Validation of the TRAIN-AI for the Risk of HCC Recurrence After Liver Transplantation
NCT ID: NCT06799468
Last Updated: 2025-01-29
Study Results
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Basic Information
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COMPLETED
1769 participants
OBSERVATIONAL
2003-01-01
2018-12-31
Brief Summary
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Detailed Description
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Study aims and objective:
The primary objective of this study will be to validate our previously reported TRAIN-AI score using external datasets from other HCC centers.
Study design and methodology:
Validate the TRAIN-AI model by comparing it to other available recurrence risk algorithms on a held-out test set. TRAIN-AI will be compared with Milan Criteria, San Francisco Criteria, Up-to-Seven Criteria, TBS, Metroticket 2.0 Score, HALT-HCC Score, AFP-French model, 5-5-500 Role, NYCA Score, and TRAIN Score.
Study population Adults (≥ 18 years of age) who underwent liver transplant for HCC during the period January 2003 - December 2018.
Inclusion criteria • Patients who underwent liver transplant alone for a diagnosis of HCC. Exclusion criteria
• Patients with incidentally discovered HCC on the explanted liver (i.e. the HCC was not known before the LT)
• Retransplantations or multivisceral transplants
• Patients with tumors other than pure HCC (such as cholangiocarcinoma, mixed HCC-cholangiocarcinoma tumors, fibrolamellar HCC etc.)
Data collection/variables The data required for the analysis are present in the excel spread sheet already sent to the involved centers. The columns in yellow are obligatory for calculating the score.
Data/Statistical analysis:
Data from HCC transplants performed from January 1, 2003 to December 31 2018 will be requested from the invited centers who will obtain them from their records including electronic chart review. The last allowed follow-up of patients included will be December 31, 2023, as this is a retrospective study design. Patient survival will be calculated from the date of LT to patient death (due to any cause). If death does not occur, then the patient will be censored at their last known alive date. The time to recurrence will be calculated from transplantation to the first imaging study (or biopsy if appropriate) that confirmed tumor recurrence. Patient demographics and clinicopathologic characteristics will be described using descriptive statistics using means, medians and proportions, where appropriate. The exact methodology for the calculation of the machine learning-algorithm prediction model, as well the comparisons to previously published models, has been previously outlined in our development cohort study.10 All statistical analyses will be performed using using Python 3.10.1 (libraries: pycox, torch, scikit-learn, and lifelines).
Conditions
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Study Design
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COHORT
RETROSPECTIVE
Interventions
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liver transplantation
Liver transplantation or hepatic transplantation is the replacement of a diseased liver with the healthy liver from another person (allograft). Liver transplantation is a treatment option for end-stage liver disease and acute liver failure, although availability of donor organs is a major limitation. Liver transplantation is highly regulated, and only performed at designated transplant medical centers by highly trained transplant physicians. Favorable outcomes require careful screening for eligible recipients, as well as a well-calibrated live or deceased donor match.
Eligibility Criteria
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Inclusion Criteria
Exclusion Criteria
* retransplantation or multivisceral transplantation;
* tumors misclassified as HCC on radiological assessment (e.g., cholangiocarcinoma, mixed HCC-cholangiocarcinoma);
* incomplete data for calculating the TRAIN-AI score.
18 Years
75 Years
ALL
No
Sponsors
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European Hepatocellular Cancer Liver Transplant Group
OTHER
Responsible Party
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Quirino Lai
Associate Professor
References
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Lai Q, De Stefano C, Emond J, Bhangui P, Ikegami T, Schaefer B, Hoppe-Lotichius M, Mrzljak A, Ito T, Vivarelli M, Tisone G, Agnes S, Ettorre GM, Rossi M, Tsochatzis E, Lo CM, Chen CL, Cillo U, Ravaioli M, Lerut JP; EurHeCaLT and the West-East LT Study Group. Development and validation of an artificial intelligence model for predicting post-transplant hepatocellular cancer recurrence. Cancer Commun (Lond). 2023 Dec;43(12):1381-1385. doi: 10.1002/cac2.12468. Epub 2023 Oct 30. No abstract available.
Related Links
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The online calculator of the score
Other Identifiers
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EHCLTG
Identifier Type: -
Identifier Source: org_study_id
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