Model to predict major complications following liver resection for HCC in patients with metabolic syndrome

Author:

Berardi Giammauro12ORCID,Ratti Francesca3ORCID,Sposito Carlo4ORCID,Nebbia Martina5,D’Souza Daniel M.6,Pascual Franco7,Dogeas Epameinondas8,Tohme Samer8,D’Amico Francesco E.9ORCID,Alessandris Remo9ORCID,Simonelli Ilaria10ORCID,Del Basso Celeste2ORCID,Russolillo Nadia11,Moro Amika12,Fiorentini Guido313ORCID,Serenari Matteo14ORCID,Rotellar Fernando15ORCID,Zimmitti Giuseppe16,Famularo Simone17,Ivanics Tommy18ORCID,Hoffman Daniel19ORCID,Onkendi Edwin20,Essaji Yasmin21,Lopez Ben Santiago22ORCID,Caula Celia22,Rompianesi Gianluca23,Chopra Asmita24ORCID,Abu Hilal Mohammed16,Torzilli Guido17ORCID,Sapisochin Gonzalo18,Corvera Carlos19,Alseidi Adnan19,Helton Scott21,Troisi Roberto I.23,Simo Kerri24,Conrad Claudius25,Cescon Matteo14,Cleary Sean13,Kwon Choon H.D.12,Ferrero Alessandro11,Ettorre Giuseppe M.2ORCID,Cillo Umberto9,Geller David8,Cherqui Daniel7,Serrano Pablo E.6ORCID,Ferrone Cristina5,Mazzaferro Vincenzo4,Aldrighetti Luca3ORCID,Kingham T. Peter1

Affiliation:

1. Department of Surgery, Memorial Sloan Kettering Cancer Center, New York, New York, USA

2. Department of Surgery, San Camillo Forlanini Hospital, Rome, Italy

3. Hepatobiliary Surgery Division, San Raffaele Hospital, Milan, Italy

4. Department of Oncology and Hemato-Oncology, University of Milan and Department of Surgery, HPB Surgery and Liver Transplantation, Istituto Nazionale Tumori IRCCS, Milan, Italy

5. Department of Surgery, Massachusetts General Hospital, Boston, Massachusetts, USA

6. Department of Surgery, McMaster University, Hamilton, Canada

7. Department of Surgery, Paul Brousse Hospital, Villejuif, Paris, France

8. Department of Surgery, University of Pittsburgh Medical Center, Pittsburgh, Pennsylvania, USA

9. Department of Surgery, University of Padua, Padua, Italy

10. Laltrastatistica Consultancy and Training, Biostatistics Department, Rome, Italy

11. Department of Surgery, Mauriziano Hospital, Turin, Italy

12. Department of Surgery, Cleveland Clinic, Cleveland, Ohio, USA

13. Department of Surgery, Mayo Clinic, Rochester, New York State, USA

14. Hepato-biliary Surgery and Transplant Unit, IRCCS Sant’Orsola Hospital, University of Bologna, Bologna, Italy and Department of Medical and Surgical Sciences, Alma Mater Studiorum, University of Bologna, Bologna, Italy

15. HPB and Liver Transplant Unit, Clinica Universidad de Navarra, University of Navarra. Institute of Health Research of Navarra (IdisNA), Pamplona, Spain

16. Department of Surgery, Poliambulanza Foundation Hospital, Brescia, Italy

17. Hepatobiliary Surgery Division, Humanitas University and Research Hospital- IRCCS, Rozzano - Milano, Italy

18. Abdominal Transplant and HPB Surgical Oncology, Division of General Surgery, Toronto General Hospital

19. Department of Surgery, University of California, San Francisco, California, USA

20. Department of Surgery, Texas Tech University Health Sciences Center, Lubbock, Texas, USA

21. Department of Surgery, Virginia Mason Hospital and Seattle Medical Center, Seattle, Washington, USA

22. Department of Surgery, Hospital Universitari Dr Josep Trueta de Girona, Girona, Spain

23. Department of clinical medicine and surgery, division of HPB, minimally invasive and robotic surgery, transplantation service, Università Federico II, Naples, Italy.

24. Department of Surgery, Promedica, Toledo, Ohio, USA

25. Department of Surgery, Saint Elizabeth Medical Center, Boston, Massachusetts, USA

Abstract

Background: Metabolic syndrome (MS) is rapidly growing as risk factor for HCC. Liver resection for HCC in patients with MS is associated with increased postoperative risks. There are no data on factors associated with postoperative complications. Aims: The aim was to identify risk factors and develop and validate a model for postoperative major morbidity after liver resection for HCC in patients with MS, using a large multicentric Western cohort. Materials and Methods: The univariable logistic regression analysis was applied to select predictive factors for 90 days major morbidity. The model was built on the multivariable regression and presented as a nomogram. Performance was evaluated by internal validation through the bootstrap method. The predictive discrimination was assessed through the concordance index. Results: A total of 1087 patients were gathered from 24 centers between 2001 and 2021. Four hundred and eighty-four patients (45.2%) were obese. Most liver resections were performed using an open approach (59.1%), and 743 (68.3%) underwent minor hepatectomies. Three hundred and seventy-six patients (34.6%) developed postoperative complications, with 13.8% major morbidity and 2.9% mortality rates. Seven hundred and thirteen patients had complete data and were included in the prediction model. The model identified obesity, diabetes, ischemic heart disease, portal hypertension, open approach, major hepatectomy, and changes in the nontumoral parenchyma as risk factors for major morbidity. The model demonstrated an AUC of 72.8% (95% CI: 67.2%–78.2%) (https://childb.shinyapps.io/NomogramMajorMorbidity90days/). Conclusions: Patients undergoing liver resection for HCC and MS are at high risk of postoperative major complications and death. Careful patient selection, considering baseline characteristics, liver function, and type of surgery, is key to achieving optimal outcomes.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Hepatology

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