Frontiers in Surgery (Jan 2023)

Development of nomograms predictive of anastomotic leakage in patients before minimally invasive McKeown esophagectomy

  • Jianqing Chen,
  • Jianqing Chen,
  • Jinxin Xu,
  • Jianbing He,
  • Chao Hu,
  • Chun Yan,
  • Zhaohui Wu,
  • Zhe Li,
  • Hongbing Duan,
  • Sunkui Ke

DOI
https://doi.org/10.3389/fsurg.2022.1079821
Journal volume & issue
Vol. 9

Abstract

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PurposeThe present study aims to identify factors related to anastomotic leakage before esophagectomy and to construct a prediction model.MethodsA retrospective analysis of 285 patients who underwent minimally invasive esophagectomy (MIE). An absolute shrinkage and selection operator was applied to screen the variables, and predictive models were developed using binary logistic regression.ResultsA total of 28 variables were collected in this study. LASSO regression analysis, combined with previous literature and clinical experience, finally screened out four variables, including aortic calcification, heart disease, BMI, and FEV1. A binary logistic regression was conducted on the four predictors, and a prediction model was established. The prediction model showed good discrimination and calibration, with a C-statistic of 0.67 (95% CI, 0.593–0.743), a calibration curve fitting a 45° slope, and a Brier score of 0.179. The DCA demonstrated that the prediction nomogram was clinically useful. In the internal validation, the C-statistic still reaches 0.66, and the calibration curve has a good effect.ConclusionsWhen patients have aortic calcification, heart disease, obesity, and a low FEV1, the risk of anastomotic leakage is higher, and relevant surgical techniques can be used to prevent it. Therefore, the clinical prediction model is a practical tool to guide surgeons in the primary prevention of anastomotic leakage.

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