Artificial Intelligence in Medical Image Processing
Keywords:
AI, medical images, neural networks, interpolationAbstract
Neural networks have been used to solve an increasing number of very complex real-world problems. Their biggest advantage is by far their capacity to resolve problems that are too complex for conventional technologies. These problems are usually related to pattern recognition and forecasting. Artificial neural networks (ANNs) are being used in a variety of fields, including medical imaging, computer-aided diagnosis, medical image registration, segmentation, and edge detection for visual content analysis. In this work, we fill in the blanks in CT and MRI scan images by interpolating medical images using artificial neural networks (ANNs). In this way, we may remove artifacts from the image and see a new image that is much more similar to the original. It is feasible to use these processed images for diagnostic purposes or for radiation therapy. The exact implementation details could change depending on the interpolation task and the type of medical images. This technique explains how to use Matlab's Neural Network Toolbox, which makes it easier to create, train, and test neural networks for interpolation tasks, to improve the quality of images.
Downloads
References
Isaac N. Bankman (2009), Handbook of Medical Image Processing and Analysis 2nd Edition - December 19, 2008, Hardback ISBN: 9780123739049; eBook ISBN: 9780080559148.
A. Hassanien,. (2016), Computational Intelligence in Medical Imaging: Techniques and Applications, Published September 13, 2016b y Chapman & Hall.
Costaridou, L. (Ed.). (2005), Medical Image Analysis Methods (1st ed.). CRC Press. https://doi.org/10.1201/9780203500453.
Zhenghao Shi et al. (2011), Current Status and Future Potential of Neural Networks Used for Medical Image Processing, Journal of Multimedia, DOI: 10.4304/jmm.6.3.244-251.
Zhenghao Shi et al. (2009), Survey on Neural Networks Used for Medical Image Processing, Int J Comput Sci. 2009 Feb; 3(1): 86–100.
D. L. Hill, et al. (2001), Medical Image Registration, Phys Med Biol 2001 Mar;46(3): R1-45. doi: 10.1088/0031-9155/46/3/201.
Niko Hyka et.al (2023), Using deep convolutional neural network to create a DCNN model for brain tumour detection, European Chemical Bulletin (ISSN 2063-5346), Volume -12, Special Issue-7: Page: 4979-4989.
Vassilis Tsagaris et al,. (2005) Interpolation in multispectral data using neural networks, Proceedings of SPIE -. SPIE 5573, Image and Signal Processing for Remote Sensing X, (10 November 2004); doi: 10.1117/12.565649.
Antigoni Panagiotopoulou, (2007) January 2008, Neur. Comp. and App. 17(1):39-47, Source: DBLP.
An Introduction to Digital Image Processing with Matlab, Notes for SCM2511 Image Processing 1, Semester 1, 2004, Alasdair McAndrew, School of Computer Science and Mathematics, Victoria University of Technology.
Beemkumar, N., Gupta, S., Bhardwaj, S., Dhabliya, D., Rai, M., Pandey, J.K., Gupta, A. Activity recognition and IoT-based analysis using time series and CNN (2023) Handbook of Research on Machine Learning-Enabled IoT for Smart Applications Across Industries, pp. 350-364.
Rajiv, A., Saxena, A.K., Singh, D., Awasthi, A., Dhabliya, D., Yadav, R.K., Gupta, A. IoT and machine learning on smart home-based data and a perspective on fog computing implementation (2023) Handbook of Research on Machine Learning-Enabled IoT for Smart Applications Across Industries, pp. 336-349.
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
All papers should be submitted electronically. All submitted manuscripts must be original work that is not under submission at another journal or under consideration for publication in another form, such as a monograph or chapter of a book. Authors of submitted papers are obligated not to submit their paper for publication elsewhere until an editorial decision is rendered on their submission. Further, authors of accepted papers are prohibited from publishing the results in other publications that appear before the paper is published in the Journal unless they receive approval for doing so from the Editor-In-Chief.
IJISAE open access articles are licensed under a Creative Commons Attribution-ShareAlike 4.0 International License. This license lets the audience to give appropriate credit, provide a link to the license, and indicate if changes were made and if they remix, transform, or build upon the material, they must distribute contributions under the same license as the original.