Storing and structuring big data in histological research (vertebrates) using a relational database in SQL

IF 0.5 Q4 BIOLOGY
V. Langraf, R. Babosová, K. Petrovičová, J. Schlarmannová, V. Brygadyrenko
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引用次数: 0

Abstract

Database systems store data (big data) for various areas dealing with finance (banking, insurance) and are also an essential part of corporate firms. In the field of biology, however, not much attention has been paid to database systems, with the exception of genetics (RNA, DNA) and human protein. Therefore data storage and subsequent implementation is insufficient for this field. The current situation in the field of data use for the assessment of biological relationships and trends is conditioned by constantly changing requirements, while data stored in simple databases used in the field of biology cannot respond operatively to these changes. In the recent period, developments in technology in the field of histology caused an increase in biological information stored in databases with which database technology did not deal. We proposed a new database for histology with designed data types (data format) in database program Microsoft SQL Server Management Studio. In order that the information to support identification of biological trends and regularities is relevant, the data must be provided in real time and in the required format at the strategic, tactical and operational levels. We set the data type according to the needs of our database, we used numeric (smallint,numbers, float), text string (nvarchar, varchar) and date. To select, insert, modify and delete data, we used Structured Query Language (SQL), which is currently the most widely used language in relational databases. Our results represent a new database for information about histology, focusing on histological structures in systems of animals. The structure and relational relations of the histology database will help in analysis of big data, the objective of which was to find relations between histological structures in species and the diversity of habitats in which species live. In addition to big data, the successful estimation of biological relationships and trends also requires the rapid accuracy of scientists who derive key information from the data. A properly functioning database for meta-analyses, data warehousing, and data mining includes, in addition to technological aspects, planning, design, implementation, management, and implementation.
使用SQL中的关系数据库存储和结构化组织学研究(脊椎动物)中的大数据
数据库系统为处理金融(银行、保险)的各个领域存储数据(大数据),也是公司的重要组成部分。然而,在生物学领域,除了遗传学(RNA, DNA)和人类蛋白质之外,对数据库系统的关注并不多。因此,该领域的数据存储和后续实现是不够的。用于评估生物关系和趋势的数据使用领域的现状受到不断变化的需求的制约,而储存在生物领域使用的简单数据库中的数据不能有效地对这些变化作出反应。近年来,组织学领域的技术发展导致数据库中存储的生物信息增加,而数据库技术无法处理这些信息。我们在数据库程序Microsoft SQL Server Management Studio中提出了一个新的组织学数据库,并设计了数据类型(数据格式)。为了使支持查明生物趋势和规律的信息具有相关性,必须在战略、战术和作战各级以所需格式实时提供数据。我们根据数据库的需要设置数据类型,我们使用了数字(smallint,numbers, float),文本字符串(nvarchar, varchar)和日期。为了选择、插入、修改和删除数据,我们使用了结构化查询语言(SQL),这是目前关系数据库中使用最广泛的语言。我们的结果代表了一个关于组织学信息的新数据库,专注于动物系统的组织学结构。组织数据库的结构和关系关系将有助于大数据分析,其目的是发现物种的组织结构与物种生活的栖息地多样性之间的关系。除了大数据之外,成功估计生物关系和趋势还需要科学家从数据中获取关键信息的快速准确性。一个用于元分析、数据仓库和数据挖掘的功能正常的数据库,除了技术方面,还包括规划、设计、实现、管理和实现。
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
25
审稿时长
10 weeks
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