KnE Life Sciences

ISSN: 2413-0877

The latest conference proceedings on life sciences, medicine and pharmacology.

COVID-19 Death Risk in Surabaya: Modeling by Spatial Point Process

Published date: Mar 27 2024

Journal Title: KnE Life Sciences

Issue title: International Conference On Mathematics And Science Education (ICMScE 2022): Life Sciences

Pages: 206–217

DOI: 10.18502/kls.v8i1.15580

Authors:

Dora Isnaini PutriEmail: N/A
Affiliation: Department of Statistics, Institut Teknologi Sepuluh Nopember (ITS) Surabaya, Indonesia
Biography:

Vanda FitriyanahEmail: N/A
Affiliation: Department of Statistics, Institut Teknologi Sepuluh Nopember (ITS) Surabaya, Indonesia
Biography:

Achmad ChoiruddinEmail: choiruddin@its.ac.id
Affiliation: Department of Statistics, Institut Teknologi Sepuluh Nopember (ITS) Surabaya, Indonesia
Biography:

Jerry Dwi Trijoyo PurnomoEmail: N/A
Affiliation: Department of Statistics, Institut Teknologi Sepuluh Nopember (ITS) Surabaya, Indonesia
Biography:

Dora Isnaini Putri

Vanda Fitriyanah

Achmad Choiruddin - choiruddin@its.ac.id

Jerry Dwi Trijoyo Purnomo

Abstract:

The total death rate or Case Fatality Rate (CFR) due to COVID-19 in Surabaya is high, that is almost twice of the global CFR (1.4%). Utilization of high-resolution data has the potential to explore COVID-19 cases, not only recording cases at the district or city level but also at the patient’s domicile level so that they can provide more detailed spatial information. Meanwhile, research exploring the risk of death from COVID-19, especially in Surabaya using spatial point process model, has not yet been carried out. In this study, an analysis of the risk of death from COVID-19 in Surabaya will be carried out using the inhomogeneous Poisson point process model with covariates or external factors used including the density of the COVID-19 referral hospital location and the proportion of confirmed COVID-19 population aged > 60 years per districts. Our model shows that referral hospitals (exp( ) = 1.03295) and places of worship (exp( ) = 1.03835) have a significant effect on death risk from COVID-19. So, there is a need for special handling for areas that have a population with a vulnerable age (> 60 years) where at this age the human immune system will decrease.

Keywords: COVID-19, heath risk, spatial point process, surabaya

References:

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