Application of machine learning algorithms to predict postoperative surgical site infections and surgical site occurrences following inguinal hernia surgery

Purpose This study aimed to develop, validate, and evaluate machine learning (ML) algorithms for predicting Surgical site infections (SSI) and surgical site occurrences (SSO) after elective open inguinal hernia surgery. Methods A cohort of 491 patients who underwent elective open inguinal hernia sur...

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Veröffentlicht in:Hernia : the journal of hernias and abdominal wall surgery 2024-12, Vol.28 (6), p.2343-2354
Hauptverfasser: Wu, Qian, Shi, Hekai, Song, Heng, Peng, Xiaoyu, Yang, Jianjun, Gu, Yan
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Sprache:eng
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Zusammenfassung:Purpose This study aimed to develop, validate, and evaluate machine learning (ML) algorithms for predicting Surgical site infections (SSI) and surgical site occurrences (SSO) after elective open inguinal hernia surgery. Methods A cohort of 491 patients who underwent elective open inguinal hernia surgery at Fudan University Affiliated Huadong Hospital between December 2019 and December 2020 was enrolled. To create a strong prediction model, we employed five ML methods: generalized linear model, random forest (RF), support vector machines, neural network, and gradient boosting machine. Based on the best performing model, we devised online calculators to facilitate clinicians’ access to a linear predictor for patients. The receiver operating characteristic curve was utilized to evaluate the model’s discriminatory capability and predictive accuracy. Results The incidence rates of SSI and SSO were 4.68% and 13.44%, respectively. Four variables (diabetes, recurrence, antibiotic prophylaxis, and duration of surgery) were identified for SSI prediction, while four variables (diabetes, size of hernias, albumin levels, and antibiotic prophylaxis) were included for SSO prediction. In the test set, the RF model showed the best predictive ability (SSI: area under the curve (AUC) = 0.849, sensitivity = 0.769, specificity = 0.769, and accuracy = 0.769; SSO: AUC = 0.740, sensitivity = 0.513, specificity = 0.821, and accuracy = 0.667). Online calculators have been developed to assess patients’ risk of SSI ( https://wuqian17.shinyapps.io/predictionSSI/ ) and SSO ( https://wuqian17.shinyapps.io/predictionSSO/ ) after surgery. Conclusions This study developed a prediction model for SSI/SSO using ML methods. It holds the potential to facilitate the selection of appropriate treatment options following elective open inguinal hernia surgery.
ISSN:1248-9204
1265-4906
1248-9204
DOI:10.1007/s10029-024-03167-w