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Evaluation of Image Reconstruction Algorithms for Confocal Microwave Imaging: Application to Patient Data

机译:共聚焦微波成像的图像重建算法评估:在患者数据中的应用

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摘要

Confocal Microwave Imaging (CMI) for the early detection of breast cancer has been under development for over two decades and is currently going through early-phase clinical evaluation. The image reconstruction algorithm is a key signal processing component of any CMI-based breast imaging system and impacts the efficacy of CMI in detecting breast cancer. Several image reconstruction algorithms for CMI have been developed since its inception. These image reconstruction algorithms have been previously evaluated and compared, using both numerical and physical breast models, and healthy volunteer data. However, no study has been performed to evaluate the performance of image reconstruction algorithms using clinical patient data. In this study, a variety of imaging algorithms, including both data-independent and data-adaptive algorithms, were evaluated using data obtained from a small-scale patient study conducted at the University of Calgary. Six imaging algorithms were applied to reconstruct 3D images of five clinical patients. Reconstructed images for each algorithm and each patient were compared to the available clinical reports, in terms of abnormality detection and localisation. The imaging quality of each algorithm was evaluated using appropriate quality metrics. The results of the conventional Delay-and-Sum algorithm and the Delay-Multiply-and-Sum (DMAS) algorithm were found to be consistent with the clinical information, with DMAS producing better quality images compared to all other algorithms.
机译:用于乳腺癌早期检测的共聚焦微波成像(CMI)已经开发了二十多年,目前正在进行早期临床评估。图像重建算法是任何基于CMI的乳腺成像系统的关键信号处理组件,并且会影响CMI在检测乳腺癌中的功效。自CMI诞生以来,已经开发了几种用于CMI的图像重建算法。这些图像重建算法先前已使用数字和物理乳房模型以及健康的志愿者数据进行了评估和比较。但是,尚未进行过使用临床患者数据评估图像重建算法性能的研究。在这项研究中,使用从卡尔加里大学进行的一项小型患者研究获得的数据,评估了各种成像算法,包括数据独立和数据自适应算法。应用了六种成像算法来重建五名临床患者的3D图像。就异常检测和定位而言,将每种算法和每个患者的重建图像与可用的临床报告进行比较。使用适当的质量指标评估每种算法的成像质量。发现传统的“延迟与和”算法和“延迟乘和与”(DMAS)算法的结果与临床信息一致,与所有其他算法相比,DMAS产生的图像质量更高。

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