A Case-based Retrieval System using Natural Language Processing and Population-based Visualization.

William Hsu, Ricky K Taira, Fernando Viñuela, Alex A T Bui
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引用次数: 4

Abstract

Electronic medical records capture large quantities of patient data generated as a result of routine care. Secondary use of this data for clinical research could provide new insights into the evolution of diseases and help assess the effectiveness of available interventions. Unfortunately, the unstructured nature of clinical data hinders a user's ability to understand this data: tools are needed to structure, model, and visualize the data to elucidate patterns in a patient population. We present a case-based retrieval framework that incorporates an extraction tool to identify concepts from clinical reports, a disease model to capture necessary context for interpreting extracted concepts, and a model-driven visualization to facilitate querying and interpretation of the results. We describe how the model is used to group, filter, and retrieve similar cases. We present an application of the framework that aids users in exploring a population of intracranial aneurysm patients.

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基于自然语言处理和群体可视化的案例检索系统。
电子医疗记录捕获了常规护理产生的大量患者数据。将这些数据二次用于临床研究可以为疾病的演变提供新的见解,并有助于评估现有干预措施的有效性。不幸的是,临床数据的非结构化性质阻碍了用户理解这些数据的能力:需要工具来对数据进行结构化、建模和可视化,以阐明患者群体中的模式。我们提出了一个基于病例的检索框架,该框架包含一个提取工具,用于从临床报告中识别概念,一个疾病模型,用于捕获解释提取概念所需的上下文,以及一个模型驱动的可视化,以促进查询和解释结果。我们描述了如何使用模型对类似的案例进行分组、过滤和检索。我们提出了一个应用框架,帮助用户探索颅内动脉瘤患者的人口。
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Applying an Instance-specific Model to Longitudinal Clinical Data for Prediction. A Case-based Retrieval System using Natural Language Processing and Population-based Visualization. Acceleration of Two Point Correlation Function Calculation for Pathology Image Segmentation.
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