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3D Texture Feature Learning for Noninvasive Estimation of Gliomas Pathological Subtype

机译:胶质瘤病理亚型非侵入性估计的3D纹理特征学习

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Pathological subtype saved as an important marker in gliomas has considerable diagnostic and prognostic values. However, previous identification of pathological subtype relies on tumor samples, which is invasive. In this paper, we proposed a 3D texture feature learning method which is based on sparse representation (SR) theory to noninvasively estimate the pathological subtype for gliomas. Firstly, we developed a 3D patch-based SR model to extract 3D tumor texture features form magnetic resonance (MR) images. Then, by considering the physical meaning and characteristics of the extracted features, instead of performing feature selection directly, we further extract some deep features describing the statistical difference of the texture features of different tumors for subtype estimation. 213 subjects are divide into cross validation cohort and independent testing cohort to validate the proposed method. The proposed method achieves encouraging performance, with the accuracy of 91.43% and 88.57% by using T1 contrast-enhanced and T2-Flair MR images, respectively.
机译:作为Gliomas中的重要标志物保存的病理亚型具有相当大的诊断和预后价值。然而,先前的病理亚型依赖于肿瘤样品,其是侵入性的。在本文中,我们提出了一种基于稀疏表示(SR)理论的3D纹理特征学习方法,以非侵入地估计Gliomas的病理亚型。首先,我们开发了一种基于3D补丁的SR模型来提取3D肿瘤纹理特征,形成磁共振(MR)图像。然后,通过考虑提取特征的物理含义和特征,而不是直接执行特征选择,进一步提取描述不同肿瘤纹理特征的一些深度特征,用于亚型估计。 213项受试者分为交叉验证队列和独立测试队列,以验证提出的方法。通过使用T1对比度增强和T2-Flair MR图像,所提出的方法达到令人鼓舞的性能,精度为91.43%和88.57%。

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