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Harnessing big ‘omics’ data and AI for drug discovery in hepatocellular carcinoma

机译:利用大“常规”数据和AI在肝细胞癌中的药物发现

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摘要

Hepatocellular carcinoma (HCC) is the most common form of primary adult liver cancer. After nearly a decade with sorafenib as the only approved treatment, multiple new agents?have demonstrated efficacy in clinical trials, including the targeted therapies regorafenib, lenvatinib and cabozantinib, the anti-angiogenic antibody ramucirumab, and the immune checkpoint inhibitors nivolumab and pembrolizumab. Although these agents offer new promise to patients with HCC, the optimal choice and sequence of therapies remains unknown and without established biomarkers, and many patients do not respond to treatment. The advances and the decreasing costs of molecular measurement technologies enable profiling of HCC molecular features (such as genome, transcriptome, proteome and metabolome) at different levels, including bulk tissues, animal models and single cells. The release of such data sets to the public enhances the ability to search for information from these legacy studies and provides the?opportunity to leverage them to understand HCC mechanisms, rationally develop new therapeutics and identify candidate biomarkers of treatment response. Here, we provide a comprehensive review of public data sets related to HCC and discuss how emerging artificial intelligence methods can be applied to identify new targets and drugs as well as to guide therapeutic choices for improved HCC treatment.
机译:肝细胞癌(HCC)是最常见的原发性成人肝癌形式。经过近十年的索拉非尼作为唯一批准的治疗方法,多种新药呢?在临床试验中表现出疗效,包括靶向治疗术治疗术治疗术治疗,Lenvatinib和Cabozantinib,抗血管生成抗体Ramucirumab,以及免疫检查点抑制剂Nivolumab和Pembroizumab。虽然这些代理商对HCC患者提供了新的承诺,但最佳选择和疗法仍然未知,没有建立生物标志物,许多患者没有反应治疗。分子测量技术的进展和降低成本使得HCC分子特征(例如基因组,转录组,蛋白质组和代谢物)的分析在不同的水平,包括散装组织,动物模型和单细胞。向公众发布此类数据集提高了搜索这些遗留研究的信息的能力,并提供了利用他们理解HCC机制的机会,合理地发展新的治疗方法并确定治疗反应的候选生物标志物。在这里,我们提供与HCC相关的公共数据集的全面审查,并讨论新兴人工智能方法如何应用于识别新的目标和药物,以及引导治疗选择以改善HCC处理。

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    10000 0001 2150 1785grid.17088.36Department of Pediatrics and Human Development Department of;

    20000000086837370grid.214458.eDepartment of Computational Medicine and BioinformaticsUniversity of;

    30000 0001 2097 9138grid.11450.31Department of Clinical and Experimental MedicineUniversity of;

    50000000419368956grid.168010.eDepartment of Surgery Asian Liver Center School of MedicineStanford;

    60000 0001 2297 6811grid.266102.1Department of MedicineUniversity of CaliforniaSan FranciscoCAUSA;

    70000 0001 2297 6811grid.266102.1Department of Bioengineering and Therapeutic SciencesUniversity of;

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  • 正文语种 eng
  • 中图分类 消化系及腹部疾病;
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