Medical image segmentation is an increasingly popular area of research in medical imaging processing and analysis. However, many researchers who are new to the field struggle with basic concepts. This tutorial paper aims to provide an overview of the fundamental concepts of medical imaging, with a focus on Magnetic Resonance and Computerized Tomography. We will also discuss deep learning algorithms, tools, and frameworks used for segmentation tasks, and suggest best practices for method development and image analysis. Our tutorial includes sample tasks using public data, and accompanying code is available on GitHub (https://github.com/MICLab-Unicamp/Medical-ImagingTutorial). By sharing our insights gained from years of experience in the field and learning from relevant literature, we hope to assist researchers in overcoming the initial challenges they may encounter in this exciting and important area of research.
翻译:医学图像分割是医学影像处理和分析领域中越来越流行的研究领域。然而,很多新研究人员在基本概念上存在困难。这篇教程性论文旨在提供医学影像基本概念的概述,重点关注磁共振和计算机断层扫描。我们还讨论深度学习算法、用于分割任务的工具和框架,并建议方法开发和图像分析的最佳实践。我们的教程包括使用公开数据的样本任务,相关代码可在GitHub(https://github.com/MICLab-Unicamp/Medical-ImagingTutorial)上获得。通过分享我们在该领域多年经验所获得的见解以及从相关文献中学习,我们希望帮助研究人员克服他们在这个令人兴奋而重要的研究领域中可能遇到的初始挑战。