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Automatic detection of non-apneic sleep arousal regions from polysomnographic recordings

机译:自动检测来自多酷热图记录的非送道睡眠唤醒区

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A signal processing/machine learning (ML), data-driven approach for classifying targeted sleep arousal regions of polysomnography (PSG) signals is presented focusing on feature subset selection and consensus methods, deploying ensemble techniques. The targeted regions are the regions where RERA and Non-RERA-Non-Apnea events are present. The sensor independent and sensor-based features in time and frequency domain were derived from the PSG signals. To reduce the feature space dimension, a combination of feature selection strategies and a method of rank aggregation was applied to rank the features. Aiming to find a feature set, which conveys the most discriminative information of detection in designated learning models, the Non-Dominated Sorting Genetic Algorithm was used as the optimization algorithm. In order to capture the relation between feature vectors across time, a composition of feature vectors was formed. To tackle the unbalanced data problem, several techniques were used and a data fusion strategy stood out. Also, considering a more robust classifier, a metaclassifier was generated using different features, datasets, and classifiers. Finally, the predictions of models generated by bagging techniques and boosting methods were compared. The presented method was developed, validated and tested on the PhysioNet Challenge 2018 training dataset consisting of 994 subjects. The highest performance on 192 test subjects based on the area under precision-recall curve (AUPRC) and the area under receiver operating characteristic (AUROC) curve were 0.465 and 0.927, respectively. This study suggests that automatic detection of RERA and Non-RERA-Non-Apnea sleep arousal regions from biosignals is possible and can be a suitable substitution for PSG.
机译:一种信号处理/机器学习(ML),用于分类目标睡眠地区的数据驱动方法(PSG)信号(PSG)信号,专注于特征子集选择和共识方法,部署集合方法。目标区域是存在RALA和非呼吸暂停事件的区域。传感器独立的和基于传感器的时间和频域的特征来自PSG信号。为了减少特征空间维度,应用了特征选择策略和排名聚合方法的组合来对特征进行排名。旨在找到一个特征集,该特征集传送了指定的学习模型中的最多辨别性信息,非主导的分类遗传算法用作优化算法。为了捕获特征向量之间的关系,形成特征载体的组成。为了解决不平衡数据问题,使用了几种技术,数据融合策略突出。此外,考虑到更强大的分类器,使用不同的特征,数据集和分类器生成元匹配项。最后,比较了袋装技术产生的模型和升压方法的预测。在2018年培训数据集上开发,验证和测试了,验证和测试了由994个科目组成的。基于精密召回曲线(AUPRC)下的区域的192个测试对象的最高性能和接收器操作特征(Auroc)曲线下的区域分别为0.465和0.927。该研究表明,可以从生物中的雷拉和非RERA-非呼吸睡眠唤醒区域的自动检测生物中的,并且可以是PSG的合适取代。

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