Toward Identification of Markers for Brain-Derived Extracellular Vesicles in Cerebrospinal Fluid: A Large-Scale, Unbiased Analysis Using Proximity Extension Assays

IF 15.5 1区 医学 Q1 CELL BIOLOGY
Maia Norman, Adnan Shami-shah, Sydney C. D'Amaddio, Benjamin G. Travis, Dmitry Ter-Ovanesyan, Tyler J. Dougan, David R. Walt
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Abstract

Extracellular vesicles (EVs) captured in biofluids have opened a new frontier for liquid biopsies. To enrich for vesicles coming from a particular cell type or tumour, scientists utilize antibodies to transmembrane proteins that are relatively unique to the cell type of interest. However, recent evidence has called into question the basic assumption that all transmembrane proteins measured in biofluids are, in fact, EV-associated. To identify both candidate markers for brain-derived EV immunocapture and cargo proteins to validate the EVs’ cell of origin, we conducted an unbiased Olink screen, measuring 5416 unique proteins in cerebrospinal fluid after size exclusion chromatography. We identified proteins that demonstrated a clear EV fractionation pattern and created a searchable dataset of candidate EV-associated markers—both proteins that are cell type-specific within the brain, and proteins found across multiple cell types for use as general EV markers. We further implemented the DeepTMHMM deep learning model to differentiate predicted cytosolic, transmembrane, and external proteins and found that intriguingly, only 10% of the predicted transmembrane proteins have a clear EV fractionation pattern based on our stringent criteria. This dataset further bolsters the critical importance of verifying EV association of candidate proteins using methods such as size exclusion chromatography before downstream use of the targets for EV analysis.

Abstract Image

鉴定脑脊液中脑源性细胞外囊泡的标记物:使用邻近延伸法进行大规模、无偏分析
生物体液中捕获的细胞外囊泡(EVs)为液体活检开辟了一个新的前沿。为了丰富来自特定细胞类型或肿瘤的囊泡,科学家们利用抗体来跨膜蛋白,这对感兴趣的细胞类型来说是相对独特的。然而,最近的证据对生物体液中测量的所有跨膜蛋白实际上与肠病毒相关的基本假设提出了质疑。为了确定脑源性脑脊液免疫捕获的候选标记和货物蛋白,以验证脑脊液的来源细胞,我们进行了无偏差的Olink筛选,在尺寸排除层析后测量脑脊液中的5416种独特蛋白。我们确定了具有清晰EV分离模式的蛋白质,并创建了候选EV相关标记物的可搜索数据集,这些标记物既包括大脑中特定细胞类型的蛋白质,也包括在多种细胞类型中发现的可作为通用EV标记物的蛋白质。我们进一步实施了DeepTMHMM深度学习模型来区分预测的细胞质蛋白、跨膜蛋白和外膜蛋白,有趣的是,根据我们严格的标准,只有10%的预测跨膜蛋白具有明确的EV分离模式。该数据集进一步支持了在下游使用EV分析目标之前,使用尺寸排除色谱等方法验证候选蛋白EV关联的关键重要性。
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来源期刊
Journal of Extracellular Vesicles
Journal of Extracellular Vesicles Biochemistry, Genetics and Molecular Biology-Cell Biology
CiteScore
27.30
自引率
4.40%
发文量
115
审稿时长
12 weeks
期刊介绍: The Journal of Extracellular Vesicles is an open access research publication that focuses on extracellular vesicles, including microvesicles, exosomes, ectosomes, and apoptotic bodies. It serves as the official journal of the International Society for Extracellular Vesicles and aims to facilitate the exchange of data, ideas, and information pertaining to the chemistry, biology, and applications of extracellular vesicles. The journal covers various aspects such as the cellular and molecular mechanisms of extracellular vesicles biogenesis, technological advancements in their isolation, quantification, and characterization, the role and function of extracellular vesicles in biology, stem cell-derived extracellular vesicles and their biology, as well as the application of extracellular vesicles for pharmacological, immunological, or genetic therapies. The Journal of Extracellular Vesicles is widely recognized and indexed by numerous services, including Biological Abstracts, BIOSIS Previews, Chemical Abstracts Service (CAS), Current Contents/Life Sciences, Directory of Open Access Journals (DOAJ), Journal Citation Reports/Science Edition, Google Scholar, ProQuest Natural Science Collection, ProQuest SciTech Collection, SciTech Premium Collection, PubMed Central/PubMed, Science Citation Index Expanded, ScienceOpen, and Scopus.
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