Applied Sciences (Jun 2021)

Classification Performance for COVID Patient Prognosis from Automatic AI Segmentation—A Single-Center Study

  • Riccardo Biondi,
  • Nico Curti,
  • Francesca Coppola,
  • Enrico Giampieri,
  • Giulio Vara,
  • Michele Bartoletti,
  • Arrigo Cattabriga,
  • Maria Adriana Cocozza,
  • Federica Ciccarese,
  • Caterina De Benedittis,
  • Laura Cercenelli,
  • Barbara Bortolani,
  • Emanuela Marcelli,
  • Luisa Pierotti,
  • Lidia Strigari,
  • Pierluigi Viale,
  • Rita Golfieri,
  • Gastone Castellani

DOI
https://doi.org/10.3390/app11125438
Journal volume & issue
Vol. 11, no. 12
p. 5438

Abstract

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Background: COVID assessment can be performed using the recently developed individual risk score (prediction of severe respiratory failure in hospitalized patients with SARS-COV2 infection, PREDI-CO score) based on High Resolution Computed Tomography. In this study, we evaluated the possibility of automatizing this estimation using semi-supervised AI-based Radiomics, leveraging the possibility of performing non-supervised segmentation of ground-glass areas. Methods: We collected 92 from patients treated in the IRCCS Sant’Orsola-Malpighi Policlinic and public databases; each lung was segmented using a pre-trained AI method; ground-glass opacity was identified using a novel, non-supervised approach; radiomic measurements were collected and used to predict clinically relevant scores, with particular focus on mortality and the PREDI-CO score. We compared the prediction obtained through different machine learning approaches. Results: All the methods obtained a well-balanced accuracy (70%) on the PREDI-CO score but did not obtain satisfying results on other clinical characteristics due to unbalance between the classes. Conclusions: Semi-supervised segmentation, implemented using a combination of non-supervised segmentation and feature extraction, seems to be a viable approach for patient stratification and could be leveraged to train more complex models. This would be useful in a high-demand situation similar to the current pandemic to support gold-standard segmentation for AI training.

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