Smart X-Ray interpreter for predicting epoch of healthcare using machine learning

https://doi.org/10.53730/ijhs.v6nS1.7103

Authors

  • Shaik Shakeer Basha Avanthi Institute of Engineering & Technology, Gunthapalli, Hyderabad, Telangana, India
  • Syed Khasim Dr. Samuel George Institute of Engineering & Technology, Markapur, Prakasam Dt, Andhra Pradesh, India

Keywords:

X-Ray Interpreter, Epoch values, Machine Learning, Radiologist, Artificial Intelligence

Abstract

This paper provides a complete overview of our work in providing a well-designed and accurate X ray scanner accessible to everyone and features applications that include radiology research and sharp X Rays. The use of Artificial intelligence (AI) has been rapidly advancing in medicine, especially in radiology. Artificial intelligence has in addition been a source of amazing development and alarming research in recent years. In addition to the risks and problems of quality assurance related to Artificial intelligence (AI), it offers large open doors to change the way radio sensible management is delivered. In addition, it is possible that AI could become a strong, persistent companion of a radiologist, in addition to being an important tool for preparing radiologist students. This model explores and validates the opportunity to innovate in providing the essential X Ray Scanner.

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References

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Published

09-05-2022

How to Cite

Basha, S. S., & Khasim, S. (2022). Smart X-Ray interpreter for predicting epoch of healthcare using machine learning. International Journal of Health Sciences, 6(S1), 9284–9292. https://doi.org/10.53730/ijhs.v6nS1.7103

Issue

Section

Peer Review Articles