Scientific Reports (Jan 2023)

CT-radiomics and clinical risk scores for response and overall survival prognostication in TACE HCC patients

  • Simon Bernatz,
  • Oleg Elenberger,
  • Jörg Ackermann,
  • Lukas Lenga,
  • Simon S. Martin,
  • Jan-Erik Scholtz,
  • Vitali Koch,
  • Leon D. Grünewald,
  • Yannis Herrmann,
  • Maximilian N. Kinzler,
  • Angelika Stehle,
  • Ina Koch,
  • Stefan Zeuzem,
  • Katrin Bankov,
  • Claudia Doering,
  • Henning Reis,
  • Nadine Flinner,
  • Falko Schulze,
  • Peter J. Wild,
  • Renate Hammerstingl,
  • Katrin Eichler,
  • Tatjana Gruber-Rouh,
  • Thomas J. Vogl,
  • Daniel Pinto dos Santos,
  • Scherwin Mahmoudi

DOI
https://doi.org/10.1038/s41598-023-27714-0
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 9

Abstract

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Abstract We aimed to identify hepatocellular carcinoma (HCC) patients who will respond to repetitive transarterial chemoembolization (TACE) to improve the treatment algorithm. Retrospectively, 61 patients (mean age, 65.3 years ± 10.0 [SD]; 49 men) with 94 HCC mRECIST target-lesions who had three consecutive TACE between 01/2012 and 01/2020 were included. Robust and non-redundant radiomics features were extracted from the 24 h post-embolization CT. Five different clinical TACE-scores were assessed. Seven different feature selection methods and machine learning models were used. Radiomics, clinical and combined models were built to predict response to TACE on a lesion-wise and patient-wise level as well as its impact on overall-survival prognostication. 29 target-lesions of 19 patients were evaluated in the test set. Response rates were 37.9% (11/29) on the lesion-level and 42.1% (8/19) on the patient-level. Radiomics top lesion-wise response prognostications was AUC 0.55–0.67. Clinical scores revealed top AUCs of 0.65–0.69. The best working model combined the radiomic feature LargeDependenceHighGrayLevelEmphasis and the clinical score mHAP_II_score_group with AUC = 0.70, accuracy = 0.72. We transferred this model on a patient-level to achieve AUC = 0.62, CI = 0.41–0.83. The two radiomics-clinical features revealed overall-survival prognostication of C-index = 0.67. In conclusion, a random forest model using the radiomic feature LargeDependenceHighGrayLevelEmphasis and the clinical mHAP-II-score-group seems promising for TACE response prognostication.