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Features of ICU admission in x-ray images of Covid-19 patients

conference contribution
posted on 2024-06-09, 22:46 authored by DPS Gomes, Anwaar Ulhaq, M Paul, MJ Horry, S Chakraborty, M Saha, T Debnath, DMM Rahaman
This paper presents an original methodology for extracting semantic features from X-rays images that correlate to severity from a data set with patient ICU admission labels through interpretable models. The validation is partially performed by a proposed method that correlates the extracted features with a separate larger data set that does not contain the ICU-outcome labels. The analysis points out that a few features explain most of the variance between patients admitted in ICUs or not. The methods herein can be viewed as a statistical approach highlighting the importance of features related to ICU admission that may have been only qualitatively reported. In between features shown to be over-represented in the external data set were ones like ‘Consolidation’ (1.67), ‘Alveolar’ (1.33), and ‘Effusion’ (1.3). A brief analysis on the locations also showed higher frequency in labels like ‘Bilateral’ (1.58) and Peripheral (1.28) in patients labelled with higher chances to be admitted in ICU. To properly handle the limited data sets, a state-of-the-art lung segmentation network was also trained and presented, together with the use of low-complexity and interpretable models to avoid overfitting.

History

Volume

2021-September

Start Page

200

End Page

204

Number of Pages

5

Start Date

2021-09-19

Finish Date

2021-09-22

eISSN

2381-8549

ISSN

1522-4880

ISBN-13

9781665441155

Location

Anchorage, Alaska, USA

Publisher

IEEE

Place of Publication

Piscataway, NJ

Peer Reviewed

  • Yes

Open Access

  • No

Era Eligible

  • Yes

Name of Conference

2021 IEEE International Conference on Image Processing

Parent Title

Proceedings / ICIP ... International Conference on Image Processing

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