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Virtual Calibration Quantitative Mass Spectrometry Imaging for Accurately Mapping Analytes across Heterogenous Biotissue

机译:虚拟校准定量质谱成像,用于在异源生物发布中准确映射分析物

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摘要

It is highly challenging to quantitatively map multiple analytes in biotissues without specific chemical labeling. Quantitative mass spectrometry imaging (QMSI) has this potential but still poses technical issues for its variant ionization efficiency across a complicated, heterogeneous biomatrices. Herein, a self-developed air-flow-assisted desorption electrospray ionization (AFADESI) is introduced to present a proof of concept method, virtual calibration (VC) QMSI. This method screens and utilizes analyte response-related endogenous metabolite ions from each mass spectrum as native internal standards (IS). Through machine-learning-based regression and clustering, tissue-specific ionization variation can be automatically recognized, predicted, and normalized region by region or pixel by pixel. Therefore, the quantity of analytes can be accurately mapped across highly structural biosamples including whole body, kidney, brain, tumor, etc. VC-QMSI has the advantages of simple sample preparation without laborious isotopic IS synthesis, extrapolation for those unknown tissues or regions without previous investigation, and automatic spatial recognition without histological guidance. This strategy is suitable for mass spectrometry imaging using a variety of in situ ionization techniques. It is believed that VC-QMSI has wide applicability for drug candidate's discovery, molecular mechanism elucidation, biomarker validation, and clinical diagnosis.
机译:在没有特定化学标记的情况下定量地图中定量地图多分析物定量地图多种分析是强大的挑战性。定量质谱成像(QMSI)具有这种潜力,但仍然在复杂的异构生物分析中的变体电离效率仍然造成技术问题。这里,引入了一种自我开发的空气流辅助解吸电喷雾电离(afadesi)以呈现概念方法的证据,虚拟校准(VC)QMSI。该方法筛选并利用来自每个质谱的分析物响应相关的内源性代谢物离子,因为天然内标(是)。通过基于机器学习的回归和聚类,可以通过像素自动识别,预测和归一化区域或像素的自动识别,预测和归一化区域。因此,分析物的数量可以在高度结构的生物瘤中准确映射,包括全身,肾,脑,肿瘤等。VC-QMSI具有简单的样品制备的优点,无需艰苦的同位素是合成的,用于这些未知组织或地区的外推。没有以前的调查,以及无组织学指导的自动空间识别。该策略适用于使用各种原位电离技术的质谱成像。据信VC-QMSI对药物候选人的发现,分子机制阐明,生物标志物验证和临床诊断具有广泛的适用性。

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  • 来源
    《Analytical chemistry》 |2019年第4期|共9页
  • 作者单位

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

    Chinese Acad Med Sci Inst Mat Med State Key Lab Bioact Subst &

    Funct Nat Med Beijing 100050 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
  • 关键词

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