Let it shine: Autofluorescence of Papanicolaou-stain improves AI-based cytological oral cancer detection
Wenyi Lian, Joakim Lindblad, Christina Runow Stark, Jan-Micha\'el, Hirsch, Nata\v{s}a Sladoje

TL;DR
This study demonstrates that combining autofluorescence and brightfield imaging with deep learning significantly improves AI-based oral cancer detection from cytology slides, surpassing human performance.
Contribution
It introduces a multimodal fusion approach using weakly supervised deep learning for oral cancer detection, leveraging fluorescence and brightfield images to enhance accuracy.
Findings
Fluorescence imaging provides substantial diagnostic information.
Multimodal fusion improves classification accuracy over single modalities.
Intermediate fusion, especially CAFNet, achieves the best performance.
Abstract
Oral cancer is a global health challenge. It is treatable if detected early, but it is often fatal in late stages. There is a shift from the invasive and time-consuming tissue sampling and histological examination, toward non-invasive brush biopsies and cytological examination. Reliable computer-assisted methods are essential for cost-effective and accurate cytological analysis, but the lack of detailed cell-level annotations impairs model effectiveness. This study aims to improve AI-based oral cancer detection using multimodal imaging and deep fusion. We combine brightfield and fluorescence whole slide microscopy imaging to analyze Papanicolaou-stained liquid-based cytology slides of brush biopsies collected from both healthy and cancer patients. Due to limited cytological annotations, we utilize a weakly supervised deep learning approach using only patient-level labels. We evaluate…
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Taxonomy
TopicsDiverse Scientific Research Studies
