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首页> 外文期刊>Neurotherapeutics >The microarray data analysis process: From raw data to biological significance
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The microarray data analysis process: From raw data to biological significance

机译:微阵列数据分析过程:从原始数据到生物学意义

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Despite advances in microarray technology that have led to increased reproducibility and substantial reductions in the cost of microarrays, the successful use of this technology is still elusive for many researchers, and microarray data analysis in particular presents a substantial bottleneck for many biomedical researchers. There are many reasons for this, including the expense of and a lack of adequate training in the use of analysis software. An additional reason is that microarray data analysis has largely been treated in the past as a set of separate steps, with the majority of emphasis being placed on statistical analysis and visualization of the data. For many biomedical researchers determining the biological significance of the data has been the greatest challenge and in the last several years more emphasis has been placed on this aspect of the analysis process. Despite this broadening of the scope of analysis there are still several aspects of the process that continue to be neglected, including additional related and interdependent aspects, such as experimental design, data accessibility, and platform selection. Though not traditionally thought of as integral to the data analysis process, these factors have profound effects on the analysis process. This article will discuss the importance of these additional aspects, as well as statistical analysis and determination of biological significance of microarray data. A summary of currently available software options will also be presented with a focus on the aspects discussed.
机译:尽管微阵列技术的进步已导致可重复性的提高和微阵列成本的大幅降低,但是对于许多研究人员而言,这项技术的成功使用仍然遥遥无期,尤其是微阵列数据分析对许多生物医学研究人员而言是一个巨大的瓶颈。造成这种情况的原因很多,其中包括使用分析软件的费用和缺乏足够的培训。另一个原因是,过去微阵列数据分析在很大程度上已被视为一组单独的步骤,其中大部分重点放在统计分析和数据可视化上。对于许多生物医学研究人员而言,确定数据的生物学意义一直是最大的挑战,并且在最近几年中,人们更加重视分析过程的这一方面。尽管分析的范围得到了扩展,但是该过程的许多方面仍然被忽略,包括其他相关和相互依存的方面,例如实验设计,数据可访问性和平台选择。尽管传统上不认为这些因素是数据分析过程不可或缺的,但这些因素对分析过程具有深远的影响。本文将讨论这些其他方面的重要性,以及微阵列数据的统计学分析和生物学意义的确定。还将提供当前可用软件选项的摘要,重点放在讨论的方面。

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