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Cardiac Diagnosis Classification Using Deep Learning Pipeline on Apache Spark

机译:在Apache Spark上使用深度学习管道进行心脏诊断分类

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Medical data are heterogeneous and complex data that are difficult to analyze and manage with traditional software or hardware. Deep learning is generating a major impact on medical imaging and ECG image analysis is more popular than the analysis of ECG’ signals processing. So, this paper proposes the cardiac diagnosis classification system using the transfer learning of deep learning pipeline on Apache Spark for the classification of ECG images. The deep learning pipeline enables fast transfer learning as a research problem of machine learning that focuses on storing knowledge gained on unsupervised segmented ECG images. To get the correct classification of heart diagnoses, the system needs to segment the ECG images and uses the principal component analysis to reduce unsupervised segmented images and select the sample diagnosis images from ECG segmented images. These segmented images are the high dimension of heterogeneous phenotypes. The proposed system classifies the five sample images of cardiac diagnosis by combining with the DL pipeline’s Convolutional Neural Network (InceptionV3) and Logistic Regression. So, the system uploads the scanning images that are segmented into High Distributed File System (HDFS) using the apache spark framework. This paper proposes a cardio diagnosis detection system for efficient classification using CNN on extracting unsupervised data features of health care.
机译:医学数据是异构和复杂的数据,难以使用传统软件或硬件进行分析和管理。深度学习正在对医学成像产生重大影响,而心电图图像分析比对心电图信号处理的分析更受欢迎。因此,本文提出了一种基于Apache Spark上的深度学习管道的转移学习的心脏诊断分类系统,用于ECG图像分类。深度学习管道使快速转移学习成为机器学习的一个研究问题,它专注于存储在无监督的分割ECG图像上获得的知识。为了获得正确的心脏诊断分类,系统需要对ECG图像进行分割,并使用主成分分析来减少无监督的分割图像,并从ECG分割图像中选择样本诊断图像。这些分割的图像是异质表型的高维。拟议的系统通过结合DL管道的卷积神经网络(InceptionV3)和Logistic回归来对心脏诊断的五个样本图像进行分类。因此,系统使用apache spark框架上载被分割为High Distributed File System(HDFS)的扫描图像。本文提出了一种用于利用CNN进行分类的心脏诊断检测系统,以提取医疗保健的非监督数据特征。

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