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Neural network training for cross-protocol radiomic feature standardization in computed tomography

机译:用于计算机断层扫描中跨协议放射学特征标准化的神经网络训练

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摘要

Radiomics has shown promising results in several medical studies, yet it suffers from a limited discrimination and informative capability as well as a high variation and correlation with the tomographic scanner types, pixel spacing, acquisition protocol, and reconstruction parameters. We propose and compare two methods to transform quantitative image features in order to improve their stability across varying image acquisition parameters while preserving the texture discrimination abilities. In this way, variations in extracted features are representative of true physiopathological tissue changes in the scanned patients. A first approach is based on a two-layer neural network that can learn a nonlinear standardization transformation of various types of features including handcrafted and deep features. Second, domain adversarial training is explored to increase the invariance of the transformed features to the scanner of origin. The generalization of the proposed approach to unseen textures and unseen scanners is demonstrated by a set of experiments using a publicly available computed tomography texture phantom dataset scanned with various imaging devices and parameters.
机译:Radiomics在数项医学研究中均显示出令人鼓舞的结果,但它的辨别力和信息能力有限,并且与断层扫描仪类型,像素间距,采集协议和重建参数之间存在很大的差异和相关性。我们提出并比较了两种变换定量图像特征的方法,以提高其在变化的图像采集参数之间的稳定性,同时保留纹理判别能力。这样,所提取特征的变化代表了所扫描患者中真实的生理病理组织变化。第一种方法基于两层神经网络,该网络可以学习各种类型特征的非线性标准化转换,包括手工和深层特征。其次,探索领域对抗训练以增加变换特征对原点扫描器的不变性。通过使用由各种成像设备和参数扫描的公开可用的计算机断层摄影纹理体模数据集的一组实验,证明了所提出的方法对看不见的纹理和看不见的扫描仪的一般化。

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