通过保护隐私从多模态数据中识别自闭症谱系障碍

Haishuai Wang, Hezi Jing, Jianjun Yang, Chao Liu, Liwei Hu, Guangyu Tao, Ziping Zhao, Ning Shen
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引用次数: 0

摘要

将深度学习模型应用于精准医疗诊断,往往需要汇集大量医疗数据,才能有效训练出高质量的模型。然而,数据隐私保护机制使得从不同医疗机构收集医疗数据变得困难。在自闭症谱系障碍(ASD)诊断中,利用来自异构数据的多模态信息进行自动诊断尚未取得令人满意的效果。为了解决隐私保护问题并改进 ASD 诊断,我们提出了一种深度学习框架,在联合学习(FedHNN)中使用多模态特征融合和超图神经网络进行疾病预测。通过引入联合学习策略,每个局部模型都以分布式方式独立训练和计算,无需共享数据,从而可以快速扩展医疗数据集,实现稳健且可扩展的深度学习预测模型。为了在保护隐私的前提下进一步提高性能,我们改进了用于多模态融合的超图模型,通过超图融合策略捕捉模态之间的互补性和相关性,使其适用于自闭症谱系障碍(ASD)诊断任务。结果表明,我们提出的基于联合学习的预测模型优于所有本地模型,也优于其他深度学习模型。总之,我们提出的 FedHNN 在利用多站点数据提高 ASD 识别性能的工作中取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identifying autism spectrum disorder from multi-modal data with privacy-preserving

Identifying autism spectrum disorder from multi-modal data with privacy-preserving
The application of deep learning models to precision medical diagnosis often requires the aggregation of large amounts of medical data to effectively train high-quality models. However, data privacy protection mechanisms make it difficult to perform medical data collection from different medical institutions. In autism spectrum disorder (ASD) diagnosis, automatic diagnosis using multimodal information from heterogeneous data has not yet achieved satisfactory performance. To address the privacy preservation issue as well as to improve ASD diagnosis, we propose a deep learning framework using multimodal feature fusion and hypergraph neural networks for disease prediction in federated learning (FedHNN). By introducing the federated learning strategy, each local model is trained and computed independently in a distributed manner without data sharing, allowing rapid scaling of medical datasets to achieve robust and scalable deep learning predictive models. To further improve the performance with privacy preservation, we improve the hypergraph model for multimodal fusion to make it suitable for autism spectrum disorder (ASD) diagnosis tasks by capturing the complementarity and correlation between modalities through a hypergraph fusion strategy. The results demonstrate that our proposed federated learning-based prediction model is superior to all local models and outperforms other deep learning models. Overall, our proposed FedHNN has good results in the work of using multi-site data to improve the performance of ASD identification.
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