Xiong X, Zhu Q, Zhou Z, Qian X, Hong R, Dai Y, Hu C
Department of Radiology, The First Affiliated Hospital of Soochow University, Suzhou, 215006, Jiangsu, China.
Department of Hematology, The First Affiliated Hospital of Soochow University, Suzhou, 215006, Jiangsu, China.
Clin Radiol. 2023 Nov;78(11):e839-e846. doi: 10.1016/j.crad.2023.07.011. Epub 2023 Aug 3.
To explore the possibility of discriminating minimal residual disease (MRD) status in multiple myeloma (MM) based on magnetic resonance imaging (MRI) and identify optimal machine-learning methods to optimise the clinical treatment regimen.
A total of 83 patients were analysed retrospectively. They were divided randomly into training and validation cohorts. The regions of interest were segmented and radiomics features were extracted and analysed on two sequences, including T1-weighted imaging (WI) and fat saturated (FS)-T2WI, and then radiomics models were built in the training cohort and evaluated in the validation cohort. Clinical characteristics were calculated to build a traditional model. A combined model was also built using the clinical characteristics and radiomics features. Classification accuracy was assessed using area under the curve (AUC) and F1 score.
In the training cohort, only the bone marrow (BM) infiltrate ratio (p=0.005) was retained after univariate and multivariable logistic regression analysis. In T1WI, the linear support vector machine (SVM) achieved the best performance compared to other classifiers, with AUCs of 0.811 and 0.708 and F1 scores of 0.792 and 0.696 in the training and validation cohorts, respectively. Similarly, in FS-T2WI sequence, linear SVM achieved the best performance with AUCs of 0.833 and 0.800 and F1 score of 0.833 and 0.800. The combined model constructed by the FS-T2WI-linear SVM and BM infiltrate ratio outperformed the traditional model (p=0.050 and 0.012, Delong test), but showed no significant difference compared with the radiomics model (p=0.798 and 0.855).
The linear SVM-based machine-learning method can offer a non-invasive tool for discriminating MRD status in MM.
探讨基于磁共振成像(MRI)鉴别多发性骨髓瘤(MM)微小残留病(MRD)状态的可能性,并确定优化临床治疗方案的最佳机器学习方法。
回顾性分析83例患者。将他们随机分为训练组和验证组。在包括T1加权成像(WI)和脂肪饱和(FS)-T2WI的两个序列上对感兴趣区域进行分割,提取并分析影像组学特征,然后在训练组中建立影像组学模型并在验证组中进行评估。计算临床特征以建立传统模型。还使用临床特征和影像组学特征建立了联合模型。使用曲线下面积(AUC)和F1评分评估分类准确性。
在训练组中,单因素和多因素逻辑回归分析后仅保留骨髓(BM)浸润率(p=0.005)。在T1WI中,与其他分类器相比,线性支持向量机(SVM)表现最佳,训练组和验证组的AUC分别为0.811和0.708,F1评分分别为0.792和0.696。同样,在FS-T2WI序列中,线性SVM表现最佳,AUC为0.833和0.800,F1评分为0.833和0.800。由FS-T2WI-线性SVM和BM浸润率构建的联合模型优于传统模型(p=0.050和0.012,德龙检验),但与影像组学模型相比无显著差异(p=0.798和0.855)。
基于线性SVM的机器学习方法可为鉴别MM的MRD状态提供一种非侵入性工具。