Patient-Related Prognostic Factors for Anastomotic Leakage, Major Complications, and Short-Term Mortality Following Esophagectomy for Cancer: A Systematic Review and Meta-Analyses

Robert T. van Kooten, Daan M. Voeten, Ewout W. Steyerberg, Henk H. Hartgrink, Mark I. van Berge Henegouwen, Richard van Hillegersberg, Rob A. E. M. Tollenaar, Michel W. J. M. Wouters

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23 Citations (Scopus)

Abstract

Objective: The aim of this study is to identify preoperative patient-related prognostic factors for anastomotic leakage, mortality, and major complications in patients undergoing oncological esophagectomy. Background: Esophagectomy is a high-risk procedure with an incidence of major complications around 25% and short-term mortality around 4%. Methods: We systematically searched the Medline and Embase databases for studies investigating the associations between patient-related prognostic factors and anastomotic leakage, major postoperative complications (Clavien–Dindo ≥ IIIa), and/or 30-day/in-hospital mortality after esophagectomy for cancer. Results: Thirty-nine eligible studies identifying 37 prognostic factors were included. Cardiac comorbidity was associated with anastomotic leakage, major complications, and mortality. Male sex and diabetes were prognostic factors for anastomotic leakage and major complications. Additionally, American Society of Anesthesiologists (ASA) score > III and renal disease were associated with anastomotic leakage and mortality. Pulmonary comorbidity, vascular comorbidity, hypertension, and adenocarcinoma tumor histology were identified as prognostic factors for anastomotic leakage. Age > 70 years, habitual alcohol usage, and body mass index (BMI) 18.5–25 kg/m2 were associated with increased risk for mortality. Conclusions: Various patient-related prognostic factors are associated with anastomotic leakage, major postoperative complications, and postoperative mortality following oncological esophagectomy. This knowledge may define case-mix adjustment models used in benchmarking or auditing and may assist in selection of patients eligible for surgery or tailored perioperative care.
Original languageEnglish
Pages (from-to)1358-1373
Number of pages16
JournalAnnals of surgical oncology
Volume29
Issue number2
Early online date2021
DOIs
Publication statusPublished - Feb 2022

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