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The Development and Application of a Quantitative Peptide Microarray Based Approach to Protein Interaction Domain Specificity Space

机译:基于定量肽微阵列的蛋白质相互作用域特异性空间方法的开发与应用

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摘要

Protein interaction domain (PID) linear peptide motif interactions direct diverse cellular processes in a specific and coordinated fashion. PID specificity, or the interaction selectivity derived from affinity preferences between possible PID-peptide pairs is the basis of this ability. Here, we develop an integrated experimental and computational cellulose peptide conjugate microarray (CPCMA) based approach for the high throughput analysis of PID specificity that provides unprecedented quantitative resolution and reproducibility. As a test system, we quantify the specificity preferences of four Src Homology 2 domains and 124 physiological phosphopeptides to produce a novel quantitative interactome. The quantitative data set covers a broad affinity range, is highly precise, and agrees well with orthogonal biophysical validation, in vivo interactions, and peptide library trained algorithm predictions. In contrast to preceding approaches, the CPCMAs proved capable of confidently assigning interactions into affinity categories, resolving the subtle affinity contributions of residue correlations, and yielded predictive peptide motif affinity matrices. Unique CPCMA enabled modes of systems level analysis reveal a physiological interactome with expected node degree value decreasing as a function of affinity, resulting in minimal high affinity binding overlap between domains; uncover that Src Homology 2 domains bind ligands with a similar average affinity yet strikingly different levels of promiscuity and binding dynamic range; and parse with unprecedented quantitative resolution contextual factors directing specificity. The CPCMA platform promises broad application within the fields of PID specificity, synthetic biology, specificity focused drug design, and network biology.
机译:蛋白质相互作用域(PID)线性肽基序相互作用以特定且协调的方式指导多种细胞过程。 PID特异性或从可能的PID肽对之间的亲和力偏好中得出的相互作用选择性是此功能的基础。在这里,我们开发了基于实验和计算的纤维素肽共轭微阵列(CPCMA)的集成方法,可对PID特异性进行高通量分析,从而提供了前所未有的定量分辨率和可重复性。作为测试系统,我们量化了四个Src Homology 2域和124个生理磷酸肽的特异性偏好,以产生一个新颖的定量相互作用组。定量数据集涵盖了广泛的亲和力范围,具有很高的精确度,并且与正交生物物理验证,体内相互作用以及肽库训练的算法预测非常吻合。与之前的方法相比,CPCMA被证明能够可靠地将相互作用分配到亲和力类别中,解决了残基相关性的微妙亲和力贡献,并产生了预测性肽基序亲和力矩阵。独特的CPCMA启用的系统级分析模式揭示了一个生理学相互作用组,其预期节点度值随亲和力的关系而降低,从而导致域之间的最小高亲和力结合重叠;发现Src Homology 2域以相似的平均亲和力结合配体,但混杂程度和结合动态范围却显着不同;并与指导特异性的空前的定量分辨率背景因素进行解析。 CPCMA平台有望在PID特异性,合成生物学,着重于特异性的药物设计和网络生物学领域中得到广泛应用。

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