ARCHIVES

Original Article

Machine Learning-Driven Analysis of Liver Lesions from Medical Images

Bharath N Y1 Bhimesha V J2 Chandresh M3 Pramod kumar H R4 Lakshmi D L5 Goutham V6
123456Department of Electronics and Communication Engineering, BGS Institute of Technology, Adichunchanagiri University, Mandya, Karnataka, India.

Published Online: May-June 2025

Pages: 94-98

Cite this article

No DOI

Abstract

Liver lesions are abnormal areas in the liver that may be harmless or a sign of serious diseases like cancer. Detecting and correctly identifying these lesions is important for early treatment. Traditionally, doctors analyze medical images like CT or MRI scans to find and classify these lesions. However, this process can be time-consuming and may vary between doctors. In this project, we use machine learning – a type of artificial intelligence – to help automatically analyze medical images and classify liver lesions. By training the system on a large number of labeled images, the computer learns to recognize patterns and make predictions about new, unseen images. This approach can support doctors by providing fast, consistent, and accurate results. Our study shows that machine learning can be a powerful tool in medical imaging and may help improve the early diagnosis and treatment of liver-related diseases.

Related Articles

2025

Iot-Based Power Theft Detector

2025

Comparative Analysis of Conventional and Diagrid Structural Buildings with Plan Irregularity

2025

The Role of C Language in Google, Adobe, and Mozilla Firefox Applications: Performance, Security, and Future Developments

2025

Seismic Analysis of Circular Building and Rectangular Building

2025

Seismic analysis of double-decker elevated water tank

2025

A Review on Implementation of 5S in Indian Culture during Diwali Festival

Share Article

X
LinkedIn
Facebook
WhatsApp

Or copy link

https://theijire.com/archives/machine-learning-driven-analysis-of-liver-lesions-from-medical-images

*Instagram doesn't support direct link sharing from web. Copy the link and share it in your Instagram story or post.