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使用全自动蛋白质组学样品制备平台进行高通量药物靶点发现。

High-throughput drug target discovery using a fully automated proteomics sample preparation platform.

作者信息

Wu Qiong, Zheng Jiangnan, Sui Xintong, Fu Changying, Cui Xiaozhen, Liao Bin, Ji Hongchao, Luo Yang, He An, Lu Xue, Xue Xinyue, Tan Chris Soon Heng, Tian Ruijun

机构信息

Department of Chemistry, School of Science, Southern University of Science and Technology Shenzhen 518055 China

Southern University of Science and Technology, Guangming Advanced Research Institute Shenzhen 518055 China.

出版信息

Chem Sci. 2024 Jan 12;15(8):2833-2847. doi: 10.1039/d3sc05937e. eCollection 2024 Feb 22.

Abstract

Drug development is plagued by inefficiency and high costs due to issues such as inadequate drug efficacy and unexpected toxicity. Mass spectrometry (MS)-based proteomics, particularly isobaric quantitative proteomics, offers a solution to unveil resistance mechanisms and unforeseen side effects related to off-targeting pathways. Thermal proteome profiling (TPP) has gained popularity for drug target identification at the proteome scale. However, it involves experiments with multiple temperature points, resulting in numerous samples and considerable variability in large-scale TPP analysis. We propose a high-throughput drug target discovery workflow that integrates single-temperature TPP, a fully automated proteomics sample preparation platform (autoSISPROT), and data independent acquisition (DIA) quantification. The autoSISPROT platform enables the simultaneous processing of 96 samples in less than 2.5 hours, achieving protein digestion, desalting, and optional TMT labeling (requires an additional 1 hour) with 96-channel all-in-tip operations. The results demonstrated excellent sample preparation performance with >94% digestion efficiency, >98% TMT labeling efficiency, and >0.9 intra- and inter-batch Pearson correlation coefficients. By automatically processing 87 samples, we identified both known targets and potential off-targets of 20 kinase inhibitors, affording over a 10-fold improvement in throughput compared to classical TPP. This fully automated workflow offers a high-throughput solution for proteomics sample preparation and drug target/off-target identification.

摘要

由于药物疗效不足和意外毒性等问题,药物开发效率低下且成本高昂。基于质谱(MS)的蛋白质组学,特别是等压定量蛋白质组学,为揭示与脱靶途径相关的耐药机制和意外副作用提供了解决方案。热蛋白质组分析(TPP)在蛋白质组规模的药物靶点鉴定方面颇受青睐。然而,它涉及多个温度点的实验,导致大规模TPP分析中样本数量众多且变异性较大。我们提出了一种高通量药物靶点发现工作流程,该流程整合了单温度TPP、全自动蛋白质组学样品制备平台(autoSISPROT)和数据独立采集(DIA)定量分析。autoSISPROT平台能够在不到2.5小时内同时处理96个样本,通过96通道全吸头操作实现蛋白质消化、脱盐以及可选的TMT标记(额外需要1小时)。结果显示出优异的样品制备性能,消化效率>94%,TMT标记效率>98%,批内和批间Pearson相关系数>0.9。通过自动处理87个样本,我们鉴定出了20种激酶抑制剂的已知靶点和潜在脱靶,与传统TPP相比,通量提高了10倍以上。这种全自动工作流程为蛋白质组学样品制备以及药物靶点/脱靶鉴定提供了高通量解决方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a173/10882491/b72741d1d032/d3sc05937e-f1.jpg

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