Published September 15, 2021 | Version v1
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Arthritis Detection using AI

  • 1. Assistant Professor, Department of CSE, HKBKCE, Bangalore, India
  • 2. Student, Department of CSE, HKBKCE, Bangalore, India

Description

Arthritis is a prevalent condition that affects the majority of people after they reach a certain age. It's more than just ligament wear and tear. There are around 200 conditions that affect the joints, surrounding tissues, and other connective tissue. It's a rheumatic disease. We can apply Artificial Intelligence and follow particular methods to diagnose this disease in its early stages. In today's world, artificial intelligence is the most profitable field. It is currently used in the majority of fields. One of the most obvious fields where AI can be applied for human benefit is medicine. In the medical field, AI could be applied in a variety of fields, including cancer detection, tumours, and heart disease. Arthritis is another medical condition where AI can be helpful. As a result, we employed AI (Deep Learning) to detect Arthritis at an earlier stage with more accuracy.

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References

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