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In Progress
Clinical
GSE40829_family
Purpose

The cellular composition of heterogeneous samples can be predicted from reference gene expression profiles that represent the homogeneous, constituent populations of the heterogeneous samples. However, existing methods fail when the reference profiles are not representative of the constituent populations. We developed PERT, a new probabilistic expression deconvolution method, to address this limitation. PERT was used to deconvolve cellular composition of variably sourced and treated heterogeneous human blood samples. Our results indicate that even after correcting batch effects, cells presenting the same cell surface antigens display different transcriptional programs when they are uncultured versus culture-derived. Given gene expression profiles of culture-derived heterogeneous samples and profiles of uncultured reference populations, PERT was able to accurately recover proportions of pure populations composing the heterogeneous samples. We anticipate that PERT will be widely applicable to expression deconvolution problems using profiles from reference populations that vary from the corresponding constituent populations in cellular state but not cellular identity.Human umbilical cord blood-derived lineage negative cells and mononucleated cells

Hypothesis

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Experimental Design

Cellular compositions of mononucleated cell and lineage negative cell compartments were deconvolved based on the gene expression profiles

Experimental Variables

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Controls

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Methods

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Additional Information

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Microarray
Affymetrix HG-U133A
4 Samples Loaded: 4
Sample Set Spreadsheet
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Samples Preview
Sample ID !Sample_title cell type
GSM1002637 mononucleated cells, technical rep 1 mononucleated cell
GSM1002638 mononucleated cells, technical rep 2 mononucleated cell
GSM1002639 lin- cells, technical rep 1 lin- cell
GSM1002640 lin- cells, technical rep 2 lin- cell
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File
Raw Signal
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Clinical Datasource
Links

Samples Viewer / Editor

All fields are editable except the "Sample ID" column. To edit a cell, click within the cell. To edit a "date" cell, click on the calendar icon. To cancel an edit, press the ESC key.

Sample ID !Sample Title Cell type
GSM1002637
mononucleated cells, technical rep 1
mononucleated cell
GSM1002638
mononucleated cells, technical rep 2
mononucleated cell
GSM1002639
lin- cells, technical rep 1
lin- cell
GSM1002640
lin- cells, technical rep 2
lin- cell

Group Sets View in Gene Expression Browser

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Module Analysis

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