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A Frequency Pattern Mining Model Based on Deep Neural Network for Real-Time Classification of Heart Conditions

机译:一种基于深神经网络的频率模式挖掘模型用于核心条件的实时分类

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摘要

Recently, a massive amount of big data of bioinformation is collected by sensor-based IoT devices. The collected data are also classified into different types of health big data in various techniques. A personalized analysis technique is a basis for judging the risk factors of personal cardiovascular disorders in real-time. The objective of this paper is to provide the model for the personalized heart condition classification in combination with the fast and effective preprocessing technique and deep neural network in order to process the real-time accumulated biosensor input data. The model can be useful to learn input data and develop an approximation function, and it can help users recognize risk situations. For the analysis of the pulse frequency, a fast Fourier transform is applied in preprocessing work. With the use of the frequency-by-frequency ratio data of the extracted power spectrum, data reduction is performed. To analyze the meanings of preprocessed data, a neural network algorithm is applied. In particular, a deep neural network is used to analyze and evaluate linear data. A deep neural network can make multiple layers and can establish an operation model of nodes with the use of gradient descent. The completed model was trained by classifying the ECG signals collected in advance into normal, control, and noise groups. Thereafter, the ECG signal input in real time through the trained deep neural network system was classified into normal, control, and noise. To evaluate the performance of the proposed model, this study utilized a ratio of data operation cost reduction and F-measure. As a result, with the use of fast Fourier transform and cumulative frequency percentage, the size of ECG reduced to 1:32. According to the analysis on the F-measure of the deep neural network, the model had 83.83% accuracy. Given the results, the modified deep neural network technique can reduce the size of big data in terms of computing work, and it is an effective system to reduce operation time.
机译:最近,基于传感器的物流设备收集了大量的生物信息数据数据。收集的数据还分为各种技术的不同类型的健康大数据。个性化分析技术是实时判断个人心血管障碍危险因素的基础。本文的目的是为个性化心脏状况分类提供模型,结合快速有效的预处理技术和深神经网络,以处理实时累计的生物传感器输入数据。该模型可用于学习输入数据并开发近似函数,可以帮助用户识别风险情况。为了分析脉冲频率,在预处理工作中应用了快速的傅里叶变换。通过使用提取的功率谱的逐频率比数据,执行数据减少。为了分析预处理数据的含义,应用了神经网络算法。特别地,深度神经网络用于分析和评估线性数据。深度神经网络可以制造多个层,并且可以使用梯度下降来建立节点的操作模型。通过将提前收集的ECG信号分类为正常,控制和噪声组来培训完成的模型。此后,通过训练的深神经网络系统实时输入的ECG信号被分类为正常,控制和噪声。为了评估所提出的模型的性能,本研究利用了数据运行成本降低和F测量比率的比率。结果,随着使用快速傅里叶变换和累积频率百分比,ECG的大小减少到1:32。根据深神经网络的F测量分析,精度为83.83%。鉴于结果,修改的深度神经网络技术可以在计算工作方面降低大数据的大小,并且它是减少操作时间的有效系统。

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