利用深度学习和图像属性模型在退化图像中恢复GLRLM特征。

Yijie Yuan, Huay Din, Grace Hyun Kim, Michael McNitt-Gray, J Webster Stayman, Grace J Gang
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引用次数: 0

摘要

放射组学模型已广泛用于预测各种应用的临床结果。然而,由于不同的成像条件,它们的通用性往往受到不希望的特征值可变性的限制。为了解决这个问题,我们之前开发了一种双域深度学习方法来恢复已知模糊和噪声存在的地面真值特征值。该模型由一个用于放射组学计算的可微近似和一个双域损失函数组成。我们展示了灰度共生矩阵(GLCM)和基于直方图的特征的模型性能。在这项工作中,我们将该方法扩展到灰度运行长度矩阵(GLRLM)特征恢复。提出了一种新的glrlm的可微逼近算法。我们使用肺部CT图像补丁评估GLRLM特征恢复网络的性能,重点关注恢复的特征值的准确性以及正常肺和新冠病毒阳性肺之间的分类性能。所提出的网络优于基线,在GLRLM特征恢复中实现了最低的MSE。此外,基于恢复的GLRLM特征的分类模型的准确率达到86.65%,与使用地面真值特征的模型的准确率88.85%非常接近,而使用退化特征的模型的准确率为82.00%。这些结果证明了我们的方法作为放射组学标准化的强大工具的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recovery of GLRLM Features in Degraded Images using Deep Learning and Image Property Models.

Radiomics models have been extensively used to predict clinical outcomes across various applications. However, their generalizability is often limited by undesirable feature values variability due to diverse imaging conditions. To address this issue, we previously developed a dual-domain deep learning approach to recover ground truth feature values in the presence of known blur and noise. The model consists of a differentiable approximation for radiomics calculation and a dual-domain loss function. We demonstrated model performance for gray-level co-occurrence matrix (GLCM) and histogram-based features. In this work, we extend the method to gray-level run length matrix (GLRLM) feature recovery. We introduce a novel algorithm for the differentiable approximation of GLRLMs. We assessed the performance of the GLRLM feature restoration network using lung CT image patches, with a focus on the accuracy of recovered feature values and classification performance between normal and COVID-positive lungs. The proposed network outperformed the baselines, achieving the lowest MSE in GLRLM feature recovery. Furthermore, a classification model based on the recovered GLRLM features reached an accuracy of 86.65%, closely aligning with the 88.85% accuracy of models using ground truth features, compared to 82.00% accuracy from degraded features. These results demonstrate the potential of our method as a robust tool for radiomics standardization.

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