Abstract

BackgroundCoronavirus disease 2019 (COVID-19) is very contagious. Cases appear faster than the available Polymerase Chain Reaction test kits in many countries. Recently, lung computerized tomography (CT) has been used as an auxiliary COVID-19 testing approach. Automatic analysis of the lung CT images is needed to increase the diagnostic efficiency and release the human participant. Deep learning is successful in automatically solving computer vision problems. Thus, it can be introduced to the automatic and rapid COVID-19 CT diagnosis. Many advanced deep learning-based computer vison techniques were developed to increase the model performance but have not been introduced to medical image analysis.MethodsIn this study, we propose a self-supervised two-stage deep learning model to segment COVID-19 lesions (ground-glass opacity and consolidation) from chest CT images to support rapid COVID-19 diagnosis. The proposed deep learning model integrates several advanced computer vision techniques such as generative adversarial image inpainting, focal loss, and lookahead optimizer. Two real-life datasets were used to evaluate the model’s performance compared to the previous related works. To explore the clinical and biological mechanism of the predicted lesion segments, we extract some engineered features from the predicted lung lesions. We evaluate their mediation effects on the relationship of age with COVID-19 severity, as well as the relationship of underlying diseases with COVID-19 severity using statistic mediation analysis.ResultsThe best overall F1 score is observed in the proposed self-supervised two-stage segmentation model (0.63) compared to the two related baseline models (0.55, 0.49). We also identified several CT image phenotypes that mediate the potential causal relationship between underlying diseases with COVID-19 severity as well as the potential causal relationship between age with COVID-19 severity.ConclusionsThis work contributes a promising COVID-19 lung CT image segmentation model and provides predicted lesion segments with potential clinical interpretability. The model could automatically segment the COVID-19 lesions from the raw CT images with higher accuracy than related works. The features of these lesions are associated with COVID-19 severity through mediating the known causal of the COVID-19 severity (age and underlying diseases).

Highlights

  • Coronavirus disease 2019 (COVID-19) is very contagious

  • computerized tomography (CT) imaging-based COVID-19 diagnosis is more efficient as it would not be limited by the delay of available testing kits, especially when artificial intelligence (AI) is introduced to release the need for human involvement in image reading [5]

  • We propose an advanced deep learning model called self-supervised Infection Segmentation Network (InfNet) (SSInfNet) which uses InfNet as a backbone, and integrates generative adversarial image inpainting, focal loss, and lookahead optimizer techniques (Fig. 1) to improve lung lesion segmentation performance compared to benchmark models

Read more

Summary

Introduction

Coronavirus disease 2019 (COVID-19) is very contagious. Cases appear faster than the available Poly‐ merase Chain Reaction test kits in many countries. This is likely due to its associations with age, gender, and underlying diseases [10, 11] If this is the case, mediation analysis [12] between the age, gender, underlying disease and the risk of COVID-19 through lung CT image phenotypes can potentially be used to reason on the model predictions both biologically and statistically. This may have the potential to improve the cost-effectiveness, diagnosis efficacy, and clinical utility of AI-based COVID-19 CT imaging diagnosis [6]

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call