A combined bioinformatics and LC-MS based approach for the development and benchmarking of a comprehensive database of Lymnaea CNS proteins.

Sarah K. Wooller, A. Anagnostopoulou, B. Kuropka, Michael Crossley, P. Benjamin, F. Pearl, I. Kemenes, G. Kemenes, Murat Eravci
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引用次数: 1

Abstract

Applications of key technologies in biomedical research, such as qRT-PCR or LC-MS based proteomics, are generating large biological (-omics) data sets which are useful for the identification and quantification of biomarkers in any research area of interest. Genome, transcriptome and proteome databases are already available for a number of model organisms including vertebrates and invertebrates. However, there is insufficient information available for protein sequences of certain invertebrates, such as the great pond snail Lymnaea stagnalis, a model organism that has been used highly successfully in elucidating evolutionarily conserved mechanisms of memory function and dysfunction. Here we used a bioinformatics approach to designing and benchmarking a comprehensive CNS proteomics database (LymCNS-PDB) for the identification of proteins from the CNS of Lymnaea by LC-MS based proteomics. LymCNS-PDB was created by using the Trinity TransDecoder bioinformatics tool to translate amino acid sequences from mRNA transcript assemblies obtained from a published Lymnaea transcriptomics database. The blast-style MMSeq2 software was used to match all translated sequences to UniProtKB sequences for molluscan proteins, including Lymnaea and other molluscs. LymCNS-PDB contains 9,628 identified matched proteins that were benchmarked by performing LC-MS based proteomics analysis with proteins isolated from the Lymnaea CNS. MS/MS analysis using the LymCNS-PDB database led to the identification of 3,810 proteins. Only 982 proteins were identified by using a non-specific molluscan database. LymCNS-PDB provides a valuable tool that will enable us to perform quantitative proteomics analysis of protein interactomes involved in several CNS functions in Lymnaea, including learning and memory and age-related memory decline.
结合生物信息学和LC-MS为基础的方法开发和基准的综合数据库淋巴中枢神经系统蛋白。
生物医学研究中关键技术的应用,如qRT-PCR或基于LC-MS的蛋白质组学,正在产生大量的生物组学数据集,这些数据集对任何感兴趣的研究领域的生物标志物的鉴定和定量都很有用。基因组、转录组和蛋白质组数据库已经可以用于许多模式生物,包括脊椎动物和无脊椎动物。然而,对于某些无脊椎动物的蛋白质序列,如大塘螺(lynaea滞螺)的信息不足,这种模式生物在阐明记忆功能和功能障碍的进化保守机制方面取得了很大成功。本研究采用生物信息学方法设计了一个综合的中枢神经系统蛋白质组学数据库(LymCNS-PDB),并对其进行了基准测试,用于LC-MS蛋白质组学鉴定淋巴细胞中枢神经系统的蛋白质。LymCNS-PDB是利用Trinity TransDecoder生物信息学工具翻译从已发表的lynaea转录组学数据库中获得的mRNA转录物组合的氨基酸序列而创建的。使用blast-style MMSeq2软件将所有翻译序列与软体动物蛋白的UniProtKB序列进行匹配,包括Lymnaea和其他软体动物。LymCNS-PDB包含9628个鉴定的匹配蛋白,这些蛋白通过LC-MS基于蛋白质组学分析从lynaea CNS分离的蛋白进行基准。利用LymCNS-PDB数据库进行MS/MS分析,鉴定出3810个蛋白。使用非特异性软体动物数据库仅鉴定出982种蛋白质。LymCNS-PDB提供了一个有价值的工具,将使我们能够进行定量蛋白质组学分析涉及lynaea的几种中枢神经系统功能的蛋白质相互作用组,包括学习和记忆以及与年龄相关的记忆衰退。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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