[Medical image instance segmentation: from candidate region to no candidate region]

Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2022 Dec 25;39(6):1218-1232. doi: 10.7507/1001-5515.202201034.
[Article in Chinese]

Abstract

In recent years, the task of object detection and segmentation in medical image is the research hotspot and difficulty in the field of image processing. Instance segmentation provides instance-level labels for different objects belonging to the same class, so it is widely used in the field of medical image processing. In this paper, medical image instance segmentation was summarized from the following aspects: First, the basic principle of instance segmentation was described, the instance segmentation models were classified into three categories, the development context of the instance segmentation algorithm was displayed in two-dimensional space, and six classic model diagrams of instance segmentation were given. Second, from the perspective of the three models of two-stage instance segmentation, single-stage instance segmentation and three-dimensional (3D) instance segmentation, we summarized the ideas of the three types of models, discussed the advantages and disadvantages, and sorted out the latest developments. Third, the application status of instance segmentation in six medical images such as colon tissue image, cervical image, bone imaging image, pathological section image of gastric cancer, computed tomography (CT) image of lung nodule and X-ray image of breast was summarized. Fourth, the main challenges in the field of medical image instance segmentation were discussed and the future development direction was prospected. In this paper, the principle, models and characteristics of instance segmentation are systematically summarized, as well as the application of instance segmentation in the field of medical image processing, which is of positive guiding significance to the study of instance segmentation.

医学图像中目标的检测和分割任务是近年来图像处理领域中的研究热点和难点。实例分割为属于同一类的不同对象提供实例级标签,因此广泛应用于医学图像处理领域。本文对医学图像实例分割从以下几个方面进行总结:第一,阐述实例分割的基本原理,将实例分割模型归纳为三类,并采用二维空间展示实例分割算法发展脉络,给出六个实例分割经典模型图;第二,从两阶段实例分割、单阶段实例分割以及三维(3D)实例分割三类模型的角度出发,分别总结三类模型的思想,探讨优缺点和梳理最新发展;第三,总结了实例分割在结肠组织图像、宫颈图像、骨显像图像、胃癌病理切片图像、肺结节计算机断层扫描图像和乳腺X线片图像等六种医学图像的应用现状;第四,讨论当前医学图像实例分割领域面对的主要挑战,并展望未来的发展方向。本文系统总结实例分割的原理、模型、特点,以及实例分割在医学图像处理领域中的应用,对实例分割的研究具有积极的指导意义。.

Keywords: Candidate region; Medical image instance segmentation; No candidate region; Single-stage instance segmentation; Two-stage instance segmentation.

Publication types

  • English Abstract

MeSH terms

  • Algorithms
  • Image Processing, Computer-Assisted*
  • Imaging, Three-Dimensional* / methods
  • Tomography, X-Ray Computed / methods

Grants and funding

国家自然科学基金项目(62062003);宁夏自治区重点研发计划项目(2020BEB04022);北方民族大学引进人才科研启动项目(2020KYQD08);2020年北方民族大学研究生创新项目(YCX21089)