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基于深度学习的三维超分辨率技术提高了具有异质切片厚度的CT扫描中肺结节分类的一致性

Improved Consistency of Lung Nodule Categorization in CT Scans with Heterogeneous Slice Thickness by Deep Learning-Based 3D Super-Resolution.

作者信息

Kim Dongok, Park Jae Hyung, Lee Chang Hyun, Kim Young-Ju, Kim Jong Hyo

机构信息

Department of Applied Bioengineering, Graduate School of Convergence Science and Technology, Seoul National University, Seoul 08826, Republic of Korea.

ClariPi Research, Seoul 03088, Republic of Korea.

出版信息

Diagnostics (Basel). 2024 Dec 28;15(1):50. doi: 10.3390/diagnostics15010050.

Abstract

: Accurate volumetric assessment of lung nodules is an essential element of low-dose lung cancer screening programs. Current guidance recommends applying specific thresholds to measured nodule volume to make the following clinical decisions. In reality, however, CT scans often have heterogeneous slice thickness which is known to adversely impact the accuracy of nodule volume assessment. : In this study, a deep learning (DL)-based 3D super-resolution method is proposed for generating thin-slice CT images from heterogeneous thick-slice CT images in lung cancer screening. We evaluated the performance in a qualitative way by radiologist's perceptual assessment as well as in a quantitative way by accuracy of nodule volume measurements and agreement of volume-based Lung-RADS nodule category. : A 5-point Likert scale tabulated by two radiologists showed that the quality of DL-generated thin-slice images from thick-slice CT images were on a par with the image quality of ground truth thin-slice CT images. Furthermore, thick- and thin-slice CT images had a nodule volume difference of 52.2 percent on average which was reduced to a 15.7 percent difference with DL-generated thin-slice CT. In addition, the proposed method increased the agreement of lung nodule categorization using Lung-RADS by 74 percent. : The proposed DL approach for slice thickness normalization has a potential for improving the accuracy of lung nodule volumetry and facilitating more reliable early lung nodule detection.

摘要

准确的肺结节体积评估是低剂量肺癌筛查计划的重要组成部分。当前指南建议对测量的结节体积应用特定阈值以做出以下临床决策。然而,实际上,CT扫描的层厚往往不均匀,已知这会对结节体积评估的准确性产生不利影响。

在本研究中,提出了一种基于深度学习(DL)的3D超分辨率方法,用于在肺癌筛查中从不均匀的厚层CT图像生成薄层CT图像。我们通过放射科医生的感知评估以定性方式评估了性能,并通过结节体积测量的准确性和基于体积的Lung-RADS结节分类的一致性以定量方式进行了评估。

两位放射科医生列出的5点李克特量表显示,从厚层CT图像生成的DL薄层图像的质量与真实薄层CT图像的质量相当。此外,厚层和薄层CT图像的结节体积平均差异为52.2%,而与DL生成的薄层CT相比,差异降至15.7%。此外,所提出的方法使使用Lung-RADS进行肺结节分类的一致性提高了74%。

所提出的用于层厚归一化的DL方法有潜力提高肺结节体积测量的准确性,并有助于更可靠地早期检测肺结节。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6f3d/11720055/c6214e7a201b/diagnostics-15-00050-g001.jpg

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