Department of Medical Ultrasonics, The First Affiliated Hospital of Guangxi Medical University, 6 Shuangyong Road, Guangxi Zhuang Autonomous Region, Nanning, People's Republic of China.
Department of GE Healthcare Global Research, GE Healthcare, Shanghai, 201203, People's Republic of China.
Radiol Med. 2021 Oct;126(10):1312-1327. doi: 10.1007/s11547-021-01393-1. Epub 2021 Jul 8.
To compare predictive efficiency of multiple classifiers modeling and establish a combined magnetic resonance imaging (MRI) radiomics model for identifying lymph node (LN) metastases of papillary thyroid cancer (PTC) preoperatively.
A retrospective analysis based on the preoperative MRI scans of 109 PTC patients including 77 patients with LN metastases and 32 patients without metastases was conducted, and we divided enroll cases into trained group and validation group. Radiomics signatures were selected from fat-suppressed T2-weighted MRI images, and the optimal characteristics were confirmed by spearman correlation test, hypothesis testing and random forest methods, and then, eight predictive models were constructed by eight classifiers. The receiver operating characteristic (ROC) curves analysis were performed to demonstrate the effectiveness of the models.
The area under the curve (AUC) of ROC based on MRI texture diagnosed LN status by naked eye was 0.739 (sensitivity = 0.571, specificity = 0.906). Based on the 5 optimal signatures, the best AUC of MRI radiomics model by logistics regression classifier had a considerable prediction performance with AUCs 0.805 in trained group and 0.760 in validation group, respectively, and a combination of best radiomics model with visual diagnosis of MRI texture had a high AUC as 0.969 (sensitivity = 0.938, specificity = 1.000), suggesting combined model had a preferable diagnostic efficiency in evaluating LN metastases of PTC.
Our combined radiomics model with visual diagnosis could be a potentially effective strategy to preoperatively predict LN metastases in PTC patients before clinical intervention.
比较多分类器建模的预测效率,并建立一种联合磁共振成像(MRI)放射组学模型,用于术前识别甲状腺乳头状癌(PTC)的淋巴结(LN)转移。
基于 109 例 PTC 患者的术前 MRI 扫描进行回顾性分析,包括 77 例有 LN 转移的患者和 32 例无转移的患者,我们将入组病例分为训练组和验证组。从脂肪抑制 T2 加权 MRI 图像中选择放射组学特征,通过 Spearman 相关检验、假设检验和随机森林方法确认最佳特征,然后由 8 个分类器构建 8 个预测模型。通过受试者工作特征(ROC)曲线分析来证明模型的有效性。
基于 MRI 纹理的 ROC 曲线下面积(AUC)通过肉眼诊断 LN 状态为 0.739(灵敏度=0.571,特异性=0.906)。基于 5 个最优特征,基于逻辑回归分类器的 MRI 放射组学模型的最佳 AUC 在训练组和验证组中的 AUC 分别为 0.805 和 0.760,具有相当的预测性能,并且最佳放射组学模型与 MRI 纹理的视觉诊断相结合具有较高的 AUC 为 0.969(灵敏度=0.938,特异性=1.000),表明联合模型在评估 PTC 的 LN 转移方面具有较高的诊断效率。
我们的联合放射组学模型与视觉诊断可以作为一种潜在有效的策略,在临床干预前预测 PTC 患者的 LN 转移。