Publication | Open Access
Multi-Channel Transfer Learning of Chest X-ray Images for Screening of COVID-19
93
Citations
28
References
2020
Year
EngineeringMachine LearningDiagnosisDisease DetectionCovid-19 Chest X-rayDiagnostic ImagingCovid-19X-ray ImagingChest X-ray ImagesImage AnalysisPattern RecognitionMulti-channel Transfer LearningRadiologyHealth SciencesMedical ImagingNovel CoronavirusDeep LearningMedical Image ComputingRadiographic ImagingComputer VisionRadiomicsBiomedical ImagingInnovative DiagnosticsComputer-aided DiagnosisEnsemble ModelMedicineMedical Image Analysis
The 2019 novel coronavirus (COVID-19) has spread rapidly all over the world. The standard test for screening COVID-19 patients is the polymerase chain reaction test. As this method is time consuming, as an alternative, chest X-rays may be considered for quick screening. However, specialization is required to read COVID-19 chest X-ray images as they vary in features. To address this, we present a multi-channel pre-trained ResNet architecture to facilitate the diagnosis of COVID-19 chest X-ray. Three ResNet-based models were retrained to classify X-rays in a one-against-all basis from (a) normal or diseased, (b) pneumonia or non-pneumonia, and (c) COVID-19 or non-COVID19 individuals. Finally, these three models were ensembled and fine-tuned using X-rays from 1579 normal, 4245 pneumonia, and 184 COVID-19 individuals to classify normal, pneumonia, and COVID-19 cases in a one-against-one framework. Our results show that the ensemble model is more accurate than the single model as it extracts more relevant semantic features for each class. The method provides a precision of 94% and a recall of 100%. It could potentially help clinicians in screening patients for COVID-19, thus facilitating immediate triaging and treatment for better outcomes.
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