Department of Radiology, Kemalpaşa State Hospital, Kırovası Küme Street, Kemalpaşa, 35730, Izmir, Turkey.
Department of Radiology, Dokuz Eylul University, Faculty of Medicine, Izmir, Turkey.
Skeletal Radiol. 2023 Sep;52(9):1703-1711. doi: 10.1007/s00256-023-04333-4. Epub 2023 Apr 4.
To report the diagnostic performance of machine learning-based CT texture analysis for differentiating multiple myeloma from osteolytic metastatic bone lesions in the peripheral skeleton.
We retrospectively evaluated 172 patients with multiple myeloma (n = 70) and osteolytic metastatic bone lesions (n = 102) in the peripheral skeleton. Two radiologists individually used two-dimensional manual segmentation to extract texture features from non-contrast CT. In total, 762 radiomic features were extracted. Dimension reduction was performed in three stages: inter-observer agreement analysis, collinearity analysis, and feature selection. Data were randomly divided into training (n = 120) and test (n = 52) groups. Eight machine learning algorithms were used for model development. The primary performance metrics were the area under the receiver operating characteristic curve and accuracy.
In total, 476 of the 762 texture features demonstrated excellent interobserver agreement. The number of features was reduced to 22 after excluding those with strong collinearity. Of these features, six were included in the machine learning algorithms using the wrapper-based classifier-specific technique. When all eight machine learning algorithms were considered for differentiating multiple myeloma from osteolytic metastatic bone lesions in the peripheral skeleton, the area under the receiver operating characteristic curve and accuracy were 0.776-0.932 and 78.8-92.3%, respectively. The k-nearest neighbors model performed the best, with the area under the receiver operating characteristic curve and accuracy values of 0.902 and 92.3%, respectively.
Machine learning-based CT texture analysis is a promising method for discriminating multiple myeloma from osteolytic metastatic bone lesions.
报告基于机器学习的 CT 纹理分析在鉴别外周骨骼多发性骨髓瘤与溶骨性转移瘤中的诊断性能。
我们回顾性评估了 172 例外周骨骼多发性骨髓瘤(n=70)和溶骨性转移瘤(n=102)患者。两位放射科医生分别使用二维手动分割法从非增强 CT 中提取纹理特征。共提取了 762 个放射组学特征。在三个阶段进行降维:观察者间一致性分析、共线性分析和特征选择。数据随机分为训练组(n=120)和测试组(n=52)。使用 8 种机器学习算法进行模型开发。主要性能指标为受试者工作特征曲线下面积和准确性。
762 个纹理特征中有 476 个表现出极好的观察者间一致性。在排除具有强共线性的特征后,特征数量减少至 22 个。这些特征中,6 个特征被纳入基于包装器的分类器特定技术的机器学习算法中。当考虑所有 8 种机器学习算法用于鉴别外周骨骼多发性骨髓瘤与溶骨性转移瘤时,受试者工作特征曲线下面积和准确性分别为 0.776-0.932 和 78.8-92.3%。k-最近邻模型表现最好,受试者工作特征曲线下面积和准确性值分别为 0.902 和 92.3%。
基于机器学习的 CT 纹理分析是一种有前途的鉴别多发性骨髓瘤与溶骨性转移瘤的方法。