Advanced Intelligent Computing Technology and Applications: 21st International Conference, ICIC 2025, Ningbo, China, July 26–29, 2025, Proceedings, Part XXVI

Author:   De-Shuang Huang ,  Haiming Chen ,  Bo Li ,  Qinhu Zhang
Publisher:   Springer
Volume:   15867
ISBN:  

9789819500291


Pages:   519
Publication Date:   21 August 2025
Format:   Paperback
Availability:   Not yet available   Availability explained
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Advanced Intelligent Computing Technology and Applications: 21st International Conference, ICIC 2025, Ningbo, China, July 26–29, 2025, Proceedings, Part XXVI


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Overview

The 20-volume set LNCS 15842-15861, together with the 4-volume set LNAI 15862-15865 and the 4-volume set LNBI 15866-15869, constitutes the refereed proceedings of the 21st International Conference on Intelligent Computing, ICIC 2025, held in Ningbo, China, during July 26-29, 2025. The 1206 papers presented in these proceedings books were carefully reviewed and selected from 4032 submissions. They deal with emerging and challenging topics in artificial intelligence, machine learning, pattern recognition, bioinformatics, and computational biology.   

Full Product Details

Author:   De-Shuang Huang ,  Haiming Chen ,  Bo Li ,  Qinhu Zhang
Publisher:   Springer
Imprint:   Springer
Volume:   15867
ISBN:  

9789819500291


ISBN 10:   981950029
Pages:   519
Publication Date:   21 August 2025
Audience:   Professional and scholarly ,  Professional & Vocational
Format:   Paperback
Publisher's Status:   Forthcoming
Availability:   Not yet available   Availability explained
This item is yet to be released. You can pre-order this item and we will dispatch it to you upon its release.
Language:   English

Table of Contents

.- Cheminformatics. .- Topological Analysis of F-Multiplicity Corona Graphs: Zagreb Indices and Applications in Molecular Design. .- Graph-based Multi-scale Learning for Predicting Mass Spectra from Molecules. .- A Universal Periodicity Injection Module for Crystal Property Prediction. .- SM-CBNet: A Speech-Based Parkinson's Disease Diagnosis Model with SMOTE–ENN and CNN+BiLSTM Integration. .- Systems Biology. .- SpatialDSSC: Estimating Cell Type Abundance and Expression Profile from  Spatial Transcriptomic Data. .- Cuproptosis-related genes are correlated with prognostic and immune  infiltration in skin cutaneous melanoma patients. .- CS-Phylo: Accelerating Evolutionary Distance Estimation with Closed Syncmer-Enhanced MinHash. .- Aligning Histological Images and Spatial Gene Expression Profiles via  Dynamic Convolution and Graph Transformers. .- SGAEMVN: a hybrid neighborhood-based graph attention autoencoder for  identifying spatial domains from spatial transcriptomics. .- MMF2Drug: A Multi-Modal Feature Fusion Method for Improving Targeted  Drug Design. .- DFDGRU-DTI: Drug-Target Interaction Prediction Based on Random Walk Embeddings and Bidirectional GRU Neural Network. .- RDT-Net: A Novel Diffusion-Based Network for Intracranial Hemorrhage  Segmentation. .- Feature Attribution-based Explanation Comparison of  Magnetoencephalography Decoding Models. .- scAFC: Adaptive Fusion Clustering of Single-cell RNA-seq Data through  Autoencoder and Graph Attention Networks. .- BIOFUSE-DDI: A Dual-Source Transformer Framework for Drug-Drug  Interaction Prediction. .- MedMaskDiff: Mamba-based Medical Semantic Image Synthesis for  Segmentation. .- Image Clarity Combination Method Based on Hybrid Sampling. .- PDA-PAGCN: Predicting Disease-Related piRNA Based on Proxy Attention  Graph Convolutional Network. .- CALM-AcPEP: Predicting Anticancer Peptides using Cross-Attention and  Pre-trained Language Model. .- ACP-TransLSTM: A Novel Deep Learning Framework for Anticancer  Peptide Prediction Using Multi-Source Feature Integration. .- Multimodal GAN Integrating Hypergraph and Knowledge Graph  Representations for Synthetic Lethality. .- EdgeViewDet: Dynamic Edge-Centric Fusion Network with Granger  Causality for Neurological Disorders Detection. .- MOMTERL: Modeling Molecular Masking and Contrastive Learning Based  on Motifs. .- Respiratory Sound Classification via Multi-View Feature Fusion with Enhanced Convolutional Neural Network and Audio Spectrogram  Transformer. .- Multi-Scale Graph Regularized Deep Learning for Accurate Drug-Protein  Interaction Prediction. .- DiffiT-HSFDA: Diffusion Based Source-Free Domain Adaptation for Histopathology. .- Dual-channel MiRNA Drug Resistance Prediction Model Based on  Multimodal Feature Alignment. .- Whole Slide Images Based Cancer Survival Prediction Using Multi-Task  Learning. .- Leveraging DermoGrabcut Segmentation for Improved CNN-Based Skin  Lesion Classification. .- VirB: A Virus Hierarchical Classification Method Based on ModernBERT. .- FAPE-DTI: Enhancing Drug–Target Interaction Prediction with Focal  Attention and Relative Positional Encoding. .- An Adaptive Multi-View Feature Fusion Framework Based on Multiple  Graphs for Predicting Drug-drug Interactions. .- E-MSNGO: Explainable Multi-species Protein Function Prediction Model  based on Aggregated Networks. .- PRNet: A Contrastive Ranking Model Based on 3D Convolution and Bi LSTM for ChRs Prediction. .- DeepGO-ESM: Improving the Protein Function Prediction of DeepGraphGO  via the Evolutionary Scale Modeling Framework. .- scGECA: a Graph Embedded Representation Learning Approach with  Dynamic Attention Mechanism for Single-cell Clustering. .- ChemTransGNN++: From Reactants to Products via Multiscale Graph Transformer Modeling of Reaction Pathways. .- ReAlign-Star: An Optimized Realignment Method for Multiple Sequence  Alignment, Targeting Star Algorithm Tools. .- FMAlign3: A Scalable and Adaptive Framework for Large-Scale Multiple  Sequence Alignment. .- Enough Consecutive Matches in k-Tuple Common Substrings. .- DeepCatl: A combination of channel attention mechanism and Transformer  encoding to predict transcription factor binding sites. .- FDA-YOLO: Fast Domain Adaptation YOLO for Cross-Domain Brain  Tumor Detection in Medical Imaging. .- Controllable Edge-Type-Specific Interpretation in Multi-Relational Graph  Neural Networks for Drug Response Prediction.

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