人工智能平台,RADR®,帮助发现超罕见癌症非典型畸胎瘤样横纹肌瘤的DNA损伤剂

J. McDermott, D. Sturtevant, Umesh Kathad, S. Varma, Jianli Zhou, A. Kulkarni, Neha Biyani, Caleb Schimke, W. Reinhold, Fathi Elloumi, Peter Carr, Y. Pommier, K. Bhatia
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引用次数: 1

摘要

在过去的十年里,下一代测序和组学技术已经成为医学和药物发现不可或缺的工具。这些技术导致了公开可用数据的激增,由于缺乏生物信息学专业知识和分析大量数据的工具,这些数据往往被低估。在这里,我们展示了应用两个新的计算平台的能力,NCI的CellMiner Cross Database和Lantern Pharma的专有人工智能(AI)和机器学习(ML)RADR®平台,来识别酰基富烯衍生物药物LP-100(Irofuven)和LP-184的生物学见解和潜在的新靶点适应症。在CellMinerCDB中对这两种药物的多组学数据进行分析,发现了它们的作用机制、每种药物独特富集的基因集,以及这些药物如何与现有的DNA烷基化剂不同。CellMinerCDB的数据表明,LP-184和LP-100被预测对染色质重塑缺陷的癌症有效,如超射线和致命的儿童癌症非典型Teratoid Rhabdoid肿瘤(ATRT)。Lantern的AI和ML RADR®平台随后被用于建立一个模型,以在计算机上测试LP-184是否对ATRT患者有效。在计算机上,RADR®有助于预测ATRT确实对LP-184敏感,然后在体外和体内进行了验证。应用计算工具和人工智能,如CellMinerCDB和RADR®,是发现ATRT等罕见癌症药物的新颖有效的转化方法。
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Artificial intelligence platform, RADR®, aids in the discovery of DNA damaging agent for the ultra-rare cancer Atypical Teratoid Rhabdoid Tumors
Over the last decade the next-generation sequencing and ‘omics techniques have become indispensable tools for medicine and drug discovery. These techniques have led to an explosion of publicly available data that often goes under-utilized due to the lack of bioinformatic expertise and tools to analyze that volume of data. Here, we demonstrate the power of applying two novel computational platforms, the NCI’s CellMiner Cross Database and Lantern Pharma’s proprietary artificial intelligence (AI) and machine learning (ML) RADR® platform, to identify biological insights and potentially new target indications for the acylfulvene derivative drugs LP-100 (Irofulven) and LP-184. Analysis of multi-omics data of both drugs within CellMinerCDB generated discoveries into their mechanism of action, gene sets uniquely enriched to each drug, and how these drugs differed from existing DNA alkylating agents. Data from CellMinerCDB suggested that LP-184 and LP-100 were predicted to be effective in cancers with chromatin remodeling deficiencies, like the ultra-rare and fatal childhood cancer Atypical Teratoid Rhabdoid Tumors (ATRT). Lantern’s AI and ML RADR® platform was then utilized to build a model to test, in silico, if LP-184 would be efficacious in ATRT patients. In silico, RADR® aided in predicting that, indeed, ATRT would be sensitive to LP-184, which was then validated in vitro and in vivo. Applying computational tools and AI, like CellMinerCDB and RADR®, are novel and efficient translational approaches to drug discovery for rare cancers like ATRT.
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