基于深度学习重构算法的薄层脑CT图像质量与病灶检测评价。

IF 2.6 3区 医学 Q2 Medicine
Jiali Sun, Hui Yao, Tailin Han, Yan Wang, Le Yang, Xizhe Hao, Su Wu
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引用次数: 0

摘要

背景:基于人工智能(AI)的精确图像(PI)算法在脑成像中的临床评价仍然有限。PI是一种深度学习重建(DLR)技术,可以降低图像噪声,同时在低剂量下保持熟悉的滤波后投影(FBP)样外观。本研究旨在比较PI、迭代重建(IR)和fbp在1.0 mm薄层脑CT图像中提高图像质量和增强病灶检测的效果。方法:回顾性分析我院2024年8 - 9月患者的脑部非对比CT扫描。每次扫描采用四种方法重建:常规5.0 mm FBP (A组),薄层1.0 mm FBP (B组),薄层1.0 mm IR (C组)和薄层1.0 mm PI (D组)。主观图像质量由两名放射科医生使用4分或5分李克特量表进行评估。客观指标包括噪声对比比(CNR)、信噪比(SNR)和指定感兴趣区域(roi)的图像噪声。结果:60例患者(65.47岁 ±18.40;包括29名男性和31名女性)。其中,39例患者有病变,主要是低密度腔隙性梗死。薄层PI图像显示出最低的图像噪声和伪影,以及最高的CNR和SNR值(p )结论:与IR和FBP相比,PI重建显著提高了薄层脑CT扫描的图像质量和病变可检测性,提示其作为新的临床标准的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thin-Slice Brain CT Image Quality and Lesion Detection Evaluation in Deep Learning Reconstruction Algorithm.

Background: Clinical evaluation of Artificial Intelligence (AI)-based Precise Image (PI) algorithm in brain imaging remains limited. PI is a deep-learning reconstruction (DLR) technique that reduces image noise while maintaining a familiar Filtered Back Projection (FBP)-like appearance at low doses. This study aims to compare PI, Iterative Reconstruction (IR), and FBP-in improving image quality and enhancing lesion detection in 1.0 mm thin-slice brain computed tomography (CT) images.

Methods: A retrospective analysis was conducted on brain non-contrast CT scans from August to September 2024 at our institution. Each scan was reconstructed using four methods: routine 5.0 mm FBP (Group A), thin-slice 1.0 mm FBP (Group B), thin-slice 1.0 mm IR (Group C), and thin-slice 1.0 mm PI (Group D). Subjective image quality was assessed by two radiologists using a 4- or 5‑point Likert scale. Objective metrics included contrast-to-noise ratio (CNR), signal-to-noise ratio (SNR), and image noise across designated regions of interest (ROIs).

Results: 60 patients (65.47 years ± 18.40; 29 males and 31 females) were included. Among these, 39 patients had lesions, primarily low-density lacunar infarcts. Thin-slice PI images demonstrated the lowest image noise and artifacts, alongside the highest CNR and SNR values (p < 0.001) compared to Groups A, B, and C. Subjective assessments revealed that both PI and IR provided significantly improved image quality over routine FBP (p < 0.05). Specifically, Group D (PI) achieved superior lesion conspicuity and diagnostic confidence, with a 100% detection rate for lacunar lesions, outperforming Groups B and A.

Conclusions: PI reconstruction significantly enhances image quality and lesion detectability in thin-slice brain CT scans compared to IR and FBP, suggesting its potential as a new clinical standard.

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来源期刊
Clinical Neuroradiology
Clinical Neuroradiology Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.90
自引率
3.60%
发文量
0
期刊介绍: Clinical Neuroradiology provides current information, original contributions, and reviews in the field of neuroradiology. An interdisciplinary approach is accomplished by diagnostic and therapeutic contributions related to associated subjects. The international coverage and relevance of the journal is underlined by its being the official journal of the German, Swiss, and Austrian Societies of Neuroradiology.
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