A ensemble methodology for automatic classification of chest X-rays using deep learning

Chest radiographies, or chest X-rays, are the most standard imaging exams used in daily hospitals. Responsible for assisting in detecting numerous pathologies and findings that directly interfere in the patient's life, this exam is therefore crucial in screening patients. This work proposes a m...

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Veröffentlicht in:Computers in biology and medicine 2022-06, Vol.145, p.105442-105442, Article 105442
Hauptverfasser: Vogado, Luis, Araújo, Flávio, Neto, Pedro Santos, Almeida, João, Tavares, João Manuel R.S., Veras, Rodrigo
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container_title Computers in biology and medicine
container_volume 145
creator Vogado, Luis
Araújo, Flávio
Neto, Pedro Santos
Almeida, João
Tavares, João Manuel R.S.
Veras, Rodrigo
description Chest radiographies, or chest X-rays, are the most standard imaging exams used in daily hospitals. Responsible for assisting in detecting numerous pathologies and findings that directly interfere in the patient's life, this exam is therefore crucial in screening patients. This work proposes a methodology based on a Convolutional Neural Networks (CNNs) ensemble to aid the diagnosis of chest X-ray exams by screening them with a high probability of being normal or abnormal. In the development of this study, a private dataset with frontal and lateral projections X-ray images was used. To build the ensemble model, VGG-16, ResNet50 and DenseNet121 architectures, which are commonly used in the classification of Chest X-rays, were evaluated. A Confidence Threshold (CTR) was used to define the predictions into High Confidence Normal (HCn), Borderline classification (BC), or High Confidence Abnormal (HCa). In the tests performed, very promising results were achieved: 54.63% of the exams were classified with high confidence; of the normal exams, 32% were classified as HCn with an false discovery rate (FDR) of 1.68%; and as to the abnormal exams, 23% were classified as HCa with 4.91% false omission rate (FOR). •Evaluation in a heterogeneous dataset with abnormalities not present in literature.•New ensemble methodology using different CNNs architectures and different projections.•New evaluation methodology considering the probability of CNNs and confidence factors.•An automatic solution that can be easily implemented in different hospitals.
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subjects Accuracy
Artificial neural networks
Chest
Classification
Computer aided diagnosis
COVID-19
Datasets
Deep learning
Hospitals
Image analysis
Image classification
Machine learning
Medical diagnosis
Medical research
Methods
Neural networks
Patients
X-rays
title A ensemble methodology for automatic classification of chest X-rays using deep learning
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