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Revista Colombiana de Cirugía
Print version ISSN 2011-7582On-line version ISSN 2619-6107
Abstract
DOMINGUEZ, Saturnino and ANDRADE-ALEGRE, Rafael. Artificial neural network to predict risk factors associated with postoperative complications secondary to pneumothorax treatment. rev. colomb. cir. [online]. 2023, vol.38, n.3, pp.439-446. Epub Mar 03, 2023. ISSN 2011-7582. https://doi.org/10.30944/20117582.2225.
Introduction.
Due to the absence of statistically significant predictive models focused on postoperative complications in the surgical management of pneumothorax, we developed a model using neural networks that identify the independent variables and their importance in reducing the incidence of postoperative complications.
Methods.
A retrospective single-center study was carried out, where 106 patients who required surgical management of pneumothorax were included. All patients were operated by the same surgeon. An artificial neural network was developed to manage data with limited samples. The data is optimized and each algorithm is evaluated independently and through cross-validation to obtain the lowest possible error and the highest precision with the shortest response time.
Results.
The most important variables according to their weight in the decision system of the neural network (AUC 0.991) were the approach via video-assisted thoracoscopy (OR 1.131), use of pleurodesis with powder talcum (OR 0.994) and use of autosutures (OR 0.792, p<0.05).
Discussion.
In our study, the main independent predictors associated with a higher risk of complications are pneumothorax of secondary etiology and recurrent pneumothorax. Additionally, we confirm that the variables associated with a reduction in the risk of postoperative complications have statistical significance.
Conclusion.
We identify video-assisted thoracoscopy, use of autosuture and powder talcum pleurodesis as possible variables associated with a lower risk of complications and raise the possibility of developing a tool that facilitates and supports decision-making, for which external validation in prospective studies is necessary.
Keywords : artificial intelligence; computer neural networks; pneumothorax; thoracoscopy; powder talcum; postoperative complications.