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AI for COVID-19 Detection from radiographs: Incisive analysis of state of the art techniques, key challenges and future directions - 26/07/21

Doi : 10.1016/j.irbm.2021.07.002 
R. Karthik a , R. Menaka a , M. Hariharan b , G.S. Kathiresan c
a Centre for Cyber Physical Systems, Vellore Institute of Technology, Chennai, India 
b School of Computing Sciences and Engineering, Vellore Institute of Technology, Chennai, India 
c School of Electronics Engineering, Vellore Institute of Technology, Chennai, India 

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En prensa. Manuscrito Aceptado. Disponible en línea desde el Monday 26 July 2021
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Abstract

Background and objective

In recent years, Artificial Intelligence has had an evident impact on the way research addresses challenges in different domains. It has proven to be a huge asset, especially in the medical field, allowing for time-efficient and reliable solutions. This research aims to spotlight the impact of deep learning and machine learning models in the detection of COVID-19 from medical images. This is achieved by conducting a review of the state-of-the-art approaches proposed by the recent works in this field.

Methods

The main focus of this study is the recent developments of classification and segmentation approaches to image-based COVID-19 detection. The study reviews 140 research papers published in different academic research databases. These papers have been screened and filtered based on specified criteria, to acquire insights prudent to image-based COVID-19 detection.

Results

The methods discussed in this review include different types of imaging modality, predominantly X-rays and CT scans. These modalities are used for classification and segmentation tasks as well. This review seeks to categorize and discuss the different deep learning and machine learning architectures employed for these tasks, based on the imaging modality utilized. It also hints at other possible deep learning and machine learning architectures that can be proposed for better results towards COVID-19 detection. Along with that, a detailed overview of the emerging trends and breakthroughs in Artificial Intelligence-based COVID-19 detection has been discussed as well.

Conclusion

This work concludes by stipulating the technical and non-technical challenges faced by researchers and illustrates the advantages of image-based COVID-19 detection with Artificial Intelligence techniques.

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