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A grid-based HIV expert system

机译:基于网格的HIV专家系统

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This paper addresses grid-based integration and access of distributed data from infectious disease patient databases, literature on in-vitro and in-vivo pharmaceutical data, mutation databases, clinical trials, simulations and medical expert knowledge. Artificial intelligence and grid technology is used to abstract knowledge from the data and provide the physicians with adaptive interactive advice on treatment applied to drug resistant HIV. An important aspect of our research is to use a variety of statistical and numerical methods to identify relationships between HIV genetic sequences and antiviral resistance to investigate consistency of results. The output of the problem-solving environment (PSE) consists of a prediction of the drug sensitivity of the virus, generated by comparing the viral genotype to a relational database which contains a large number of phenotype-genotype pairs. Multivariate analyses combined with rule-based fuzzy logic are applied to the integrated data to provide ranking of patient-specific drugs. In addition, cellular automata-based simulations are used to predict the drug behaviour overtime. Access to and integration of data is done through existing Internet servers and emerging grid-based frameworks like Globus. Data presentation is done by standalone PC based software, Web-access and PDA roaming WAP access. The experiments were carried out on the DAS, a Dutch Grid testbed.
机译:本文介绍了来自传染病患者数据库,体外和体内药物数据,突变数据库,临床试验,模拟和医学专家知识的文献的基于网格的集成和访问。人工智能和电网技术用于抽象数据的知识,并为医生提供适应性互动建议的应用,适用于耐药艾滋病毒。我们研究的一个重要方面是使用各种统计和数值方法来鉴定艾滋病毒遗传序列与抗病毒性之间的关系,以研究结果的一致性。解决问题的环境(PSE)的输出包括预测病毒的药物敏感性,通过将病毒基因型与含有大量表型基因型对的关系数据库进行比较。多变量分析与基于规则的模糊逻辑相结合,应用于集成数据,以提供患者特异性药物的排名。此外,基于蜂窝自动机的模拟用于预测药物行为加班。数据访问和集成通过现有的Internet服务器和新兴网格的基于Globus的框架完成。数据演示由基于PC基于PC的软件,Web访问和PDA漫游WAP访问完成。实验是在DAS上进行的,荷兰网格试验。

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