100 statistical tests
Kanji, Gopal K.
1993
Literature review of machine-learning algorithms for pressure ulcer prevention: challenges and opportunities
Type
article
Creator
Publisher
Identifier
Ribeiro, Fernando, Filipe Fidalgo, Arlindo Silva, José Metrôlho, Osvaldo Santos, and Rogério Dionisio. 2021. “Literature Review of Machine-Learning Algorithms for Pressure Ulcer Prevention: Challenges and Opportunities.” Informatics 8(4).
2227-9709
Title
Literature review of machine-learning algorithms for pressure ulcer prevention: challenges and opportunities
Subject
Artificial intelligence
Burnout
Clinical decision support
Literature review
Machine learning
Pressure injury prevention
Pressure ulcers prevention
Quality of healthcare
Burnout
Clinical decision support
Literature review
Machine learning
Pressure injury prevention
Pressure ulcers prevention
Quality of healthcare
Relation
CENTRO-01-0247-FEDER-070107
Date
2021-12-03T16:56:45Z
2021-12-03T16:56:45Z
2021
2021-12-03T16:56:45Z
2021
Description
Pressure ulcers are associated with significant morbidity, resulting in a decreased quality of life for the patient, and contributing to healthcare professional burnout, as well as an increase of health service costs. Their prompt diagnosis and treatment are important, and several studies have proposed solutions to help healthcare professionals in this process. This work analyzes studies that use machine-learning algorithms for risk assessment and management of preventive treatments for pressure ulcers. More specifically, it focuses on the use of machine-learning algorithms that combine information from intrinsic and extrinsic pressure-ulcer predisposing factors to produce recommendations/alerts to healthcare professionals. The review includes articles published from January 2010 to June 2021. From 60 records screened, seven articles were analyzed in full-text form. The results show that most of the proposed algorithms do not use information related to both intrinsic and extrinsic predisposing factors and that many of the approaches separately address one of the following three components: data acquisition; data analysis, and production of complementary support to well-informed clinical decision-making. Additionally, only a few studies describe in detail the outputs of the algorithm, such as alerts and recommendations, without assessing their impacts on healthcare professionals’ activities
info:eu-repo/semantics/publishedVersion
info:eu-repo/semantics/publishedVersion
Access restrictions
openAccess
http://creativecommons.org/licenses/by/4.0/
http://creativecommons.org/licenses/by/4.0/
Language
eng
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