heterogeneous graph neural networks

  • 文章类型: Journal Article
    T细胞受体(TCR)与主要组织相容性复合物分子(MHC)呈递的肽(表位)之间的相互作用是免疫应答的基础。准确预测TCR-表位相互作用对于促进对各种疾病的理解及其预防和治疗至关重要。现有的方法主要依赖于基于序列的方法,忽略了TCR-表位相互作用网络的固有拓扑结构。在这项研究中,我们呈现$GTE$,一种基于归纳学习的新型异构图神经网络模型,用于捕获TCR和表位之间的拓扑结构。此外,我们通过提出动态边更新策略来解决在图内构造负样本的挑战,增强非结合TCR-表位对的模型学习。此外,为了克服数据不平衡,我们将深度AUC最大化策略适应图域。在四个公共数据集上进行了大量实验,以证明探索潜在拓扑结构在预测TCR-表位相互作用方面的优越性。说明了深入研究复杂分子网络的好处。实现代码和数据可在https://github.com/uta-smile/GTE获得。
    The interaction between T-cell receptors (TCRs) and peptides (epitopes) presented by major histocompatibility complex molecules (MHC) is fundamental to the immune response. Accurate prediction of TCR-epitope interactions is crucial for advancing the understanding of various diseases and their prevention and treatment. Existing methods primarily rely on sequence-based approaches, overlooking the inherent topology structure of TCR-epitope interaction networks. In this study, we present $GTE$, a novel heterogeneous Graph neural network model based on inductive learning to capture the topological structure between TCRs and Epitopes. Furthermore, we address the challenge of constructing negative samples within the graph by proposing a dynamic edge update strategy, enhancing model learning with the nonbinding TCR-epitope pairs. Additionally, to overcome data imbalance, we adapt the Deep AUC Maximization strategy to the graph domain. Extensive experiments are conducted on four public datasets to demonstrate the superiority of exploring underlying topological structures in predicting TCR-epitope interactions, illustrating the benefits of delving into complex molecular networks. The implementation code and data are available at https://github.com/uta-smile/GTE.
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  • 文章类型: Journal Article
    医疗保险欺诈越来越普遍,影响了医疗保险制度的公平性和可持续性。传统的健康保险欺诈检测主要依赖于识别已建立的数据模式。然而,随着健康保险数据的不断扩大和复杂性,这些传统方法很难有效地捕捉不断发展的欺诈活动和策略,并跟上欺诈者的不断改进和创新。因此,迫切需要更准确和灵活的分析来检测潜在的欺诈行为。为了解决这个问题,提出了基于多通道异构图结构化学习的医疗保险欺诈检测方法(MHGSL)。MHGSL构造了来自各种实体的健康保险数据图,如患者,部门,和药物,并采用图结构学习来提取拓扑结构,特点,和语义信息,构造多个图,反映数据的多样性和复杂性。我们利用异构图神经网络和图卷积神经网络等深度学习方法,将多通道信息传递和特征融合相结合,以检测健康保险数据中的异常。对真实健康保险数据的大量实验结果表明,MHGSL在检测潜在欺诈方面具有很高的准确性,比现有的方法更好,并且能够快速准确地识别患者的欺诈行为,避免医保基金的损失。实验表明,MHGSL中的多通道异构图结构学习对医疗保险欺诈检测非常有帮助。它为检测健康保险欺诈和提高健康保险制度的公平性和可持续性提供了一个有前途的解决方案。随后对欺诈检测方法的研究可以考虑患者和不同类型实体之间的语义信息。
    Health insurance fraud is becoming more common and impacting the fairness and sustainability of the health insurance system. Traditional health insurance fraud detection primarily relies on recognizing established data patterns. However, with the ever-expanding and complex nature of health insurance data, it is difficult for these traditional methods to effectively capture evolving fraudulent activity and tactics and keep pace with the constant improvements and innovations of fraudsters. As a result, there is an urgent need for more accurate and flexible analytics to detect potential fraud. To address this, the Multi-channel Heterogeneous Graph Structured Learning-based health insurance fraud detection method (MHGSL) was proposed. MHGSL constructs a graph of health insurance data from various entities, such as patients, departments, and medicines, and employs graph structure learning to extract topological structure, features, and semantic information to construct multiple graphs that reflect the diversity and complexity of the data. We utilize deep learning methods such as heterogeneous graph neural networks and graph convolutional neural networks to combine multi-channel information transfer and feature fusion to detect anomalies in health insurance data. The results of extensive experiments on real health insurance data demonstrate that MHGSL achieves a high level of accuracy in detecting potential fraud, which is better than existing methods, and is able to quickly and accurately identify patients with fraudulent behaviors to avoid loss of health insurance funds. Experiments have shown that multi-channel heterogeneous graph structure learning in MHGSL can be very helpful for health insurance fraud detection. It provides a promising solution for detecting health insurance fraud and improving the fairness and sustainability of the health insurance system. Subsequent research on fraud detection methods can consider semantic information between patients and different types of entities.
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