使用放射组学模型对软组织肉瘤进行分级:成像方法的选择以及与传统视觉分析的比较

Bailiang Chen , Olivier Steinberger , Roman Fenioux , Quentin Duverger , Tryphon Lambrou , Gauthier Dodin , Alain Blum , Pedro Augusto Gondim Teixeira
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引用次数: 1

摘要

目的利用放射组学方法确定哪种成像方式/对比、放射组学模型的组合,以及有多少特征可以为区分低级别和高级别软组织肉瘤(STS)提供最佳的诊断性能。方法对39例经组织学证实的STS患者的smri和CT进行前瞻性分析。通过放射组学模型对图像进行定量评价,并通过视觉评价(作为参考)对图像进行定性评分(低级别vs高级别)。在放射组学分析中,提取120个放射组学特征并将其贡献到三个模型中:最小绝对收缩和逻辑回归选择算子(LASSO-LR),递归特征消除和交叉验证(RFECV-SVC)和方差分析与SVC (ANOVA-SVC)。这些应用于不同的成像方式组合,有或没有造影剂管理,以及选择的特征数量。结果脂肪饱和T2w (FS-T2w) MR图像采用RFECV-SVC放射学模型,包括5个特征,获得最佳结果,平均灵敏度、特异性和准确性分别为92%±10%、78%±30%和89%±12%。放射组学在STS分级中的表现优于传统分析(准确率为67%)。多种对比或成像方式的组合并没有提高诊断性能。结论fs - t2w MR影像单独结合REFCV-SVC模型的五特征放射组学分析,与常规的MRI多造影和CT影像的视觉评价相比,可以提供足够的诊断效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grading of soft tissues sarcomas using radiomics models: Choice of imaging methods and comparison with conventional visual analysis

Purpose

To determine which combination of imaging modalities/contrast, radiomics models, and how many features provides the best diagnostic performance for the differentiation between low- and high-grade soft tissue sarcomas (STS) using a radiomics approach.

Methods

MRI and CT from 39 patients with a histologically confirmed STS were prospectively analyzed. Images were evaluated both quantitatively by radiomics models and qualitatively by visual evaluation (used as reference) for grading (low-grade vs high-grade). In radiomics analysis, 120 radiomic features were extracted and contributed into three models: least absolute shrinkage and selection operator with logistic regression(LASSO-LR), recursive feature elimination and cross-validation (RFECV-SVC) and analysis of variance with SVC (ANOVA-SVC). Those were applied to different combinations of imaging modalities acquisition, with and without contrast medium administration, as well as selected number of features.

Results

Fat-saturated T2w (FS-T2w) MR images using RFECV-SVC radiomic models involving five features yielded the best results with mean sensitivity, specificity, and accuracy of 92% ± 10%, 78% ± 30%, and 89% ± 12%, respectively. The performance of radiomics was better than that of conventional analysis (67% accuracy) for STS grading. Combination of multiple contrast or imaging modalities did not increase the diagnostic performance.

Conclusion

FS-T2w MR images alone with a five-feature radiomics analysis usingh REFCV-SVC model may be able to provide sufficient diagnositic performance compared to conventional visual evaluation with multiple MRI contrast and CT imaging.

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