Xu Lei, Wang Meng-Yue, Qi Liang, Zou Yue-Fen, Fei-Yun W U, Sun Xiu-Lan
Department of Radiology, the First Affiliated Hospital of Nanjing Medical University, Nanjing, China.
Neuroprotective Drug Discovery Key Laboratory, Jiangsu Key Laboratory of Neurodegeneration, Nanjing Medical University, Nanjing, China.
Eur J Radiol Open. 2024 Mar 21;12:100555. doi: 10.1016/j.ejro.2024.100555. eCollection 2024 Jun.
To build a radiomics signature based on MRI images and evaluate its capability for preoperatively identifying the benign and malignant Soft tissue neoplasms (STTs).
193 patients (99 malignant STTs and 94 benign STTs) were at random segmented into a training cohort (69 malignant STTs and 65 benign STTs) and a validation cohort (30 malignant STTs and 29 benign STTs) with a portion of 7:3. Radiomics features were extracted from T2 with fat saturation and T1 with fat saturation and gadolinium contrast images. Radiomics signature was developed by the least absolute shrinkage and selection operator (LASSO) logistic regression model. The receiver that operated characteristics curve (ROC) analysis was used to assess radiomics signature's prediction performance. Inner validation was performed on an autonomous cohort that contained 40 patients.
A radiomics was developed by a total of 16 radiomics features (5 original shape features and 11 were wavelet features) achieved favorable predictive efficacy. Malignant STTs showed higher radiomics score than benign STTs in both training cohort and validation cohort. A good prediction performance was shown by the radiomics signature in both training cohorts and validation cohorts. The training cohorts and validation cohorts had an area under curves (AUCs) of 0.885 and 0.841, respectively.
A radiomics signature based on MRI images can be a trustworthy imaging biomarker for identification of the benign and malignant STTs, which could help guide treatment strategies.
基于MRI图像构建一种放射组学特征,并评估其术前鉴别软组织肿瘤(STT)良恶性的能力。
193例患者(99例恶性STT和94例良性STT)按7:3比例随机分为训练队列(69例恶性STT和65例良性STT)和验证队列(30例恶性STT和29例良性STT)。从脂肪饱和T2加权像、脂肪饱和T1加权像及钆增强图像中提取放射组学特征。通过最小绝对收缩和选择算子(LASSO)逻辑回归模型构建放射组学特征。采用受试者操作特征曲线(ROC)分析评估放射组学特征的预测性能。在一个包含40例患者的独立队列中进行内部验证。
由总共16个放射组学特征(5个原始形状特征和11个小波特征)构建的放射组学特征具有良好的预测效能。在训练队列和验证队列中,恶性STT的放射组学评分均高于良性STT。放射组学特征在训练队列和验证队列中均表现出良好的预测性能。训练队列和验证队列的曲线下面积(AUC)分别为0.885和0.841。
基于MRI图像的放射组学特征可作为鉴别STT良恶性的可靠影像生物标志物,有助于指导治疗策略。