Advancing Prognostic Understanding in Hepatocellular Carcinoma Through the Integration of Genomic Instability and Lncrna Signatures: GILncSig Model
World Journal of Gastrointestinal Surgery(2024)
Department of Precision Medicine
Abstract
The recently published study by Duan et al introduces a promising method that combines genomic instability and long non-coding RNAs to improve the prognostic evaluation of hepatocellular carcinoma (HCC), a deadly cancer associated with considerable morbidity and mortality. This editorial aims to analyze the methodology, key findings, and broader implications of the study within the fields of gastroenterology and oncological surgery, highlighting the shift towards precision medicine in the management of HCC.
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