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Detection of Motor Seizures and Falls in Mobile Application using Machine Learning Classifiers

机译:使用机器学习分类器检测移动应用中的运动发作和跌落

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We have developed a healthcare mobile application, for human activity recognition, monitoring of well-being and detection of individuals going towards a health hazard based on the data collected from sensors embedded in mobile phones and wearables. The data from sensors are processed within the mobile application to detect and classify different Activities of Daily Living. The developed framework is used to collect data in an unconstraint environment from individuals suffering from neurological disorders. The data is further tested using signal processing and machine learning algorithms. Results of in-app processing and classification are stored in a dedicated mobile database for later reference and analysis. This paper shows that statistical and Machine Learning methods can also be used within a mobile application for classification of ADLs. MyNeuroHealth has been designed in accordance with the scale of the prevalence of neurological disorders among the general population of developing countries and has become more relevant in COVID-19 pandemic as it offers real-time nonintrusive monitoring. Results show that MyNeuroHealth can detect and classify Motor Seizures and falls with an accuracy of 99%. The app is also able to detect if a patient had stumbled or fallen due to any reason and notifies caregiver accordingly.
机译:我们已经开发了一种医疗保健移动应用程序,用于基于从嵌入在手机和可穿戴设备中的传感器收集的数据,用于人类活动识别,幸福感监测以及对有健康危害的个人的检测。来自传感器的数据在移动应用程序中进行处理,以检测和分类不同的日常生活活动。所开发的框架用于在不受约束的环境中收集患有神经系统疾病的个体的数据。使用信号处理和机器学习算法进一步测试数据。应用程序内处理和分类的结果存储在专用的移动数据库中,以供以后参考和分析。本文显示了统计和机器学习方法也可以在移动应用程序中用于ADL的分类。 MyNeuroHealth的设计是根据发展中国家普通人群中神经系统疾病患病率的大小来设计的,并且由于它提供实时的非侵入式监测,因此在COVID-19大流行中变得越来越重要。结果表明,MyNeuroHealth可以检测和分类运动性癫痫发作并以99%的准确度坠落。该应用程序还能够检测患者是否由于任何原因跌倒或跌倒,并相应地通知护理人员。

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