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- Title
Early Prediction of Liver Problems Using Knowledge Mining Techniques.
- Authors
Kowsalya, S.; Sarawathi, S.
- Abstract
Knowledge Mining methodologies in healthcare have already come across in medical imaging solutions and chatbots. These results however can help to identify the patterns in different sectors of patients with their symptoms. I foresee some of the Knowledge Mining algorithms are capable of identifying the possibilities or the probabilities of getting cancer, and imaging solutions and rare diseases or specific types of pathology. The algorithms of knowledge mining are exists as Deep learning methodologies that has started emerging as a prominent technique in providing medical professionals with insights that lets them predict issues early on, thereby delivering far more personalized and relevant patient care. Subsequent to my groundwork of research in imposing Data Mining and its techniques in identifying Liver infections, I foresee the deep learning methodologies will play a second fiddle in making my research works meaningful. Adding more value to the POCs that I implement as a part of my research, I explore the Deep learning applications and how they can be used in various health records of a person to determine whether he is prone to Liver infection. The future of healthcare is heading to be more exciting than we expect. Not only do AI and ML present an opportunity to develop solutions that cater to very specific needs within the industry, but deep learning in healthcare can be more supporting clinicians and transform patient care at their door step. Does all this tend to indicate that deep learning is going to be the future of healthcare? The answer is biased as there are equal challenges kept wide open to address to take full advantage of the benefits of Deep Learning. Ultimately, the techniques or the algorithms that support the medical challenges are becoming increasingly capable to integrate AI-based algorithms that can rationalize and shorten complex data analysis and improve verdicts. It can be trained as well as it can be equally learned. It can also reduce the reporting delays which are termed to be a normal excuse in present days and improve the transparency in the workflows. This effect is used to shift the milestones and benchmarks of patient care promptly and budget-strapped economy.
- Subjects
DATA mining; DIAGNOSTIC imaging; DEEP learning; PATIENT care; WORKFLOW management; ARTIFICIAL intelligence
- Publication
Mapana Journal of Sciences, 2023, Vol 22, p379
- ISSN
0975-3303
- Publication type
Article
- DOI
10.12723/mjs.sp2.22