A comprehensive evaluation of full-spectrum cell-free RNAs highlights cell-free RNA fragments for early-stage hepatocellular carcinoma detection

Chun Ning(Chinese Academy of Medical Sciences & Peking Union Medical College), Peng Cai, Xiaofan Liu(Tsinghua University), Guangtao Li(Tianjin Medical University Cancer Institute and Hospital), Pengfei Bao(Tsinghua University), Yan Lu(Tsinghua University), Meng Ning(Tianjin Third Central Hospital), Kaichen Tang(Chinese Academy of Medical Sciences & Peking Union Medical College), Yi Luo(Tianjin Medical University Cancer Institute and Hospital), Hua Guo(Tianjin Medical University Cancer Institute and Hospital), Yunjiu Wang(Shanghai University of Traditional Chinese Medicine), Zhuoran Wang(Second Military Medical University), Lu Chen(Tianjin Medical University Cancer Institute and Hospital), Zhi John Lu(Tsinghua University), Jianhua Yin(Ministry of Defence)
EBioMedicine
June 12, 2023
Cited by 21Open Access
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Abstract

BACKGROUND: Various studies have reported cell-free RNAs (cfRNAs) as noninvasive biomarkers for detecting hepatocellular carcinoma (HCC). However, they have not been independently validated, and some results are contradictory. We provided a comprehensive evaluation of various types of cfRNA biomarkers and a full mining of the biomarker potential of new features of cfRNA. METHODS: We first systematically reviewed reported cfRNA biomarkers and calculated dysregulated post-transcriptional events and cfRNA fragments. In 3 independent multicentre cohorts, we further selected 6 cfRNAs using RT-qPCR, built a panel called HCCMDP with AFP using machine learning, and internally and externally validated HCCMDP's performance. FINDINGS: We identified 23 cfRNA biomarker candidates from a systematic review and analysis of 5 cfRNA-seq datasets. Notably, we defined the cfRNA domain to describe cfRNA fragments systematically. In the verification cohort (n = 183), cfRNA fragments were more likely to be verified, while circRNA and chimeric RNA candidates were neither abundant nor stable as qPCR-based biomarkers. In the algorithm development cohort (n = 287), we build and test the panel HCCMDP with 6 cfRNA markers and AFP. In the independent validation cohort (n = 171), HCCMDP can distinguish HCC patients from control groups (all: AUC = 0.925; CHB: AUC = 0.909; LC: AUC = 0.916), and performs well in distinguishing early-stage HCC patients (all: AUC = 0.936; CHB: AUC = 0.917; LC: AUC = 0.928). INTERPRETATION: This study comprehensively evaluated full-spectrum cfRNA biomarker types for HCC detection, highlighted the cfRNA fragment as a promising biomarker type in HCC detection, and provided a panel HCCMDP. FUNDING: National Natural Science Foundation of China, and The National Key Basic Research Program (973 program).


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