HTPS:医疗保健数据集异构传输预测系统

Jia-Hao Syu, Chun-Wei Lin, M. Fojcik, Rafał Cupek
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引用次数: 1

摘要

医疗物联网导致医疗服务的革命性改进,也被称为智能医疗。借助医疗大数据,数据挖掘和机器学习可以辅助健康管理和智能诊断,实现p4医疗。然而,医疗保健数据具有高稀疏性和异质性。本文提出了一个异构传输预测系统(HTPS)。特征工程机制将数据集转化为稀疏和密集的特征矩阵,嵌入网络中的自编码器不仅可以嵌入特征,还可以从异构数据集中转移知识。实验结果表明,所提出的HTPS在各种预测任务和数据集上都优于基准系统,并且烧蚀研究表明了每种设计机制的有效性。实验结果证明了异构数据对基准系统的负面影响以及所提出的HTPS的高可移植性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HTPS: Heterogeneous Transferring Prediction System for Healthcare Datasets
Medical internet of things leads to revolutionary improvements in medical services, also known as smart healthcare. With the big healthcare data, data mining and machine learning can assist wellness management and intelligent diagnosis, and achieve the P4-medicine. However, healthcare data has high sparsity and heterogeneity. In this paper, we propose a Heterogeneous Transferring Prediction System (HTPS). Feature engineering mechanism transforms the dataset into sparse and dense feature matrices, and autoencoders in the embedding networks not only embed features but also transfer knowledge from heterogeneous datasets. Experimental results show that the proposed HTPS outperforms the benchmark systems on various prediction tasks and datasets, and ablation studies present the effectiveness of each designed mechanism. Experimental results demonstrate the negative impact of heterogeneous data on benchmark systems and the high transferability of the proposed HTPS.
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