Center for Basic and Applied Research, Faculty of Informatics and Management, University of Hradec Kralove, Rokitanskeho 62, 500 03 Hradec Kralove, Czech Republic.
Sensors (Basel). 2024 Feb 29;24(5):1591. doi: 10.3390/s24051591.
The approach of using more than one processor to compute in order to overcome the complexity of different medical imaging methods that make up an overall job is known as GPU (graphic processing unit)-based parallel processing. It is extremely important for several medical imaging techniques such as image classification, object detection, image segmentation, registration, and content-based image retrieval, since the GPU-based parallel processing approach allows for time-efficient computation by a software, allowing multiple computations to be completed at once. On the other hand, a non-invasive imaging technology that may depict the shape of an anatomy and the biological advancements of the human body is known as magnetic resonance imaging (MRI). Implementing GPU-based parallel processing approaches in brain MRI analysis with medical imaging techniques might be helpful in achieving immediate and timely image capture. Therefore, this extended review (the extension of the IWBBIO2023 conference paper) offers a thorough overview of the literature with an emphasis on the expanding use of GPU-based parallel processing methods for the medical analysis of brain MRIs with the imaging techniques mentioned above, given the need for quicker computation to acquire early and real-time feedback in medicine. Between 2019 and 2023, we examined the articles in the literature matrix that include the tasks, techniques, MRI sequences, and processing results. As a result, the methods discussed in this review demonstrate the advancements achieved until now in minimizing computing runtime as well as the obstacles and problems still to be solved in the future.
使用多个处理器进行计算以克服构成整体工作的不同医学成像方法的复杂性的方法被称为基于图形处理单元 (GPU) 的并行处理。对于几种医学成像技术(如图像分类、目标检测、图像分割、配准和基于内容的图像检索)来说,这一点非常重要,因为基于 GPU 的并行处理方法允许软件进行高效的计算,允许同时完成多个计算。另一方面,一种可以描绘解剖结构的形状和人体生物学进展的非侵入性成像技术被称为磁共振成像 (MRI)。在脑 MRI 分析中结合医学成像技术实施基于 GPU 的并行处理方法可能有助于实现即时和及时的图像捕获。因此,本扩展评论(IWBBIO2023 会议论文的扩展)提供了对文献的全面概述,重点介绍了基于 GPU 的并行处理方法在脑 MRI 医学分析中的扩展使用,考虑到需要更快的计算来在医学中获得早期和实时的反馈。在 2019 年至 2023 年期间,我们检查了文献矩阵中的文章,其中包括任务、技术、MRI 序列和处理结果。结果表明,本综述中讨论的方法展示了迄今为止在最小化计算运行时间方面取得的进展,以及未来仍需解决的障碍和问题。