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A Pre-TACE Radiomics Model to Predict HCC Progression and Recurrence in Liver Transplantation: A Pilot Study on a Novel Biomarker

Tommy Ivanics, Emmanuel Salinas-Miranda, Phillipe Abreu, Farzad Khalvati, Khashayar Namdar, Xin Dong, Dominik Deniffel, Andre Gorgen, Lauren Erdman, Kartik Jhaveri, Masoom A. Haider, Patrick Veit‐Haibach, Gonzalo Sapisochín

2021Transplantation34 citationsDOI

Abstract

BACKGROUND: Despite transarterial chemoembolization (TACE) for hepatocellular carcinoma (HCC), a significant number of patients will develop progression on the liver transplant (LT) waiting list or disease recurrence post-LT. We sought to evaluate the feasibility of a pre-TACE radiomics model, an imaging-based tool to predict these adverse outcomes. METHODS: We analyzed the pre-TACE computed tomography images of patients waiting for a LT. The primary endpoint was a combined event that included waitlist dropout for tumor progression or tumor recurrence post-LT. The radiomic features were extracted from the largest HCC volume from the arterial and portal venous phase. A third set of features was created, combining the features from these 2 contrast phases. We applied a least absolute shrinkage and selection operator feature selection method and a support vector machine classifier. Three prognostic models were built using each feature set. The models' performance was compared using 5-fold cross-validated area under the receiver operating characteristic curves. RESULTS: . Eighty-eight patients were included, of whom 33 experienced the combined event (37.5%). The median time to dropout was 5.6 mo (interquartile range: 3.6-9.3), and the median time for post-LT recurrence was 19.2 mo (interquartile range: 6.1-34.0). Twenty-four patients (27.3%) dropped out and 64 (72.7%) patients were transplanted. Of these, 14 (21.9%) had recurrence post-LT. Model performance yielded a mean area under the receiver operating characteristic curves of 0.70 (±0.07), 0.87 (±0.06), and 0.81 (±0.06) for the arterial, venous, and the combined models, respectively. CONCLUSIONS: A pre-TACE radiomics model for HCC patients undergoing LT may be a useful tool for outcome prediction. Further external model validation with a larger sample size is required.

Topics & Concepts

Interquartile rangeMedicineRadiomicsReceiver operating characteristicHepatocellular carcinomaLiver transplantationRadiologyClinical endpointResponse Evaluation Criteria in Solid TumorsMilan criteriaTransplantationSurrogate endpointNuclear medicineInternal medicineProgressive diseaseClinical trialDiseaseHepatocellular Carcinoma Treatment and PrognosisRadiomics and Machine Learning in Medical ImagingOrgan Transplantation Techniques and Outcomes
A Pre-TACE Radiomics Model to Predict HCC Progression and Recurrence in Liver Transplantation: A Pilot Study on a Novel Biomarker | Litcius