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Showing 1–6 of 6 results
Advanced filters: Author: Gennifer Merrihew Clear advanced filters
  • A multiplexing strategy for data-independent acquisition (DIA)-based mass spectrometry addresses the limitation of low precursor selectivity to make DIA more practical for peptide analysis.

    • Jarrett D Egertson
    • Andreas Kuehn
    • Michael J MacCoss
    Research
    Nature Methods
    Volume: 10, P: 744-746
  • Authors report MagNet, a plasma extracellular vesicle (EV) enrichment strategy using magnetic beads. Proteomic interrogation of this plasma EV fraction enables the detection of proteins that are beyond the dynamic range of mass spectrometry of unfractionated plasma.

    • Christine C. Wu
    • Kristine A. Tsantilas
    • Michael J. MacCoss
    ResearchOpen Access
    Nature Communications
    Volume: 16, P: 1-15
  • Resilience to Alzheimer’s disease (RAD) is an uncommon combination of high disease burden without dementia. The authors perform proteomic analysis of RAD brains and show lower isocortical and hippocampal soluble Aβ levels, actin filament-based processes, cellular detoxification, and wound healing are significant features.

    • Zhi Huang
    • Gennifer E. Merrihew
    • Thomas J. Montine
    ResearchOpen Access
    Nature Communications
    Volume: 14, P: 1-14
  • Uniform processing and detailed annotation of human, worm and fly RNA-sequencing data reveal ancient, conserved features of the transcriptome, shared co-expression modules (many enriched in developmental genes), matched expression patterns across development and similar extent of non-canonical, non-coding transcription; furthermore, the data are used to create a single, universal model to predict gene-expression levels for all three organisms from chromatin features at the promoter.

    • Mark B. Gerstein
    • Joel Rozowsky
    • Robert Waterston
    ResearchOpen Access
    Nature
    Volume: 512, P: 445-448