Zhang Dao-Han, Liang Chen, Hu Shu-Yang, Huang Xiao-Yong, Yu Lei, Meng Xian-Long, Guo Xiao-Jun, Zeng Hai-Ying, Chen Zhen, Zhang Lv, Pei Yan-Zi, Ye Mu, Cai Jia-Bin, Huang Pei-Xin, Shi Ying-Hong, Ke Ai-Wu, Chen Yi, Ji Yuan, Shi Yujiang Geno, Zhou Jian, Fan Jia, Yang Guo-Huan, Sun Qi-Man, Shi Guo-Ming, Lu Jia-Cheng
Department of Liver Surgery and Transplantation, Zhongshan Hospital, Fudan University, Shanghai, 200032, China.
Liver Cancer Institute, Fudan University, Shanghai, 200032, China.
J Transl Med. 2024 Oct 1;22(1):883. doi: 10.1186/s12967-024-05670-1.
Single-cell technology depicts integrated tumor profiles including both tumor cells and tumor microenvironments, which theoretically enables more robust diagnosis than traditional diagnostic standards based on only pathology. However, the inherent challenges of single-cell RNA sequencing (scRNA-seq) data, such as high dimensionality, low signal-to-noise ratio (SNR), sparse and non-Euclidean nature, pose significant obstacles for traditional diagnostic approaches. The diagnostic value of single-cell technology has been largely unexplored despite the potential advantages. Here, we present a graph neural network-based framework tailored for molecular diagnosis of primary liver tumors using scRNA-seq data. Our approach capitalizes on the biological plausibility inherent in the intercellular communication networks within tumor samples. By integrating pathway activation features within cell clusters and modeling unidirectional inter-cellular communication, we achieve robust discrimination between malignant tumors (including hepatocellular carcinoma, HCC, and intrahepatic cholangiocarcinoma, iCCA) and benign tumors (focal nodular hyperplasia, FNH) by scRNA data of all tissue cells and immunocytes only. The efficacy to distinguish iCCA from HCC was further validated on public datasets. Through extending the application of high-throughput scRNA-seq data into diagnosis approaches focusing on integrated tumor microenvironment profiles rather than a few tumor markers, this framework also sheds light on minimal-invasive diagnostic methods based on migrating/circulating immunocytes.
单细胞技术描绘了包括肿瘤细胞和肿瘤微环境在内的综合肿瘤图谱,从理论上讲,这比仅基于病理学的传统诊断标准能实现更可靠的诊断。然而,单细胞RNA测序(scRNA-seq)数据的固有挑战,如高维度、低信噪比(SNR)、稀疏性和非欧几里得性质,给传统诊断方法带来了重大障碍。尽管单细胞技术具有潜在优势,但其诊断价值在很大程度上尚未得到探索。在此,我们提出了一个基于图神经网络的框架,用于使用scRNA-seq数据对原发性肝癌进行分子诊断。我们的方法利用了肿瘤样本中细胞间通信网络固有的生物学合理性。通过整合细胞簇内的信号通路激活特征并对单向细胞间通信进行建模,我们仅通过所有组织细胞和免疫细胞的scRNA数据就能对恶性肿瘤(包括肝细胞癌、HCC和肝内胆管癌、iCCA)和良性肿瘤(局灶性结节性增生、FNH)进行可靠区分。区分iCCA和HCC的有效性在公共数据集上得到了进一步验证。通过将高通量scRNA-seq数据的应用扩展到关注综合肿瘤微环境图谱而非少数肿瘤标志物的诊断方法中,该框架还为基于迁移/循环免疫细胞的微创诊断方法提供了思路。