Publication | Open Access
Machine Learning Analysis of Chest CT Scan Images as a Complementary Digital Test of Coronavirus (COVID-19) Patients
69
Citations
6
References
2020
Year
Unknown Venue
EngineeringMachine LearningDiagnosisDiagnostic ImagingCovid-19Image AnalysisData SciencePattern RecognitionBiostatisticsRadiologyComplementary Digital TestMachine Learning SchemesMedical ImagingDeep LearningMedical Image ComputingFft-gabor FeatureComputer-aided DiagnosisClinical ImageFft-gabor SchemeMedicineMedical Image Analysis
Abstract This paper reports on the development and performance of machine learning schemes for the analysis of Chest CT Scan images of Coronavirus COVID-19 patients and demonstrates significant success in efficiently and automatically testing for COVID-19 infection. In particular, an innovative frequency domain algorithm, to be called FFT-Gabor scheme, will be shown to predict in almost real-time the state of the patient with an average accuracy of 95.37%, sensitivity 95.99% and specificity 94.76%. The FFT-Gabor scheme is adequately informative in that clinicians can visually examine the FFT-Gabor feature to support their final diagnostic. Key Strengths The proposed FFT-Gabor scheme is an automatic machine learning scheme that works in real time and achieves significantly high accuracy with very low false negative, and can provide supporting evidences of the predicted decision by visually displaying the final features upon which decision is made. This scheme will be most beneficial when used in addition to the RT-PCR swab test of non-symptomatic cases.
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