Van Den Berghe Thomas, Verberckmoes Bert, Kint Nicolas, Wallaert Steven, De Vos Nicolas, Algoet Chloé, Behaeghe Maxim, Dutoit Julie, Van Roy Nadine, Vlummens Philip, Dendooven Amélie, Van Dorpe Jo, Offner Fritz, Verstraete Koenraad
Department of Radiology and Medical Imaging, Ghent University Hospital, Building -1K12, Corneel Heymanslaan 10, Ghent, B-9000, Belgium.
Department of Clinical Hematology, Ghent University Hospital, Corneel Heymanslaan 10, Ghent, B-9000, Belgium.
Insights Imaging. 2024 Apr 10;15(1):106. doi: 10.1186/s13244-024-01672-1.
Cytogenetic abnormalities are predictors of poor prognosis in multiple myeloma (MM). This paper aims to build and validate a multiparametric conventional and functional whole-body MRI-based prediction model for cytogenetic risk classification in newly diagnosed MM.
Patients with newly diagnosed MM who underwent multiparametric conventional whole-body MRI, spinal dynamic contrast-enhanced (DCE-)MRI, spinal diffusion-weighted MRI (DWI) and had genetic analysis were retrospectively included (2011-2020/Ghent University Hospital/Belgium). Patients were stratified into standard versus intermediate/high cytogenetic risk groups. After segmentation, 303 MRI features were extracted. Univariate and model-based methods were evaluated for feature and model selection. Testing was performed using receiver operating characteristic (ROC) and precision-recall curves. Models comparing the performance for genetic risk classification of the entire MRI protocol and of all MRI sequences separately were evaluated, including all features. Four final models, including only the top three most predictive features, were evaluated.
Thirty-one patients were enrolled (mean age 66 ± 7 years, 15 men, 13 intermediate-/high-risk genetics). None of the univariate models and none of the models with all features included achieved good performance. The best performing model with only the three most predictive features and including all MRI sequences reached a ROC-area-under-the-curve of 0.80 and precision-recall-area-under-the-curve of 0.79. The highest statistical performance was reached when all three MRI sequences were combined (conventional whole-body MRI + DCE-MRI + DWI). Conventional MRI always outperformed the other sequences. DCE-MRI always outperformed DWI, except for specificity.
A multiparametric MRI-based model has a better performance in the noninvasive prediction of high-risk cytogenetics in newly diagnosed MM than conventional MRI alone.
An elaborate multiparametric MRI-based model performs better than conventional MRI alone for the noninvasive prediction of high-risk cytogenetics in newly diagnosed multiple myeloma; this opens opportunities to assess genetic heterogeneity thus overcoming sampling bias.
• Standard genetic techniques in multiple myeloma patients suffer from sampling bias due to tumoral heterogeneity. • Multiparametric MRI noninvasively predicts genetic risk in multiple myeloma. • Combined conventional anatomical MRI, DCE-MRI, and DWI had the highest statistical performance to predict genetic risk. • Conventional MRI alone always outperformed DCE-MRI and DWI separately to predict genetic risk. DCE-MRI alone always outperformed DWI separately, except for the parameter specificity to predict genetic risk. • This multiparametric MRI-based genetic risk prediction model opens opportunities to noninvasively assess genetic heterogeneity thereby overcoming sampling bias in predicting genetic risk in multiple myeloma.
细胞遗传学异常是多发性骨髓瘤(MM)预后不良的预测指标。本文旨在建立并验证一种基于多参数传统及功能全身MRI的预测模型,用于新诊断MM的细胞遗传学风险分类。
回顾性纳入2011年至2020年在比利时根特大学医院接受多参数传统全身MRI、脊柱动态对比增强(DCE)-MRI、脊柱扩散加权MRI(DWI)检查并进行基因分析的新诊断MM患者。患者被分为标准细胞遗传学风险组和中/高细胞遗传学风险组。分割后,提取303个MRI特征。对单变量和基于模型的方法进行特征和模型选择评估。使用受试者操作特征(ROC)曲线和精确召回率曲线进行测试。评估比较整个MRI检查方案和所有MRI序列单独用于基因风险分类性能的模型,包括所有特征。评估了四个最终模型,每个模型仅包含三个最具预测性的特征。
共纳入31例患者(平均年龄66±7岁,15例男性,13例具有中/高风险遗传学特征)。单变量模型和包含所有特征的模型均未取得良好性能。表现最佳的模型仅包含三个最具预测性的特征且包括所有MRI序列,其曲线下面积(AUC)为0.80,精确召回率曲线下面积为0.79。当将所有三个MRI序列(传统全身MRI + DCE-MRI + DWI)结合使用时,统计性能最高。传统MRI的表现始终优于其他序列。除特异性外,DCE-MRI的表现始终优于DWI。
基于多参数MRI的模型在新诊断MM的高危细胞遗传学无创预测方面比单独的传统MRI表现更好。
精心构建的基于多参数MRI的模型在新诊断多发性骨髓瘤的高危细胞遗传学无创预测方面比单独的传统MRI表现更好;这为评估基因异质性提供了机会,从而克服了采样偏差。
• 由于肿瘤异质性,多发性骨髓瘤患者的标准基因检测技术存在采样偏差。• 多参数MRI可无创预测多发性骨髓瘤的基因风险。• 结合传统解剖学MRI、DCE-MRI和DWI在预测基因风险方面具有最高的统计性能。• 单独使用传统MRI在预测基因风险方面始终优于DCE-MRI和DWI。单独使用DCE-MRI在预测基因风险方面始终优于DWI,除了预测基因风险的特异性参数。• 这种基于多参数MRI的基因风险预测模型为无创评估基因异质性提供了机会,从而克服了多发性骨髓瘤基因风险预测中的采样偏差。