A Clinical Prediction Model for Surgical Site Infections in Dermatological Surgery
To adequately identify patients at risk for surgical site infection in dermatological surgery and effectively prescribe antibiotic prophylaxis, a prediction model may be helpful. Such a model was developed using data from 1,407 patients who underwent dermatological surgery without antibiotic prophyl...
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Society for Publication of Acta Dermato-Venereologica
2018-05-01
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https://www.medicaljournals.se/acta/content/html/10.2340/00015555-2945
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doaj-f908bd23ffbd4271a82fd95d62ba5ece2020-11-24T22:59:50ZengSociety for Publication of Acta Dermato-VenereologicaActa Dermato-Venereologica0001-55551651-20572018-05-0198768368810.2340/00015555-29455217A Clinical Prediction Model for Surgical Site Infections in Dermatological SurgeryXiaomeng Liu0Nicole W.J. Kelleners-SmeetsMelissa SprengersVishal HiraKlara MosterdPatty J. Nelemans Department of Dermatology, Maastricht University Medical Centre, P. Debyelaan 25, NL-6229 HX Maastricht, The Netherlands. xmxmliu@gmail.com. To adequately identify patients at risk for surgical site infection in dermatological surgery and effectively prescribe antibiotic prophylaxis, a prediction model may be helpful. Such a model was developed using data from 1,407 patients who underwent dermatological surgery without antibiotic prophylaxis. The multivariable logistic regression model included type of closure, tumour location and defect size as risk factors. Bootstrapping was used for internal validation. The overall performance of the model was good, with an area under the curve of 84.1%. The decision curve analysis showed that the model is potentially useful if one is willing to treat more than 8 patients with antibiotic prophylaxis to avoid one infection. For those who prefer more restrictive use of antibiotic prophylaxis, a default strategy of treating no patients at all with prophylaxis would be the best choice. External validation of the model is required before it can be widely applied. https://www.medicaljournals.se/acta/content/html/10.2340/00015555-2945 surgicalsiteinfectionantibioticprophylaxisdermatologicalsurgerypredictionmodel |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Xiaomeng Liu Nicole W.J. Kelleners-Smeets Melissa Sprengers Vishal Hira Klara Mosterd Patty J. Nelemans |
spellingShingle |
Xiaomeng Liu Nicole W.J. Kelleners-Smeets Melissa Sprengers Vishal Hira Klara Mosterd Patty J. Nelemans A Clinical Prediction Model for Surgical Site Infections in Dermatological Surgery Acta Dermato-Venereologica surgicalsiteinfection antibioticprophylaxis dermatologicalsurgery predictionmodel |
author_facet |
Xiaomeng Liu Nicole W.J. Kelleners-Smeets Melissa Sprengers Vishal Hira Klara Mosterd Patty J. Nelemans |
author_sort |
Xiaomeng Liu |
title |
A Clinical Prediction Model for Surgical Site Infections in Dermatological Surgery |
title_short |
A Clinical Prediction Model for Surgical Site Infections in Dermatological Surgery |
title_full |
A Clinical Prediction Model for Surgical Site Infections in Dermatological Surgery |
title_fullStr |
A Clinical Prediction Model for Surgical Site Infections in Dermatological Surgery |
title_full_unstemmed |
A Clinical Prediction Model for Surgical Site Infections in Dermatological Surgery |
title_sort |
clinical prediction model for surgical site infections in dermatological surgery |
publisher |
Society for Publication of Acta Dermato-Venereologica |
series |
Acta Dermato-Venereologica |
issn |
0001-5555 1651-2057 |
publishDate |
2018-05-01 |
description |
To adequately identify patients at risk for surgical site infection in dermatological surgery and effectively prescribe antibiotic prophylaxis, a prediction model may be helpful. Such a model was developed using data from 1,407 patients who underwent dermatological surgery without antibiotic prophylaxis. The multivariable logistic regression model included type of closure, tumour location and defect size as risk factors. Bootstrapping was used for internal validation. The overall performance of the model was good, with an area under the curve of 84.1%. The decision curve analysis showed that the model is potentially useful if one is willing to treat more than 8 patients with antibiotic prophylaxis to avoid one infection. For those who prefer more restrictive use of antibiotic prophylaxis, a default strategy of treating no patients at all with prophylaxis would be the best choice. External validation of the model is required before it can be widely applied. |
topic |
surgicalsiteinfection antibioticprophylaxis dermatologicalsurgery predictionmodel |
url |
https://www.medicaljournals.se/acta/content/html/10.2340/00015555-2945
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work_keys_str_mv |
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