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A probabilistic model for the prediction of intra-abdominal infection after colorectal surgery.

Authors :
Cagigas Fernández, Carmen
Palazuelos, Camilo
Cristobal Poch, Lidia
Gomez Ruiz, Marcos
Source :
International Journal of Colorectal Disease. Nov2021, Vol. 36 Issue 11, p2481-2488. 8p.
Publication Year :
2021

Abstract

Aim: Predicting intra-abdominal infections (IAI) after colorectal surgery by means of clinical signs is challenging. A naïve logistic regression modeling approach has some limitations, for which reason we study two potential alternatives: the use of Bayesian networks, and that of logistic regression model. Methods: Data from patients that had undergone colorectal procedures between 2010 and 2017 were used. The dataset was split into two subsets: (i) that for training the models and (ii) that for testing them. The predictive ability of the models proposed was tested (i) by comparing the ROC curves from days 1 and 3 with all the subjects in the test set and (ii) by studying the evolution of the abovementioned predictive ability from day 1 to day 5. Results: In day 3, the predictive ability of the logistic regression model achieved an AUC of 0.812, 95% CI = (0.746, 0.877), whereas that of the Bayesian network was 0.768, 95% CI = (0.695, 0.840), with a p-value for their comparison of 0.097. The ability of the Bayesian network model to predict IAI does present significant difference in predictive ability from days 3 to 5: AUC(Day 3) = 0.761, 95% CI = (0.680, 0.841) and AUC(Day 5) = 0.837, 95% CI = (0.769, 0.904), with a p-value for their comparison of 0.006. Conclusions: Whereas at postoperative day 3, a logistic regression model with imputed data should be used to predict IAI; at day 5, when the predictive ability is almost identical, the Bayesian network model should be used. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01791958
Volume :
36
Issue :
11
Database :
Academic Search Index
Journal :
International Journal of Colorectal Disease
Publication Type :
Academic Journal
Accession number :
152948663
Full Text :
https://doi.org/10.1007/s00384-021-03955-1