PREDICTION OF CARDIOVASCULAR RISK IN ABDOMINAL SURGERY: RESULTS OF AN OBSERVATIONAL MULTICENTER STUDY

Author:

Zabolotskikh Igor B.1ORCID,Veyler Roman V.2ORCID,Trembach Nikita V.2ORCID,Magomedov Marat A.3ORCID,Popov Alexander S.4ORCID,Malyshev Yuri P.5ORCID,Dmitriev Alexey A.5ORCID,Grigoryev Evgeny V.6ORCID,Fisher Vasily V.7ORCID,Khoronenko Victoria E.8ORCID,Kokhno Vladimir N.9ORCID,Spasova Arina P.10ORCID,Davydova Veronika R.11ORCID,Gritsan Alexey I.12ORCID,Lebedinskii Konstantin M.13ORCID,Dunts Pavel V.14ORCID,Bayalieva Ainagul Z.15ORCID,Ovezov Alexey M.16ORCID,Martynov Dmitry V.17ORCID,Kirov Mikhail Yu.18ORCID,Ershov Vadim I.19ORCID,Murashko Svetlana S.20ORCID,Kuzovlev Artem N.21ORCID,Fedunets Dmitriy E.5ORCID

Affiliation:

1. Federal State Budgetary Educational Institution of Higher Education “Kuban State Medical University” of the Ministry of Health of the Russian Federation; State Budgetary Healthcare Institution “Regional Clinical Hospital No. 2” of the Ministry of Health of the Krasnodar Territory; .A. Negovsky Research Institute of General Intensive Care, Federal Scientific and Clinical Center of Intensive Care and Rehabilitation

2. Federal State Budgetary Educational Institution of Higher Education “Kuban State Medical University” of the Ministry of Health of the Russian Federation; State Budgetary Healthcare Institution “Regional Clinical Hospital No. 2” of the Ministry of Health of the Krasnodar Territory

3. State Budgetary Healthcare Institution of the Moscow City “City Clinical Hospital No. 1 named after N.I. Pirogov” of the Department of Health of the Moscow City; Federal State Autonomous Educational Institution of Higher Education “Russian National Research Medical University named after N.I. Pirogov” of the Ministry of Health of the Russian Federation

4. Federal State Budgetary Educational Institution of Higher Education “Volgograd State Medical University” of the Ministry of Health of the Russian Federation

5. Federal State Budgetary Educational Institution of Higher Education “Kuban State Medical University” of the Ministry of Health of the Russian Federation

6. Federal State Budgetary Institution “Research Institute for Complex Issues of Cardiovascular Diseases”

7. Stavropol Territory State Budgetary Healthcare Institution “Stavropol Regional Clinical Hospital” of the Ministry of Health of the Stavropol Territory; Federal State Budgetary Educational Institution of Higher Education “Stavropol State Medical University” of the Ministry of Health of the Russian Federation

8. P.A. Hertsen Moscow Oncology Research Institute - branch of the Federal State Budgetary Institution “National Medical Research Radiological Centre” of the Ministry of Health of the Russian Federation; Federal State Autonomous Educational Institution of Higher Education “Patrice Lumumba Peoples' Friendship University of Russia”

9. Federal State Budgetary Educational Institution of Higher Education “Novosibirsk State Medical University” of the Ministry of Health of the Russian Federation

10. Federal State Budgetary Educational Institution of Higher Education “Petrozavodsk State University”

11. Federal State Budgetary Educational Institution of Higher Education “Kazan State Medical University” of the Ministry of Health of the Russian Federation

12. Regional State Budgetary Healthcare Institution “Regional Clinical Hospital”; Federal State Budgetary Educational Institution of Higher Education “Krasnoyarsk State Medical University named after Professor V.F. Voino-Yasenetsky” of the Ministry of Health of the Russian Federation

13. V.A. Negovsky Research Institute of General Intensive Care, Federal Scientific and Clinical Center of Intensive Care and Rehabilitation; Federal State Budgetary Educational Institution of Higher Education “I.I. Mechnikov Northwestern State Medical University” of the Ministry of Health of the Russian Federation

14. State Budgetary Healthcare Institution “Regional Clinical Hospital No. 2”

15. State Autonomous Healthcare Institution “Republican Clinical Hospital” of the Ministry of Health of the Republic of Tatarstan

16. State Budgetary Healthcare Institution of the Moscow Region “Moscow Regional Research Clinical Institute named after M.F. Vladimirsky”

17. Federal State Budgetary Educational Institution of Higher Education “Rostov State Medical University” of the Ministry of Health of the Russian Federation

18. Federal State Budgetary Educational Institution of Higher Education “Northern State Medical University” of the Ministry of Health of the Russian Federation

19. Federal State Budgetary Educational Institution of Higher Education “Orenburg State Medical University” of the Ministry of Health of the Russian Federation

20. Federal State Budgetary Institution “Joint Hospital with Polyclinic” of the Office of the President of the Russian Federation; Federal State Budgetary Institution of Additional Professional Education “Central State Medical Academy” of the Office of the President of the Russian Federation

21. .A. Negovsky Research Institute of General Intensive Care, Federal Scientific and Clinical Center of Intensive Care and Rehabilitation

Abstract

HighlightsThe developed prediction model is a simple and accurate method for assessing the postoperative risk of cardiovascular complications in a large population of patients undergoing non-cardiac surgery. Its widespread use will optimize perioperative management tactics and improve surgical results. Aim. To develop a model for predicting cardiovascular risk in patients undergoing abdominal surgery and compare its accuracy with foreign analogs validated on a domestic cohort of patients.Methods. The multicenter prospective study included 8 241 patients over 18 years of age undergoing elective abdominal surgery. The following postoperative complications were assessed: acute myocardial infarction, stroke, cardiac arrest, cardiogenic pulmonary edema, pulmonary embolism, and 30-day mortality. First of all, we compared baseline characteristics of patients with and without complications, and factors, associated with surgery and anesthesia. Next, we performed a logistic regression analysis to assess the contribution of factors to the development of postoperative cardiovascular complications. Following that, we developed a model for predicting postoperative cardiac risk based on the data of multivariate logistic regression analysis. Finally, we compared the obtained model with other prediction models found in the literature.Results. Out of 8241 patients, 53 patients (0.64%) presented with cardiovascular complications (62 cases): cardiac arrest in 39 patients (0.47%), cardiogenic pulmonary edema in 4 patients (0.049%), stroke in 3 patients (0.036%), pulmonary embolism in 9 patients (0.11%), and acute myocardial infarction in 7 patients (0.084%). 36 patients (0.43%) had lethal outcome. Retrospectively, the obtained model assigned 2251 patients to the high-risk group for developing cardiovascular complications, the incidence of cardiovascular complications in the group was 2.1%. The low-risk group consisted of 5 990 patients; the incidence of cardiovascular complications in the group was 0.13%.Conclusion. Eight independent variables associated with postoperative cardiovascular complications were identified: high and moderate surgical trauma, smoking, statin use, Stange test less than 40 seconds, American Society of Anesthesiologists functional class 3, intraoperative need for vasopressors and transfusions. The cardiovascular risk prediction model has good predictive power (AUROC = 0.880).

Publisher

NII KPSSZ

Reference41 articles.

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