Comparative analysis of iterative vs AI-based reconstruction algorithms in CT imaging for total body assessment: Objective and subjective clinical analysis

IF 2.7 3区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Raffaele Maria Tucciariello , Manuela Botte , Giovanni Calice , Aldo Cammarota , Flavia Cammarota , Mariagrazia Capasso , Giuseppina Di Nardo , Maria Imma Lancellotti , Valentina Pirozzi Palmese , Antonio Sarno , Antonio Villonio , Antonella Bianculli
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引用次数: 0

Abstract

Purpose

This study evaluates the performance of Iterative and AI-based Reconstruction algorithms in CT imaging for brain, chest, and upper abdomen assessments. Using a 320-slice CT scanner, phantom images were analysed through quantitative metrics such as Noise, Contrast-to-Noise-Ratio and Target Transfer Function. Additionally, five radiologists performed subjective evaluations on real patient images by scoring clinical parameters related to anatomical structures across the three body sites.

Methods

The study aimed to relate results obtained with the typical approach related to parameters involved in medical physics using a Catphan physical phantom, with the evaluations assigned by the radiologists to the clinical parameters chosen in this study, and to determine whether the physical approach alone can ensure the implementation of new procedures and the optimization in clinical practice.

Results

AI-based algorithms demonstrated superior performance in chest and abdominal imaging, enhancing parenchymal and vascular detail with notable reductions in noise. However, their performance in brain imaging was less effective, as the aggressive noise reduction led to excessive smoothing, which affected diagnostic interpretability. Iterative reconstruction methods provided balanced results for brain imaging, preserving structural details and maintaining diagnostic clarity.

Conclusions

The findings emphasize the need for region-specific optimization of reconstruction protocols. While AI-based methods can complement traditional IR techniques, they should not be assumed to inherently improve outcomes. A critical and cautious introduction of AI-based techniques is essential, ensuring radiologists adapt effectively without compromising diagnostic accuracy.
迭代与人工智能重建算法在全身评估CT成像中的比较分析:客观与主观临床分析
目的本研究评估迭代和基于人工智能的重建算法在脑、胸、上腹部CT成像评估中的性能。使用320层CT扫描仪,通过定量指标(如噪声、对比度-噪声比和目标传递函数)分析幻像图像。此外,五名放射科医生通过对三个身体部位的解剖结构相关的临床参数进行评分,对真实的患者图像进行主观评估。方法利用Catphan物理模型对医学物理中涉及的参数进行典型分析,并将分析结果与放射科医师对所选临床参数的评价进行比较,以确定单纯采用物理方法是否能保证新程序的实施和临床实践的优化。结果基于人工智能的算法在胸部和腹部成像中表现优异,增强了实质和血管细节,显著降低了噪声。然而,它们在脑成像中的表现不太有效,因为积极的降噪导致过度平滑,这影响了诊断的可解释性。迭代重建方法提供了平衡的脑成像结果,保留了结构细节并保持了诊断的清晰度。结论本研究结果强调了对重建方案进行区域优化的必要性。虽然基于人工智能的方法可以补充传统的红外技术,但不应认为它们本质上改善了结果。关键和谨慎地引入基于人工智能的技术是必不可少的,以确保放射科医生在不影响诊断准确性的情况下有效地适应。
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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来源期刊
CiteScore
6.80
自引率
14.70%
发文量
493
审稿时长
78 days
期刊介绍: Physica Medica, European Journal of Medical Physics, publishing with Elsevier from 2007, provides an international forum for research and reviews on the following main topics: Medical Imaging Radiation Therapy Radiation Protection Measuring Systems and Signal Processing Education and training in Medical Physics Professional issues in Medical Physics.
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