基于图遍历技术的生物医学知识上下文驱动值集提取。

Jyotishman Pathak, Guoqian Jiang, Sridhar O Dwarkanath, James D Buntrock, Christopher G Chute
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引用次数: 0

摘要

跨多个医疗信息系统建模、共享和重用价值集的能力是一个重要的需求。然而,从术语服务中半自动生成值集仍然是一个未解决的问题,部分原因是缺乏与临床上下文模式的联系,这些模式在定义概念域和调用值集提取时提供了约束。为了实现这一目标,我们开发并评估了一种基于形式化术语模型的上下文驱动的自动值集提取方法。该技术的关键是识别和定义来自不同话语领域的上下文模式,并使用基于(i)主题专家提供的局部术语(外延)和(ii)编码方案中概念的语义定义(内延)的两个互补思想来利用它们进行值集提取。我们为这两种方法开发了基于经过充分研究的图遍历和本体分割技术的算法,并实现了一个原型,展示了它们在LexGrid术语模型中呈现的SNOMED CT用例上的适用性。我们还对我们的方法进行了初步评估,并报告了梅奥诊所主题专家的调查结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adopting Graph Traversal Techniques for Context-Driven Value Sets Extraction from Biomedical Knowledge Sources.

The ability to model, share and re-use value sets across multiple medical information systems is an important requirement. However, generating value sets semi-automatically from a terminology service is still an unresolved issue, in part due to the lack of linkage to clinical context patterns that provide the constraints in defining a concept domain and invocation of value sets extraction. Towards this goal, we develop and evaluate an approach for context-driven automatic value sets extraction based on a formal terminology model. The crux of the technique is to identify and define the context patterns from various domains of discourse and leverage them for value set extraction using two complementary ideas based on (i) local terms provided by the subject matter experts (extensional) and (ii) semantic definition of the concepts in coding schemes (intensional). We develop algorithms based on well-studied graph traversal and ontology segmentation techniques for both the approaches and implement a prototype demonstrating their applicability on use cases from, SNOMED CT rendered, in the LexGrid terminology model. We also present preliminary evaluation of our approach and report investigation results done by subject matter experts at the Mayo Clinic.

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