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Multi-modal Patient Cohort Identification from EEG Report and Signal Data

机译:从脑电报告和信号数据中识别多模式患者队列

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摘要

Clinical electroencephalography (EEG) is the most important investigation in the diagnosis and management of epilepsies. An EEG records the electrical activity along the scalp and measures spontaneous electrical activity of the brain. Because the EEG signal is complex, its interpretation is known to produce moderate inter-observer agreement among neurologists. This problem can be addressed by providing clinical experts with the ability to automatically retrieve similar EEG signals and EEG reports through a >patient cohort retrieval system operating on a vast archive of EEG data. In this paper, we present a multi-modal EEG patient cohort retrieval system called MERCuRY which leverages the heterogeneous nature of EEG data by processing both the clinical narratives from EEG reports as well as the raw electrode potentials derived from the recorded EEG signal data. At the core of MERCuRY is a novel multimodal clinical indexing scheme which relies on EEG data representations obtained through deep learning. The index is used by two clinical relevance models that we have generated for identifying patient cohorts satisfying the inclusion and exclusion criteria expressed in natural language queries. Evaluations of the MERCuRY system measured the relevance of the patient cohorts, obtaining MAP scores of 69.87% and a NDCG of 83.21%.
机译:临床脑电图(EEG)是癫痫病诊断和治疗中最重要的研究。脑电图记录沿头皮的电活动并测量大脑的自发电活动。由于EEG信号复杂,因此已知其解释会在神经科医生之间产生中度的观察者之间共识。通过为临床专家提供通过在庞大的EEG数据档案上运行的>患者队列检索系统,自动检索相似的EEG信号和EEG报告的能力,可以解决此问题。在本文中,我们介绍了一种称为MERCuRY的多模式脑电图患者队列检索系统,该系统通过处理来自脑电图报告的临床叙述以及从记录的脑电图信号数据中提取的原始电极电位,来利用脑电图数据的异质性。 MERCuRY的核心是一种新颖的多模式临床索引方案,该方案依赖于通过深度学习获得的EEG数据表示。我们已使用两种临床相关性模型使用该索引来识别满足自然语言查询中表达的纳入和排除标准的患者队列。 MERCuRY系统的评估测量了患者队列的相关性,获得了69.87%的MAP评分和83.21%的NDCG。

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