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Toward a Personalized Real-Time Diagnosis in Neonatal Seizure Detection

机译:在新生儿癫痫发作检测中寻求个性化实时诊断

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摘要

The problem of creating a personalized seizure detection algorithm for newborns is tackled in this paper. A probabilistic framework for semi-supervised adaptation of a generic patient-independent neonatal seizure detector is proposed. A system that is based on a combination of patient-adaptive (generative) and patient-independent (discriminative) classifiers is designed and evaluated on a large database of unedited continuous multichannel neonatal EEG recordings of over 800 h in duration. It is shown that an improvement in the detection of neonatal seizures over the course of long EEG recordings is achievable with on-the-fly incorporation of patient-specific EEG characteristics. In the clinical setting, the employment of the developed system will maintain a seizure detection rate at 70% while halving the number of false detections per hour, from 0.4 to 0.2 FD/h. This is the first study to propose the use of online adaptation without clinical labels, to build a personalized diagnostic system for the detection of neonatal seizures.
机译:本文解决了创建针对新生儿的个性化癫痫发作检测算法的问题。提出了一个通用的独立于患者的新生儿癫痫发作检测器的半监督适应的概率框架。在持续时间超过800小时的未经编辑的连续多通道新生儿EEG记录的大型数据库上,设计并评估了基于患者自适应(生成)和患者独立(区分)分类器的组合的系统。结果表明,通过动态整合患者特定的脑电图特征,可以在长时间的脑电图记录过程中改善新生儿惊厥的检测。在临床环境中,开发的系统的使用将使癫痫发作检出率保持在70%,而每小时的误检次数则从0.4 FD / h降至0.2 FD / h。这是第一个提出使用没有临床标签的在线适应方法来建立个性化诊断系统以检测新生儿癫痫发作的研究。

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