: Given the increasing complexity of omics datasets, a key challenge is not only improving classification performance but also enhancing the transparency and reliability of model decisions. Effective model performance and feature selection are fundamental for explainability and reliability. In many cases, high-dimensional omics datasets suffer from limited number of samples due to clinical constraints, patient conditions, phenotypes rarity and others conditions. Current omics-based classification models often suffer from narrow interpretability, making it difficult to discern meaningful insights where trust and reproducibility are critical. This study presents a machine learning-based classification framework that integrates feature selection with data augmentation techniques to achieve high-standard classification accuracy while ensuring better interpretability. Using the publicly available dataset E-MTAB-8026, we explore a bootstrap analysis in six binary classification scenarios to evaluate the proposed model's behaviour. We show that the proposed pipeline yields cross-validated perfomance on small dataset that is conserved when the trained classifier is applied to a larger test set. Our findings emphasize the fundamental balance between accuracy and feature selection, highlighting the positive effect of introducing synthetic data for better generalization, even in scenarios with very limited samples availability.Clinical relevance- The proposed framework addresses a critical challenge in omics-based disease classification by improving model interpretability while maintaining high classification performance. By providing a more explainable data-driven approach, this study contributes to the development of reliable and reproducible diagnostic tools that can support clinical decision-making.

Improving Omics-Based Classification: The Role of Feature Selection and Synthetic Data Generation

Perazzolo, Diego;Angelini, Annalisa;Castellani, Chiara;Grisan, Enrico
2025

Abstract

: Given the increasing complexity of omics datasets, a key challenge is not only improving classification performance but also enhancing the transparency and reliability of model decisions. Effective model performance and feature selection are fundamental for explainability and reliability. In many cases, high-dimensional omics datasets suffer from limited number of samples due to clinical constraints, patient conditions, phenotypes rarity and others conditions. Current omics-based classification models often suffer from narrow interpretability, making it difficult to discern meaningful insights where trust and reproducibility are critical. This study presents a machine learning-based classification framework that integrates feature selection with data augmentation techniques to achieve high-standard classification accuracy while ensuring better interpretability. Using the publicly available dataset E-MTAB-8026, we explore a bootstrap analysis in six binary classification scenarios to evaluate the proposed model's behaviour. We show that the proposed pipeline yields cross-validated perfomance on small dataset that is conserved when the trained classifier is applied to a larger test set. Our findings emphasize the fundamental balance between accuracy and feature selection, highlighting the positive effect of introducing synthetic data for better generalization, even in scenarios with very limited samples availability.Clinical relevance- The proposed framework addresses a critical challenge in omics-based disease classification by improving model interpretability while maintaining high classification performance. By providing a more explainable data-driven approach, this study contributes to the development of reliable and reproducible diagnostic tools that can support clinical decision-making.
2025
Improving Omics-Based Classification: The Role of Feature Selection and Synthetic Data Generation
The Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC) 2025
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3569778
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