Artificial intelligent systems application in cervical cancer pathological cell image classification systems - A review
Abstract
Cervical cancer cell images play an important part in diagnosing the cancer among the females worldwide. Existing noises, overlapping cells, mucus, blood and air artifacts in cervical cancer cell images makes their classification a hard task. It makes it difficult for both pathologists and intelligent systems to segment and classify them into normal, pre-cancerous and cancerous cells. However, true cell segmentation is needed for pathologists to make for accurate diagnosis. In this paper, a review of algorithms used for cervical cancer cell image classification is presented. This includes pre-processing steps (noise reduction and cell segmentation/without segmentation), feature extraction, and intelligent diagnosis systems and their evaluations. Finally, future research trends on cervical cell classification to achieve complete accuracy are described. é 2016 National Taiwan University.
Collections
Related items
Showing items related by title, author, creator and subject.
-
Designing of intelligent multilingual patient reported outcome system (IMPROS)
Pourasghar, F; Partovi, Y (2015)Background: By self-reporting outcome procedure the patients themselves record disease symptoms outside medical centers and then report them to medical staff in specific periods of time. One of the self-reporting methods ... -
Identify the Prerequisites and Challenges of Using Artificial Intelligence in Management of Health System in Iran
Sorkhi, Abbas (Tabriz University of Medical Sciences,School of Management and Medical Informatics, 2023/12)Abstract Background Artificial Intelligence was initially designed with an algorithmic nature, enabling it to analyze data and learn on its own. The development of artificial intelligence is a result of the increase ... -
A general approach to extract the business intelligence requirements of bio-surveillance systems
Samad-Soltani, T; GhaziSaeedi, M; Masoumi-Asl, H; Rezaei-Hachesu, P; Mirnia, K; Safdari, R (2017)Introduction: A successful surveillance system must consist of business intelligence (BI) modules that refer to applications and technologies used to gather, access, and analyze data. The objective of the current study was ...