# MCADS: Simultaneous Detection and Analysis of 18 Chest Radiographic Abnormalities Using Multi-Label Deep Learning

**Authors:** Paulius Bundza, Justas Trinkūnas

PMC · DOI: 10.3390/diagnostics16040585 · 2026-02-15

## TL;DR

MCADS is a deep learning system that quickly detects 18 chest X-ray abnormalities, helping speed up diagnosis and reduce workload for radiologists.

## Contribution

MCADS introduces a multi-label deep learning system for rapid and accurate detection of 18 chest radiographic abnormalities with explainable AI features.

## Key findings

- MCADS achieved high area-under-the-curve performance metrics across all 18 target conditions.
- The system provides accurate multi-condition analyses in under thirty seconds per image.
- Grad-CAM heatmaps enhance transparency by highlighting influential image regions for each abnormality.

## Abstract

Background/Objectives: Chest radiography remains a fundamental diagnostic tool for evaluating thoracic disease, yet its interpretation requires considerable time and specialized expertise. Worldwide shortages of trained radiologists can lead to lengthy turnaround times and delayed treatment. This study introduces the Multi-label Chest Abnormality Detection System (MCADS), a deep-learning-driven platform designed to automatically identify and interpret 18 distinct radiographic abnormalities to address these diagnostic challenges. Methods: MCADS integrates a pre-trained DenseNet121 convolutional neural network (via TorchXRayVision) to balance broad pathology coverage with rapid inference. Images are processed asynchronously on a central server to avoid the interruption of clinical workflows. To enhance transparency and clinician confidence, the system employs Gradient-weighted Class Activation Mapping (Grad-CAM) to overlay heatmaps pinpointing image regions most influential to each predicted abnormality. The system was evaluated using eight large, publicly available datasets. Results: When evaluated on diverse datasets, MCADS achieved high area-under-the-curve performance metrics across all 18 target conditions. The platform consistently produced accurate, multi-condition analyses in under thirty seconds per image, demonstrating both reliability and speed suitable for clinical environments. Conclusions: MCADS demonstrates the potential to accelerate chest X-ray interpretation by delivering fast, reliable, and explainable multi-abnormality screening. Its deployment could reduce radiologist workload and mitigate diagnostic delays, offering a pathway to improve patient care within data-driven healthcare environments.

## Full-text entities

- **Diseases:** Pneumonia (MESH:D011014), Chest Abnormality (MESH:D002637), fibrosis (MESH:D005355), multi-abnormality (MESH:D015161), cardiothoracic disease (MESH:D004194), injury to (MESH:D014947), fractures (MESH:D050723), lung disease (MESH:D008171), thoracic disease (MESH:D013896), Pneumothorax (MESH:D011030), hernia (MESH:D006547), Radiographic Abnormalities (MESH:D000089202)
- **Chemicals:** GRAD (-)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

5 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12939440/full.md

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Source: https://tomesphere.com/paper/PMC12939440