Sleeping problems have become one of the major diseases all over the world. To tackle this issue, the basic tool used by specialists is the Polysomnogram, which is a collection of different signals recorded during sleep. After its recording, the specialists have to score the different signals according to one of the standard guidelines. This process is carried out manually, which can be highly time-consuming and very prone to annotation errors. Therefore, over the years, many approaches have been explored in an attempt to support the specialists in this task. In this paper, an approach based on convolutional neural networks is presented, where an in-depth comparison is performed in order to determine the convenience of using more than one signal simultaneously as input. Additionally, the models were also used as parts of an ensemble model to check whether any useful information can be extracted from signal processing a single signal at a time which the dual-signal model cannot identify. Tests have been performed by using a well-known dataset called expanded sleep-EDF, which is the most commonly used dataset as the benchmark for this problem. The tests were carried out with a leave-one-out cross-validation over the patients, which ensures that there is no possible contamination between training and testing. The resulting proposal is a network smaller than previously published ones, but which overcomes the results of any previous models on the same dataset. The best result shows an accuracy of 92.67\% and a Cohen's Kappa value over 0.84 compared to human experts.
翻译:睡眠问题已成为全世界的主要疾病之一。 解决这个问题, 专家使用的基本工具是聚合光谱图, 它收集了睡眠中记录的不同信号。 记录后, 专家必须根据标准准则之一对不同的信号进行评分。 这一过程是手工操作的, 可能耗时很多, 容易发生笔记错误。 因此, 多年来, 探索了许多方法, 试图支持专家执行这项任务。 本文介绍了以共生神经网络为基础的方法, 进行深度比较, 以确定同时使用不止一个信号作为输入的方便性。 此外, 这些模型还被用作一个混合模型的一部分, 以检查在双重信号模型无法识别时, 是否可以从信号处理单一信号中提取任何有用的信息。 多年来, 通过使用一个众所周知的数据集, 称为扩大睡眠- EDF 进行测试, 这是这一问题最常用的数据设置。 测试时, 进行了深度比较专家, 以确定同时使用不止一个信号作为输入输入一个信号的方便度。 模型的对比结果, 之前的跨网络测试, 其结果比之前的路径要小。 测试, 任何关于 跨网络的结果, 测试, 测试是比已经出版的路径 。 。 测试, 测试, 测试 测试 测试 测试 测试 测试 的 的 测试 是 的 的 的 的 跨 测试, 测试, 跨 跨 跨 跨 跨 的 的 的 的 跨 跨 的 的 跨 测试 的 的 的 。 。 测试 测试 跨 跨 。