IoT Care: Breast Health

Year : 2024 | Volume :01 | Issue : 02 | Page : 21-28
By

    Payal Parshuram Patil

  1. Snehal G. Pal

  1. Research Scholar, MCA, Thakur Institute of Management Studies, Career Development & Research (TIMSCDR), Mumbai, Maharashtra, India
  2. Research Scholar, MCA, Thakur Institute of Management Studies, Career Development & Research (TIMSCDR), Mumbai, Maharashtra, India

Abstract

In today’s world, taking care of your wellbeing is of most extreme significance. The multiplication of wellbeing issues could be a genuine burden on specialists around the world, making it troublesome to viably treat each persistent. To ease the burden on specialists, there have been noteworthy progressive thoughts that have changed the healthcare industry. With the movement of computer innovation, it gets to be conceivable to create comes about more precisely and quickly. This, in turn, encourages the arrangement of treatment custom-made to person patients. Identifying cancer at an early organize is still a challenge in healthcare. The World Wellbeing Organization emphasizes that the determination and disposal of cancer cells are attainable when identified in their early stages. Subsequently, the basic for early location of cancer cells emerges as a need to relieve the challenges related with cancer. Out of all the distinctive sorts of cancer, breast cancer patients are at the beat. Various ladies are helpless to breast cancer, underscoring the centrality of identifying these cancer cells to kill them from the patient’s body.

Keywords: Picture handling, IoT, Breast cancer location, healthcare applications

[This article belongs to International Journal of Advanced Robotics and Automation Technology(ijarat)]

How to cite this article: Payal Parshuram Patil, Snehal G. Pal.IoT Care: Breast Health.International Journal of Advanced Robotics and Automation Technology.2024; 01(02):21-28.
How to cite this URL: Payal Parshuram Patil, Snehal G. Pal , IoT Care: Breast Health ijarat 2024 {cited 2024 Apr 25};01:21-28. Available from: https://journals.stmjournals.com/ijarat/article=2024/view=144427


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Regular Issue Subscription Original Research
Volume 01
Issue 02
Received March 11, 2024
Accepted March 19, 2024
Published April 25, 2024