Diagnosis with confidence: deep learning for reliable classification of laryngeal dysplasia

Author:

Lubrano Mélanie123ORCID,Bellahsen‐Harrar Yaëlle45,Berlemont Sylvain2,Atallah Sarah67ORCID,Vaz Emmanuelle8,Walter Thomas1910,Badoual Cécile45

Affiliation:

1. Centre for Computational Biology (CBIO) Mines Paris, PSL University Paris France

2. Keen Eye Paris France

3. Tribun Health Paris France

4. Department of Pathology, APHP Hôpital Européen Georges‐Pompidou Paris France

5. Université Paris Cité Paris France

6. Sorbonne Université Paris France

7. Head and Neck Surgery Department Hôpital Tenon Paris France

8. Department of Pathology Hôpital Tenon Paris France

9. Institut Curie, PSL Université Paris France

10. INSERM U900 Paris France

Abstract

BackgroundDiagnosis of head and neck (HN) squamous dysplasias and carcinomas is critical for patient care, cure, and follow‐up. It can be challenging, especially for grading intraepithelial lesions. Despite recent simplification in the last WHO grading system, the inter‐ and intraobserver variability remains substantial, particularly for nonspecialized pathologists, exhibiting the need for new tools to support pathologists.MethodsIn this study we investigated the potential of deep learning to assist the pathologist with automatic and reliable classification of HN lesions following the 2022 WHO classification system. We created, for the first time, a large‐scale database of histological samples (>2000 slides) intended for developing an automatic diagnostic tool. We developed and trained a weakly supervised model performing classification from whole‐slide images (WSI). We evaluated our model on both internal and external test sets and we defined and validated a new confidence score to assess the predictions that can be used to identify difficult cases.ResultsOur model demonstrated high classification accuracy across all lesion types on both internal and external test sets (respectively average area under the curve [AUC]: 0.878 (95% confidence interval [CI]: [0.834–0.918]) and 0.886 (95% CI: [0.813–0.947])) and the confidence score allowed for accurate differentiation between reliable and uncertain predictions.ConclusionOur results demonstrate that the model, associated with confidence measurements, can help in the difficult task of classifying HN squamous lesions by limiting variability and detecting ambiguous cases, taking us one step closer to a wider adoption of AI‐based assistive tools.

Funder

Association Nationale de la Recherche et de la Technologie

Agence Nationale de la Recherche

Publisher

Wiley

Subject

General Medicine,Histology,Pathology and Forensic Medicine

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