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Table 9 Comparative analysis of lung cancer prediction through deep learning

From: Unified deep learning models for enhanced lung cancer prediction with ResNet-50–101 and EfficientNet-B3 using DICOM images

Aspect

Implementation Platform

Dataset Details

Platform Used

Deep learning models: ResNet-50, ResNet-101, EfficientNet-B3

LIDC-IDRI repository

Input Data

DICOM lung cancer images

1,000 images

Data Partitioning

Training: 70% Validation: 20% Testing: 10%

Training: 613 images Validation: 315 images Testing: 72 images

Model Architecture

ResNet-50, ResNet-101, EfficientNet-B3

Preprocessing Techniques

Data augmentation strategy

Classification Performance

Fusion Model: 100% precision in classifying Squamous Cells

Precision: ResNet-50, EfficientNet-B3, and ResNet-101 achieved 90%, followed by EfficientNet-B3 and ResNet-101 with slightly lower precision

Model Training

Epochs: 35 Batch Size: 32

Learning Rate

Adam optimizer with a learning rate of 0.001

Total Parameters

10,988,787

Trainable Parameters

10,099,090

Non-trainable Parameters

889,697

Achievements

Improved accuracy in predicting lung cancer subtypes

Potential for advancements in healthcare and reduction in mortality rates associated with lung cancer