Dhanik Ankur, Kirshner Jessica R, MacDonald Douglas, Thurston Gavin, Lin Hsin C, Murphy Andrew J, Zhang Wen
Regeneron Pharmaceuticals Inc, Old Saw Mill River Road, Tarrytown, NY, USA.
BMC Bioinformatics. 2016 Jul 20;17:286. doi: 10.1186/s12859-016-1150-2.
Major Histocompatibility Complex (MHC) or Human Leukocyte Antigen (HLA) Class I molecules bind to peptide fragments of proteins degraded inside the cell and display them on the cell surface. We are interested in peptide-HLA complexes involving peptides that are derived from proteins specifically expressed in cancer cells. Such complexes have been shown to provide an effective means of precisely targeting cancer cells by engineered T-cells and antibodies, which would be an improvement over current chemotherapeutic agents that indiscriminately kill proliferating cells. An important concern with the targeting of peptide-HLA complexes is off-target toxicity that could occur due to the presence of complexes similar to the target complex in cells from essential, normal tissues.
We developed a novel computational strategy for identifying potential peptide-HLA cancer targets and evaluating the likelihood of off-target toxicity associated with these targets. Our strategy combines sequence-based and structure-based approaches in a unique way to predict potential off-targets. The focus of our work is on the complexes involving the most frequent HLA class I allele HLA-A*02:01. Using our strategy, we predicted the off-target toxicity observed in past clinical trials. We employed it to perform a first-ever comprehensive exploration of the human peptidome to identify cancer-specific targets utilizing gene expression data from TCGA (The Cancer Genome Atlas) and GTEx (Gene Tissue Expression), and structural data from PDB (Protein Data Bank). We have thus identified a list of 627 peptide-HLA complexes across various TCGA cancer types.
Peptide-HLA complexes identified using our novel strategy could enable discovery of cancer-specific targets for engineered T-cells or antibody based therapy with minimal off-target toxicity.
主要组织相容性复合体(MHC)或人类白细胞抗原(HLA)I类分子与细胞内降解的蛋白质肽片段结合,并将其展示在细胞表面。我们对涉及源自癌细胞中特异性表达蛋白质的肽的肽-HLA复合体感兴趣。已证明此类复合体为通过工程化T细胞和抗体精确靶向癌细胞提供了一种有效手段,这将是对当前不加区分地杀死增殖细胞的化疗药物的改进。靶向肽-HLA复合体的一个重要问题是脱靶毒性,这可能由于在重要正常组织的细胞中存在与靶复合体相似的复合体而发生。
我们开发了一种新颖的计算策略,用于识别潜在的肽-HLA癌症靶点并评估与这些靶点相关的脱靶毒性可能性。我们的策略以独特方式结合了基于序列和基于结构的方法来预测潜在的脱靶。我们工作的重点是涉及最常见的HLA I类等位基因HLA-A*02:01的复合体。使用我们的策略,我们预测了过去临床试验中观察到的脱靶毒性。我们利用它对人类肽组进行了首次全面探索,以利用来自TCGA(癌症基因组图谱)和GTEx(基因组织表达)的基因表达数据以及来自PDB(蛋白质数据库)的结构数据来识别癌症特异性靶点。我们因此确定了跨各种TCGA癌症类型的627个肽-HLA复合体列表。
使用我们的新策略鉴定的肽-HLA复合体能够以最小的脱靶毒性发现用于工程化T细胞或基于抗体治疗的癌症特异性靶点。