论文标题
编码心肺运动测试时间序列作为图像,用于使用卷积神经网络进行分类
Encoding Cardiopulmonary Exercise Testing Time Series as Images for Classification using Convolutional Neural Network
论文作者
论文摘要
运动测试已有半个多世纪的时间,是一种非常通用的工具,可用于针对一系列疾病(尤其是心血管和肺部)患者的诊断和预后信息。在过去十年中,随着技术,可穿戴设备和学习算法的快速发展,其范围已经发展。具体而言,心肺运动测试(CPX)是最常用的实验室测试之一,用于客观评估患者的运动能力和表现水平。 CPX对涉及气体交换的肺,心血管和骨骼肌系统提供了无创的,综合评估。但是,它的评估具有挑战性,要求个人处理多个时间序列数据点,从而简化峰值和斜率。但是,这种简化可以丢弃这些时间序列中存在的宝贵趋势信息。在这项工作中,我们使用Gramian Angular Field和Markov Transition场将时间序列编码为图像,并将其与卷积神经网络和注意力集合方法一起使用,以分类心力衰竭和代谢综合征患者。使用GradCam,我们强调了模型确定的判别特征。
Exercise testing has been available for more than a half-century and is a remarkably versatile tool for diagnostic and prognostic information of patients for a range of diseases, especially cardiovascular and pulmonary. With rapid advancements in technology, wearables, and learning algorithm in the last decade, its scope has evolved. Specifically, Cardiopulmonary exercise testing (CPX) is one of the most commonly used laboratory tests for objective evaluation of exercise capacity and performance levels in patients. CPX provides a non-invasive, integrative assessment of the pulmonary, cardiovascular, and skeletal muscle systems involving the measurement of gas exchanges. However, its assessment is challenging, requiring the individual to process multiple time series data points, leading to simplification to peak values and slopes. But this simplification can discard the valuable trend information present in these time series. In this work, we encode the time series as images using the Gramian Angular Field and Markov Transition Field and use it with a convolutional neural network and attention pooling approach for the classification of heart failure and metabolic syndrome patients. Using GradCAMs, we highlight the discriminative features identified by the model.