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DAEimp: Denoising Autoencoder-Based Imputation of Sleep Heart Health Study for Identification of Cardiovascular Diseases

机译:Daeimp:去噪睡眠心脏健康研究的基于Autoencoder的归责,用于鉴定心血管疾病

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Since it has been recognized that the disordered breathing during sleep is related to cardiovascular diseases, it is possible to predict cardiovascular diseases from sleep breathing data, which however is usually inevitable to have missing data, resulted probability from the loss to follow-up, failure to attend medical appointments, lack of measurements, failure to send or retrieve questionnaires, and inaccurate data transfer. In this paper, we propose a denoising autoencoder-based imputation (DAEimp) algorithm to impute the missing values in the sleep heart health study (SHHS) dataset for the predication of cardiovascular diseases. This algorithm consists of three major steps: (1) based on the missing completely at random assumption, the random uniform noise is added to the positions of missing values to convert missing data imputation into a denoising problem, (2) feed the noisy data and a missing position indicator matrix into an autoencoder model and use the reconstruction error, divided into observation positions reconstruction error and missing positions error, for denoising, and (3) the logistic regression is applied to the generated complete dataset for the identification of cardiovascular diseases. Our results on the SHHS dataset indicate that the proposed DAEimp algorithm achieves state-of-the-art performance in missing data imputation and sleep breathing data-based identification of cardiovascular diseases.
机译:由于已经认识到睡眠期间的无序呼吸与心血管疾病有关,因此可以预测来自睡眠呼吸数据的心血管疾病,然而通常是不可避免的缺失数据,导致失败的损失损失,失败要参加医疗任命,缺乏测量,未能发送或检索调查问卷,并不准确的数据转移。在本文中,我们提出了一种基于自动化的基于AutoEncoder的归纳(DaeIMP)算法,以赋予睡眠心脏健康研究(SHHS)数据集的缺失值进行心血管疾病的预测。该算法由三个主要步骤组成:(1)基于完全在随机假设的缺失,将随机均匀噪声添加到缺失值的位置,以将缺失的数据归档转换为去噪问题,(2)馈送嘈杂数据和将缺失的位置指示器矩阵到AutoEncoder模型中,使用重建误差,分为观察位置重建误差和缺失位置误差,用于去噪,并且(3)将逻辑回归应用于生成的完整数据集以识别心血管疾病。我们在SHHS数据集上的结果表明,所提出的DaeIMP算法在缺少数据归档和睡眠呼吸数据的心血管疾病鉴定中实现了最先进的性能。

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