Enhancing Diagnostic: Machine Learning in Medical Image Analysis
Tarun Kumar Choudhury1
1Masters of Computer Applications
Jain (Deemed-To-Be-University), Bangalore, India
---------------------------------------------------------------------***---------------------------------------------------------------------
Abstract - Medical image analysis is critical for accurate diagnosis and treatment in modern healthcare. This paper focuses on application of machine learning (ML) approaches in context of medical image classification. Aim is to develop robust ML models capable of automatically analyzing. Then classifying medical images. These models should possess high accuracy. Traditional methods of image analysis rely heavily on human interpretation. This reliance can be time-consuming and prone to variability. Moreover the increasing complexity of medical data further challenge these traditional approaches. In contrast ML algorithms offer potential to efficiently handle large datasets. They can extract meaningful patterns from images This supports more precise clinical decision making
This research investigates various ML techniques such as deep learning convolutional neural networks (CNNs) and ensemble methods for their effectiveness in medical image classification tasks. By harnessing these techniques. Project seeks to advance field. Providing automated tools that can assist healthcare professionals in interpreting medical images more effectively. Ultimate goal is to improve patient outcomes. By accelerating diagnostic process. Facilitating early intervention strategies based on reliable image analysis.
Significance of this study lies in its potential to overcome current limitations in medical image analysis. It paves way for enhanced diagnostic accuracy. Leading to more efficient healthcare delivery. Findings contribute to broader goal of integrating ML into clinical practice. Thereby realizing promise of personalized medicine. Optimized patient care.
Key Words: Machine Learning, Convolutional Neural Networks (CNNs), Diagnostic Imaging, Radiology, Computer-Aided Diagnosis (CAD), Clinical Decision Support, Accuracy, Image Classification, Deep Learning, Feature Extraction.