首页> 外文会议>International Workshop Radiomics and Radiogenomics in Neuro-oncology using AI;International Conference on Medical Image Compueting and Computer-Assisted Intervention >On Validating Multimodal MRI Based Stratification of IDH Genotype in High Grade Gliomas Using CNNs and Its Comparison to Radiomics
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On Validating Multimodal MRI Based Stratification of IDH Genotype in High Grade Gliomas Using CNNs and Its Comparison to Radiomics

机译:使用CNN验证基于多峰MRI的高级胶质瘤IDH基因型分层及其与放射组学的比较

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Radiomics based multi-variate models and state-of-art convolutional neural networks (CNNs) have demonstrated their usefulness for predicting IDH genotype in gliomas from multi-modal brain MRI images. However, it is not yet clear on how well these models can adapt to unseen datasets scanned on various MRI scanners with diverse scanning protocols. Further, gaining insight into the imaging features and regions that are responsible for the delineation of the genotype is crucial for clinical explainability. Existing multi-variate models on radiomics can provide the underlying signatures while the CNNs, despite better accuracies, more-or-less act as a black-box model. This work addresses these concerns by training radiomics based classifier as well as CNN classifier with class activation mapping (CAMs) on 147 subjects from TCIA and tests these classifiers directly and through transfer learning on locally acquired datasets. Results demonstrate higher adaptability of Radiomics with average accuracy of 75.4% than CNNs (68.8%), however CNNs with transfer learning demonstrate superior predictability with an average accuracy of 81%. Moreover, our CAMs display precise discriminative location on various modalities that is particularly important for clinical interpretability and can be used in targeted therapy.
机译:基于放射学的多元模型和先进的卷积神经网络(CNN)已证明其可用于从多模式脑MRI图像预测神经胶质瘤中IDH基因型。但是,尚不清楚这些模型如何适应在具有各种扫描协议的各种MRI扫描仪上扫描的看不见的数据集。此外,深入了解负责描述基因型的成像特征和区域对于临床可解释性至关重要。现有的放射学多变量模型可以提供潜在的特征,而CNN尽管精确度更高,但或多或​​少地充当了黑匣子模型。这项工作通过对来自TCIA的147个主题进行基于放射学的分类器以及带有类激活映射(CAM)的CNN分类器的培训,并直接对这些分类器进行测试并通过在本地获取的数据集上进行迁移学习来解决这些问题。结果表明Radiomics的适应性比CNN(68.8%)高,平均准确度为75.4%,但是具有转移学习功能的CNN具有更好的可预测性,平均准确度为81%。此外,我们的CAM在各种方法上显示出精确的区分性位置,这对于临床可解释性尤其重要,可用于靶向治疗。

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