Early Disease Detection Using Artificial Intelligence

Year : 2025 | Volume : 14 | Issue : 03 | Page : 11 19
    By

    Pavandeep Kaur,

  • Parul Gogia,

  • Aekansh Khandelwal,

  • Rishabh Raj,

  1. Student, Department of Computer Science and Engineering Apex Institute of Technology Chandigarh University Mohali, Pubjab, India
  2. Student, Department of Computer Science and Engineering, Apex Institute of Technology Chandigarh University Mohali, Punjab, India
  3. Student, Department of Computer Science and Engineering, Apex Institute of Technology Chandigarh University Mohali, Punjab, India
  4. Student, Department of Computer Science and Engineering, Apex Institute of Technology Chandigarh University Mohali, Punjab, India

Abstract

Growth in artificial intelligence and machine learning now make it possible for the healthcare sector to be totally transformed by a new chapter, particularly in the era of medical image analysis. This study focuses on harnessing these advancements to develop a sophisticated model for early disease detection across diverse medical domains, majorly in skin disease. By integrating diverse datasets and leveraging advanced algorithms, our methodology aims to identify subtle disease indicators at their inception, facilitating timely interventions and personalized treatment strategies. Through meticulous data collection, preprocessing, and exploratory analysis, the study establishes the groundwork for the development of robust AI models capable of interpreting complex medical imaging data. The proposed methodology emphasizes the integration of domain- specific clinical expertise to ensure the clinical relevance and interpretability of the models. Rigorous validation and evaluation demonstrate the efficacy and generalization capacity of our approach, paving the way for its seamless integration into clinical practice.

Keywords: Early Detection, Artificial Intelligence, Machine Learning, Medical Imaging, Disease Prediction

[This article belongs to Research and Reviews : A Journal of Medical Science and Technology ]

How to cite this article:
Pavandeep Kaur, Parul Gogia, Aekansh Khandelwal, Rishabh Raj. Early Disease Detection Using Artificial Intelligence. Research and Reviews : A Journal of Medical Science and Technology. 2025; 14(03):11-19.
How to cite this URL:
Pavandeep Kaur, Parul Gogia, Aekansh Khandelwal, Rishabh Raj. Early Disease Detection Using Artificial Intelligence. Research and Reviews : A Journal of Medical Science and Technology. 2025; 14(03):11-19. Available from: https://journals.stmjournals.com/rrjomst/article=2025/view=228445


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Regular Issue Subscription Original Research
Volume 14
Issue 03
Received 10/07/2025
Accepted 19/08/2025
Published 30/09/2025
Publication Time 82 Days


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