Predicting COVID-19 Hospital Stays with Kolmogorov–Gabor Polynomials: Charting the Future of Care

Author:

Marateb Hamidreza1ORCID,Norouzirad Mina2ORCID,Tavakolian Kouhyar3ORCID,Aminorroaya Faezeh4,Mohebbian Mohammadreza5,Mañanas Miguel Ángel16ORCID,Lafuente Sergio Romero16ORCID,Sami Ramin7,Mansourian Marjan14ORCID

Affiliation:

1. Biomedical Engineering Research Centre (CREB), Automatic Control Department (ESAII), Universitat Politècnica de Catalunya-Barcelona Tech (UPC), 08028 Barcelona, Spain

2. Center for Mathematics and Applications (NOVA Math), NOVA School of Science and Technology (NOVA SST), 2825-149 Caparica, Portugal

3. School of Electrical Engineering and Computer Science, University of North Dakota, Grand Forks, ND 58202, USA

4. Epidemiology and Biostatistics Department, School of Health, Isfahan University of Medical Sciences, Isfahan 81746-73461, Iran

5. Department of Electrical and Computer Engineering, University of Saskatchewan, Saskatoon, SK S7N 5A9, Canada

6. CIBER de Bioingeniería, Biomateriales y Nanomedicina (CIBER-BBN), 28029 Madrid, Spain

7. Department of Internal Medicine, School of Medicine, Isfahan University of Medical Science, Isfahan 81746-73461, Iran

Abstract

Optimal allocation of ward beds is crucial given the respiratory nature of COVID-19, which necessitates urgent hospitalization for certain patients. Several governments have leveraged technology to mitigate the pandemic’s adverse impacts. Based on clinical and demographic variables assessed upon admission, this study predicts the length of stay (LOS) for COVID-19 patients in hospitals. The Kolmogorov–Gabor polynomial (a.k.a., Volterra functional series) was trained using regularized least squares and validated on a dataset of 1600 COVID-19 patients admitted to Khorshid Hospital in the central province of Iran, and the five-fold internal cross-validated results were presented. The Volterra method provides flexibility, interactions among variables, and robustness. The most important features of the LOS prediction system were inflammatory markers, bicarbonate (HCO3), and fever—the adj. R2 and Concordance Correlation Coefficients were 0.81 [95% CI: 0.79–0.84] and 0.94 [0.93–0.95], respectively. The estimation bias was not statistically significant (p-value = 0.777; paired-sample t-test). The system was further analyzed to predict “normal” LOS ≤ 7 days versus “prolonged” LOS > 7 days groups. It showed excellent balanced diagnostic accuracy and agreement rate. However, temporal and spatial validation must be considered to generalize the model. This contribution is hoped to pave the way for hospitals and healthcare providers to manage their resources better.

Funder

Beatriu de Pinós post-doctoral programme

National Funds

Ministry of Science and Innovation

Publisher

MDPI AG

Subject

Information Systems

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