University of Washington, Seattle, Washington 98105, United States.
Thermo Fisher Scientific, San Jose, California 95134, United States.
J Proteome Res. 2023 Sep 1;22(9):2836-2846. doi: 10.1021/acs.jproteome.3c00085. Epub 2023 Aug 9.
Sample multiplexed quantitative proteomics assays have proved to be a highly versatile means to assay molecular phenotypes. Yet, stochastic precursor selection and precursor coisolation can dramatically reduce the efficiency of data acquisition and quantitative accuracy. To address this, intelligent data acquisition (IDA) strategies have recently been developed to improve instrument efficiency and quantitative accuracy for both discovery and targeted methods. Toward this end, we sought to develop and implement a new real-time spectral library searching (RTLS) workflow that could enable intelligent scan triggering and peak selection within milliseconds of scan acquisition. To ensure ease of use and general applicability, we built an application to read in diverse spectral libraries and file types from both empirical and predicted spectral libraries. We demonstrate that RTLS methods enable improved quantitation of multiplexed samples, particularly with consideration for quantitation from chimeric fragment spectra. We used RTLS to profile proteome responses to small molecule perturbations and were able to quantify up to 15% more significantly regulated proteins in half the gradient time compared to traditional methods. Taken together, the development of RTLS expands the IDA toolbox to improve instrument efficiency and quantitative accuracy for sample multiplexed analyses.
样本多重定量蛋白质组学分析已被证明是一种非常通用的方法,可以检测分子表型。然而,随机前体选择和前体共分离会显著降低数据采集效率和定量准确性。为了解决这个问题,最近开发了智能数据采集 (IDA) 策略,以提高发现和靶向方法的仪器效率和定量准确性。为此,我们试图开发和实施一种新的实时谱库搜索 (RTLS) 工作流程,该流程可以在扫描采集后的几毫秒内实现智能扫描触发和峰选择。为了确保易用性和通用性,我们构建了一个应用程序,可以读取来自经验和预测谱库的各种谱库和文件类型。我们证明 RTLS 方法可以提高多重样本的定量准确性,特别是考虑到对嵌合片段谱的定量。我们使用 RTLS 来分析小分子扰动对蛋白质组的影响,与传统方法相比,在一半的梯度时间内能够定量多达 15%更多的显著调节蛋白。总之,RTLS 的开发扩展了 IDA 工具包,以提高样品多重分析的仪器效率和定量准确性。