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首页> 外文期刊>Journal of computer sciences >Knowledge Based Bayesian Network Construction Algorithm for Medical Data Fusion to Enhance Services and Diagnosis
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Knowledge Based Bayesian Network Construction Algorithm for Medical Data Fusion to Enhance Services and Diagnosis

机译:基于知识的贝叶斯网络构造算法用于医学数据融合,以增强服务和诊断能力

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Traditional Bayesian networks' algorithms are treating the network construction process as an isolated and autonomous data-driven trial-and-error process and completely ignoring the domain knowledge. In this work we are proposing a new 'Semantically Aware Ontology-Based Bayesian Network construction algorithm' that is knowledge centered instead of data centered. The objective of the new algorithm is to empower patients through improving their self-diagnosis and testing by automatically constructing a set of Ontology-Based Bayesian networks using combination of domain and expert knowledge. The exciting thing about the proposed algorithm is that it uses on 'Saudi-native training data' streamed from the “Unified Medical Record” server and authenticated domain and expert knowledge extracted from the “King Abdulla Encyclopedia” server. A proof-of-concept prototype based on open-source software “Netica” and “Protégé” is implemented and tested. It demonstrates learning of probabilities, network structure and mixes discrete and continuous variables. It imports “Diabetes” patient medical record steams from the “Unified Medical Record” server to be used as training and testing datasets. It also extracts Bayesian data variables from the “King Abdullah Encyclopedia” server to aid in constructing and learning the ontology-based Bayesian networks. The prototype is implemented on an Internet server and can be accessed from medical applications on Smartphones and PDAs. It currently deals with 60 positive “Diabetes” Saudi patients and 60 negative
机译:传统的贝叶斯网络算法将网络构建过程视为独立的,自主的数据驱动的试错过程,并且完全忽略了领域知识。在这项工作中,我们提出了一种新的“基于语义感知本体的贝叶斯网络构建算法”,该算法以知识为中心,而不是以数据为中心。新算法的目的是通过结合领域知识和专家知识自动构建一套基于本体的贝叶斯网络来增强患者的自我诊断和测试能力。提出的算法令人兴奋的事情是,它使用了从“统一病历”服务器和认证域中提取的“沙特本地培训数据”,以及从“阿卜杜拉国王百科全书”服务器中提取的专家知识。基于开源软件“ Netica”和“Protégé”的概念验证原型已实现并经过测试。它演示了概率,网络结构的学习,并混合了离散变量和连续变量。它从“统一病历”服务器导入“糖尿病”病历蒸汽,用作训练和测试数据集。它还从“阿卜杜拉国王百科全书”服务器中提取贝叶斯数据变量,以帮助构建和学习基于本体的贝叶斯网络。该原型在Internet服务器上实现,可以从智能手机和PDA上的医疗应用程序访问。它目前处理60名阳性“糖尿病”沙特患者和60名阴性

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