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Implementing Pattern Recognition and Matching techniques to automatically detect standardized functional tests from wearable technology

机译:实施模式识别和匹配技术以自动检测可穿戴技术的标准化功能测试

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Wearable sensor technology is often used in healthcare environments for monitoring, diagnosis and recovery of patients. Wearable sensors can be used to detect movement throughout measurement of standardized functional tests, which are considered part of the assessment criteria for Activities of Daily Living (ADL). The volume of data collected by sensors for long term assessment of ambulatory movement can be very large in tuple size since they may contain detailed 3-D sensor information. Extracting recorded movement data corresponding to standardized functional tests from an entire data set is complex and time consuming. This paper examines whether standardized functional tests can be automatically detected from long term data collected by wearable technology devices using Artificial Intelligence (AI) techniques. The current research work is aligned with clinical trial data generated by patients who are suffering from Axial Spondylo Arthritis (axSpA). These datasets contain Inertial Measurement Unit (IMU) values corresponding to individual patient functional tests for axSpA. Rotation angles with respect to each functional test are plotted against time. Individual movements that form part of a functional test are constructed for training and testing the AI system. Individual movement patterns are split into training and testing data inputs and are used to train the Neural Network (NN) system and to estimate overall prediction accuracy of the NN system. NN model is trained in such a way that the learned system can predict new functional test patterns with respect to the trained data and it is compared with expected data set and returned the accuracy of prediction. Once the semi supervised learning phase of AI system has successfully finished with adequate amount of data, it is capable for automatically detect gait and posture changes of patients at home.
机译:可穿戴式传感器技术通常在医疗保健环境中用于监视,诊断和恢复患者。可穿戴式传感器可用于在整个标准化功能测试的测量过程中检测运动,这些功能测试被视为日常生活活动(ADL)评估标准的一部分。由于传感器可能包含详细的3D传感器信息,因此由传感器收集的用于动态评估门诊运动的数据量可能非常大(元组大小)。从整个数据集中提取与标准化功能测试相对应的记录的运动数据既复杂又耗时。本文研究了是否可以使用人工智能(AI)技术从可穿戴技术设备收集的长期数据中自动检测出标准化的功能测试。当前的研究工作与患有轴突性脊椎关节炎(axSpA)的患者产生的临床试验数据保持一致。这些数据集包含与axSpA的各个患者功能测试相对应的惯性测量单位(IMU)值。相对于时间绘制相对于每个功能测试的旋转角度。构成功能测试一部分的单个机芯用于训练和测试AI系统。各个运动模式被分为训练和测试数据输入,并用于训练神经网络(NN)系统和估计NN系统的整体预测精度。以这样的方式训练NN模型:学习的系统可以针对训练后的数据预测新的功能测试模式,并将其与预期数据集进行比较,并返回预测的准确性。一旦AI系统的半监督学习阶段成功完成了足够数量的数据,它便能够自动检测患者在家中的步态和姿势变化。

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