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Data-driven knowledge acquisition, validation, and transformation into HL7 Arden Syntax

机译:数据驱动的知识获取,验证和转换为HL7 Arden语法

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ObjectiveThe objective of this study is to help a team of physicians and knowledge engineers acquire clinical knowledge from existing practices datasets for treatment of head and neck cancer, to validate the knowledge against published guidelines, to create refined rules, and to incorporate these rules into clinical workflow for clinical decision support.Methods and materialsA team of physicians (clinical domain experts) and knowledge engineers adapt an approach for modeling existing treatment practices into final executable clinical models. For initial work, the oral cavity is selected as the candidate target area for the creation of rules covering a treatment plan for cancer. The final executable model is presented in HL7 Arden Syntax, which helps the clinical knowledge be shared among organizations. We use a data-driven knowledge acquisition approach based on analysis of real patient datasets to generate a predictive model (PM). The PM is converted into a refined-clinical knowledge model (R-CKM), which follows a rigorous validation process. The validation process uses a clinical knowledge model (CKM), which provides the basis for defining underlying validation criteria. The R-CKM is converted into a set of medical logic modules (MLMs) and is evaluated using real patient data from a hospital information system.ResultsWe selected the oral cavity as the intended site for derivation of all related clinical rules for possible associated treatment plans. A team of physicians analyzed the National Comprehensive Cancer Network (NCCN) guidelines for the oral cavity and created a common CKM. Among the decision tree algorithms, chi-squared automatic interaction detection (CHAID) was applied to a refined dataset of 1229 patients to generate the PM. The PM was tested on a disjoint dataset of 739 patients, which gives 59.0% accuracy. Using a rigorous validation process, the R-CKM was created from the PM as the final model, after conforming to the CKM. The R-CKM was converted into four candidate MLMs, and was used to evaluate real data from 739 patients, yielding efficient performance with 53.0% accuracy.ConclusionData-driven knowledge acquisition and validation against published guidelines were used to help a team of physicians and knowledge engineers create executable clinical knowledge. The advantages of the R-CKM are twofold: it reflects real practices and conforms to standard guidelines, while providing optimal accuracy comparable to that of a PM. The proposed approach yields better insight into the steps of knowledge acquisition and enhances collaboration efforts of the team of physicians and knowledge engineers.
机译:目的本研究的目的是帮助一组医师和知识工程师从现有的治疗头颈癌的实践数据集中获取临床知识,根据已发布的指南验证知识,创建完善的规则,并将这些规则纳入临床方法和材料一组医师(临床领域专家)和知识工程师采用一种方法将现有治疗方法建模为最终的可执行临床模型。对于最初的工作,选择口腔作为候选目标区域,以创建涵盖癌症治疗计划的规则。最终的可执行模型以HL7 Arden语法表示,该模型有助于组织之间共享临床知识。我们使用基于对实际患者数据集的分析的数据驱动的知识获取方法来生成预测模型(PM)。将PM转换为精细的临床知识模型(R-CKM),该模型遵循严格的验证过程。验证过程使用临床知识模型(CKM),该模型为定义基础验证标准提供了基础。 R-CKM被转换为一组医疗逻辑模块(MLM),并使用来自医院信息系统的真实患者数据进行评估。结果我们选择了口腔作为预期的部位,以推导出所有可能的相关治疗计划的相关临床规则。一个医师团队分析了国家口腔综合癌症网络(NCCN)指南,并创建了一个常见的CKM。在决策树算法中,将卡方自动交互检测(CHAID)应用于经过精炼的1229位患者的数据集,以生成PM。在739位患者的不相交数据集上对PM进行了测试,其准确性为59.0%。在遵循CKM之后,使用严格的验证过程,从PM创建了R-CKM作为最终模型。将R-CKM转换为四个候选MLM,并用于评估739名患者的真实数据,以53.0%的准确率产生有效表现。结论数据驱动的知识获取和已发布指南的验证用于帮助一组医生和知识工程师创建可执行的临床知识。 R-CKM的优点是双重的:它反映了实际操作并符合标准准则,同时提供了与PM相当的最佳精度。所提出的方法可以更好地了解知识获取的步骤,并可以增强医师和知识工程师团队的协作努力。

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