Evaluation of data uncertainty for deep-learning-based CT noise reduction using ensemble patient data and a virtual imaging trial framework.

Zhongxing Zhou, Scott S Hsieh, Hao Gong, Cynthia H McCollough, Lifeng Yu
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Abstract

Deep learning-based image reconstruction and noise reduction (DLIR) methods have been increasingly deployed in clinical CT. Accurate assessment of their data uncertainty properties is essential to understand the stability of DLIR in response to noise. In this work, we aim to evaluate the data uncertainty of a DLIR method using real patient data and a virtual imaging trial framework and compare it with filtered-backprojection (FBP) and iterative reconstruction (IR). The ensemble of noise realizations was generated by using a realistic projection domain noise insertion technique. The impact of varying dose levels and denoising strengths were investigated for a ResNet-based deep convolutional neural network (DCNN) model trained using patient images. On the uncertainty maps, DCNN shows more detailed structures than IR although its bias map has less structural dependency, which implies that DCNN is more sensitive to small changes in the input. Both visual examples and histogram analysis demonstrated that hotspots of uncertainty in DCNN may be associated with a higher chance of distortion from the truth than IR, but it may also correspond to a better detection performance for some of the small structures.

利用集合患者数据和虚拟成像试验框架,评估基于深度学习的 CT 降噪的数据不确定性。
基于深度学习的图像重建和降噪(DLIR)方法已越来越多地应用于临床 CT。准确评估其数据不确定性属性对于了解 DLIR 在应对噪声时的稳定性至关重要。在这项工作中,我们旨在使用真实患者数据和虚拟成像试验框架来评估 DLIR 方法的数据不确定性,并将其与滤波背投影(FBP)和迭代重建(IR)进行比较。噪声现实的集合是通过现实投影域噪声插入技术生成的。利用病人图像训练的基于 ResNet 的深度卷积神经网络 (DCNN) 模型,研究了不同剂量水平和去噪强度的影响。在不确定性图上,DCNN 比 IR 显示了更详细的结构,尽管其偏置图的结构依赖性较小,这意味着 DCNN 对输入的微小变化更敏感。直观示例和直方图分析表明,DCNN 中的不确定性热点可能与比红外图像更高的失真几率有关,但也可能对应于对某些小结构更好的检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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