Identifying Asthma genetic signature patterns by mining Gene Expression BIG Datasets using Image Filtering Algorithms

M. Hachim, B. Mahboub, Q. Hamid, R. Hamoudi
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引用次数: 3

Abstract

Asthma is a treatable but incurable chronic inflammatory disease affecting more than 14% of the UAE population. Asthma is still a clinical dilemma as there is no proper clinical definition of asthma, unknown definitive underlying mechanisms, no objective prognostic tool nor bedside noninvasive diagnostic test to predict complication or exacerbation. Big Data in the form of publicly available transcriptomics can be a valuable source to decipher complex diseases like asthma. Such an approach is hindered by technical variations between different studies that may mask the real biological variations and meaningful, robust findings. A large number of datasets of gene expression microarray images need a powerful tool to properly translate the image intensities into truly differential expressed genes between conditioned examined from the noise. Here we used a novel bioinformatic method based on the coefficient of variance to filter nonvariant probes with stringent image analysis processing between asthmatic and healthy to increase the power of identifying accurate signals hidden within the heterogeneous nature of asthma. Our analysis identified important signaling pathways members, namely NFKB and TGFB pathways, to be differentially expressed between severe asthma and healthy controls. Those vital pathways represent potential targets for future asthma treatment and can serve as reliable biomarkers for asthma severity. Proper image analysis for the publicly available microarray transcriptomics data increased its usefulness to decipher asthma and identify genuine differentially expressed genes that can be validated across different datasets.
通过使用图像滤波算法挖掘基因表达大数据集识别哮喘遗传特征模式
哮喘是一种可治疗但无法治愈的慢性炎症性疾病,影响阿联酋14%以上的人口。哮喘仍然是一个临床难题,因为没有适当的临床定义,不知道明确的潜在机制,没有客观的预后工具,也没有床边无创诊断测试来预测并发症或恶化。公开的转录组学形式的大数据可以成为破译哮喘等复杂疾病的宝贵资源。这种方法受到不同研究之间技术差异的阻碍,这些差异可能掩盖了真正的生物学差异和有意义的、可靠的发现。基因表达微阵列图像的大量数据集需要一个强大的工具来正确地将图像强度转换为真正的差异表达基因。本文采用一种基于方差系数的新型生物信息学方法,通过严格的图像分析处理,过滤哮喘和健康之间的非变异体探针,以提高识别隐藏在哮喘异质性中的准确信号的能力。我们的分析确定了重要的信号通路成员,即NFKB和TGFB通路,在严重哮喘和健康对照之间存在差异表达。这些重要途径代表了未来哮喘治疗的潜在靶点,可以作为哮喘严重程度的可靠生物标志物。对公开可用的微阵列转录组学数据进行适当的图像分析,增加了其在破译哮喘和识别可跨不同数据集验证的真正差异表达基因方面的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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