DOI : 10.17577/IJERTCONV14IS020051- Open Access

- Authors : Vijay Chavan, Chaitanya Sakhare
- Paper ID : IJERTCONV14IS020051
- Volume & Issue : Volume 14, Issue 02, NCRTCS – 2026
- Published (First Online) : 21-04-2026
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License:
This work is licensed under a Creative Commons Attribution 4.0 International License
Artificial Intelligence in Healthcare: Disease Detection and Diagnosis Using Medical Imaging
Vijay Chavan
Department of Computer Science
Dr. D. Y. Patil Arts, Commerce & Science College, Pimpri, Pune, Maharashtra, India
Chaitanya Sakhare
Department of Computer Science
Dr. D. Y. Patil Arts, Commerce & Science College, Pimpri, Pune, Maharashtra, India
Abstract – Artificial Intelligence (AI) has significantly influenced the healthcare sector, particularly in the field of medical imaging. Imaging modalities such as X-ray, Magnetic Resonance Imaging (MRI), Computed Tomography (CT), and Positron Emission Tomography (PET) play a crucial role in disease diagnosis and treatment planning. However, traditional image interpretation methods are time-consuming, dependent on radiologists expertise, and prone to human error and inter-observer variability.
Recent advancements in deep learning, especially Convolutional Neural Networks (CNNs), have shown strong capabilities in medical image classification, segmentation, and anomaly detection. This review paper presents a systematic survey of AI applications in healthcare imaging, discusses existing diagnostic approaches, identifies challenges related to data availability, model interpretability, ethics, and clinical integration, and highlights future research directions for reliable AI-based medical imaging systems.
Keywords – Artificial Intelligence, Medical Imaging, Deep Learning, Convolutional Neural Networks, Healthcare Diagnostics, Image Analysis.
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INTRODUCTION
Medical imaging technologies such as X-ray, MRI, CT, and PET play a vital role in early disease detection and diagnosis. However, increasing patient load, limited availability of expert radiologists, and time-consuming manual image analysis present significant challenges. Artificial Intelligence helps address these issues by enabling faster, accurate, and consistent analysis of medical images, thereby supporting clinicians and improving healthcare efficiency.
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LITERATURE REVIEW
Previous studies indicate that deep learning techniques, particularly CNNs, have significantly improved medical image analysis. Research demonstrates successful AI applications in cancer detection, retinal disease diagnosis, neurological disorder analysis, and cardiovascular risk assessment. Review studies also highlight challenges such as
data privacy, ethical concerns, and lack of explainability. Overall, the literature confirms the effectiveness of AI-based systems in improving diagnostic accuracy and reducing clinician workload.
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RESEARCH PROBLEM
Despite advancements in medical imaging, diagnostic accuracy is affected by delays, high costs, limited access to expert radiologists, and inconsistent interpretations. Although AI offers automation and improved accuracy, challenges such as lack of explainability, data bias, privacy concerns, and regulatory compliance limit its adoption.
Problem Statement
There is a critical need for intelligent, automated, and reliable systems that assist healthcare professionals in detecting and diagnosing diseases from medical images with high accuracy and efficiency.
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RESEARCH OBJECTIVES
The objectives of this research are to improve diagnostic accuracy, enable early and automated disease detection, reduce radiologist workload, apply AI across multiple imaging modalities, and develop explainable AI models that can be trusted in clinical practice.
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RESEARCH METHODOLOGY
This research follows a descriptive and analytical approach using secondary data collected from journals, conference papers, and publicly available medical imaging datasets. A comparative analysis of various AI and deep learning techniques is conducted while maintaining ethical standards through the use of anonymized data.
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DATA ANALYSIS APPROACH
Machine learning and deep learning techniques, particularly CNNs and transfer learning models, are used for medical image classification and disease detection. Feature
extraction, data augmentation, and standard evaluation metrics such as accuracy and sensitivity are employed. Multimodal analysis combining medical images with clinical data is also considered.
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SCOPE OF RESEARCH
The scope includes AI-based detection of cancers, retinal diseases, neurological disorders, and cardiovascular conditions using different medical imaging modalities. Applications such as automated triage, 3D image analysis, and diagnostic support for resource-limited healthcare settings are also explored.
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LIMITATIONS OF RESEARCH
Key limitations include limited availability of high-quality annotated datasets, generalization challenges across diverse populations, lack of explainability in AI models, ethical and privacy concerns, and difficulties in integrating AI systems into existing healthcare workflows.
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EXPECTED OUTCOMES
The study is expected to improve diagnostic accuracy and enable early disease detection using AI-based medical imaging. It aims to reduce radiologists workload, support faster diagnosis, and provide scalable diagnostic solutions for hospitals and remote healthcare centers.
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CONCLUSION
Artificial Intelligence has the potential to significantly enhance healthcare diagnostics by improving the accuracy, efficiency, and accessibility of medical imaging. Addressing challenges related to data quality, ethics, and trust is essential for the responsible adoption of AI in healthcare.
