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利用磁敏感加权磁共振成像预测舌鳞状细胞癌肿瘤组织学分级的多参数效应

Multi-parametric effect in predicting tumor histological grade by using susceptibility weighted magnetic resonance imaging in tongue squamous cell carcinoma.

作者信息

Yang Xing, Zhu Jinyu, Dai Yongming, Tian Zhen, Yang Gongxin, Shi Huimin, Wu Yingwei, Tao Xiaofeng

机构信息

Department of Radiology, Shanghai Ninth People's Hospital, Shanghai Jiaotong University, School of Medicine, Shanghai, 200011, China.

United Imaging Healthcare, Shanghai, 201807, China.

出版信息

BMC Med Imaging. 2019 Mar 12;19(1):24. doi: 10.1186/s12880-019-0322-8.

Abstract

BACKGROUND

Susceptibility weighted imaging (SWI) is helpful for depicting hemorrhage, calcification, and increased vascularity in some neoplasms, which may reflect tumor grade. In this study, we aimed to apply SWI in patients with oral tongue squamous cell carcinomas (OTSCCs) and relate multi-parametric effect to tumor histological grade prediction.

METHODS

Preoperative MR examinations were performed on a 1 .5T MRI scanner with T1-, T2- and contrast-enhanced (CE) T1-weighted imaging. In addition to routine head and neck MRI sequences, SWI was performed. Tumor thickness and volume were measured. Intratumoral susceptibility signal intensities (ITSSs), ITSS score and ITSS ratio on SWI were evaluated and recorded. Subjects were sub-grouped into low- and high-grade according to the histological findings post operation. Parameters such as tumor thickness, tumor volume and three ITSS related parameters were compared between low- and high-grade groups. ROC analysis was performed on above parameters to access the capability in predicting tumor histological grade. Different multi-parametric models were run to access multi-parametric combination effect.

RESULTS

Thirty patients with OTSCC were finally included in the study. Twenty of them were categorized as low-grade SCC and the other ten subjects were high-grade SCC according to the pathologic findings. No significant difference was seen for tumor thickness or tumor volume between two sub-groups. ITSSs were seen in 23/30 patients. Significant difference of ITSS scores between low- and high-grade OTSCCs was observed, with mean value of 0.95 ± 0.83 and 1.70 ± 0.95, respectively. Univariate ROC analysis demonstrated ITSSs, ITSS score and ITSS ratio were valuable parameters for predicting tumor histological grade and ITSSs was superior to the other two parameters, with an area under ROC curve of 0.790. Multi-parametric model using combination of ITSSs and tumor thickness would greatly improve the predictive capability in comparison with a univariate approach, yielding the area under ROC curve of 0.84(0.69,0.99). On contrast-enhanced SWI (CE-SWI), ITSSs were shown more clearly delineated in comparison with non-contrast enhanced SWI.

CONCLUSIONS

In conclusion, SWI was superior in depiction of internal characteristics of OTSCCs, which would potentially provide more diagnostic information. Multi-parametric model using combination of ITSSs and tumor thickness would be valuable in predicting tumor histological grade.

摘要

背景

磁敏感加权成像(SWI)有助于显示某些肿瘤内的出血、钙化及血管增多情况,这可能反映肿瘤分级。在本研究中,我们旨在将SWI应用于口腔舌鳞状细胞癌(OTSCC)患者,并将多参数效应与肿瘤组织学分级预测相关联。

方法

在1.5T MRI扫描仪上进行术前MR检查,包括T1加权成像、T2加权成像和对比增强(CE)T1加权成像。除常规头颈部MRI序列外,还进行了SWI检查。测量肿瘤厚度和体积。评估并记录SWI上的肿瘤内磁敏感信号强度(ITSS)、ITSS评分和ITSS比值。根据术后组织学结果将受试者分为低级别和高级别亚组。比较低级别和高级别亚组之间的肿瘤厚度、肿瘤体积和三个与ITSS相关的参数。对上述参数进行ROC分析,以评估其预测肿瘤组织学分级的能力。运行不同的多参数模型以评估多参数组合效应。

结果

最终30例OTSCC患者纳入本研究。根据病理结果,其中20例被归类为低级别鳞状细胞癌,另外10例为高级别鳞状细胞癌。两个亚组之间的肿瘤厚度或肿瘤体积无显著差异。30例患者中有23例可见ITSS。观察到低级别和高级别OTSCC之间ITSS评分存在显著差异,平均值分别为0.95± 0.83和1.70± 0.95。单因素ROC分析表明,ITSS、ITSS评分和ITSS比值是预测肿瘤组织学分级的有价值参数,且ITSS优于其他两个参数,ROC曲线下面积为0.790。与单因素方法相比,使用ITSS和肿瘤厚度组合的多参数模型将大大提高预测能力,ROC曲线下面积为0.84(0.69,0.99)。在对比增强SWI(CE-SWI)上,与非对比增强SWI相比,ITSS显示得更清晰。

结论

总之,SWI在描绘OTSCC的内部特征方面具有优势,这可能会提供更多诊断信息。使用ITSS和肿瘤厚度组合的多参数模型在预测肿瘤组织学分级方面将具有重要价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7e18/6417004/05bc68c80152/12880_2019_322_Fig1_HTML.jpg

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