Turning quantity into quality: novel quality assurance strategies for data produced by high-throughput genomics technologies

Hans Peter Fischer
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引用次数: 4

Abstract

The pharmaceutical industry is facing the challenge of managing the exponential increase in volume, diversity and complexity of data generated by high-throughput technologies such as genome sequencing, gene-expression profiling, protein-expression profiling, metabolic profiling and high-throughput screening. These novel ‘genomics’ technologies are expected to reshape the approach of life science companies to research. Unfortunately, in many cases genomics technologies have been used uncritically, and some preliminary results have been disappointing. The lack of standardized data validation and quality assurance processes is recognized as one of the major hurdles for successfully implementing genomics technologies. This is particularly important for industrialized drug discovery processes, because more and more key conclusions and far-reaching decisions in the pharmaceutical industry are based on data that is generated automatically. Therefore, automated, specialized quality-control systems that can spot erroneous data that might obscure important biological effects are needed urgently. In this article, special emphasis is placed on DNA microarray technologies, a key genomics technology that suffers from severe problems with data quality. A generic, automatable data-quality-assurance workflow is discussed that will ultimately improve the quality of the drug candidates and, at the same time, reduce overall drug-development costs.

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将数量转化为质量:高通量基因组技术产生的数据的新型质量保证策略
制药行业正面临着管理高通量技术(如基因组测序、基因表达谱、蛋白质表达谱、代谢谱和高通量筛选)产生的数据数量、多样性和复杂性呈指数级增长的挑战。这些新颖的“基因组学”技术有望重塑生命科学公司的研究方法。不幸的是,在许多情况下,基因组技术被不加批判地使用,一些初步结果令人失望。缺乏标准化的数据验证和质量保证过程被认为是成功实施基因组学技术的主要障碍之一。这对于工业化药物发现过程尤其重要,因为制药工业中越来越多的关键结论和影响深远的决定是基于自动生成的数据。因此,迫切需要能够发现可能掩盖重要生物效应的错误数据的自动化、专业化的质量控制系统。在本文中,特别强调了DNA微阵列技术,这是一项关键的基因组学技术,受到严重的数据质量问题的困扰。本文讨论了一种通用的、可自动化的数据质量保证工作流程,它将最终提高候选药物的质量,同时降低总体药物开发成本。
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