Computational Intelligence Methods for Bioinformatics and Biostatistics

Computational Intelligence Methods for Bioinformatics and Biostatistics

18th International Meeting, CIBB 2023, Padova, Italy, September 6-8, 2023, Revised Selected Papers

Vettoretti, Martina; Bellato, Massimo; Longato, Enrico; Baruzzo, Giacomo; Tavazzi, Erica

Springer International Publishing AG

05/2025

343

Mole

Inglês

9783031907135

Pré-lançamento - envio 15 a 20 dias após a sua edição

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.- A Network Approach to Aquatic Food Web Dynamics.


.- Leveraging Diffuser Data Augmentation to enhance ViT-based performance on Dermatoscopic Melanoma Images Classification.


.- Thyroid Nodule Diagnosis Using a New Supervised Autoencoder Neural net work with multi-categorical medical data.


.- Can smoothing methods recognize the patterns of the hazard function in complex clinical scenarios? A simulation study using discrete-time survival models.


.- Nested Named Entity Recognition in Chinese Electronic Medical Records.


.- Transformers for Interpretable Classification of Histopathological Images.


.- Breast Cancer Malignancy Prediction Through Explainable Models based on a Multimodal Signature of Features.


.- Exploring the Conformational Odorant Space in the Olfactory Re-ceptor Binding Region.


.- Synergy between mechanistic modelling and Ensemble Feature Selection ap proaches to explore multiscale biological Heterogeneity.


.- Homophily of large weighted networks in a data streaming setting.


.- Living along COVID-19: assessing contention policies through Agent-Based Models.


.- Stochastic modeling and dosage optimization of a cancer vaccine exploiting the EpiMod Framework.


.- Extension of the GreatMod modeling framework to simulate non-Markovian processes with general-distributed events.


.- Identifying Damage-Related Features in scRNA-seq Data.


.- A benchmark study of gene fusion prioritization tools.


.- Improving the reliability of tree-based feature importance via consensus signals.


.- Interpretable Machine Learning for Automated Cellular Population Analysis in Flow Cytometry.


.- Pre-trained Models Based on Primary Sequence to Classify Antibody Bind ing to Protein and Non-Protein Targets with 80% Accuracy.


.- Inferring breast cancer subtype associations using an original omics integra tion based on Non-negative Matrix Tri-Factorization.


.- Screening the bioactivity of the P450 enzyme by spiking neural networks.


.- Enhancing functional interpretability in gene expression analysis through biologically-guided feature selection.


.- Extraction of Attributes from Electrodermal Activity Signals Applying Time Series Fuzzy Granulation for Classification of Academic Stress Perception in Different Scenarios.


.- Transfer Learning and AutoML as a Support for the Pneumonia Diagnosis using Chest X-ray scan.
bioinformatics;medical informatics;health informatics;systems biology;network systems biology;computational modeling;machine learning;biomedical signal processing