Let it shine: Autofluorescence of Papanicolaou-stain improves AI-based cytological oral cancer detection.

Comput Biol Med

Centre for Image Analysis, Department of Information Technology, Uppsala University, Uppsala, Sweden. Electronic address:

Published: December 2024

Background And Objectives: Oral cancer is a global health challenge. The disease can be successfully treated if detected early, but the survival rate drops significantly for late stage cases. There is a growing interest in a shift from the current standard of invasive and time-consuming tissue sampling and histological examination, towards non-invasive brush biopsies and cytological examination, facilitating continued risk group monitoring. For cost effective and accurate cytological analysis there is a great need for reliable computer-assisted data-driven approaches. However, infeasibility of accurate cell-level annotation hinders model performance, and limits evaluation and interpretation of the results. This study aims to improve AI-based oral cancer detection by introducing additional information through multimodal imaging and deep multimodal information fusion.

Methods: 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. Given the challenge of detailed cytological annotations, we utilize a weakly supervised deep learning approach only relying on patient-level labels. We evaluate various multimodal information fusion strategies, including early, late, and three recent intermediate fusion methods.

Results: Our experiments demonstrate that: (i) there is substantial diagnostic information to gain from fluorescence imaging of Papanicolaou-stained cytological samples, (ii) multimodal information fusion improves classification performance and cancer detection accuracy, compared to single-modality approaches. Intermediate fusion emerges as the leading method among the studied approaches. Specifically, the Co-Attention Fusion Network (CAFNet) model achieves impressive results, with an F1 score of 83.34% and an accuracy of 91.79% at cell level, surpassing human performance on the task. Additional tests highlight the importance of accurate image registration to maximize the benefits of the multimodal analysis.

Conclusion: This study advances the field of cytopathology by integrating deep learning methods, multimodal imaging and information fusion to enhance non-invasive early detection of oral cancer. Our approach not only improves diagnostic accuracy, but also allows an efficient, yet uncomplicated, clinical workflow. The developed pipeline has potential applications in other cytological analysis settings. We provide a validated open-source analysis framework and share a unique multimodal oral cancer dataset to support further research and innovation.

Download full-text PDF

Source
http://dx.doi.org/10.1016/j.compbiomed.2024.109498DOI Listing

Publication Analysis

Top Keywords

oral cancer
20
cancer detection
12
brush biopsies
8
cytological analysis
8
multimodal imaging
8
deep learning
8
multimodal fusion
8
intermediate fusion
8
cancer
7
multimodal
7

Similar Publications

Chemoprevention of natural product against oral cancer: A comprehensive review.

Malays J Pathol

December 2024

Universiti Sains Malaysia, School of Dental Sciences, Health Campus, Kubang Kerian, Kelantan, Malaysia.

Introduction: Oral cancer is considered the sixth most common form of cancer worldwide. It causes significant morbidity and mortality, especially in low socioeconomic status groups. However, Cancer chemoprevention encompasses the use of specific compounds to suppress the growth of tumours or inhibit carcinogenesis.

View Article and Find Full Text PDF

Aim: We explored demoralisation syndrome among post-operative patients with breast cancer and its relationship with patients' body image and marital intimacy.

Design: A cross-sectional study.

Methods: In this cross-sectional study, 237 patients with breast cancer who were hospitalised in the breast surgery department of Grade A tertiary hospital in Xiamen, China from June 2022 to December 2023 and met the standards of adaxation were selected by the convenience sampling method.

View Article and Find Full Text PDF

<b>Background and Objective:</b> Cervical cancer is the second most common cancer in Indonesia, where traditional herbal treatments like <i>Zanthoxylum acanthopodium</i> (andaliman) are culturally used. Investigating protein biomarkers such as E7, pRb, EGFR and p16 can help assess the efficacy of these treatments. <b>Materials and Methods:</b> There were 5 groups in this study: 2 control groups (C- and C+) and 3 treatment groups (each receiving one of three doses).

View Article and Find Full Text PDF

Background: The use of liquid biopsy of total cell-free DNA (cfDNA) to identify otherwise undetectable cancers has attracted interest; however, its efficacy remains unknown. We explored whether analysis using total cfDNA is efficacious for Japanese patients with oral squamous cell carcinoma (OSCC).

Methods: We collected total cfDNA from nine patients with OSCC preoperatively, 1 month postoperatively, and every 3 months thereafter to analyze this association.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!