AI POWERED LIVER DISEASE DETECTION USING SOCIAL SPIDER OPTIMIZATION

Authors

  • P. Satish Author
  • G. Gnana Prasuna Author
  • Manoj Kumar Author
  • Y. Prashanth Author
  • G. Abhinav Author

DOI:

https://doi.org/10.62643/ijerst.v21.n3(1).pp1415-1423

Keywords:

Liver Disease Detection, Convolutional Neural Networks (CNN), Image Classification, Deep Learning, Social Spider Optimization

Abstract

In recent years, the rapid advancement of deep learning, particularly Convolutional Neural Networks (CNNs), has significantly transformed image classification tasks across diverse domains such as healthcare, agriculture, and security. Traditionally, image classification was performed manually, requiring domain experts to visually analyze features such as shape, color, and texture—an approach that is time-consuming, error-prone, and heavily reliant on human judgment. These manual systems often lack scalability and consistency, especially when processing large volumes of images, leading to inefficiencies in real-world applications like medical diagnostics, object detection, or species identification. Statistical studies reveal that manual classification systems yield lower accuracy, with human error rates ranging from 10–25%, compared to CNN-based systems that achieve over 95% accuracy on benchmark datasets. The motivation for this project stems from the pressing need to replace inefficient manual methods with an automated, accurate, and scalable solution. Our objective is to design and implement a CNN-based image classification system that accepts user-uploaded images, performs preprocessing, extracts hierarchical features using a deep CNN architecture, classifies the image through a softmax layer, and delivers a prediction result in real-time. The proposed system leverages Python, TensorFlow/Keras, and possibly a graphical interface via Tkinter, offering an end-to-end automated pipeline. It eliminates the need for human involvement in image labeling, reduces errors, speeds up the process, and can be deployed in both academic and industrial scenarios. Furthermore, the system is flexible and extensible, allowing it to be adapted to various datasets and classification tasks. By automating image classification with CNN, this project not only improves accuracy and efficiency but also democratizes access to intelligent visual recognition tools, supporting smarter and more reliable decision-making in fields where precision is critical. The ultimate goal is to create a robust, real-time, and user-friendly solution that addresses the shortcomings of manual systems and embraces the potential of AI-driven technology

Downloads

Published

28-08-2025

How to Cite

AI POWERED LIVER DISEASE DETECTION USING SOCIAL SPIDER OPTIMIZATION. (2025). International Journal of Engineering Research and Science & Technology, 21(3 (1), 1415-1423. https://doi.org/10.62643/ijerst.v21.n3(1).pp1415-1423