生物
生物信息学
电池类型
人类基因组
计算生物学
显微解剖
疾病
激光捕获显微切割
基因
谱系(遗传)
基因组
细胞
遗传学
基因表达
病理
医学
作者
Wenjun Ju,Casey S. Greene,Felix Eichinger,Viji Nair,Jeffrey B. Hodgin,Markus Bitzer,Young-Suk Lee,Qian Zhu,Masami Kehata,Min Li,Song Jiang,Maria Pia Rastaldi,Clemens D. Cohen,Olga G. Troyanskaya,Matthias Kretzler
出处
期刊:Genome Research
[Cold Spring Harbor Laboratory Press]
日期:2013-08-15
卷期号:23 (11): 1862-1873
被引量:258
标识
DOI:10.1101/gr.155697.113
摘要
Cell-lineage-specific transcripts are essential for differentiated tissue function, implicated in hereditary organ failure, and mediate acquired chronic diseases. However, experimental identification of cell-lineage-specific genes in a genome-scale manner is infeasible for most solid human tissues. We developed the first genome-scale method to identify genes with cell-lineage-specific expression, even in lineages not separable by experimental microdissection. Our machine-learning-based approach leverages high-throughput data from tissue homogenates in a novel iterative statistical framework. We applied this method to chronic kidney disease and identified transcripts specific to podocytes, key cells in the glomerular filter responsible for hereditary and most acquired glomerular kidney disease. In a systematic evaluation of our predictions by immunohistochemistry, our in silico approach was significantly more accurate (65% accuracy in human) than predictions based on direct measurement of in vivo fluorescence-tagged murine podocytes (23%). Our method identified genes implicated as causal in hereditary glomerular disease and involved in molecular pathways of acquired and chronic renal diseases. Furthermore, based on expression analysis of human kidney disease biopsies, we demonstrated that expression of the podocyte genes identified by our approach is significantly related to the degree of renal impairment in patients. Our approach is broadly applicable to define lineage specificity in both cell physiology and human disease contexts. We provide a user-friendly website that enables researchers to apply this method to any cell-lineage or tissue of interest. Identified cell-lineage-specific transcripts are expected to play essential tissue-specific roles in organogenesis and disease and can provide starting points for the development of organ-specific diagnostics and therapies.
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