clinical integration, external validation and larger-scale testing of this algorithm are essential.

开发一种包含脊柱活动度的监督学习算法来预测接受全髋关节置换术患者的撞击情况是否可行?
目的:根据个体脊柱骨盆生物力学和表型进行精确的植入物定位,对全髋关节置换术(THA)的稳定性至关重要。尽管有一些关于不稳定性预测的研究,但在利用人工智能(AI)进行研究方面存在明显差距。我们的试点研究旨在评估根据个体旋盆力学和患者表型开发人工智能算法预测撞击的可行性:这项跨越两个中心的国际多中心前瞻性队列研究涵盖了157名接受初级机械臂辅助THA的成人。使用机器人软件的虚拟运动范围(ROM)工具识别特定屈伸姿势时的撞击。主要的人工智能模型--光梯度增强机(LGBM)使用表格数据预测撞击的存在、方向(屈曲或伸展)和类型。我们还评估了一个将表格数据与骨盆前路平片整合在一起的辅助模型,以评估是否有可能提高预测的准确性:结果:通过对脊柱骨盆基线特征和手术规划参数的分析,我们确定了九个预测因子。通过五重交叉验证,LGBM 的撞击预测准确率达到了 70.2%。通过撞击数据,LGBM 预测方向的准确率为 85%,而支持向量机 (SVM) 确定撞击类型的准确率为 72.9%。将成像数据与多层感知器(表格)和卷积神经网络(射线照片)整合后,LGBM 的预测准确率为 68.1%。综合预测和纯 LGBM 预测撞击方向的准确率相似(约为 84.5%):这项研究是利用人工智能预测 THA 中撞击的一项开创性工作,它利用了一个全面、真实的临床数据集。我们的机器学习算法在预测撞击、撞击类型和撞击方向方面表现出了良好的准确性。虽然在我们的深度学习算法中加入成像数据并没有提高准确性,但细化注释(如地标标记)的潜力为未来的改进提供了途径。在进行临床整合之前,必须对该算法进行外部验证和更大规模的测试。
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
Bone & Joint Open
Bone & Joint Open ORTHOPEDICS-
CiteScore
5.10
自引率
0.00%
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0
审稿时长
8 weeks
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