银屑病
促炎细胞因子
细胞因子
转录组
炎症
免疫学
生物
人体皮肤
人性化鼠标
生物信息学
计算生物学
医学
免疫系统
基因
遗传学
基因表达
作者
Gayathri Perera,Chrysanthi Ainali,Ekaterina Semenova,Christian Hundhausen,G. Barinaga,Deepika Kassen,Andrew E. Williams,Muddassar M. Mirza,Mercedesz Balázs,Xiaoting Wang,Robert Sanchez Rodriguez,Andrej Alendar,Jonathan Barker,Sophia Tsoka,Wenjun Ouyang,Frank O. Nestle
出处
期刊:Science Translational Medicine
[American Association for the Advancement of Science (AAAS)]
日期:2014-02-12
卷期号:6 (223)
被引量:38
标识
DOI:10.1126/scitranslmed.3007217
摘要
Cytokines are critical checkpoints of inflammation. The treatment of human autoimmune disease has been revolutionized by targeting inflammatory cytokines as key drivers of disease pathogenesis. Despite this, there exist numerous pitfalls when translating preclinical data into the clinic. We developed an integrative biology approach combining human disease transcriptome data sets with clinically relevant in vivo models in an attempt to bridge this translational gap. We chose interleukin-22 (IL-22) as a model cytokine because of its potentially important proinflammatory role in epithelial tissues. Injection of IL-22 into normal human skin grafts produced marked inflammatory skin changes resembling human psoriasis. Injection of anti-IL-22 monoclonal antibody in a human xenotransplant model of psoriasis, developed specifically to test potential therapeutic candidates, efficiently blocked skin inflammation. Bioinformatic analysis integrating both the IL-22 and anti-IL-22 cytokine transcriptomes and mapping them onto a psoriasis disease gene coexpression network identified key cytokine-dependent hub genes. Using knockout mice and small-molecule blockade, we show that one of these hub genes, the so far unexplored serine/threonine kinase PIM1, is a critical checkpoint for human skin inflammation and potential future therapeutic target in psoriasis. Using in silico integration of human data sets and biological models, we were able to identify a new target in the treatment of psoriasis.
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