论文标题

自动化的细胞学图像分析技术:系统重新审视

Cytology Image Analysis Techniques Towards Automation: Systematically Revisited

论文作者

Mitra, Shyamali, Das, Nibaran, Dey, Soumyajyoti, Chakrabarty, Sukanta, Nasipuri, Mita, Naskar, Mrinal Kanti

论文摘要

细胞学是病理学的分支,它处理细胞的微观检查,以诊断癌或炎症状况。细胞学的自动化始于1950年代初期,目的是减少癌症诊断的手动努力。具有高计算能力和改进的标本收集技术的智能技术单元的繁殖有助于达到其技术高度。在本调查中,我们专注于这种图像处理技术,这些技术将迈向细胞学自动化的步骤。我们进行了短暂的游览17种细胞学类型的游览,并探索了过去三十年中进化的各种细分和/或分类技术,从而增强了细胞学自动化的概念。可以观察到,大多数作品都与三种类型的细胞学一致:宫颈,乳房和肺部,本文在本文中进行了精心讨论。总结了此期间开发的用户端系统,以理解各个领域的整体增长。确切地说,我们讨论了最先进的方法论的多样性,他们提供的挑战是提供多产而有能力的未来研究方向,将基于细胞学的商业系统纳入主流。

Cytology is the branch of pathology which deals with the microscopic examination of cells for diagnosis of carcinoma or inflammatory conditions. Automation in cytology started in the early 1950s with the aim to reduce manual efforts in diagnosis of cancer. The inflush of intelligent technological units with high computational power and improved specimen collection techniques helped to achieve its technological heights. In the present survey, we focus on such image processing techniques which put steps forward towards the automation of cytology. We take a short tour to 17 types of cytology and explore various segmentation and/or classification techniques which evolved during last three decades boosting the concept of automation in cytology. It is observed, that most of the works are aligned towards three types of cytology: Cervical, Breast and Lung, which are discussed elaborately in this paper. The user-end systems developed during that period are summarized to comprehend the overall growth in the respective domains. To be precise, we discuss the diversity of the state-of-the-art methodologies, their challenges to provide prolific and competent future research directions inbringing the cytology-based commercial systems into the mainstream.

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