Khalid Nazish, Zubair Muhammad, Mehmood Muhammad Qasim, Massoud Yehia
Department of Electrical Engineering, Information Technology University of the Punjab, Lahore, Pakistan.
Innovative Technologies Laboratories (ITL), King Abdullah University of Science and Technology (KAUST), Thuwal, Saudi Arabia.
Npj Imaging. 2024 Jun 3;2(1):13. doi: 10.1038/s44303-024-00012-8.
In recent years, microwave imaging (MWI) has emerged as a non-ionizing and cost-effective modality in healthcare, specifically within medical imaging. Concurrently, advances in artificial intelligence (AI) have significantly augmented the capabilities of medical imaging tools. This paper explores the intersection of these two domains, focusing on the integration of AI algorithms into MWI techniques to elevate accuracy and overall performance. Within the scope of existing literature, representative prior works are compared concerning the application of AI in both the "MWI for Healthcare Applications" and "Artificial Intelligence Assistance In MWI" sections. This comparative analysis sheds light on the diverse approaches employed to enhance the synergy between AI and MWI. While highlighting the state-of-the-art technology in MWI and its historical context, this paper delves into the historical taxonomy of AI-assisted MWI, elucidating the evolution of intelligent systems within this domain. Moreover, it critically examines prominent works, providing a nuanced understanding of the advancements and challenges encountered. Addressing the limitations and challenges inherent in developing AI-assisted MWI systems like Generalization to different conditions, Generalization to different conditions, etc the paper offers a brief synopsis of these obstacles, emphasizing the importance of overcoming them for robust and reliable results in actual clinical environments. Finally, the paper not only underscores the current advancements but also anticipates future innovations and developments in utilizing AI for MWI applications in healthcare.
近年来,微波成像(MWI)已成为医疗保健领域,特别是医学成像领域中一种非电离且经济高效的模态。与此同时,人工智能(AI)的进步显著增强了医学成像工具的能力。本文探讨了这两个领域的交叉点,重点是将AI算法集成到MWI技术中,以提高准确性和整体性能。在现有文献范围内,在“用于医疗保健应用的MWI”和“MWI中的人工智能辅助”部分,对具有代表性的先前工作在AI应用方面进行了比较。这种比较分析揭示了为增强AI与MWI之间的协同作用而采用的各种方法。在突出MWI的最新技术及其历史背景的同时,本文深入研究了AI辅助MWI的历史分类法,阐明了该领域智能系统的演变。此外,它还对杰出的工作进行了批判性审视,对所取得的进展和遇到的挑战提供了细致入微的理解。针对开发AI辅助MWI系统中固有的局限性和挑战,如对不同条件的泛化等,本文简要概述了这些障碍,强调了在实际临床环境中克服它们以获得稳健可靠结果的重要性。最后,本文不仅强调了当前的进展,还展望了在医疗保健领域将AI用于MWI应用的未来创新和发展。