Multiparametric MRI‐based model for prediction of local progression of hepatocellular carcinoma after thermal ablation
Chao Chen,
Qiuying Han,
He Ren
et al.
Abstract:PurposeTo develop a deep learning radiomics of multiparametric magnetic resonance imaging (DLRMM)‐based model that incorporates preoperative and postoperative signatures for prediction of local tumor progression (LTP) after thermal ablation (TA) in hepatocellular carcinoma (HCC).MethodsFrom May 2017 to October 2021, 417 eligible patients with HCC were retrospectively enrolled from three hospitals (one primary cohort [PC, n = 189] and two external test cohorts [ETCs][n = 135, 93]). DLRMM features were extracted… Show more
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