Deep Ensembling with Multimodal Image Fusion for Efficient Classification of Lung Cancer
Journal:
arXiv
Published Date:
Jan 31, 2025
Abstract
This study focuses on the classification of cancerous and healthy slices from
multimodal lung images. The data used in the research comprises Computed
Tomography (CT) and Positron Emission Tomography (PET) images. The proposed
strategy achieves the fusion of PET and CT images by utilizing Principal
Component Analysis (PCA) and an Autoencoder. Subsequently, a new ensemble-based
classifier developed, Deep Ensembled Multimodal Fusion (DEMF), employing
majority voting to classify the sample images under examination.
Gradient-weighted Class Activation Mapping (Grad-CAM) employed to visualize the
classification accuracy of cancer-affected images. Given the limited sample
size, a random image augmentation strategy employed during the training phase.
The DEMF network helps mitigate the challenges of scarce data in computer-aided
medical image analysis. The proposed network compared with state-of-the-art
networks across three publicly available datasets. The network outperforms
others based on the metrics - Accuracy, F1-Score, Precision, and Recall. The
investigation results highlight the effectiveness of the proposed network.