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A knowledge-based decision support system in bioinformatics: an application to protein complex extraction

机译:生物信息学中基于知识的决策支持系统:在蛋白质复合物提取中的应用

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BackgroundWe introduce a Knowledge-based Decision Support System (KDSS) in order to face the Protein Complex Extraction issue. Using a Knowledge Base (KB) coding the expertise about the proposed scenario, our KDSS is able to suggest both strategies and tools, according to the features of input dataset. Our system provides a navigable workflow for the current experiment and furthermore it offers support in the configuration and running of every processing component of that workflow. This last feature makes our system a crossover between classical DSS and Workflow Management Systems.ResultsWe briefly present the KDSS' architecture and basic concepts used in the design of the knowledge base and the reasoning component. The system is then tested using a subset of Saccharomyces cerevisiae Protein-Protein interaction dataset. We used this subset because it has been well studied in literature by several research groups in the field of complex extraction: in this way we could easily compare the results obtained through our KDSS with theirs. Our system suggests both a preprocessing and a clustering strategy, and for each of them it proposes and eventually runs suited algorithms. Our system's final results are then composed of a workflow of tasks, that can be reused for other experiments, and the specific numerical results for that particular trial.ConclusionsThe proposed approach, using the KDSS' knowledge base, provides a novel workflow that gives the best results with regard to the other workflows produced by the system. This workflow and its numeric results have been compared with other approaches about PPI network analysis found in literature, offering similar results.
机译:背景我们引入了基于知识的决策支持系统(KDSS),以解决蛋白质复合物提取问题。使用知识库(KB)编码有关所建议方案的专业知识,我们的KDSS能够根据输入数据集的特征来建议策略和工具。我们的系统为当前实验提供了一个可导航的工作流程,此外,它还为该工作流程的每个处理组件的配置和运行提供支持。这最后一个功能使我们的系统成为传统DSS和工作流管理系统之间的交叉。结果我们简要介绍了KDSS的体系结构以及在知识库和推理组件设计中使用的基本概念。然后使用啤酒酵母蛋白质-蛋白质相互作用数据集的子集测试该系统。我们使用此子集是因为在复杂提取领域,几个研究小组已经对其进行了深入的研究:通过这种方式,我们可以轻松地比较通过KDSS获得的结果与其结果。我们的系统建议了预处理和聚类策略,并且针对它们中的每一个提出并最终运行合适的算法。然后,我们系统的最终结果由任务的工作流程组成,该工作流程可以重用于其他实验,并且可以用于该特定试验的具体数值结果。结论使用KDSS的知识库,所提出的方法提供了一种新颖的工作流程,可以提供最佳的工作效率。关于系统产生的其他工作流程的结果。将该工作流程及其数值结果与文献中有关PPI网络分析的其他方法进行了比较,得出了相似的结果。

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