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Automatic detection of pneumonia in chest X-ray images using textural features

César Antonio Ortiz Toro, Ángel García‐Pedrero, Mario Lillo‐Saavedra, Consuelo Gonzalo‐Martín

2022Computers in Biology and Medicine73 citationsDOIOpen Access PDF

Abstract

Fast and accurate diagnosis is critical for the triage and management of pneumonia, particularly in the current scenario of a COVID-19 pandemic, where this pathology is a major symptom of the infection. With the objective of providing tools for that purpose, this study assesses the potential of three textural image characterisation methods: radiomics, fractal dimension and the recently developed superpixel-based histon, as biomarkers to be used for training Artificial Intelligence (AI) models in order to detect pneumonia in chest X-ray images. Models generated from three different AI algorithms have been studied: K-Nearest Neighbors, Support Vector Machine and Random Forest. Two open-access image datasets were used in this study. In the first one, a dataset composed of paediatric chest X-ray, the best performing generated models achieved an 83.3% accuracy with 89% sensitivity for radiomics, 89.9% accuracy with 93.6% sensitivity for fractal dimension and 91.3% accuracy with 90.5% sensitivity for superpixels based histon. Second, a dataset derived from an image repository developed primarily as a tool for studying COVID-19 was used. For this dataset, the best performing generated models resulted in a 95.3% accuracy with 99.2% sensitivity for radiomics, 99% accuracy with 100% sensitivity for fractal dimension and 99% accuracy with 98.6% sensitivity for superpixel-based histons. The results confirm the validity of the tested methods as reliable and easy-to-implement automatic diagnostic tools for pneumonia.

Topics & Concepts

TriageFractal dimensionArtificial intelligenceSensitivity (control systems)RadiomicsComputer sciencePattern recognition (psychology)PneumoniaDimension (graph theory)Random forestCoronavirus disease 2019 (COVID-19)Support vector machineDiagnostic accuracyFractalMedicineRadiologyPathologyMathematicsEmergency medicinePure mathematicsInfectious disease (medical specialty)Electronic engineeringDiseaseEngineeringInternal medicineMathematical analysisCOVID-19 diagnosis using AIRadiomics and Machine Learning in Medical ImagingAI in cancer detection
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