Investigation of Machine and Deep Learning Techniques to Detect HPV Status

Journal Article (2024)
Author(s)

Efstathia Petrou (University of Patras)

Konstantinos Chatzipapas (University of Brest/INSERM/LaTIM)

Panagiotis Papadimitroulas (University of Patras)

Gustavo Andrade-Miranda (University of Brest/INSERM/LaTIM)

Paraskevi F. Katsakiori (University of Patras)

Nikolaos D. Papathanasiou (University of Patras)

Dimitris Visvikis (University of Brest/INSERM/LaTIM)

George C. Kagadis (University of Patras)

Affiliation
External organisation
DOI related publication
https://doi.org/10.3390/jpm14070737 Final published version
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Publication Year
2024
Language
English
Affiliation
External organisation
Journal title
Journal of Personalized Medicine
Issue number
7
Volume number
14
Article number
737
Downloads counter
117

Abstract

Background: This study investigated alternative, non-invasive methods for human papillomavirus (HPV) detection in head and neck cancers (HNCs). We compared two approaches: analyzing computed tomography (CT) scans with a Deep Learning (DL) model and using radiomic features extracted from CT images with machine learning (ML) models. Methods: Fifty patients with histologically confirmed HNC were included. We first trained a modified ResNet-18 DL model on CT data to predict HPV status. Next, radiomic features were extracted from manually segmented regions of interest near the oropharynx and used to train four ML models (K-Nearest Neighbors, logistic regression, decision tree, random forest) for the same purpose. Results: The CT-based model achieved the highest accuracy (90%) in classifying HPV status. Among the ML models, K-Nearest Neighbors performed best (80% accuracy). Weighted Ensemble methods combining the CT-based model with each ML model resulted in moderate accuracy improvements (70–90%). Conclusions: Our findings suggest that CT scans analyzed by DL models hold promise for non-invasive HPV detection in HNC. Radiomic features, while less accurate in this study, offer a complementary approach. Future research should explore larger datasets and investigate the potential of combining DL and radiomic techniques.