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A minimally invasive portable system for sleep apnea detection

机译:用于睡眠呼吸暂停检测的微创便携式系统

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Health care is changing the focus from primary and specialty care to prevention and wellness. Therefore, home health care is seen as one of the most relevant wellness services due to high accessibility and low cost of diagnosis. The growth relevance given to the sleep related disorders, due to the high importance of sleep in our lives, is specifically significant in this context encouraging the development of methods capable of non-invasively monitor and detection. One of the most relevant sleep disorders is obstructive sleep apnea, being the focus of the work presented in this paper to develop a minimally invasive portable system to detect this disorder using only oximetry. The system developed in this work is capable of collecting the oxygen saturation and pulse rate signals and send them wirelessly to the processing station where an application records and analyses the data. A graphical user interface guides the patients to start the monitoring session and a report is produced at the end of the analysis. The information is graphically presented to the patients and a resume file is generated to be analysed by the sleep technician. A database with 35 patients recordings was analysed, using a cross validation technique in order to evaluate the performance using a logistic regression model as a classifier. The algorithm achieved an accuracy of 86.6% (sensitivity = 66.9%, specificity = 94.5%, AUC = 90.7).
机译:卫生保健是改变重点从初级和专业护理,预防和保健。因此,家庭保健,被视为最相关的健康服务之一,由于高可及性和诊断的成本低。给予睡眠相关疾病,是由于我们生活的睡眠非常重要的增长相关性,在这方面鼓励具备资质的非侵入性监测和检测方法的开发而显著。其中最相关的睡眠障碍是阻塞性睡眠呼吸暂停,是本文提出开发一种微创便携式系统只用血氧饱和度检测到这种疾病的工作重点。在这项工作中所开发的系统能够收集的氧饱和度和脉冲速率的信号,并以无线发送至处理站,其中一个应用程序的记录和分析数据。的图形用户界面引导患者以开始监控会话,并报告在所述分析的结束时产生。这些信息以图形呈现给患者,并生成一份简历文件由睡眠技术员进行分析。与35例记录数据库进行了分析,使用交叉验证技术,为了评价使用逻辑回归模型作为分类器的性能。该算法实现的86.6 %的准确度(灵敏度= 66.9 %,特异性= 94.5 %,AUC = 90.7)。

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