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Investigation into the Efficacy of Generating Synthetic Pathological Oscillations for Domain Adaptation

机译:生成合成病理振荡域适应的功效的调查。

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摘要

In our ongoing work to integrate Knowledge Discovery in Databases (KDD) into neuroscience, we present a paper that facilitates overcoming the two challenges preventing this integration. Pathological oscillations found in the human brain are difficult to evaluate because 1) there is often no time to learn and train off of the same distribution in the fatally sick, and 2) sinusoidal signals found in the human brain are complex and transient in nature, requiring large data sets to work with which are costly and often very expensive or impossible to acquire. Overcoming these challenges in today's neuro-intensive care unit (ICU) requires insurmountable resources. For these reasons, optimizing KDD for pathological oscillations so machine learning systems can predict neuropathological states would be of immense value. Domain adaptation, which allows a way of predicting on a separate set of data than the training data, can theoretically overcome the first challenge. However, the challenge of acquiring large data sets that show whether domain adaptation is a good candidate to test in a live neuro ICU remains a challenge. To solve this conundrum, we present a methodology for generating synthesized neuropathological oscillations for domain adaptation.
机译:在我们正在进行的将数据库中的知识发现(KDD)集成到神经科学的工作中,我们提出了一篇论文,该论文有助于克服阻止集成的两个挑战。人脑中发现的病理振荡难以评估,原因是:1)致命病人常常没有时间学习和训练相同的分布,并且2)人脑中发现的正弦信号本质上是复杂且短暂的,需要使用大量数据集,而这些数据集既昂贵又往往非常昂贵或无法获取。克服当今神经重症监护病房(ICU)的这些挑战需要不可逾越的资源。由于这些原因,针对病理振荡优化KDD,以便机器学习系统可以预测神经病理状态将具有巨大价值。域自适应允许在一种不同于训练数据的单独数据集上进行预测的方法,在理论上可以克服第一个挑战。然而,获取大型数据集的挑战仍然是一个挑战,该大型数据集显示域适应性是否适合在活神经ICU中进行测试。为了解决这个难题,我们提出了一种生成用于域适应的合成神经病理振荡的方法。

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  • 来源
  • 会议地点 Mexico City(MX)
  • 作者单位

    Department of Computer Science, University of Colorado at Colorado Springs, 1420 Austin Bluffs Parkway, Colorado Springs, Colorado, USA,Department of Pediatrics and Neurology, University of Colorado Denver, Anschutz Medical Campus, Aurora, Colorado, USA;

    Department of Computer Science, University of Colorado at Colorado Springs, 1420 Austin Bluffs Parkway, Colorado Springs, Colorado, USA;

    Department of Computer Science, University of Colorado at Colorado Springs, 1420 Austin Bluffs Parkway, Colorado Springs, Colorado, USA;

    Department of Pediatrics and Neurology, University of Colorado Denver, Anschutz Medical Campus, Aurora, Colorado, USA;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Machine Learning; Domain Adaptation; Synthetic Oscillations; Knowledge Discovery in Databases;

    机译:机器学习;域适应;合成振荡;数据库中的知识发现;

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