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IBM Watson: How Cognitive Computing Can Be Applied to Big Data Challenges in Life Sciences Research

机译:IBM Watson:认知计算如何应用于生命科学研究中的大数据挑战

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摘要

Life sciences researchers are under pressure to innovate faster than ever. Big data offer the promise of unlocking novel insights and accelerating breakthroughs. Ironically, although more data are available than ever, only a fraction is being integrated, understood, and analyzed. The challenge lies in harnessing volumes of data, integrating the data from hundreds of sources, and understanding their various formats. New technologies such as cognitive computing offer promise for addressing this challenge because cognitive solutions are specifically designed to integrate and analyze big datasets. Cognitive solutions can understand different types of data such as lab values in a structured database or the text of a scientific publication. Cognitive solutions are trained to understand technical, industry-specific content and use advanced reasoning, predictive modeling, and machine learning techniques to advance research faster. Watson, a cognitive computing technology, has been configured to support life sciences research. This version of Watson includes medical literature, patents, genomics, and chemical and pharmacological data that researchers would typically use in their work. Watson has also been developed with specific comprehension of scientific terminology so it can make novel connections in millions of pages of text. Watson has been applied to a few pilot studies in the areas of drug target identification and drug repurposing. The pilot results suggest that Watson can accelerate identification of novel drug candidates and novel drug targets by harnessing the potential of big data. (C) 2016 The Authors. Published by Elsevier HS Journals, Inc.
机译:生命科学研究者承受着比以往更快地进行创新的压力。大数据提供了释放新颖见解和加速突破的希望。具有讽刺意味的是,尽管可获得的数据比以往任何时候都多,但只有一小部分被集成,理解和分析。挑战在于利用数据量,集成来自数百个来源的数据以及了解其各种格式。认知计算等新技术有望解决这一挑战,因为认知解决方案是专门设计用于集成和分析大型数据集的。认知解决方案可以理解不同类型的数据,例如结构化数据库中的实验室值或科学出版物的文本。认知解决方案经过培训可以理解技术,特定于行业的内容,并使用高级推理,预测模型和机器学习技术来更快地推进研究。 Watson是一种认知计算技术,已配置为支持生命科学研究。此版本的Watson包括研究人员通常在工作中使用的医学文献,专利,基因组学以及化学和药理学数据。 Watson的开发还具有对科学术语的特殊理解,因此它可以在数百万页的文本中建立新颖的联系。 Watson已被应用于药物靶标识别和药物再利用领域的一些试点研究。初步结果表明,沃森可以利用大数据的潜力来加快新药候选物和新药靶标的鉴定。 (C)2016作者。由Elsevier HS Journals,Inc.发布

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