• 其他栏目

    李石君

    • 博士生导师
    • 主要任职:武汉大学人工智能研究院数字经济赋能中心主任
    • 其他任职:湖北省公共财政和经济运行大数据工程技术研究中心副主任
    • 性别:男
    • 毕业院校:武汉大学
    • 所在单位:计算机学院
    • 入职时间: 1997-12-07
    • 学科: 计算机应用技术
    • 办公地点:武汉大学人工智能研究院
    • 联系方式:13986190968
    • 电子邮箱:

    访问量:

    开通时间:..

    最后更新时间:..

    Machine intelligence-based prediction of future healthcare data and health issues based on latent distribution self-evolving architecture

    点击次数:

    DOI码:10.1007/s00500-023-08841-2

    所属单位:(1) School of Computer Science, Wuhan University, Wuhan; 430072, China

    发表刊物:Soft Computing

    摘要:The healthcare data is generated through blockchain databases, web-based databases and mobile applications-based data. This research is using machine intelligence to draw inferences from the healthcare data to generate futuristic data from it. In other words, the prediction of future health issues can be made using machine intelligence based on the prevailing trends of historical data. Concept drift refers to the phenomenon of dynamic changes in data distribution, which is commonly present in mobile health monitoring data that are susceptible to environmental influences, hindering medical analysis and decision-making. The research work proposes a latent distribution self-evolving architecture (LDSA) based on neuronal variants and latent distribution recombination (LDR) to achieve data representation and prediction in the context of concept drift of futuristic healthcare data. The genetic mechanism of LDSA can adaptively handle concept drift in data and drive latent data distribution towards the future, eventually achieving prediction of future data. The machine learning-based intelligent mechanism can predict the future cases of diabetic patients in the world by analysing the current and historical data of diabetic patients in the world. We also design an evolution loss function to optimize the model performance and improve the pattern generalization ability. Experimental results show that LDSA achieves state-of-the-art performance on mobile health datasets and has better drift adaptation than popular baseline methods. The proposed machine intelligence-based algorithm is able to predict the future data by learning from the historical data features. The healthcare industry will be greatly benefitted from this research work to predict the futuristic ailments in the population on the basis of changing healthcare parameters of the current population. © 2023, The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.

    合写作者: Fang(1),Yu, Wei(1), Yu, Li, Shijun(1)

    是否译文:

    发表时间:2023-01-01