Deep Ensemble Learning and Explainable AI for Multi-Class Classification of Earthstar Fungal Species
- Author: mycolabadmin
- 9/23/2025
- View Source
Summary
Background
Earthstar fungi are morphologically similar ectomycorrhizal species that are frequently misidentified by traditional methods. Artificial intelligence-based image processing offers potential for accurate automated classification of these fungi. This study addresses the challenge of distinguishing eight visually similar Earthstar species that have never been analyzed together as a group.
Objective
To develop and evaluate deep learning models for multi-class classification of eight Earthstar fungal species (Astraeus hygrometricus, Geastrum coronatum, G. elegans, G. fimbriatum, G. quadrifidum, G. rufescens, G. triplex, and Myriostoma coliforme) and to enhance model interpretability through explainable AI techniques. The study aimed to compare CNN and transformer architectures and develop ensemble models that balance classification accuracy with explainability.
Results
Conclusion
- Published in:Biology (Basel),
- Study Type:Experimental Study,
- Source: PMID: 41154716, DOI: 10.3390/biology14101313