Explainable AI Technique in Lung Cancer Detection Using Convolutional Neural Networks
By: Nishan Rai, Sujan Khatri, Devendra Risal
Potential Business Impact:
Finds lung cancer early from X-rays.
Early detection of lung cancer is critical to improving survival outcomes. We present a deep learning framework for automated lung cancer screening from chest computed tomography (CT) images with integrated explainability. Using the IQ-OTH/NCCD dataset (1,197 scans across Normal, Benign, and Malignant classes), we evaluate a custom convolutional neural network (CNN) and three fine-tuned transfer learning backbones: DenseNet121, ResNet152, and VGG19. Models are trained with cost-sensitive learning to mitigate class imbalance and evaluated via accuracy, precision, recall, F1-score, and ROC-AUC. While ResNet152 achieved the highest accuracy (97.3%), DenseNet121 provided the best overall balance in precision, recall, and F1 (up to 92%, 90%, 91%, respectively). We further apply Shapley Additive Explanations (SHAP) to visualize evidence contributing to predictions, improving clinical transparency. Results indicate that CNN-based approaches augmented with explainability can provide fast, accurate, and interpretable support for lung cancer screening, particularly in resource-limited settings.
Similar Papers
A Hybrid Deep Learning Framework with Explainable AI for Lung Cancer Classification with DenseNet169 and SVM
CV and Pattern Recognition
Finds lung cancer on scans faster, more accurately.
DCSNet: A Lightweight Knowledge Distillation-Based Model with Explainable AI for Lung Cancer Diagnosis from Histopathological Images
Image and Video Processing
Helps doctors find lung cancer faster, cheaper.
Advanced Deep Learning Techniques for Accurate Lung Cancer Detection and Classification
Image and Video Processing
Finds lung cancer in scans with high accuracy.