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基于CTSA-Net的急性肾损伤风险预测研究

张青松 陈春晓 陈利海

生物医学工程研究2024,Vol.43Issue(1):46-54,9.
生物医学工程研究2024,Vol.43Issue(1):46-54,9.DOI:10.19529/j.cnki.1672-6278.2024.01.07

基于CTSA-Net的急性肾损伤风险预测研究

Research on risk prediction of acute kidney injury based on CTSA-Net

张青松 1陈春晓 1陈利海2

作者信息

  • 1. 南京航空航天大学 生物医学工程系,南京 211106
  • 2. 南京市第一医院麻醉科,南京 210006
  • 折叠

摘要

Abstract

Addressing limitations in prior research of acute kidney injury(AKI),including underutilization of clinical time series data,short predictive windows,and a lack of continuous prediction studies,we proposed a hybrid network model called CTSA-Net,in-tegrated convolutional neural networks(CNN)and a two-stage cross-attention mechanism.CTSA-Net's attention pathway,CNN path-way,and feature fusion module enhanced global representation of time series data and perception of local details,thereby improved the continuous prediction performance for AKI.At four different prediction time points at AKI onset,24,48,and 72 h before AKI onset,the model achieved respective area under the receiver operated characteristic curve(AUC)values of 0.946,0.907,0.895,and 0.879,respectively.The area under the precision-recall curve(PR-AUC)values were 0.979,0.960,0.949,and 0.939,respectively.Exper-imental results indicate that the CTSA-Net model demonstrates robust performance in predicting AKI at multiple time points,making it suitable for real-time patient monitoring and assisting clinicians in making informed clinical decisions.

关键词

急性肾损伤/深度学习/电子健康记录/注意力/卷积神经网络

Key words

Acute kidney injury/Deep learning,Electronic health records/Attention/Convolutional neural network

分类

医药卫生

引用本文复制引用

张青松,陈春晓,陈利海..基于CTSA-Net的急性肾损伤风险预测研究[J].生物医学工程研究,2024,43(1):46-54,9.

生物医学工程研究

OACSTPCD

1672-6278

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