Medical Image Classification using a Many to Many Relation, Multilayered Fuzzy Systems and AI
Author:
Akula Kishore Kumar1, Marcucci Maura2, Jouffroy Romain3, Arabikhan Farzad4, Jafari Raheleh5, Akula Monica6, Gegov Alexander4
Affiliation:
1. 1Statistics eTeachers Group, Royal Statistical Society, 100 Leeward Glenway, Toronto, Ontario, M3C 2Z1, CANADA 2. Clinical Epidemiology and Research Centre, Department of Biomedical Sciences, Humanitas University and IRCCS Humanitas Research Hospital, Milan, ITALY 3. Intensive Care Unit, Ambroise Paré Hospital– Assistance Publique Hôpitaux, Paris, 9 avenue Charles De Gaulle, 92100, Boulogne-Billancourt, Paris, FRANCE 4. School of Computing, University of Portsmouth, Winston Churchill Ave, South Sea, Portsmouth PO1 2UP, Portsmouth, UNITED KINGDOM 5. School of Design, University of Leeds, Leeds LS2 9JT, UNITED KINGDOM 6. Department of Neuroscience, McMaster University, Hamilton, L8S 4L8, CANADA
Abstract
One of the research gaps in the medical sciences is the study of orphan diseases or rare diseases, due to limited data availability of rare diseases. Our previous study addressed this successfully by developing an Artificial Intelligence (AI)-based medical image classification method using a multilayer fuzzy approach (MFA), for detecting and classifying image abnormalities for large and very small datasets. A fuzzy system is an AI system used to handle imprecise data. There are more than three types of fuzziness in any image data set: 1) due to a projection of a 3D object on a 2D surface, 2) due to the digitalization of the scan, and 3) conversion of the digital image to grayscale, and more. Thus, this was referred to in the previous study as a multilayer fuzzy system, since fuzziness arises from multiple sources. The method used in MFA involves comparing normal images containing abnormalities with the same kind of image without abnormalities, yielding a similarity measure percentage that, when subtracted from a hundred, reveals the abnormality. However, relying on a single standard image in the MFA reduces efficiency, since images vary in contrast, lighting, and patient demographics, impacting similarity percentages. To mitigate this, the current study focused on developing a more robust medical image classification method than MFA, using a many-to-many relation and a multilayer fuzzy approach (MCM) that employs multiple diverse standard images to compare with the abnormal image. For each abnormal image, the average similarity was calculated across multiple normal images, addressing issues encountered with MFA, and enhancing versatility. In this study, an AI-based method of image analysis automation that utilizes fuzzy systems was applied to a cancer data set for the first time. MCM proved to be highly efficient in detecting the abnormality in all types of images and sample sizes and surpassed the gold standard, the convolutional neural network (CNN), in detecting the abnormality in images from a very small data set. Moreover, MCM detects and classifies abnormality without any training, validation, or testing steps for large and small data sets. Hence, MCM may be used to address one of the research gaps in medicine, which detects, quantifies, and classifies images related to rare diseases with small data sets. This has the potential to assist a physician with early detection, diagnosis, monitoring, and treatment planning of several diseases, especially rare diseases.
Publisher
World Scientific and Engineering Academy and Society (WSEAS)
Reference10 articles.
1. Akula K.K; Gegov, A; Arabikhan, F. Artificial Intelligence-Based Medical Image Classification Using a Multilayer Fuzzy Approach, WSEAS Transactions on Computers, 2023 vol. 22, pp. 206-217. https://doi.org/10.37394/23205.2023.22.24. 2. Wang, Z. Multi-scale structural similarity for image quality assessment. Proceedings of the 37th IEEE Asilomar Conference on Signals, Systems and Computers, Pacific Grove, CA, 2003. DOI: 10.1109/ACSSC.2003.1292216. 3. Rodgers, N. Learning to Reason, A. WileyInterscience Publication John Wiley & Sons 2000, INC, [Online]. https://www.wiley.com/enus/Learning+to+Reason%3A+An+Introductio n+to+Logic%2C+Sets%2C+and+Relations-p9781118165706 (Accessed Date: February 11, 2024). 4. Rhett N. D’souza; Po-Yao Huang; FangCheng Yeh. Structural Analysis and Optimization of Convolutional Neural Networks with a Small Sample Size, Scientific Reports, 2020, 10:834. DOI: 10.1038/s41598- 020-57866-2. 5. National Cancer Institute, 2021, [Online], https://www.cancerimagingarchive.net/ (Accessed Date: December 20, 2023).
|
|