Assessment of a multivariable model using MRI-radiomics, age and sex for the classification of hepatocellular adenoma subtypes - 05/04/24

Highlights |
• | Non-invasive subtyping of HCA remains challenging for several subtypes, thus carrying different levels of risks and management; to date, ß-HCA and sh-HCA are not detected and no discrimination between I-HCA and ß-I-HCA is achieved in daily practice. |
• | Multiple HCA subtyping can be improved using clinical features, i.e., age and sex, combined with MRI-radiomics features. |
• | Machine-learning algorithms including basic clinical features and MRI-radiomics could help discrimination between I-HCA and ß-I-HCA. |
Abstract |
Objectives |
Non-invasive subtyping of hepatocellular adenomas (HCA) remains challenging for several subtypes, thus carrying different levels of risks and management. The goal of this study is to devise a multivariable diagnostic model based on basic clinical features (age and sex) combined with MRI-radiomics and to evaluate its diagnostic performance.
Methods |
This single-center retrospective case-control study included all consecutive patients with HCA identified within the pathological database from our institution from January 2003 to April 2018 with MRI examination (T2, T1-no injection/injection-arterial-portal); volumes of interest were manually delineated in adenomas and 38 textural features were extracted (LIFEx, v5.10). Qualitative (i.e., visual on MRI) and automatic (computer-assisted) analysis were compared. The prognostic scores of a multivariable diagnostic model based on basic clinical features (age and sex) combined with MRI-radiomics (tumor volume and texture features) were assessed using a cross-validated Random Forest algorithm.
Results |
Via visual MR-analysis, HCA subgroups could be classified with balanced accuracies of 80.8 % (I-HCA or ß-I-HCA, the two being indistinguishable), 81.8 % (H-HCA) and 74.4 % (sh-HCA or ß-HCA also indistinguishable). Using a model including age, sex, volume and texture variables, HCA subgroups were predicted (multivariate classification) with an averaged balanced accuracy of 58.6 %, best=73.8 % (sh-HCA) and 71.9 % (ß-HCA). I-HCA and ß-I-HCA could be also distinguished (binary classification) with a balanced accuracy of 73 %.
Conclusion |
Multiple HCA subtyping could be improved using machine-learning algorithms including two clinical features, i.e., age and sex, combined with MRI-radiomics. Future HCA studies enrolling more patients will further test the validity of the model.
Le texte complet de cet article est disponible en PDF.Keywords : Adenoma, Hepatocellular, Biomarker
Abbreviations and acronyms : ß-HCA, ß-I-HCA, BMI, CF, GRE, HCA, H-HCA, HNF1α, I-HCA, IRB, MRI, OC, PCA, TF, sh-HCA, T1w, T2w, VF, VOI
Plan
Vol 10
Article 100046- juin 2024 Retour au numéroBienvenue sur EM-consulte, la référence des professionnels de santé.