Sleep-Deep-Learner 由最终用户教授睡眠-觉醒评分,以他们的风格完成每条记录。

Fumi Katsuki, Tristan J Spratt, Ritchie E. Brown, R. Basheer, David S. Uygun
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引用次数: 0

摘要

睡眠-觉醒评分是临床和临床前睡眠研究中耗时、繁琐但又必不可少的组成部分。啮齿类动物的睡眠评分甚至更加费力和具有挑战性,这是因为不同状态之间的脑电图振幅差异较小,而且状态转换迅速,因此必须在较短的时间内进行评分。虽然有许多自动啮齿类动物睡眠评分方法,但在评分新数据集时,尤其是涉及 EEG/EMG 曲线变化的数据集时,这些方法的表现并不理想。因此,由专家评分员进行人工评分仍是黄金标准。在这里,我们采用了一种不同的方法来解决这个问题,即使用神经网络来加快专家评分员的评分速度。Sleep-Deep-Learner 通过 GoogLeNet 的迁移学习,从最终用户提供的每个脑电图/局部场电位(LFP)记录的一小部分人工评分中学习,为单个脑电图或局部场电位(LFP)记录创建定制的深度卷积神经网络模型。然后,Sleep-Deep-Learner 自动对剩余的 EEG/LFP 记录进行评分。新颖的快速眼动睡眠评分校正程序进一步提高了准确性。与人工评分相比,Sleep-Deep-Learner 能可靠地对脑电图和 LFP 数据进行评分,并保留野生型小鼠、催眠药唑吡坦诱导的睡眠、阿尔茨海默病小鼠模型和基因敲除研究中的睡眠-觉醒结构。Sleep-Deep-Learner 将人工评分时间缩短到了 1/12。由于 Sleep-Deep-Learner 在每个独立的记录上都使用了迁移学习,因此不会受到之前已评分的现有数据集的影响。因此,我们发现 Sleep-Deep-Learner 在用于受药物、疾病模型或基因修饰影响的信号时表现出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sleep-Deep-Learner is taught sleep-wake scoring by the end-user to complete each record in their style.
Sleep-wake scoring is a time-consuming, tedious but essential component of clinical and preclinical sleep research. Sleep scoring is even more laborious and challenging in rodents due to the smaller EEG amplitude differences between states and the rapid state transitions which necessitate scoring in shorter epochs. Although many automated rodent sleep scoring methods exist, they do not perform as well when scoring new datasets, especially those which involve changes in the EEG/EMG profile. Thus, manual scoring by expert scorers remains the gold standard. Here we take a different approach to this problem by using a neural network to accelerate the scoring of expert scorers. Sleep-Deep-Learner creates a bespoke deep convolution neural network model for individual electroencephalographic or local-field-potential (LFP) records via transfer learning of GoogLeNet, by learning from a small subset of manual scores of each EEG/LFP record as provided by the end-user. Sleep-Deep-Learner then automates scoring of the remainder of the EEG/LFP record. A novel REM sleep scoring correction procedure further enhanced accuracy. Sleep-Deep-Learner reliably scores EEG and LFP data and retains sleep-wake architecture in wild-type mice, in sleep induced by the hypnotic zolpidem, in a mouse model of Alzheimer's disease and in a genetic knock-down study, when compared to manual scoring. Sleep-Deep-Learner reduced manual scoring time to 1/12. Since Sleep-Deep-Learner uses transfer learning on each independent recording, it is not biased by previously scored existing datasets. Thus, we find Sleep-Deep-Learner performs well when used on signals altered by a drug, disease model, or genetic modification.
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