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基于磁共振成像的影像组学用于鉴别腮腺良恶性肿瘤并进行外部验证

MRI-Based Radiomics to Differentiate between Benign and Malignant Parotid Tumors With External Validation.

作者信息

Piludu Francesca, Marzi Simona, Ravanelli Marco, Pellini Raul, Covello Renato, Terrenato Irene, Farina Davide, Campora Riccardo, Ferrazzoli Valentina, Vidiri Antonello

机构信息

Radiology and Diagnostic Imaging Department, IRCCS Regina Elena National Cancer Institute, Rome, Italy.

Medical Physics Laboratory, IRCCS Regina Elena National Cancer Institute, Rome, Italy.

出版信息

Front Oncol. 2021 Apr 27;11:656918. doi: 10.3389/fonc.2021.656918. eCollection 2021.

Abstract

BACKGROUND

The differentiation between benign and malignant parotid lesions is crucial to defining the treatment plan, which highly depends on the tumor histology. We aimed to evaluate the role of MRI-based radiomics using both T2-weighted (T2-w) images and Apparent Diffusion Coefficient (ADC) maps in the differentiation of parotid lesions, in order to develop predictive models with an external validation cohort.

MATERIALS AND METHODS

A sample of 69 untreated parotid lesions was evaluated retrospectively, including 37 benign (of which 13 were Warthin's tumors) and 32 malignant tumors. The patient population was divided into three groups: benign lesions (24 cases), Warthin's lesions (13 cases), and malignant lesions (32 cases), which were compared in pairs. First- and second-order features were derived for each lesion. Margins and contrast enhancement patterns (CE) were qualitatively assessed. The model with the final feature set was achieved using the support vector machine binary classification algorithm.

RESULTS

Models for discriminating between Warthin's and malignant tumors, benign and Warthin's tumors and benign and malignant tumors had an accuracy of 86.7%, 91.9% and 80.4%, respectively. After the feature selection process, four parameters for each model were used, including histogram-based features from ADC and T2-w images, shape-based features and types of margins and/or CE. Comparable accuracies were obtained after validation with the external cohort.

CONCLUSIONS

Radiomic analysis of ADC, T2-w images, and qualitative scores evaluating margins and CE allowed us to obtain good to excellent diagnostic accuracies in differentiating parotid lesions, which were confirmed with an external validation cohort.

摘要

背景

腮腺良性和恶性病变的鉴别对于确定治疗方案至关重要,而治疗方案很大程度上取决于肿瘤组织学。我们旨在评估基于磁共振成像(MRI)的影像组学在腮腺病变鉴别中的作用,该影像组学使用了T2加权(T2-w)图像和表观扩散系数(ADC)图,以便构建具有外部验证队列的预测模型。

材料与方法

回顾性评估了69例未经治疗的腮腺病变样本,其中包括37例良性病变(其中13例为沃辛瘤)和32例恶性肿瘤。患者群体分为三组:良性病变(24例)、沃辛瘤病变(13例)和恶性病变(32例),并进行两两比较。为每个病变提取一阶和二阶特征。对边界和对比增强模式(CE)进行定性评估。使用支持向量机二元分类算法获得具有最终特征集的模型。

结果

区分沃辛瘤与恶性肿瘤、良性与沃辛瘤以及良性与恶性肿瘤的模型的准确率分别为86.7%、91.9%和80.4%。在特征选择过程之后,每个模型使用四个参数,包括来自ADC和T2-w图像的基于直方图的特征、基于形状的特征以及边界和/或CE的类型。在使用外部队列进行验证后获得了可比的准确率。

结论

对ADC、T2-w图像进行影像组学分析以及对边界和CE进行定性评分,使我们在鉴别腮腺病变时获得了良好至优异的诊断准确率,这在外部验证队列中得到了证实。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8d35/8111169/1785e775cbe7/fonc-11-656918-g001.jpg

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