医学
肝细胞癌
全身疗法
重症监护医学
治疗方法
等级制度
癌症
内科学
疾病
市场经济
经济
乳腺癌
作者
Alessandro Vitale,Giuseppe Cabibbo,Massimo Iavarone,Luca Viganò,David J. Pinato,Francesca Romana Ponziani,Quirino Lai,Andrea Casadei‐Gardini,Ciro Celsa,Giovanni Galati,Martina Gambato,Laura Crocetti,Matteo Renzulli,Edoardo G. Giannini,Fabio Farinati,Franco Trevisani,Umberto Cillo,Umberto Baccarani,Giuseppina Brancaccio,Raffaele Cozzolongo
出处
期刊:Lancet Oncology
[Elsevier BV]
日期:2023-07-01
卷期号:24 (7): e312-e322
被引量:102
标识
DOI:10.1016/s1470-2045(23)00186-9
摘要
Advances in the surgical and systemic therapeutic landscape of hepatocellular carcinoma have increased the complexity of patient management. A dynamic adaptation of the available staging-based algorithms is required to allow flexible therapeutic allocation. In particular, real-world hepatocellular carcinoma management increasingly relies on factors independent of oncological staging, including patients’ frailty, comorbid burden, critical tumour location, multiple liver functional parameters, and specific technical contraindications impacting the delivery of treatment and resource availability. In this Policy Review we critically appraise how treatment allocation strictly based on pretreatment staging features has shifted towards a more personalised treatment approach, in which expert tumour boards assume a central role. We propose an evidence-based framework for hepatocellular carcinoma treatment based on the novel concept of multiparametric therapeutic hierarchy, in which different therapeutic options are ordered according to their survival benefit (ie, from surgery to systemic therapy). Moreover, we introduce the concept of converse therapeutic hierarchy, in which therapies are ordered according to their conversion abilities or adjuvant abilities (ie, from systemic therapy to surgery).
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