通过交联质谱和机器学习绘制刚地弓形虫相互作用组。

IF 4.7 1区 生物学 Q1 MICROBIOLOGY
mBio Pub Date : 2025-10-08 Epub Date: 2025-08-28 DOI:10.1128/mbio.02159-25
Tadakimi Tomita, Elizabeth Weyer, Rebekah B Guevara, Simone Sidoli, Jennifer T Aguilan, Louis M Weiss
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引用次数: 0

摘要

刚地弓形虫是一种广泛存在的人类寄生虫,通过复杂的分子相互作用在宿主体内持续存在。蛋白质-蛋白质相互作用(PPIs)是重要的生物过程的基础,包括寄生虫-宿主相互作用和细胞入侵。在此,我们利用先进的交联质谱(XL-MS)技术绘制了弓形虫速殖子细胞质提取物相互作用组。通过整合ms可切割和不可切割分析,我们在中等置信度(错误发现率[FDR] < 5%)和高置信度(FDR < 1%)下共鉴定出196种独特的ppi,揭示了关键细胞复合物(如核糖体、蛋白酶体和致密颗粒蛋白)内已知和新的相互作用。结构验证证实了交联残基的空间接近性,而与现有数据集(hyperLOPIT, ToxoNET和STRING)的比较分析证实了鉴定的相互作用的生物学相关性。此外,我们引入了一种利用生物注释和实验数据的机器学习方法,以显着增强ppi的检测和验证。我们的发现不仅提供了弓形虫分子结构的精细视图,而且突出了xml - ms结合计算工具在解剖复杂寄生虫蛋白质组中的实用性。xml - ms相互作用组图谱为了解寄生虫生物学和制定靶向治疗策略提供了新的有价值的资源。我们的工作提出了一种结合机器学习的交联质谱(XL-MS)的新应用,可以系统地表征刚地弓形虫(一种具有重要临床和流行病学意义的病原体)胞浆蛋白-蛋白相互作用。本研究通过利用先进的xml - ms技术捕获瞬时和新颖的相互作用,解决了微生物蛋白质组学的一个重要空白,这些相互作用通常难以用传统方法检测。通过将ms可切割和不可切割策略与强大的机器学习方法相结合,我们能够显著增强对真正蛋白质相互作用的识别。所描述的方法不仅提高了相互作用组分析的深度和准确性,而且还提供了一个可应用于其他复杂微生物系统的框架。我们相信,从我们的研究中获得的见解将引起微生物学界的极大兴趣,特别是研究宿主-病原体相互作用和寄生虫感染的分子机制的研究人员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping a Toxoplasma gondii interactome by crosslinking mass spectrometry and machine learning.

Toxoplasma gondii, a widespread human parasite, persists in hosts through complex molecular interactions. Protein-protein interactions (PPIs) underpin essential biological processes, including parasite-host interactions and cellular invasion. Herein, we utilized advanced crosslinking mass spectrometry (XL-MS) techniques to map a T. gondii tachyzoite cytosolic extract interactome. By integrating MS-cleavable and non-cleavable analysis, we identified a total of 196 unique PPIs at medium confidence (false discovery rate [FDR] < 5%) and 171 at high confidence (FDR < 1%), revealing both known and novel interactions within critical cellular complexes such as the ribosome, proteasome, and dense granule proteins. Structural validation confirmed spatial proximity of crosslinked residues, while comparative analyzes against existing data sets (hyperLOPIT, ToxoNET, and STRING) corroborated the biological relevance of identified interactions. Furthermore, we introduced a machine learning approach leveraging biological annotations and experimental data to significantly enhance the detection and validation of PPIs. Our findings not only provide a refined view of T. gondii's molecular architecture but also highlight the utility of XL-MS coupled with computational tools in dissecting complex parasite proteomes. The XL-MS interactome map provides a new valuable resource for understanding parasite biology and developing targeted therapeutic strategies.IMPORTANCEOur work presents a novel application of crosslinking mass spectrometry (XL-MS) integrated with machine learning to systematically characterize the cytosolic protein-protein interactions in Toxoplasma gondii-a pathogen of significant clinical and epidemiological interest. This study addresses an important gap in microbial proteomics by leveraging advanced XL-MS techniques to capture transient and novel interactions, which are often challenging to detect with conventional methods. By combining both MS-cleavable and non-cleavable strategies with a robust machine learning approach, we were able to significantly enhance the identification of genuine protein interactions. The methodology described not only improves the depth and accuracy of interactome analysis but also offers a framework that can be applied to other complex microbial systems. We believe that the insights gained from our study will be of great interest to the microbiology community, particularly researchers focusing on host-pathogen interactions and the molecular mechanisms underlying parasitic infections.

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来源期刊
mBio
mBio MICROBIOLOGY-
CiteScore
10.50
自引率
3.10%
发文量
762
审稿时长
1 months
期刊介绍: mBio® is ASM''s first broad-scope, online-only, open access journal. mBio offers streamlined review and publication of the best research in microbiology and allied fields.
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