Bidkhori Gholamreza, Benfeitas Rui, Elmas Ezgi, Kararoudi Meisam Naeimi, Arif Muhammad, Uhlen Mathias, Nielsen Jens, Mardinoglu Adil
Science for Life Laboratory, KTH-Royal Institute of Technology, Stockholm, Sweden.
Department of Biology and Biological Engineering, Chalmers University of Technology, Gothenburg, Sweden.
Front Physiol. 2018 Jul 17;9:916. doi: 10.3389/fphys.2018.00916. eCollection 2018.
Hepatocellular carcinoma (HCC) is a deadly form of liver cancer with high mortality worldwide. Unfortunately, the large heterogeneity of this disease makes it difficult to develop effective treatment strategies. Cellular network analyses have been employed to study heterogeneity in cancer, and to identify potential therapeutic targets. However, the existing approaches do not consider metabolic growth requirements, i.e., biological network functionality, to rank candidate targets while preventing toxicity to non-cancerous tissues. Here, we developed an algorithm to overcome these issues based on integration of gene expression data, genome-scale metabolic models, network controllability, and dispensability, as well as toxicity analysis. This method thus predicts and ranks potential anticancer non-toxic controlling metabolite and gene targets. Our algorithm encompasses both objective-driven and-independent tasks, and uses network topology to finally rank the predicted therapeutic targets. We employed this algorithm to the analysis of transcriptomic data for 50 HCC patients with both cancerous and non-cancerous samples. We identified several potential targets that would prevent cell growth, including 74 anticancer metabolites, and 3 gene targets (PRKACA, PGS1, and CRLS1). The predicted anticancer metabolites showed good agreement with existing FDA-approved cancer drugs, and the 3 genes were experimentally validated by performing experiments in HepG2 and Hep3B liver cancer cell lines. Our observations indicate that our novel approach successfully identifies therapeutic targets for effective treatment of cancer. This approach may also be applied to any cancer type that has tumor and non-tumor gene or protein expression data.
肝细胞癌(HCC)是一种致命的肝癌形式,在全球范围内具有很高的死亡率。不幸的是,这种疾病的高度异质性使得难以制定有效的治疗策略。细胞网络分析已被用于研究癌症中的异质性,并识别潜在的治疗靶点。然而,现有的方法在对候选靶点进行排名时没有考虑代谢生长需求,即生物网络功能,同时也没有预防对非癌组织的毒性。在此,我们基于基因表达数据、基因组规模代谢模型、网络可控性和必要性以及毒性分析的整合,开发了一种算法来克服这些问题。因此,这种方法可以预测并对潜在的无毒抗癌控制代谢物和基因靶点进行排名。我们的算法包含目标驱动和独立任务,并利用网络拓扑结构最终对预测的治疗靶点进行排名。我们将此算法应用于对50例HCC患者的癌组织和非癌组织样本的转录组数据进行分析。我们确定了几个可能阻止细胞生长的潜在靶点,包括74种抗癌代谢物和3个基因靶点(PRKACA、PGS1和CRLS1)。预测的抗癌代谢物与现有的FDA批准的癌症药物显示出良好的一致性,并且通过在HepG2和Hep3B肝癌细胞系中进行实验对这3个基因进行了实验验证。我们的观察结果表明,我们的新方法成功地识别出了有效治疗癌症的治疗靶点。这种方法也可能适用于任何具有肿瘤和非肿瘤基因或蛋白质表达数据的癌症类型。