An approach for liver cancer detection from histopathology images using hybrid pre-trained models

Dublin Core

Title

An approach for liver cancer detection from histopathology images using hybrid pre-trained models

Subject

Convolutional neural network
Deep learning
Histopathological image analysis
Liver cancer
ResNet50

Description

Histopathological image analysis (HIA) plays an essential role in detecting cancer cell development, but it is time-consuming, prone to inaccuracy, and dependent on pathologist competence. This paper proposes an automated HIA that uses deep learning to improve accuracy and efficiency in liver cancer cell growth. The model uses whole slide image (WSI) input, open computer vision (OpenCV) libraries for image preprocessing, ResNet50 for patch-level feature extraction, and multiple instances learning for image-level classification. The suggested approach accurately distinguishes liver histopathological pictures as cancerous or non-cancerous. Assisting in the early detection of liver cancer cell development with potential invasion or spread.

Creator

Nuthanakanti Bhaskar1, Jangala Sasi Kiran2, Suma Satyanarayan1, Gaddam Divya3, Kotagiri Srujan Raju1, Murali Kanthi4, Raj Kumar Patra1

Source

Journal homepage: http://telkomnika.uad.ac.id

Date

Dec 9, 2023

Contributor

PERI IRAWAN

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Nuthanakanti Bhaskar1, Jangala Sasi Kiran2, Suma Satyanarayan1, Gaddam Divya3, Kotagiri Srujan Raju1, Murali Kanthi4, Raj Kumar Patra1, “An approach for liver cancer detection from histopathology images using hybrid pre-trained models,” Repository Horizon University Indonesia, accessed January 12, 2026, https://repository.horizon.ac.id/items/show/9899.