Revealing biological information using data structuring and automated learning.

Irina Mohorianu, Vincent Moulton
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引用次数: 1

Abstract

The intermediary steps between a biological hypothesis, concretized in the input data, and meaningful results, validated using biological experiments, commonly employ bioinformatics tools. Starting with storage of the data and ending with a statistical analysis of the significance of the results, every step in a bioinformatics analysis has been intensively studied and the resulting methods and models patented. This review summarizes the bioinformatics patents that have been developed mainly for the study of genes, and points out the universal applicability of bioinformatics methods to other related studies such as RNA interference. More specifically, we overview the steps undertaken in the majority of bioinformatics analyses, highlighting, for each, various approaches that have been developed to reveal details from different perspectives. First we consider data warehousing, the first task that has to be performed efficiently, optimizing the structure of the database, in order to facilitate both the subsequent steps and the retrieval of information. Next, we review data mining, which occupies the central part of most bioinformatics analyses, presenting patents concerning differential expression, unsupervised and supervised learning. Last, we discuss how networks of interactions of genes or other players in the cell may be created, which help draw biological conclusions and have been described in several patents.

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利用数据结构和自动学习揭示生物信息。
在输入数据中具体化的生物学假设和通过生物学实验验证的有意义的结果之间的中间步骤通常使用生物信息学工具。从数据存储开始,到结果意义的统计分析结束,生物信息学分析的每一步都得到了深入研究,所产生的方法和模型获得了专利。本文综述了主要用于基因研究的生物信息学专利,并指出生物信息学方法在RNA干扰等相关研究中的普遍适用性。更具体地说,我们概述了在大多数生物信息学分析中所采取的步骤,重点介绍了从不同角度揭示细节的各种方法。首先,我们考虑数据仓库,这是必须有效执行的第一个任务,优化数据库的结构,以便于后续步骤和信息检索。接下来,我们回顾数据挖掘,它占据了大多数生物信息学分析的中心部分,提出了关于差异表达、无监督学习和有监督学习的专利。最后,我们讨论了如何在细胞中创建基因或其他参与者的相互作用网络,这有助于得出生物学结论,并已在几项专利中进行了描述。
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