吉林大学学报(信息科学版) ›› 2026, Vol. 44 ›› Issue (3): 523-529.

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基于深度集成网络的医院运营数据云存储仿真

郭霏霏    

  1. 首都医科大学附属北京世纪坛医院,北京100038
  • 收稿日期:2024-07-05 出版日期:2026-06-02 发布日期:2026-06-02
  • 作者简介:郭霏霏(1988— ), 女, 河北衡水人, 首都医科大学会计师, 主要从事财务管理研究, (Tel)86-13693665965(E-mail) gff1001@163. com。

Simulation of Cloud Storage of Hospital Operation Data Based on Deep Integrated Networks

GUO Feifei   

  1. Beijing Shijitan Hospital Affiliated, Capital Medical University, Beijing 100038, China
  • Received:2024-07-05 Online:2026-06-02 Published:2026-06-02
  • Supported by:
    首都医科大学附属北京世纪坛医院财务与会计研究课题基金资助项目(CPLY20190506) 

摘要: 由于医院运营数据需要在多个系统间同步, 并面临频繁访问和处理, 导致存储过程中存在数据缺失、错误或重复等问题,影响数据分析和决策的准确性。为确保数据的一致性和准确性并提供高效的数据访问和处理能力,提出一种基于深度集成网络的医院运营数据云存储方法。 利用筛选的医院运营数据构建随机森林树, 在森林内执行空间维的随机抽取。将卷积神经网络作为个体子分类器,并结合多数投票机制构成深度集成网络, 通过迁移学习的策略确定最终样本的所属类别。运用布隆过滤器技术有效识别并滤除医院运营数据中的重复数据,通过设置目标函数采用协同进化算法经过多轮迭代和优化最终获取医院运营数据云存储的最优解决方案。实验结果表明,所提方法在处理数据时的吞吐量超过400 MByte/s, 且在数据维数高达9000, 其内存占用率和CPU(Central Processing Unit)占用率也仅为10.39%8.88%。说明所提方法具有很好的医院运营数据云存储性能可有效提高医院信息管理的效率和协同工作的能力。

关键词: 深度集成网络, 医院运营数据, 云存储, 随机森林, 布隆过滤, 协同进化

Abstract: Hospital operation data needs to be synchronized across multiple systems and faces frequent access and processing, leading to issues such as data loss, errors, or duplication in the storage process, which affects the accuracy of data analysis and decision-making. To ensure data consistency and accuracy while providing efficient data access and processing capabilities, a hospital operation data cloud storage method based on deep integrated networks is proposed. Build a random forest tree using filtered hospital operation data and perform spatial dimension random extraction within the forest. Using convolutional neural networks as individual sub classifiers and combining with majority voting mechanism to form a deep ensemble network, the final sample category is determined through transfer learning strategy. Effectively identifying and filtering duplicate data in hospital operation data using Bloom filter technology, and by setting an objective function and using collaborative evolution algorithm through multiple rounds of iteration and optimization, ultimately obtaining the optimal solution for cloud storage of hospital operation data. The experimental results show that the proposed method has a throughput of over 400 MByte/ s when processing data, and its memory and CPU(Central Processing Unit) usage rates are only 10. 39% and 8. 88% when the data dimension is as high as 9 000. The proposed method has better cloud storage performance for hospital operation data, which can effectively improve the efficiency ofhospital information management and the ability of collaborative work. 

Key words: deep integrated network, hospital operation data, cloud storage, random forest, bloom filtration, coevolution

中图分类号: 

  • TP393.2