Data Intelligence and Knowledge Management, Faculty of Arts, Computing and Creative Industry, Sultan Idris Education University (UPSI), Tanjong Malim, Perak, Malaysia.
School of Computer Science, Baoji University of Arts and Sciences, Baoji, P. R. China.
J Appl Clin Med Phys. 2021 Oct;22(10):45-65. doi: 10.1002/acm2.13394. Epub 2021 Aug 28.
Medical images are important in diagnosing disease and treatment planning. Computer algorithms that describe anatomical structures that highlight regions of interest and remove unnecessary information are collectively known as medical image segmentation algorithms. The quality of these algorithms will directly affect the performance of the following processing steps. There are many studies about the algorithms of medical image segmentation and their applications, but none involved a bibliometric of medical image segmentation.
This bibliometric work investigated the academic publication trends in medical image segmentation technology. These data were collected from the Web of Science (WoS) Core Collection and the Scopus. In the quantitative analysis stage, important visual maps were produced to show publication trends from five different perspectives including annual publications, countries, top authors, publication sources, and keywords. In the qualitative analysis stage, the frequently used methods and research trends in the medical image segmentation field were analyzed from 49 publications with the top annual citation rates.
The analysis results showed that the number of publications had increased rapidly by year. The top related countries include the Chinese mainland, the United States, and India. Most of these publications were conference papers, besides there are also some top journals. The research hotspot in this field was deep learning-based medical image segmentation algorithms based on keyword analysis. These publications were divided into three categories: reviews, segmentation algorithm publications, and other relevant publications. Among these three categories, segmentation algorithm publications occupied the vast majority, and deep learning neural network-based algorithm was the research hotspots and frontiers.
Through this bibliometric research work, the research hotspot in the medical image segmentation field is uncovered and can point to future research in the field. It can be expected that more researchers will focus their work on deep learning neural network-based medical image segmentation.
医学图像在疾病诊断和治疗计划中非常重要。描述突出感兴趣区域并去除不必要信息的解剖结构的计算机算法统称为医学图像分割算法。这些算法的质量将直接影响后续处理步骤的性能。有许多关于医学图像分割算法及其应用的研究,但没有一项涉及医学图像分割的文献计量学。
这项文献计量工作调查了医学图像分割技术的学术出版物趋势。这些数据是从 Web of Science(WoS)核心合集和 Scopus 中收集的。在定量分析阶段,生成了重要的可视化地图,从五个不同的角度展示了包括年度出版物、国家、顶尖作者、出版物来源和关键词的出版趋势。在定性分析阶段,从 49 篇年度引用率最高的出版物中分析了医学图像分割领域常用的方法和研究趋势。
分析结果表明,出版物数量逐年快速增加。相关的主要国家包括中国大陆、美国和印度。这些出版物大部分是会议论文,此外还有一些顶级期刊。该领域的研究热点是基于深度学习的医学图像分割算法,基于关键词分析。这些出版物分为三类:综述、分割算法出版物和其他相关出版物。在这三类中,分割算法出版物占据了绝大多数,基于深度学习神经网络的算法是研究热点和前沿。
通过这项文献计量研究工作,揭示了医学图像分割领域的研究热点,并为该领域的未来研究指明了方向。可以预计,将有更多的研究人员专注于基于深度学习神经网络的医学图像分割。