• Je něco špatně v tomto záznamu ?

Multidimensional Machine Learning Model to Calculate a COVID-19 Vulnerability Index

PA. Rosero Perez, JS. Realpe Gonzalez, R. Salazar-Cabrera, D. Restrepo, DM. López, B. Blobel

. 2023 ; 13 (7) : . [pub] 20230715

Status neindexováno Jazyk angličtina Země Švýcarsko

Typ dokumentu časopisecké články

Perzistentní odkaz   https://www.medvik.cz/link/bmc23015714

In Colombia, the first case of COVID-19 was confirmed on 6 March 2020. On 13 March 2023, Colombia registered 6,360,780 confirmed positive cases of COVID-19, representing 12.18% of the total population. The National Administrative Department of Statistics (DANE) in Colombia published in 2020 a COVID-19 vulnerability index, which estimates the vulnerability (per city block) of being infected with COVID-19. Unfortunately, DANE did not consider multiple factors that could increase the risk of COVID-19 (in addition to demographic and health), such as environmental and mobility data (found in the related literature). The proposed multidimensional index considers variables of different types (unemployment rate, gross domestic product, citizens' mobility, vaccination data, and climatological and spatial information) in which the incidence of COVID-19 is calculated and compared with the incidence of the COVID-19 vulnerability index provided by DANE. The collection, data preparation, modeling, and evaluation phases of the Cross-Industry Standard Process for Data Mining methodology (CRISP-DM) were considered for constructing the index. The multidimensional index was evaluated using multiple machine learning models to calculate the incidence of COVID-19 cases in the main cities of Colombia. The results showed that the best-performing model to predict the incidence of COVID-19 in Colombia is the Extra Trees Regressor algorithm, obtaining an R-squared of 0.829. This work is the first step toward a multidimensional analysis of COVID-19 risk factors, which has the potential to support decision making in public health programs. The results are also relevant for calculating vulnerability indexes for other viral diseases, such as dengue.

Citace poskytuje Crossref.org

000      
00000naa a2200000 a 4500
001      
bmc23015714
003      
CZ-PrNML
005      
20231020093623.0
007      
ta
008      
231010s2023 sz f 000 0|eng||
009      
AR
024    7_
$a 10.3390/jpm13071141 $2 doi
035    __
$a (PubMed)37511754
040    __
$a ABA008 $b cze $d ABA008 $e AACR2
041    0_
$a eng
044    __
$a sz
100    1_
$a Rosero Perez, Paula Andrea $u Research Group in Telematics Engineering, Telematics Department, Universidad del Cauca, Popayán 190002, Colombia $1 https://orcid.org/0009000341481138
245    10
$a Multidimensional Machine Learning Model to Calculate a COVID-19 Vulnerability Index / $c PA. Rosero Perez, JS. Realpe Gonzalez, R. Salazar-Cabrera, D. Restrepo, DM. López, B. Blobel
520    9_
$a In Colombia, the first case of COVID-19 was confirmed on 6 March 2020. On 13 March 2023, Colombia registered 6,360,780 confirmed positive cases of COVID-19, representing 12.18% of the total population. The National Administrative Department of Statistics (DANE) in Colombia published in 2020 a COVID-19 vulnerability index, which estimates the vulnerability (per city block) of being infected with COVID-19. Unfortunately, DANE did not consider multiple factors that could increase the risk of COVID-19 (in addition to demographic and health), such as environmental and mobility data (found in the related literature). The proposed multidimensional index considers variables of different types (unemployment rate, gross domestic product, citizens' mobility, vaccination data, and climatological and spatial information) in which the incidence of COVID-19 is calculated and compared with the incidence of the COVID-19 vulnerability index provided by DANE. The collection, data preparation, modeling, and evaluation phases of the Cross-Industry Standard Process for Data Mining methodology (CRISP-DM) were considered for constructing the index. The multidimensional index was evaluated using multiple machine learning models to calculate the incidence of COVID-19 cases in the main cities of Colombia. The results showed that the best-performing model to predict the incidence of COVID-19 in Colombia is the Extra Trees Regressor algorithm, obtaining an R-squared of 0.829. This work is the first step toward a multidimensional analysis of COVID-19 risk factors, which has the potential to support decision making in public health programs. The results are also relevant for calculating vulnerability indexes for other viral diseases, such as dengue.
590    __
$a NEINDEXOVÁNO
655    _2
$a časopisecké články $7 D016428
700    1_
$a Realpe Gonzalez, Juan Sebastián $u Research Group in Telematics Engineering, Telematics Department, Universidad del Cauca, Popayán 190002, Colombia $1 https://orcid.org/0009000919827116
700    1_
$a Salazar-Cabrera, Ricardo $u Research Group in Telematics Engineering, Telematics Department, Universidad del Cauca, Popayán 190002, Colombia $1 https://orcid.org/0000000275521383
700    1_
$a Restrepo, David $u Research Group in Telematics Engineering, Telematics Department, Universidad del Cauca, Popayán 190002, Colombia $1 https://orcid.org/0000000237891957
700    1_
$a López, Diego M $u Research Group in Telematics Engineering, Telematics Department, Universidad del Cauca, Popayán 190002, Colombia $1 https://orcid.org/0000000194254375
700    1_
$a Blobel, Bernd $u Medical Faculty, University of Regensburg, 93053 Regensburg, Germany $u eHealth Competence Center Bavaria, Deggendorf Institute of Technology, 94469 Deggendorf, Germany $u First Medical Faculty, Charles University Prague, 12800 Prague, Czech Republic
773    0_
$w MED00203320 $t Journal of personalized medicine $x 2075-4426 $g Roč. 13, č. 7 (2023)
856    41
$u https://pubmed.ncbi.nlm.nih.gov/37511754 $y Pubmed
910    __
$a ABA008 $b sig $c sign $y - $z 0
990    __
$a 20231010 $b ABA008
991    __
$a 20231020093617 $b ABA008
999    __
$a ok $b bmc $g 1997236 $s 1202076
BAS    __
$a 3
BAS    __
$a PreBMC-PubMed-not-MEDLINE
BMC    __
$a 2023 $b 13 $c 7 $e 20230715 $i 2075-4426 $m Journal of personalized medicine $n J. pers. med. $x MED00203320
LZP    __
$a Pubmed-20231010

Najít záznam

Citační ukazatele

Nahrávání dat ...

    Možnosti archivace