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基于深度学习的 CT 重建算法在肝脏局灶性病变检测中的低剂量限度探索:基于患者图像的仿真研究。

Exploring the Low-Dose Limit for Focal Hepatic Lesion Detection with a Deep Learning-Based CT Reconstruction Algorithm: A Simulation Study on Patient Images.

机构信息

Department of Radiology, West China Hospital of Sichuan University, Chengdu, China.

United Imaging Healthcare, Shanghai, China.

出版信息

J Imaging Inform Med. 2024 Oct;37(5):2089-2098. doi: 10.1007/s10278-024-01080-3. Epub 2024 Mar 19.

Abstract

This study aims to investigate the maximum achievable dose reduction for applying a new deep learning-based reconstruction algorithm, namely the artificial intelligence iterative reconstruction (AIIR), in computed tomography (CT) for hepatic lesion detection. A total of 40 patients with 98 clinically confirmed hepatic lesions were retrospectively included. The mean volume CT dose index was 13.66 ± 1.73 mGy in routine-dose portal venous CT examinations, where the images were originally obtained with hybrid iterative reconstruction (HIR). Low-dose simulations were performed in projection domain for 40%-, 20%-, and 10%-dose levels, followed by reconstruction using both HIR and AIIR. Two radiologists were asked to detect hepatic lesion on each set of low-dose image in separate sessions. Qualitative metrics including lesion conspicuity, diagnostic confidence, and overall image quality were evaluated using a 5-point scale. The contrast-to-noise ratio (CNR) for lesion was also calculated for quantitative assessment. The lesion CNR on AIIR at reduced doses were significantly higher than that on routine-dose HIR (all p < 0.05). Lower qualitative image quality was observed as the radiation dose reduced, while there were no significant differences between 40%-dose AIIR and routine-dose HIR images. The lesion detection rate was 100%, 98% (96/98), and 73.5% (72/98) on 40%-, 20%-, and 10%-dose AIIR, respectively, whereas it was 98% (96/98), 73.5% (72/98), and 40% (39/98) on the corresponding low-dose HIR, respectively. AIIR outperformed HIR in simulated low-dose CT examinations of the liver. The use of AIIR allows up to 60% dose reduction for lesion detection while maintaining comparable image quality to routine-dose HIR.

摘要

本研究旨在探讨应用新的基于深度学习的重建算法(即人工智能迭代重建(AIIR))在肝脏病变检测中进行计算机断层扫描(CT)时可实现的最大剂量降低。共回顾性纳入 40 例 98 例临床确诊的肝脏病变患者。常规剂量门静脉 CT 检查的平均容积 CT 剂量指数为 13.66±1.73mGy,其中原始图像采用混合迭代重建(HIR)获得。在投影域中进行 40%、20%和 10%剂量水平的低剂量模拟,然后分别使用 HIR 和 AIIR 进行重建。两名放射科医生在单独的会议上分别对每组低剂量图像中的肝脏病变进行检测。使用 5 分制评估病变的定性指标,包括病变的明显程度、诊断信心和整体图像质量。还计算了病变的对比噪声比(CNR)以进行定量评估。降低剂量时,AIIR 上的病变 CNR 明显高于常规剂量 HIR(均 p<0.05)。随着辐射剂量的降低,观察到较低的定性图像质量,而 40%剂量 AIIR 与常规剂量 HIR 图像之间没有显著差异。40%剂量 AIIR 的病变检出率分别为 100%、98%(96/98)和 73.5%(72/98),而相应的低剂量 HIR 分别为 98%(96/98)、73.5%(72/98)和 40%(39/98)。AIIR 在肝脏模拟低剂量 CT 检查中优于 HIR。使用 AIIR 可使病变检测的剂量降低 60%,同时保持与常规剂量 HIR 相当的图像质量。

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