Machine Learning Predictive Model to Guide Treatment Allocation for Recurrent Hepatocellular Carcinoma After Surgery

Author:

Famularo Simone12,Donadon Matteo12,Cipriani Federica3,Fazio Federico4,Ardito Francesco5,Iaria Maurizio6,Perri Pasquale7,Conci Simone8,Dominioni Tommaso9,Lai Quirino10,La Barba Giuliano11,Patauner Stefan12,Molfino Sarah13,Germani Paola14,Zimmitti Giuseppe15,Pinotti Enrico16,Zanello Matteo17,Fumagalli Luca18,Ferrari Cecilia19,Romano Maurizio2021,Delvecchio Antonella22,Valsecchi Maria Grazia23,Antonucci Adelmo24,Piscaglia Fabio25,Farinati Fabio26,Kawaguchi Yoshikuni27,Hasegawa Kiyoshi27,Memeo Riccardo22,Zanus Giacomo2021,Griseri Guido19,Chiarelli Marco18,Jovine Elio17,Zago Mauro1618,Abu Hilal Moh’d15,Tarchi Paola14,Baiocchi Gian Luca13,Frena Antonio12,Ercolani Giorgio11,Rossi Massimo10,Maestri Marcello9,Ruzzenente Andrea8,Grazi Gian Luca7,Dalla Valle Raffaele6,Romano Fabrizio28,Giuliante Felice5,Ferrero Alessandro4,Aldrighetti Luca3,Bernasconi Davide P.23,Torzilli Guido12,COSTA GUIDO29,MILANA FLAVIO29,RATTI FRANCESCA29,RUSSOLILLO NADIA29,RAZIONALE FRANCESCO29,GIANI ALESSANDRO29,CARISSIMI FRANCESCA29,GIUFFRIDA MARIO29,DE PEPPO VALERIO29,MARCHITELLI IVAN29,DE STEFANO FRANCESCA29,LARGHI LAURERIO ZOE29,CUCCHETTI ALESSANDRO29,NOTTE FRANCESCA29,COSOLA DAVIDE29,CORLEONE PIO29,MANZONI ALBERTO29,MONTUORI MAURO29,FRANCESCHI ANGELO29,SALVADOR LUCA29,CONTICCHIO MARIA29,BRAGA MARCO29,MORI SILVIA29,

Affiliation:

1. Department of Biomedical Sciences, Humanitas University, Pieve Emanuele, Milan, Italy

2. Department of Hepatobiliary and General Surgery, IRCCS Humanitas Research Hospital, Rozzano, Milan, Italy

3. Hepatobiliary Surgery Division, “Vita e Salute” University, Ospedale San Raffaele IRCCS, Milano, Italy

4. Department of General and Oncological Surgery, Mauriziano Hospital “Umberto I”, Turin, Italy

5. Hepatobiliary Surgery Unit, Fondazione Policlinico Universitario A. Gemelli, IRCCS, Catholic University of the Sacred Heart, Rome, Italy

6. Department of Medicine and Surgery, University of Parma, Parma, Italy

7. Division of Hepatobiliarypancreatic Unit, IRCCS - Regina Elena National Cancer Institute, Rome, Italy

8. Division of General and Hepatobiliary Surgery, Department of Surgical Sciences, Dentistry, Gynecology and Pediatrics, University of Verona, Verona, Italy

9. Unit of General Surgery 1, University of Pavia and Foundation IRCCS Policlinico San Matteo, Pavia, Italy

10. General Surgery and Organ Transplantation Unit, Sapienza University of Rome, Umberto I Polyclinic of Rome, Rome, Italy

11. General and Oncologic Surgery, Morgagni-Pierantoni Hospital, Department of Medical and Surgical Sciences - University of Bologna, Forlì, Italy

12. Department of General and Pediatric Surgery, Bolzano Central Hospital, Bolzano, Italy

13. Department of Clinical and Experimental Sciences, University of Brescia, Brescia, Italy

14. Division of General Surgery, Department of Medical and Surgical Sciences, ASUGI, Trieste, Italy

15. Department of General Surgery, Poliambulanza Foundation Hospital, Brescia, Italy

16. Department of Surgery, Ponte San Pietro Hospital, Bergamo, Italy

17. Alma Mater Studiorum, University of Bologna, AOU Sant'Orsola Malpighi, IRCCS at Maggiore Hospital, Bologna, Italy

18. Department of Emergency and Robotic Surgery, ASST Lecco, Lecco, Italy

19. HPB Surgical Unit, San Paolo Hospital, Savona, Italy

20. Department of Surgical, Oncological and Gastroenterological Science (DISCOG), University of Padua, Padua, Italy

21. Hepatobiliary and Pancreatic Surgery Unit-Treviso Hospital, Treviso, Italy

22. Department of Hepato-Pancreatic-Biliary Surgery, Miulli Hospital, Bari, Italy

23. Bicocca Bioinformatics Biostatistics and Bioimaging Centre-B4, School of Medicine and Surgery, University of Milan - Bicocca, Monza, Italy

24. Department of Surgery, Monza Policlinic, Monza, Italy

25. Division of Internal Medicine, Hepatobiliary and Immunoallergic Diseases, IRCCS Azienda Ospedaliero-Universitaria di Bologna, Bologna, Italy

26. Gastroenterology Unit, Department of Surgery, Oncology and Gastroenterology, University of Padova, Padova, Italy

27. Hepato-Biliary-Pancreatic Surgery Division Department of Surgery, Graduate School of Medicine, University of Tokyo, Tokyo, Japan

28. School of Medicine and Surgery, University of Milano-Bicocca, San Gerardo Hospital, Monza, Italy

29. for the HE.RC.O.LE.S. Group

Abstract

ImportanceClear indications on how to select retreatments for recurrent hepatocellular carcinoma (HCC) are still lacking.ObjectiveTo create a machine learning predictive model of survival after HCC recurrence to allocate patients to their best potential treatment.Design, Setting, and ParticipantsReal-life data were obtained from an Italian registry of hepatocellular carcinoma between January 2008 and December 2019 after a median (IQR) follow-up of 27 (12-51) months. External validation was made on data derived by another Italian cohort and a Japanese cohort. Patients who experienced a recurrent HCC after a first surgical approach were included. Patients were profiled, and factors predicting survival after recurrence under different treatments that acted also as treatment effect modifiers were assessed. The model was then fitted individually to identify the best potential treatment. Analysis took place between January and April 2021.ExposuresPatients were enrolled if treated by reoperative hepatectomy or thermoablation, chemoembolization, or sorafenib.Main Outcomes and MeasuresSurvival after recurrence was the end point.ResultsA total of 701 patients with recurrent HCC were enrolled (mean [SD] age, 71 [9] years; 151 [21.5%] female). Of those, 293 patients (41.8%) received reoperative hepatectomy or thermoablation, 188 (26.8%) received sorafenib, and 220 (31.4%) received chemoembolization. Treatment, age, cirrhosis, number, size, and lobar localization of the recurrent nodules, extrahepatic spread, and time to recurrence were all treatment effect modifiers and survival after recurrence predictors. The area under the receiver operating characteristic curve of the predictive model was 78.5% (95% CI, 71.7%-85.3%) at 5 years after recurrence. According to the model, 611 patients (87.2%) would have benefited from reoperative hepatectomy or thermoablation, 37 (5.2%) from sorafenib, and 53 (7.6%) from chemoembolization in terms of potential survival after recurrence. Compared with patients for which the best potential treatment was reoperative hepatectomy or thermoablation, sorafenib and chemoembolization would be the best potential treatment for older patients (median [IQR] age, 78.5 [75.2-83.4] years, 77.02 [73.89-80.46] years, and 71.59 [64.76-76.06] years for sorafenib, chemoembolization, and reoperative hepatectomy or thermoablation, respectively), with a lower median (IQR) number of multiple recurrent nodules (1.00 [1.00-2.00] for sorafenib, 1.00 [1.00-2.00] for chemoembolization, and 2.00 [1.00-3.00] for reoperative hepatectomy or thermoablation). Extrahepatic recurrence was observed in 43.2% (n = 16) for sorafenib as the best potential treatment vs 14.6% (n = 89) for reoperative hepatectomy or thermoablation as the best potential treatment and 0% for chemoembolization as the best potential treatment. Those profiles were used to constitute a patient-tailored algorithm for the best potential treatment allocation.Conclusions and RelevanceThe herein presented algorithm should help in allocating patients with recurrent HCC to the best potential treatment according to their specific characteristics in a treatment hierarchy fashion.

Publisher

American Medical Association (AMA)

Subject

Surgery

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