SEMI-AUTOMATED ANNOTATION OF SIGNAL EVENTS IN CLINICAL EEG DATA.

S Yang, S López, M Golmohammadi, I Obeid, J Picone
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引用次数: 5

Abstract

To be effective, state of the art machine learning technology needs large amounts of annotated data. There are numerous compelling applications in healthcare that can benefit from high performance automated decision support systems provided by deep learning technology, but they lack the comprehensive data resources required to apply sophisticated machine learning models. Further, for economic reasons, it is very difficult to justify the creation of large annotated corpora for these applications. Hence, automated annotation techniques become increasingly important. In this study, we investigated the effectiveness of using an active learning algorithm to automatically annotate a large EEG corpus. The algorithm is designed to annotate six types of EEG events. Two model training schemes, namely threshold-based and volume-based, are evaluated. In the threshold-based scheme the threshold of confidence scores is optimized in the initial training iteration, whereas for the volume-based scheme only a certain amount of data is preserved after each iteration. Recognition performance is improved 2% absolute and the system is capable of automatically annotating previously unlabeled data. Given that the interpretation of clinical EEG data is an exceedingly difficult task, this study provides some evidence that the proposed method is a viable alternative to expensive manual annotation.

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临床脑电图数据中信号事件的半自动标注。
为了提高效率,最先进的机器学习技术需要大量的注释数据。医疗保健领域有许多引人注目的应用程序可以从深度学习技术提供的高性能自动化决策支持系统中受益,但它们缺乏应用复杂机器学习模型所需的综合数据资源。此外,出于经济原因,很难证明为这些应用程序创建大型带注释的语料库是合理的。因此,自动化注释技术变得越来越重要。在这项研究中,我们研究了使用主动学习算法自动标注大型脑电图语料库的有效性。该算法设计用于标注六种类型的脑电事件。对基于阈值和基于体积的两种模型训练方案进行了评价。基于阈值的方案在初始训练迭代中优化置信度分数阈值,而基于体积的方案在每次迭代后只保留一定数量的数据。识别性能绝对提高了2%,并且系统能够自动注释以前未标记的数据。鉴于临床脑电图数据的解释是一项极其困难的任务,本研究提供了一些证据,表明所提出的方法是替代昂贵的人工注释的可行方法。
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