Automatic Childhood Pneumonia Diagnosis Based on Multi-Model Feature Fusion Using Chi-Square Feature Selection
Amira Ouerhani, Tareq Hadidi, Hanene Sahli, Halima Mahjoubi

TL;DR
This paper introduces a new method for diagnosing childhood pneumonia using combined deep learning models and feature selection, achieving high accuracy.
Contribution
A novel pneumonia detection system using multi-model feature fusion and Chi-Square feature selection for improved accuracy and efficiency.
Findings
The proposed system achieved 97.59% accuracy in diagnosing childhood pneumonia.
It outperformed previous methods with high Recall (98.33%) and F1-score (98.19%).
The method ensures computational efficiency while maintaining high diagnostic performance.
Abstract
Pneumonia is one of the main reasons for child mortality, with chest radiography (CXR) being essential for its diagnosis. However, the low radiation exposure in pediatric analysis complicates the accurate detection of pneumonia, making traditional examination ineffective. Progress in medical imaging with convolutional neural networks (CNN) has considerably improved performance, gaining widespread recognition for its effectiveness. This paper proposes an accurate pneumonia detection method based on different deep CNN architectures that combine optimal feature fusion. Enhanced VGG-19, ResNet-50, and MobileNet-V2 are trained on the most widely used pneumonia dataset, applying appropriate transfer learning and fine-tuning strategies. To create an effective feature input, the Chi-Square technique removes inappropriate features from every enhanced CNN. The resulting subsets are subsequently…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Domain Adaptation and Few-Shot Learning · AI in cancer detection
