Big data challenges and opportunities in high-throughput sequencing

R. Ward, Robert Schmieder, Gareth Highnam, D. Mittelman
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引用次数: 39

Abstract

The advent of high-throughput sequencing, coupled with advances in computational methods, has enabled genome-wide dissection of genetics, evolution, and disease, with nucleotide resolution. The discoveries derived from genomics promise benefits to basic research, biotechnology, and medicine; however, the speed and affordability of sequencing has resulted in a flood of “big data” in the life sciences. In addition, the current heterogeneity of sequencing platforms and diversity of applications complicate the development of tools for analysis, and this has slowed widespread adoption of the technology. Making sense of the data and delivering actionable insight requires improved computational infrastructure, new methods for interpreting the data, and unique collaborative approaches. Here we review the role of big data in genomics, its impact on the development of tools for collaborative analysis of genomes, and successes and ongoing challenges in coping with big data.
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大数据在高通量测序中的挑战与机遇
高通量测序的出现,加上计算方法的进步,使得核苷酸分辨率的遗传、进化和疾病的全基因组解剖成为可能。基因组学的发现有望为基础研究、生物技术和医学带来益处;然而,测序的速度和可负担性导致了生命科学领域“大数据”的泛滥。此外,目前测序平台的异质性和应用的多样性使分析工具的开发复杂化,这减缓了该技术的广泛采用。理解数据并提供可操作的见解需要改进的计算基础设施、解释数据的新方法和独特的协作方法。在这里,我们回顾了大数据在基因组学中的作用,它对基因组协作分析工具发展的影响,以及应对大数据的成功和持续挑战。
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