School of Computer Science and Engineering, Shri Mata Vaishno Devi University, Katra, India.
Biomedical Application Division, CSIR-Central Scientific Instruments Organisation, Chandigarh, 160030, India.
Med Biol Eng Comput. 2023 Aug;61(8):1901-1927. doi: 10.1007/s11517-023-02842-x. Epub 2023 May 30.
The human upper airway is comprised of many anatomical volumes. The obstructions in the upper airway volumes are needed to be diagnosed which requires volumetric segmentation. Manual segmentation is time-consuming and requires expertise in the field. Automatic segmentation provides reliable results and also saves time and effort for the expert. The objective of this study is to systematically review the literature to study various techniques used for the automatic segmentation of the human upper airway regions in volumetric images. PRISMA guidelines were followed to conduct the systematic review. Four online databases Scopus, Google Scholar, PubMed, and JURN were used for the searching of the relevant papers. The relevant papers were shortlisted using inclusion and exclusion eligibility criteria. Three review questions were made and explored to find their answers. The best technique among all the literature studies based on the Dice coefficient and precision was identified and justified through the analysis. This systematic review provides insight to the researchers so that they shall be able to overcome the prominent issues in the field identified from the literature. The outcome of the review is based on several parameters, e.g., accuracy, techniques, challenges, datasets, and segmentation of different sub-regions. Flowchart of the search process as per PRISMA guidelines along with inclusion and exclusion criteria.
人体上呼吸道由许多解剖体积组成。需要对上呼吸道体积中的阻塞物进行诊断,这需要进行容积分割。手动分割既耗时又需要该领域的专业知识。自动分割不仅为专家节省了时间和精力,还提供了可靠的结果。本研究的目的是系统地回顾文献,以研究用于对容积图像中的人体上呼吸道区域进行自动分割的各种技术。本研究遵循 PRISMA 指南进行系统回顾。使用 Scopus、Google Scholar、PubMed 和 JURN 这四个在线数据库搜索相关论文。使用纳入和排除标准对相关论文进行了筛选。提出并探讨了三个综述问题以寻找答案。通过分析,根据 Dice 系数和精度确定并证明了所有文献研究中最佳的技术。本系统综述为研究人员提供了深入的了解,使他们能够克服从文献中确定的该领域的突出问题。综述的结果基于几个参数,例如准确性、技术、挑战、数据集以及不同子区域的分割。根据 PRISMA 指南的搜索过程流程图以及纳入和排除标准。