Transformer-Based Neural Architectures ForAutomated Cancer Classification In Histopathology Images
PDF

Keywords

Transformer-Based Neural Architectures, tumor, image classification, metastatic cancer, Histopathology

How to Cite

Transformer-Based Neural Architectures ForAutomated Cancer Classification In Histopathology Images. (2024). African Journal of Biomedical Research, 28(1), 29-39. https://doi.org/10.53555/AJBR.v28i1.4973

Abstract

Timely identification of metastatic cancer via accurate image classification is essential for enhancing patient outcomes. This research introduces a deep learning method for automated tumor identification through Transformer-Based Neural Architectures applied to histopathological images. Our model underwent training using a dataset composed of 96x96 pixel microscopic images and demonstrated remarkable performance, attaining a training accuracy of 93.9% and a validation accuracy of 93.1%. The model showed excellent effectiveness in differentiating "no tumor tissue" from "tumor tissue," reaching an ROC-AUC score of 0.9799. These findings indicate that our method is very proficient at correctly identifying tumor areas, paving the path for better diagnostic instruments in medical image analysis.

 

 

PDF
Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

Copyright (c) 2024 Lalitha Bhavani Konkyana, J Rajanikanth, K Chandra Bhushana Rao, B Ramesh Naidu (Author)