Analysis of Chest Radiographs Using Deep Learning: A Multi-Model Approach for Detection of Thoracic Abnormalities
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Abstract
The increasing utilization of chest radiographs in medical diagnostics necessitates automated systems that can assist radiologists in accurate and efficient interpretation. This paper presents a comprehensive deep learning-based framework for automated analysis of chest X-rays, focusing on three critical diagnostic tasks: abnormal rib count detection, cardiomegaly identification, and pneumonia classification. Our multi-model ap- proach employs specialized convolutional neural network (CNN) modules including a custom lightweight regression model for rib counting achieving Mean Absolute Error (MAE) of 0.58 ribs with 89% accuracy within ±1 rib prediction, transfer learning-based architectures for pneumonia detection with 94.87% accuracy us- ing ResNet50, and cardiomegaly detection through cardiothoracic ratio analysis. The proposed framework addresses significant gaps in automated chest radiograph analysis by providing simul- taneous assessment of structural abnormalities, cardiac condi- tions, and pathological conditions. Evaluated on multiple datasets including VinDr-RibCXR, pediatric pneumonia dataset, and NIH-derived cardiomegaly subset, our system demonstrates significant potential for deployment in resource-constrained healthcare environments, offering rapid diagnostic assistance while maintaining high sensitivity and specificity rates across all three diagnostic modules.
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