Privacy Preserving and Time Series Analysis of Medical Dataset using Deep Feature Selection

Main Article Content

J. Dafni Rose
Vinston Raja R
D. Lakshmi
S. Saranya
T. A. Mohanaprakash

Abstract

A significant category of medical data that includes rich temporal and spatial information is time-series medical imaging. Since then, experts in a variety of domains, including clinical picture analysis, have been actively participating in the rapidly emerging subject of profound learning. This paper discusses profound learning processes and their applicability to clinical picture examination and mainly focused common machine learning techniques in the field of computer vision and how deep learning has transformed ML, ML models for deep learning and applications of deep learning to clinical image analysis. In fact, even before the term "deep learning" was coined, a variety of clinical picture investigation concerns, including harm and non-harm grouping, harm type characterisation, harm or organ division, and injury recognition, were addressed using picture input machine learning (PIML). Deep learning is predicted to be the key innovation for clinical picture examination in the upcoming few years. Picture input ML, including profound learning, is an exceptionally powerful, flexible, higher-throughput innovation that can raise the current level of execution in clinical picture examination. "Profound learning" or picture input ML, in clinical picture examination is a quickly developing, promising field. Picture input ML is supposed to turn into a significant field in clinical picture examination in the following couple of many years.

Article Details

How to Cite
Rose, J. D. ., R, V. R. ., Lakshmi, D., Saranya, S. ., & Mohanaprakash, T. A. . (2023). Privacy Preserving and Time Series Analysis of Medical Dataset using Deep Feature Selection. International Journal on Recent and Innovation Trends in Computing and Communication, 11(3), 51–57. https://doi.org/10.17762/ijritcc.v11i3.6201
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Articles

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