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1.
Genet. mol. res. (Online) ; 6(4): 911-922, 2007. ilus, graf
Article in English | LILACS | ID: lil-520057

ABSTRACT

An effective strategy for managing protein databases is to provide mechanisms to transform raw data into consistent, accurate and reliable information. Such mechanisms will greatly reduce operational inefficiencies and improve one’s ability to better handle scientific objectives and interpret the research results. To achieve this challenging goal for the STING project, we introduce Sting_RDB, a relational database of structural parameters for protein analysis with support for data warehousing and data mining. In this article, we highlight the main features of Sting_RDB and show how a user can explore it for efficient and biologically relevant queries. Considering its importance for molecular biologists, effort has been made to advance Sting_RDB toward data quality assessment. To the best of our knowledge, Sting_RDB is one of the most comprehensive data repositories for protein analysis, now also capable of providing its users with a data quality indicator. This paper differs from our previous study in many aspects. First, we introduce Sting_RDB, a relational database with mechanisms for efficient and relevant queries using SQL. Sting_rdb evolved from the earlier, text (flat file)-based database, in which data consistency and integrity was not guaranteed. Second, we provide support for data warehousing and mining. Third, the data quality indicator was introduced. Finally and probably most importantly, complex queries that could not be posed on a text-based database, are now easily implemented. Further details are accessible at the Sting_RDB demo web page: http://www.cbi.cnptia.embrapa.br/StingRDB.


Subject(s)
Computational Biology/methods , Database Management Systems , Databases, Protein , Proteins/chemistry , Protein Structure, Secondary
2.
Genet. mol. res. (Online) ; 5(1): 193-202, Mar. 31, 2006. graf, tab
Article in English | LILACS | ID: lil-449133

ABSTRACT

Predicting enzyme class from protein structure parameters is a challenging problem in protein analysis. We developed a method to predict enzyme class that combines the strengths of statistical and data-mining methods. This method has a strong mathematical foundation and is simple to implement, achieving an accuracy of 45%. A comparison with the methods found in the literature designed to predict enzyme class showed that our method outperforms the existing methods.


Subject(s)
Humans , Protein Conformation , Enzymes/chemistry , Enzymes/classification , Bayes Theorem , Algorithms , Sequence Alignment
3.
Genet. mol. res. (Online) ; 5(4): 717-722, 2006. ilus, graf
Article in English | LILACS | ID: lil-482084

ABSTRACT

Star STING is the latest version of the STING suite of programs and corresponding database. We report on five important aspects of this package that have acquired some new characteristics, designed to add key advantages to the whole suite: 1) availability for most popular platforms and browsers, 2) introduction of the STING_DB quality assessment, 3) improvement in algorithms for calculation of three STING parameters, 4) introduction of five new STING modules, and 5) expansion of the existing modules. Star STING is freely accessible at: http://sms.cbi.cnptia.embrapa.br/SMS/, http://trantor.bioc.columbia.edu/SMS, http://www.es.embnet.org/SMS/, http://gibk26.bse.kyutech.ac.jp/SMS/ and http://www.ar.embnet.org/SMS.


Subject(s)
Databases, Protein , Proteins/chemistry , Sequence Analysis, Protein , Software , Algorithms , Computer Graphics , Models, Molecular , Molecular Structure
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