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As circular non-coding RNA (circRNA) is closely associated with various human diseases, identifying disease-related circRNAs can provide a deeper understanding of the mechanisms underlying disease pathogenesis. Advanced circRNA-disease association prediction methods mainly focus on graph learning techniques such as graph convolutional networks and graph attention networks. However, these methods do not fully encode the multi-scale neighbor topologies of each node, and the dependencies among the pairwise attributes. We propose a multi-scale neighbor topology-guided transformer with Kolmogorov-Arnold network (KAN) enhanced feature learning for circRNA and disease association prediction, termed MKCD. The model integrates multi-scale neighbor topology, complex relationships among multiple nodes, and the global and local dependencies of pairwise attributes. First, MKCD incorporates an adaptive multi-scale neighbor topology embedding construction strategy (AMNE), which generates neighbor topologies covering varying scopes of neighbors by performing random walks on a circRNA-disease-miRNA heterogeneous graph. Second, we design a dynamic multi-scale neighbor topology-guided transformer (DMTT) that leverages the multi-scale neighbor topologies to guide the learning of relationships among circRNA, miRNA, and disease nodes. The multi-scale neighbor topology is dynamically evolved, providing adaptive guidance to the transformer's learning process. Third, we establish a feature-gated network (FGN) to evaluate the importance of topological features derived from DMTT and the original node attributes. Finally, we propose an adaptive joint convolutional neural networks and KAN learning strategy (ACK) to learn the global and local dependencies of circRNA and disease node pair features. Comprehensive comparison experiments show that MKCD outperforms six state-of-the-art methods, improving AUC and AUPR by at least 14.1% and 7.6%, respectively. Ablation experiments further validate the effectiveness of AMNE, DMTT, FGN and ACK innovations. Case studies on three diseases further validate the application value of our method in discovering reliable circRNA candidates for diseases of focus. The source code and datasets are freely available at https://github.com/pingxuan-hlju/MKCD.
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http://dx.doi.org/10.1109/JBHI.2025.3600406 | DOI Listing |
Sci Rep
September 2025
School of Information Science and Technology, Yunnan Normal University, Kunming, 650500, China.
When facing sparse user-item interaction data, recommendation systems often struggle to learn high-quality representations, which in turn affects the recommendation performance. To address this issue, this paper proposes a graph neural network-based recommendation algorithm with multi-scale attention and contrastive learning (GR-MC). First, a dedicated graph structure augmentation strategy based on user-focused edge dropout is designed to intentionally reduce the dominance of high-degree user nodes in neighbor aggregation, effectively alleviating degree bias and improving the model's generalization ability.
View Article and Find Full Text PDFIEEE J Biomed Health Inform
August 2025
As circular non-coding RNA (circRNA) is closely associated with various human diseases, identifying disease-related circRNAs can provide a deeper understanding of the mechanisms underlying disease pathogenesis. Advanced circRNA-disease association prediction methods mainly focus on graph learning techniques such as graph convolutional networks and graph attention networks. However, these methods do not fully encode the multi-scale neighbor topologies of each node, and the dependencies among the pairwise attributes.
View Article and Find Full Text PDFWaste Manag
August 2025
School of Management Science and Real Estate, Chongqing University, Chongqing 400045, China.
Construction and demolition waste generation (CDWG) reduction is a key issue in urban waste management. The complex distribution and regional disparities of CDWG exacerbate the challenges of reduction. Existing research mainly focuses on macro-level national or regional scales, neglecting multi-scale interactions and detailed analysis at city scale.
View Article and Find Full Text PDFSensors (Basel)
June 2025
School of Computer Science & Technology, Beijing Institute of Technology, Beijing 100811, China.
In recent years, Academia and industry have conducted extensive and in-depth research on bearing-fault-diagnosis technology. However, the current modeling of time-space coupling characteristics in rolling bearing fault diagnosis remains inadequate, and the integration of multi-modal correlations requires further improvement. To address these challenges, this paper proposes a joint diagnosis framework integrating graph convolutional networks (GCNs) with attention-enhanced bidirectional gated recurrent units (BiGRUs).
View Article and Find Full Text PDFSensors (Basel)
June 2025
Luoyang Bearing Research Institute Technology Co., Ltd., Luoyang 471033, China.
To address the challenge of incomplete fault feature extraction in rolling bearing fault diagnosis under small-sample conditions, this paper proposes a Temporal-Graph Convolutional Fusion Network (T-GCFN). The method enhances diagnostic robustness through collaborative extraction and dynamic fusion of features from time-domain and frequency-domain branches. First, Variational Mode Decomposition (VMD) was employed to extract time-domain Intrinsic Mode Functions (IMFs).
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