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Validation of expert system enhanced deep learning algorithm for automated screening for COVID-Pneumonia on chest X-rays
Prashant Sadashiv Gidde; Shyam Sunder Prasad; Ajay Pratap Singh; Nitin Batheja; Satyartha Prakash; Prateek Singh; Aakash Saboo; Rohit Thakar; Salil Gupta; Sumeet Saurav; M V Raghunandan; Amritpal Singh; Viren Sardana; Harsh Mahajan; Arjun Kalyanpur; Atanendu Shekhar Mandal; Vidur Mahajan; Anurag Agrawal; Anjali Agrawal; Vasantha Kumar Venugopal; Sanjay Singh; Debasis Dash.
Afiliación
  • Prashant Sadashiv Gidde; CSIR-Central Electronics Engineering Research Institute, Pilani, Rajasthan 333031, India
  • Shyam Sunder Prasad; CSIR-Central Electronics Engineering Research Institute, Pilani, Rajasthan 333031, India
  • Ajay Pratap Singh; CSIR-Institute of Genomics and Integrative Biology, Mathura Road, New Delhi 110025, India
  • Nitin Batheja; CSIR-Institute of Genomics and Integrative Biology, Mathura Road, New Delhi 110025, India
  • Satyartha Prakash; CSIR-Institute of Genomics and Integrative Biology, Mathura Road, New Delhi 110025, India
  • Prateek Singh; CSIR-Institute of Genomics and Integrative Biology, Mathura Road, New Delhi 110025, India
  • Aakash Saboo; Centre for Advanced Research in Imaging, Neurosciences & Genomics (CARING), New Delhi, India
  • Rohit Thakar; Centre for Advanced Research in Imaging, Neurosciences & Genomics (CARING), New Delhi, India
  • Salil Gupta; Centre for Advanced Research in Imaging, Neurosciences & Genomics (CARING), New Delhi, India
  • Sumeet Saurav; CSIR-Central Electronics Engineering Research Institute, Pilani, Rajasthan 333031, India
  • M V Raghunandan; CSIR-Institute of Genomics and Integrative Biology, Mathura Road, New Delhi 110025, India
  • Amritpal Singh; Maulana Azad Medical College (MAMC), New Delhi, India
  • Viren Sardana; CSIR-Institute of Genomics and Integrative Biology, Mathura Road, New Delhi 110025, India
  • Harsh Mahajan; Centre for Advanced Research in Imaging, Neurosciences & Genomics (CARING), New Delhi, India
  • Arjun Kalyanpur; Teleradiology Solutions, #7G, Opposite Graphite India, Whitefield, Bangalore, Karnataka, 560048, India
  • Atanendu Shekhar Mandal; CSIR-Central Electronics Engineering Research Institute, Pilani, Rajasthan 333031, India
  • Vidur Mahajan; Centre for Advanced Research in Imaging, Neurosciences & Genomics (CARING), New Delhi, India
  • Anurag Agrawal; CSIR-Institute of Genomics and Integrative Biology, Mathura Road, New Delhi 110025, India
  • Anjali Agrawal; Teleradiology Solutions, 12B Sriram Road, Civil Lines, Delhi, 110054, India
  • Vasantha Kumar Venugopal; Centre for Advanced Research in Imaging, Neurosciences & Genomics (CARING), New Delhi, India
  • Sanjay Singh; CSIR-Central Electronics Engineering Research Institute, Pilani, Rajasthan 333031, India
  • Debasis Dash; CSIR - Institute of Genomics and Integrative Biology, Delhi
Preprint en En | PREPRINT-MEDRXIV | ID: ppmedrxiv-20213793
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ABSTRACT
The coronavirus disease of 2019 (COVID-19) pandemic exposed a limitation of artificial intelligence (AI) based medical image interpretation systems. Early in the pandemic, when need was greatest, the absence of sufficient training data prevented effective deep learning (DL) solutions. Even now, there is a need for Chest-X-ray (CxR) screening tools in low and middle income countries (LMIC), when RT-PCR is delayed, to exclude COVID-19 pneumonia (Cov-Pneum) requiring transfer to higher care. In absence of local LMIC data and poor portability of CxR DL algorithms, a new approach is needed. Axiomatically, it is faster to repurpose existing data than to generate new datasets. Here, we describe CovBaseAI, an explainable tool which uses an ensemble of three DL models and an expert decision system (EDS) for Cov-Pneum diagnosis, trained entirely on datasets from the pre-COVID-19 period. Portability, performance, and explainability of CovBaseAI was primarily validated on two independent datasets. First, 1401 randomly selected CxR from an Indian quarantine-center to assess effectiveness in excluding radiologic Cov-Pneum that may require higher care. Second, a curated dataset with 434 RT-PCR positive cases of varying levels of severity and 471 historical scans containing normal studies and non-COVID pathologies, to assess performance in advanced medical settings. CovBaseAI had accuracy of 87% with negative predictive value of 98% in the quarantine-center data for Cov-Pneum. However, sensitivity varied from 0.66 to 0.90 depending on whether RT-PCR or radiologist opinion was set as ground truth. This tool with explainability feature has better performance than publicly available algorithms trained on COVID-19 data but needs further improvement.
Licencia
cc_by_nc_nd
Texto completo: 1 Colección: 09-preprints Base de datos: PREPRINT-MEDRXIV Tipo de estudio: Diagnostic_studies / Experimental_studies / Prognostic_studies / Rct Idioma: En Año: 2020 Tipo del documento: Preprint
Texto completo: 1 Colección: 09-preprints Base de datos: PREPRINT-MEDRXIV Tipo de estudio: Diagnostic_studies / Experimental_studies / Prognostic_studies / Rct Idioma: En Año: 2020 Tipo del documento: Preprint