基于可解释机器学习模型的双平面x线影像中脊柱侧凸Cobb角自动分类。

IF 2.6 2区 医学 Q2 CLINICAL NEUROLOGY
Spine Pub Date : 2025-07-01 Epub Date: 2025-02-25 DOI:10.1097/BRS.0000000000005312
Jennifer Yu, Yash S Lahoti, Kyle C McCandless, Nikan K Namiri, Matthew S Miyasaka, Hamza Ahmed, Junho Song, John J Corvi, Daniel C Berman, Samuel K Cho, Jun S Kim
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引用次数: 0

摘要

研究设计:回顾性队列研究。目的:通过对脊柱侧凸患者的一维特征分析,量化脊柱的病理变化。背景资料概述:双平面x线摄影(EOS)成像是一种低剂量技术,可提供高分辨率脊柱曲率测量,对于评估脊柱侧凸严重程度和指导治疗决策至关重要。机器学习(ML)算法利用一维图像特征,可以实现自动Cobb角分类,提高脊柱侧凸评估的准确性和效率,同时减少人工测量的需要,从而支持临床决策。方法:本研究使用816张带注释的AP EOS脊柱图像,使用脊柱分割掩膜和10度多项式来表示曲率。工程特征包括一阶和二阶导数,傅里叶变换和曲线能量,为鲁棒性归一化。XGBoost选择了32个最重要的特性。这些模型根据弯曲度(通过Cobb角测量)将脊柱侧凸分为多个组。为了解决类别不平衡问题,采用了分层抽样、欠抽样和过抽样技术,并进行了10倍分层k倍交叉验证。使用自动网格搜索进行超参数优化,并进行K-fold交叉验证(K=3)。结果:随机森林模型表现最好,ROC AUC为91.8%。准确率为86.1%,精密度为86.0%,召回率为86.0%,F1得分为85.1%。在用来解决阶级不平衡的三种技术中,分层抽样产生了最好的样本外结果。为前20个特征(包括脊柱曲线长度和线性回归误差)生成SHAP值,最具预测性的特征排在最前面,增强了模型的可解释性。结论:基于Cobb角范围的特征工程为脊柱侧凸严重程度分类提供了有效的方法。表征脊柱病理特征的高度可解释性,以及经典ML技术的易用性,使其成为开发自动化工具来管理复杂脊柱测量的有吸引力的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Scoliosis Cobb Angle Classification in Biplanar Radiograph Imaging With Explainable Machine Learning Models.

Study design: Retrospective cohort study.

Objective: To quantify the pathology of the spine in patients with scoliosis through one-dimensional feature analysis.

Summary of background data: Biplanar radiograph (EOS) imaging is a low-dose technology offering high-resolution spinal curvature measurement, crucial for assessing scoliosis severity and guiding treatment decisions. Machine learning (ML) algorithms, utilizing one-dimensional image features, can enable automated Cobb angle classification, improving accuracy and efficiency in scoliosis evaluation while reducing the need for manual measurements, thus supporting clinical decision-making.

Methods: This study used 816 annotated AP EOS spinal images with a spine segmentation mask and a 10° polynomial to represent curvature. Engineered features included the first and second derivatives, Fourier transform, and curve energy, normalized for robustness. XGBoost selected the top 32 features. The models classified scoliosis into multiple groups based on curvature degree, measured through Cobb angle. To address the class imbalance, stratified sampling, undersampling, and oversampling techniques were used, with 10-fold stratified K-fold cross-validation for generalization. An automatic grid search was used for hyperparameter optimization, with K-fold cross-validation (K=3).

Results: The top-performing model was Random Forest, achieving an ROC AUC of 91.8%. An accuracy of 86.1%, precision of 86.0%, recall of 86.0%, and an F1 score of 85.1% were also achieved. Of the three techniques used to address class imbalance, stratified sampling produced the best out-of-sample results. SHAP values were generated for the top 20 features, including spine curve length and linear regression error, with the most predictive features ranked at the top, enhancing model explainability.

Conclusions: Feature engineering with classical ML methods offers an effective approach for classifying scoliosis severity based on Cobb angle ranges. The high interpretability of features in representing spinal pathology, along with the ease of use of classical ML techniques, makes this an attractive solution for developing automated tools to manage complex spinal measurements.

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来源期刊
Spine
Spine 医学-临床神经学
CiteScore
5.90
自引率
6.70%
发文量
361
审稿时长
6.0 months
期刊介绍: Lippincott Williams & Wilkins is a leading international publisher of professional health information for physicians, nurses, specialized clinicians and students. For a complete listing of titles currently published by Lippincott Williams & Wilkins and detailed information about print, online, and other offerings, please visit the LWW Online Store. Recognized internationally as the leading journal in its field, Spine is an international, peer-reviewed, bi-weekly periodical that considers for publication original articles in the field of Spine. It is the leading subspecialty journal for the treatment of spinal disorders. Only original papers are considered for publication with the understanding that they are contributed solely to Spine. The Journal does not publish articles reporting material that has been reported at length elsewhere.
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