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降低低剂量 CT 去噪中可解释深度学习模型致幻风险的研究:性能对比分析。

Reducing the risk of hallucinations with interpretable deep learning models for low-dose CT denoising: comparative performance analysis.

机构信息

Pattern Recognition Lab, Friedrich-Alexander Universität Erlangen-Nürnberg, D-91058 Erlangen, Germany.

CT Concepts, Siemens Healthineers AG, D-91301 Forchheim, Germany.

出版信息

Phys Med Biol. 2023 Oct 5;68(19). doi: 10.1088/1361-6560/acfc11.

Abstract

Reducing CT radiation dose is an often proposed measure to enhance patient safety, which, however results in increased image noise, translating into degradation of clinical image quality. Several deep learning methods have been proposed for low-dose CT (LDCT) denoising. The high risks posed by possible hallucinations in clinical images necessitate methods which aid the interpretation of deep learning networks. In this study, we aim to use qualitative reader studies and quantitative radiomics studies to assess the perceived quality, signal preservation and statistical feature preservation of LDCT volumes denoised by deep learning. We aim to compare interpretable deep learning methods with classical deep neural networks in clinical denoising performance.We conducted an image quality analysis study to assess the image quality of the denoised volumes based on four criteria to assess the perceived image quality. We subsequently conduct a lesion detection/segmentation study to assess the impact of denoising on signal detectability. Finally, a radiomic analysis study was performed to observe the quantitative and statistical similarity of the denoised images to standard dose CT (SDCT) images.The use of specific deep learning based algorithms generate denoised volumes which are qualitatively inferior to SDCT volumes(< 0.05). Contrary to previous literature, denoising the volumes did not reduce the accuracy of the segmentation (> 0.05). The denoised volumes, in most cases, generated radiomics features which were statistically similar to those generated from SDCT volumes (> 0.05).Our results show that the denoised volumes have a lower perceived quality than SDCT volumes. Noise and denoising do not significantly affect detectability of the abdominal lesions. Denoised volumes also contain statistically identical features to SDCT volumes.

摘要

降低 CT 辐射剂量是提高患者安全性的常用措施,但这会导致图像噪声增加,从而降低临床图像质量。已经提出了几种用于低剂量 CT(LDCT)去噪的深度学习方法。由于临床图像中可能出现幻觉的高风险,需要一些辅助深度学习网络解释的方法。在这项研究中,我们旨在使用定性读者研究和定量放射组学研究来评估深度学习去噪的 LDCT 容积的感知质量、信号保留和统计特征保留。我们旨在比较可解释的深度学习方法和经典的深度学习网络在临床去噪性能中的表现。我们进行了一项图像质量分析研究,以基于四个评估感知图像质量的标准来评估去噪体积的图像质量。随后,我们进行了病变检测/分割研究,以评估去噪对信号可检测性的影响。最后,进行了放射组学分析研究,以观察去噪图像与标准剂量 CT(SDCT)图像在定量和统计方面的相似性。使用特定的基于深度学习的算法生成的去噪体积在质量上劣于 SDCT 体积(<0.05)。与之前的文献相反,去噪体积并没有降低分割的准确性(>0.05)。在大多数情况下,去噪后的体积生成的放射组学特征在统计学上与从 SDCT 体积生成的特征相似(>0.05)。我们的结果表明,去噪后的体积比 SDCT 体积的感知质量差。噪声和去噪不会显著影响腹部病变的可检测性。去噪后的体积还包含与 SDCT 体积在统计学上相同的特征。

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