2012
DOI: 10.1186/1472-6947-12-19
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Mining geriatric assessment data for in-patient fall prediction models and high-risk subgroups

Abstract: BackgroundHospital in-patient falls constitute a prominent problem in terms of costs and consequences. Geriatric institutions are most often affected, and common screening tools cannot predict in-patient falls consistently. Our objectives are to derive comprehensible fall risk classification models from a large data set of geriatric in-patients' assessment data and to evaluate their predictive performance (aim#1), and to identify high-risk subgroups from the data (aim#2).MethodsA data set of n = 5,176 single i… Show more

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Cited by 36 publications
(33 citation statements)
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“…We identified four potential independent risk factors for the development of postanesthesia falls from the postanesthesia visit records, namely gender, age, ASA classification, and types of anesthesia techniques. Advanced age has been widely recognized as an independent risk factor for inpatient falls (Marschollek et al 2012 ; Oliver et al 2010 ). In traumatic patients, male gender is associated with high incidence of in-hospital falls (Brown et al 2013 ).…”
Section: Discussionmentioning
confidence: 99%
“…We identified four potential independent risk factors for the development of postanesthesia falls from the postanesthesia visit records, namely gender, age, ASA classification, and types of anesthesia techniques. Advanced age has been widely recognized as an independent risk factor for inpatient falls (Marschollek et al 2012 ; Oliver et al 2010 ). In traumatic patients, male gender is associated with high incidence of in-hospital falls (Brown et al 2013 ).…”
Section: Discussionmentioning
confidence: 99%
“…Using an XGB algorithm, this study proposed an automatic assessment tool to accurately detect high-risk groups. Other machine learning approaches have been attempted for identifying patients at risk of falling; however, a comparative validation with current fall risk assessment scales has never been involved 7 .…”
Section: Introductionmentioning
confidence: 99%
“…6, [31][32][33] In our study, 41% of the respondents experienced at least 1 fall during 1 year, but more than 16% of the falls resulted in fractures. Perhaps this large percentage is due to the large proportion of women in the study group (more than 80%).…”
mentioning
confidence: 43%