Facets (new session)
Description
Metadata
Settings
owl:sameAs
Inference Rule:
b3s
b3sifp
dbprdf-label
facets
http://dbpedia.org/resource/inference/rules/dbpedia#
http://dbpedia.org/resource/inference/rules/opencyc#
http://dbpedia.org/resource/inference/rules/umbel#
http://dbpedia.org/resource/inference/rules/yago#
http://dbpedia.org/schema/property_rules#
http://www.ontologyportal.org/inference/rules/SUMO#
http://www.ontologyportal.org/inference/rules/WordNet#
http://www.w3.org/2002/07/owl#
ldp
oplweb
skos-trans
virtrdf-label
None
About:
Predicting COVID-19 infection risk and related risk drivers in nursing homes: A machine learning approach
Goto
Sponge
NotDistinct
Permalink
An Entity of Type :
schema:ScholarlyArticle
, within Data Space :
wasabi.inria.fr
associated with source
document(s)
Type:
Academic Article
research paper
schema:ScholarlyArticle
New Facet based on Instances of this Class
Attributes
Values
type
Academic Article
research paper
schema:ScholarlyArticle
isDefinedBy
Covid-on-the-Web dataset
has title
Predicting COVID-19 infection risk and related risk drivers in nursing homes: A machine learning approach
Creator
Lee, Jason
Levi, Retsef
Scott, Karen
Lujan,
Lujan, Alida
Mban, Ghali
Mpa, Alida
Muller, James
Sun, Christopher
Zerhouni,
Zerhouni, Ghali
Zuccarelli, Eugenio
Source
Elsevier; PMC
abstract
Objective Inform COVID-19 infection prevention measures by identifying and assessing risk and possible vectors of infection in nursing homes (NHs) using a machine-learning approach. Design This retrospective cohort study utilized a gradient boosting algorithm to evaluate risk of COVID-19 infection (i.e., presence of at least one confirmed COVID-19 resident) in NHs. Setting and participants: The model was trained on outcomes from 1,146 NHs in Massachusetts, Georgia, and New Jersey, reporting COVID-19 case data on April 20th, 2020. Risk indices generated from the model using data from May 4th were prospectively validated against outcomes reported on May 11th from 1,021 NHs in California. Methods Model features, pertaining to facility and community characteristics, were obtained from a self-constructed dataset based on multiple public and private sources. The model was assessed via out-of-sample area under the receiver operating characteristic curve (AUC), sensitivity, and specificity in the training (via 10-fold cross-validation) and validation datasets. Results The model’s mean AUC, sensitivity, and specificity over 10-fold cross-validation were 0.729 (95% CI: 0.690-0.767), 0.670 (95% CI: 0.477-0.862), and 0.611 (95% CI: 0.412-0.809), respectively. Prospective out-of-sample validation yielded similar performance measures (AUC: 0.721; sensitivity: 0.622; specificity: 0.713). The strongest predictors of COVID-19 infection were identified as the NH’s county’s infection rate and the number of separate units in the NH; other predictors included the county’s population density, historical Centers of Medicare and Medicaid Services cited health deficiencies, and the NH’s resident density (in persons per 1,000 square feet). Additionally, the NH’s historical percentage of non-Hispanic White residents was identified as a protective factor. Conclusions and Implications A machine-learning model can help quantify and predict NH infection risk. The identified risk factors support the early identification and management of presymptomatic and asymptomatic individuals (e.g., staff) entering the NH from the surrounding community and the development of financially sustainable staff testing initiatives in preventing COVID-19 infection.
has issue date
2020-08-27
(
xsd:dateTime
)
bibo:doi
10.1016/j.jamda.2020.08.030
has license
els-covid
sha1sum (hex)
c840efe73ef9cec4687dc0ee885c0bde051cc798
schema:url
https://doi.org/10.1016/j.jamda.2020.08.030
resource representing a document's title
Predicting COVID-19 infection risk and related risk drivers in nursing homes: A machine learning approach
has PubMed Central identifier
PMC7451194
schema:publication
J Am Med Dir Assoc
resource representing a document's body
covid:c840efe73ef9cec4687dc0ee885c0bde051cc798#body_text
is
schema:about
of
named entity 'Objective'
named entity 'identifying'
named entity 'groups'
named entity 'model'
named entity 'Acknowledgements'
named entity 'machine-learning'
named entity 'field'
named entity 'excluding'
named entity 'identified'
named entity 'Summary'
named entity 'infection'
named entity 'nursing homes'
named entity 'Journal'
named entity 'TECHNOLOGY'
named entity 'SPONSOR'
named entity 'NON-HISPANIC'
named entity 'HOUSING'
named entity 'SENIOR'
named entity 'OBJECTIVE'
named entity 'DISCUSSIONS'
named entity 'MASSACHUSETTS'
named entity 'MULTIPLE'
named entity 'PROVIDING'
named entity 'WORD'
named entity 'PREVENTION MEASURES'
named entity 'PREDICTIVE'
named entity 'VECTORS'
named entity 'THANK'
named entity 'figures'
named entity 'compensated'
named entity 'Lily'
named entity 'NHs'
named entity 'Hispanic'
named entity 'Massachusetts Institute of Technology'
named entity 'Simon Johnson'
named entity 'Massachusetts'
named entity 'infection'
named entity 'infection'
named entity 'NHs'
named entity 'Massachusetts Institute of Technology'
named entity 'NHs'
named entity 'machine learning'
named entity 'COVID-19 infection'
named entity 'machine learning'
named entity 'nursing homes'
named entity 'algorithm'
named entity 'true negative rate'
named entity 'gradient boosting'
named entity 'true positive'
named entity 'NHs'
named entity 'variance inflation factor'
named entity 'infection'
named entity 'Mann-Whitney U'
named entity 'cross-validation'
named entity 'binary variables'
named entity 'COVID-19'
named entity 'Chi-squared test'
named entity 'COVID-19'
named entity 'training dataset'
named entity 'infection'
named entity 'L1 regularization'
named entity 'hyper-parameter'
named entity 'infection'
named entity 'Senior Care'
named entity 'machine-learning approach'
covid:arg/c840efe73ef9cec4687dc0ee885c0bde051cc798
named entity 'Simon'
named entity 'processing'
named entity 'inspections'
named entity 'nursing homes'
named entity 'WHITE'
named entity 'PERCENT'
◂◂ First
◂ Prev
Next ▸
Last ▸▸
Page 1 of 4
Go
Faceted Search & Find service v1.13.91 as of Mar 24 2020
Alternative Linked Data Documents:
Sponger
|
ODE
Content Formats:
RDF
ODATA
Microdata
About
OpenLink Virtuoso
version 07.20.3229 as of Jul 10 2020, on Linux (x86_64-pc-linux-gnu), Single-Server Edition (94 GB total memory)
Data on this page belongs to its respective rights holders.
Virtuoso Faceted Browser Copyright © 2009-2024 OpenLink Software