Saravi Babak, Zink Alisia, Tabukashvili Elene, Güzel Hamza Eren, Ülkümen Sara, Couillard-Despres Sebastien, Lang Gernot Michael, Hassel Frank
Department of Orthopedics and Trauma Surgery, Faculty of Medicine, Medical Center - University of Freiburg, University of Freiburg, Freiburg, Germany.
Department of Spine Surgery, Loretto Hospital, Freiburg, Germany.
Front Bioeng Biotechnol. 2024 Nov 22;12:1485364. doi: 10.3389/fbioe.2024.1485364. eCollection 2024.
Osteoporotic vertebral fractures are a major cause of morbidity, disability, and mortality among the elderly. Traditional methods for fracture risk assessment, such as dual-energy X-ray absorptiometry (DXA), may not fully capture the complex factors contributing to fracture risk. This study aims to enhance vertebral fracture risk prediction by integrating radiomics features extracted from computed tomography (CT) scans with clinical data, utilizing advanced machine learning techniques.
We analyzed CT imaging data and clinical records from 124 patients, extracting a comprehensive set of radiomics features. The dataset included shape, texture, and intensity metrics from segmented vertebrae, alongside clinical variables such as age and DXA T-values. Feature selection was conducted using a Random Forest model, and the predictive performance of multiple machine learning models-Random Forest, Gradient Boosting, Support Vector Machines, and XGBoost-was evaluated. Outcomes included the number of fractures (N_Fx), mean fracture grade, and mean fracture shape. Incorporating radiomics features with clinical data significantly improved predictive accuracy across all outcomes. The XGBoost model demonstrated superior performance, achieving an R of 0.7620 for N_Fx prediction in the training set and 0.7291 in the validation set. Key radiomics features such as Dependence Entropy, Total Energy, and Surface Volume Ratio showed strong correlations with fracture outcomes. Notably, Dependence Entropy, which reflects the complexity of voxel intensity arrangements, was a critical predictor of fracture severity and number.
This study underscores the potential of radiomics as a valuable tool for enhancing fracture risk assessment beyond traditional clinical methods. The integration of radiomics features with clinical data provides a more nuanced understanding of vertebral bone health, facilitating more accurate risk stratification and personalized management in osteoporosis care. Future research should focus on standardizing radiomics methodologies and validating these findings across diverse populations.
骨质疏松性椎体骨折是老年人发病、致残和死亡的主要原因。传统的骨折风险评估方法,如双能X线吸收法(DXA),可能无法完全捕捉到导致骨折风险的复杂因素。本研究旨在通过将计算机断层扫描(CT)扫描提取的放射组学特征与临床数据相结合,并利用先进的机器学习技术,提高椎体骨折风险预测能力。
我们分析了124例患者的CT影像数据和临床记录,提取了一套全面的放射组学特征。数据集包括分割椎体的形状、纹理和强度指标,以及年龄和DXA T值等临床变量。使用随机森林模型进行特征选择,并评估了多种机器学习模型(随机森林、梯度提升、支持向量机和XGBoost)的预测性能。结果包括骨折数量(N_Fx)、平均骨折分级和平均骨折形状。将放射组学特征与临床数据相结合,显著提高了所有结果的预测准确性。XGBoost模型表现出卓越的性能,在训练集中N_Fx预测的R值为0.7620,在验证集中为0.7291。关键的放射组学特征,如依赖熵、总能量和表面体积比,与骨折结果显示出强烈的相关性。值得注意的是,反映体素强度排列复杂性的依赖熵是骨折严重程度和数量的关键预测指标。
本研究强调了放射组学作为一种有价值的工具,在超越传统临床方法增强骨折风险评估方面的潜力。放射组学特征与临床数据的整合,为椎体骨健康提供了更细致入微的理解,有助于在骨质疏松症护理中进行更准确的风险分层和个性化管理。未来的研究应侧重于标准化放射组学方法,并在不同人群中验证这些发现。