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The study of the relationship between circular RNA (circRNA) and disease is crucial for understanding the mechanisms underlying disease onset. However, relying on biological experiments to explore all potential connections between circRNAs and diseases is both time-consuming and labor-intensive. While various prediction methods have been proposed, they still possess certain limitations in their ability to extract deep features. In this study, we introduce an innovative computational framework called Graph Isomorphism Networks and Graph Sampling Aggregation for predicting unknown circRNA-disease associations (GINSACDA). Specifically, GINSACDA first computes the Gaussian interactive profile kernel (GIP) similarity and functional similarity of circRNAs, as well as the GIP similarity and semantic similarity of diseases, serving as global features. Then, node labels extracted from seven-hop subgraphs connected to the target nodes are used as local features, which are fused with the global features. Next, the fused features are input into a Graph Isomorphism Network (GIN) for feature extraction and combined with the Graph Sampling Aggregation (GraphSAGE) method to extract deeper hidden features. Finally, we employed a fully connected layer to compute the prediction scores. The results of five-fold cross-validation conducted on two datasets indicate that GINSACDA outperforms five other state-of-the-art models. Additionally, we conducted case studies on hepatocellular carcinoma and breast cancer to further validate the superior predictive capabilities of our model.
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http://dx.doi.org/10.1109/TCBBIO.2025.3605047 | DOI Listing |
Front Chem
August 2025
Department of Mathematics, School of Advanced Sciences, Vellore Institute of Technology, Chennai, Tamil Nadu, India.
Dengue is a viral disease transmitted to humans through mosquito bites. Researchers have investigated various drugs with potential antiviral properties against it. Some of the promising antiviral drugs include UV-4B (N-9-methoxynonyl-1-deoxynojirimycin), Lycorine, ST-148, 4-HPR, Silymarin, Baicalein, Quercetin, Naringenin, Nelfinavir, Ivermectin, Mosnodenvir (JNJ-1802), NITD-688, Metoclopramide, JNJ-A07 and Betulinic acid.
View Article and Find Full Text PDFBioinform Biol Insights
August 2025
Department of Computer Science and Engineering, Sun Moon University, Asan, Republic of Korea.
An advanced graph neural network (GNN) is of great promise to facilitate predicting Poly ADPribose polymerase inhibitors (PARPi). Recent studies design models by leveraging graph representations and molecular descriptor representations, unfortunately, still face challenges in comprehensively capturing spatial relationships and contextual information between atoms. Moreover, combining molecular descriptors with graph representations may introduce information redundancy or lead to the loss of intrinsic molecular structures.
View Article and Find Full Text PDFIEEE Trans Comput Biol Bioinform
September 2025
The study of the relationship between circular RNA (circRNA) and disease is crucial for understanding the mechanisms underlying disease onset. However, relying on biological experiments to explore all potential connections between circRNAs and diseases is both time-consuming and labor-intensive. While various prediction methods have been proposed, they still possess certain limitations in their ability to extract deep features.
View Article and Find Full Text PDFIEEE Trans Image Process
August 2025
Due to the lack of prior knowledge about unknown classes during training, existing methods for cross-domain open-set image recognition typically rely on threshold-based solutions. However, such approaches often struggle to capture the complex boundary relationships between known and unknown classes, which can lead to negative transfer effects caused by feature confusion between the two. To address this issue, this paper proposes a graph isomorphic distillation diffusion model (GIDDM) that aims to learn the boundary relationships between known and unknown classes from a closed-set classifier that models predictive uncertainty.
View Article and Find Full Text PDFJ Chem Inf Model
September 2025
School of Data Science, Qingdao University of Science and Technology, Qingdao 266061, China.
Predicting compound-protein interaction (CPI) plays a critical role in drug discovery and development, but traditional screening experiments consume much time and resources. Therefore, deep learning methods for CPI prediction are popular now. However, many existing methods treat CPI pairs as independent inputs, ignoring the correlations among different CPI pairs, and do not capture their latent representations well.
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