论文标题
使用Levenberg-Marquardt算法增强医疗保健数据传输
Enhancement of Healthcare Data Transmission using the Levenberg-Marquardt Algorithm
论文作者
论文摘要
在医疗保健系统中,需要患者使用可穿戴设备进行远程数据收集和实时监控健康数据和健康状况状况。可穿戴设备的采用导致收集和传输的数据量大幅增加。由于设备由较小的电池电源运行,因此由于设备的高处理要求以进行数据收集和传输,因此可以快速减少它们。鉴于医疗数据所附加的重要性,所有传输数据必须遵守严格的完整性和可用性要求。减少医疗保健数据的量和传输频率将通过使用推理算法改善设备电池寿命。有一个以准确性和效率改善传输指标的问题,彼此之间的权衡,例如提高准确性会降低效率。本文表明,机器学习可用于分析复杂的健康数据指标,例如数据传输的准确性和效率,以使用Levenberg-Marquardt算法来克服权衡问题,从而通过少较少的样本来传输同时保持准确性来增强这两个指标。使用标准心率数据集测试该算法以比较指标。结果表明,LMA最能以3.33倍的效率进行样本数据尺寸和79.17%的精度,在7种不同的采样案例中具有相似的精度,但表明效率提高了。与现有的效率高的现有方法相比,这些提出的方法使用机器学习无需牺牲两个指标就可以显着改善这两个指标。
In the healthcare system, patients are required to use wearable devices for the remote data collection and real-time monitoring of health data and the status of health conditions. This adoption of wearables results in a significant increase in the volume of data that is collected and transmitted. As the devices are run by small battery power, they can be quickly diminished due to the high processing requirements of the device for data collection and transmission. Given the importance attached to medical data, it is imperative that all transmitted data adhere to strict integrity and availability requirements. Reducing the volume of healthcare data and the frequency of transmission will improve the device battery life via using inference algorithm. There is an issue of improving transmission metrics with accuracy and efficiency, which trade-off each other such as increasing accuracy reduces the efficiency. This paper demonstrates that machine learning can be used to analyze complex health data metrics such as the accuracy and efficiency of data transmission to overcome the trade-off problem using the Levenberg-Marquardt algorithm to enhance both metrics by taking fewer samples to transmit whilst maintaining the accuracy. The algorithm is tested with a standard heart rate dataset to compare the metrics. The result shows that the LMA has best performed with an efficiency of 3.33 times for reduced sample data size and accuracy of 79.17%, which has the similar accuracies in 7 different sampling cases adopted for testing but demonstrates improved efficiency. These proposed methods significantly improved both metrics using machine learning without sacrificing a metric over the other compared to the existing methods with high efficiency.