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Overall Survival Prediction in Gliomas Using Region-Specific Radiomic Features

机译:使用区域特异性辐射瘤特征的胶质瘤整体存活预测

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In this paper, we explored predictive performance of region-specific radiomic models for overall survival classification task in BraTS 2019 dataset. We independently trained three radiomic models: single-region model which included radiomic features from whole tumor (WT) region only, 3-subregions model which included radiomic features from non-enhancing tumor (NET), enhancing tumor (ET), and edema (ED) subregions, and 6-subregions model which included features from the left and right cerebral cortex, the left and right cerebral white matter, and the left and right lateral ventricle subregions. A 3-subregions radiomics model relied on a physiology-based subdivision of WT for each subject. A 6-subregions radiomics model relied on an anatomy-based segmentation of tumor-affected regions for each subject which is obtained by a diffeomorphic registration with the Harvard-Oxford subcortical atlas. For each radiomics model, a subset of most predictive features was selected by ElasticNetCV and used to train a Random Forest classifier. Our results showed that a 6-subregions radiomics model outperformed the 3-subregions and WT radiomic models on the BraTS 2019 training and validation datasets. A 6-subregions radiomics model achieved a classification accuracy of 47.1 % on the training dataset and a classification accuracy of 55.2% on the validation dataset. Among the single subregion models. Edema radiomics model and Left Lateral Ventricle radiomics model yielded the highest classification accuracy on the training and validation datasets.
机译:在本文中,我们在Brats 2019数据集中探讨了区域特定的射域模型的预测性能。我们独立训练了三种射线模型:单区域模型包括来自整个肿瘤(WT)区域的射致特征,其中包括来自非增强肿瘤(网),增强肿瘤(ET)和水肿( ED)子区域和6个子区域模型,包括来自左右脑皮层,左右脑白物的特征,左右脑白物,左侧和右侧侧脑室子区域。对于每个受试者的基于WT的基于生理学的细分,依赖于3个子区域的辐射瘤模型。 6-子区域adridoMics模型依赖于通过与哈佛牛津皮草波塔塔斯的群体配准获得的每个受试者的肿瘤影响区域的基于肿瘤影响区域的分段。对于每个ad​​riasomics模型,ElasticnetCV选择了最多预测性功能的子集,并用于培训随机林分类器。我们的研究结果表明,6个子区域的射频模型在BRATS 2019培训和验证数据集上表现出3-次区域和WT辐射瘤模型。 6-子区域辐射源模型在训练数据集中实现了47.1%的分类精度,并且在验证数据集中的分类准确性为55.2%。在单个子区域模型中。水肿辐射源模型和左侧心室辐射源模型在训练和验证数据集中产生了最高的分类准确性。

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