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Deep Learning Based COVID-19 Detection Using Medical Images: Is Insufficient Data Handled Well?

Caren Babu1, Rahul Manohar O1, D Abraham Chandy2

  • 1Department of Electronics and Communication Engineering, Christ College of Engineering, Irinjalakuda, India.

Current Medical Imaging
|August 5, 2022
PubMed
Summary
This summary is machine-generated.

Deep learning for COVID-19 detection faces data insufficiency. This study reviews medical image datasets and data handling techniques to improve deep learning model performance for accurate disease detection.

Keywords:
COVID-19CT datasetchest X-ray datasetdata augmentationdeep learningtransfer learning

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Area of Science:

  • Medical Imaging
  • Artificial Intelligence
  • Computer-Aided Diagnosis

Background:

  • Deep learning models are increasingly used for automated COVID-19 detection from medical imaging.
  • A significant challenge in developing these models is the limited availability of diverse and comprehensive datasets.
  • This data insufficiency can hinder the generalization and accuracy of deep learning algorithms.

Purpose of the Study:

  • To provide a comprehensive overview of the data insufficiency issue in deep learning-based COVID-19 detection.
  • To analyze existing medical datasets, including CT and X-ray images, relevant for COVID-19 detection frameworks.
  • To discuss essential data handling techniques and propose advanced strategies to mitigate data scarcity.

Main Methods:

  • Extensive review and analysis of publicly available COVID-19 medical image datasets (CT and X-ray).
  • Detailed discussion of various data augmentation and preprocessing techniques applicable to medical imaging.
  • Exploration of model modification strategies to enhance robustness against limited data.

Main Results:

  • Identification of key characteristics and limitations of current COVID-19 imaging datasets.
  • Evaluation of the effectiveness of standard data handling techniques in the context of deep learning for medical diagnosis.
  • Demonstration of how advanced techniques can improve model performance despite data scarcity.

Conclusions:

  • Addressing data insufficiency is critical for reliable deep learning-based COVID-19 detection.
  • Strategic application of advanced data handling and model modification techniques can overcome dataset limitations.
  • Further research into dataset curation and innovative deep learning approaches is warranted for improved diagnostic accuracy.