Learning Models for Anomaly Detection in Medical Imaging and Improving Diagnostics in Health Care – A Review

Authors

  • Jayabharathi S Research Scholar, VTU-RC, Department of MCA, CMR Institute of Technology, Bengaluru – 560 037, Karnataka, India Author
  • Dr. V. Ilango Professor and Head, Research Centre VTU-RC, Department of MCA, CMR Institute of Technology, Bengaluru – 560 037, Karnataka, India Author

DOI:

https://doi.org/10.32628/IJSRST251222679

Abstract

Improving diagnostics in healthcare through machine learning (ML) and deep learning (DL) models has shown significant promise in enhancing accuracy, accessibility, and efficiency. These technologies facilitate early disease detection and personalized treatment, ultimately leading to better patient outcomes. The following sections outline key aspects of this transformative impact.

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References

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Published

28-04-2025

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Section

Research Articles