DeFungi: Direct Mycological Examination of Microscopic Fungi Images
Camilo Javier Pineda Sopo, Farshid Hajati, Soheila Gheisari

TL;DR
This research develops and benchmarks deep learning models for early-stage microscopic fungi classification, providing a dataset and initial performance metrics to advance computer-aided mycological diagnosis.
Contribution
Introduces a curated fungi image dataset and evaluates deep learning models for early mycological diagnosis, filling a gap in existing research.
Findings
Inception V3 trained from scratch achieved 73.2% accuracy.
VGG16 with transfer learning achieved 85.04% accuracy.
The dataset is publicly available to support future research.
Abstract
Traditionally, diagnosis and treatment of fungal infections in humans depend heavily on face-to-face consultations or examinations made by specialized laboratory scientists known as mycologists. In many cases, such as the recent mucormycosis spread in the COVID-19 pandemic, an initial treatment can be safely suggested to the patient during the earliest stage of the mycological diagnostic process by performing a direct examination of biopsies or samples through a microscope. Computer-aided diagnosis systems using deep learning models have been trained and used for the late mycological diagnostic stages. However, there are no reference literature works made for the early stages. A mycological laboratory in Colombia donated the images used for the development of this research work. They were manually labelled into five classes and curated with a subject matter expert assistance. The images…
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Taxonomy
TopicsCell Image Analysis Techniques · AI in cancer detection · Digital Imaging for Blood Diseases
