Gastric Cancer Image Classification: A Comparative Analysis and Feature Fusion Strategies

Loddo A.;Di Ruberto C.
2024-01-01

Abstract

: Gastric cancer is the fifth most common and fourth deadliest cancer worldwide, with a bleak 5-year survival rate of about 20%. Despite significant research into its pathobiology, prognostic predictability remains insufficient due to pathologists' heavy workloads and the potential for diagnostic errors. Consequently, there is a pressing need for automated and precise histopathological diagnostic tools. This study leverages Machine Learning and Deep Learning techniques to classify histopathological images into healthy and cancerous categories. By utilizing both handcrafted and deep features and shallow learning classifiers on the GasHisSDB dataset, we conduct a comparative analysis to identify the most effective combinations of features and classifiers for differentiating normal from abnormal histopathological images without employing fine-tuning strategies. Our methodology achieves an accuracy of 95% with the SVM classifier, underscoring the effectiveness of feature fusion strategies. Additionally, cross-magnification experiments produced promising results with accuracies close to 80% and 90% when testing the models on unseen testing images with different resolutions.
2024
2024
Inglese
10
8
195
1
24
24
Esperti anonimi
scientifica
computational pathology; convolutional neural networks; deep learning; feature combination; feature extraction; gastric cancer; histopathological imaging; machine learning
no
Loddo, A.; Usai, M.; Di Ruberto, C.
1.1 Articolo in rivista
info:eu-repo/semantics/article
1 Contributo su Rivista::1.1 Articolo in rivista
262
3
open
Files in This Item:
File Size Format  
2024_IImaging.pdf

open access

Description: ARTICOLO COMPLETO
Type: versione editoriale
Size 410.24 kB
Format Adobe PDF
410.24 kB Adobe PDF View/Open

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

Questionnaire and social

Share on:
Impostazioni cookie