Automatic International Hidradenitis Suppurativa Severity Score System (AIHS4): A novel tool to assess the severity of hidradenitis suppurativa using artificial intelligence

Author:

Hernández Montilla Ignacio1ORCID,Medela Alfonso1ORCID,Mac Carthy Taig2ORCID,Aguilar Andy2ORCID,Gómez Tejerina Pedro1ORCID,Vilas Sueiro Alejandro3ORCID,González Pérez Ana María4ORCID,Vergara de la Campa Laura5ORCID,Luna Bastante Loreto6ORCID,García Castro Rubén7ORCID,Alfageme Roldán Fernando8ORCID

Affiliation:

1. Department of Medical Computer Vision and PROMs LEGIT.HEALTH Bilbao Spain

2. Department of Clinical Endpoint Innovation LEGIT.HEALTH Bilbao Spain

3. Dermatology Unit Ferrol Teaching University Hospital Complex Ferrol Spain

4. Dermatology Unit Salamanca Teaching University Hospital Zamora Spain

5. Dermatology Unit Toledo Teaching University Hospital Complex Toledo Spain

6. Dermatology Unit Rey Juan Carlos Teaching University Hospital Madrid Spain

7. Dermatology Unit Fundacion Jiménez Díaz Teaching University Hospital Madrid Spain

8. Dermatology Unit Puerta de Hierro Hospital Madrid Spain

Abstract

AbstractBackgroundHidradenitis suppurativa (HS) is a painful chronic inflammatory skin disease that affects up to 4% of the European adult population. International Hidradenitis Suppurativa Severity Score System (IHS4) is a dynamic scoring tool that was developed to be incorporated into the doctor's daily clinical practice and clinical studies. This helps measure disease severity and guides the therapeutic strategy. However, IHS4 assessment is a time‐consuming and manual process, with high inter‐observer variability and high dependence on the observer's expertise.Materials and methodsWe introduce the Automatic International Hidradenitis Suppurativa Severity Score System (AIHS4), an automatic equivalent of IHS4 that deploys a deep learning model for lesion detection, called Legit.Health‐IHS4net, based on the YOLOv5 architecture. AIHS4 was trained on Legit.Health‐HS‐IHS4, a collection of HS images manually annotated by six specialists and processed by a novel knowledge unification algorithm.ResultsOur results show that, with the current dataset size, our tool assesses the severity of HS cases with a performance comparable to that of the most expert physician. Furthermore, the model can be implemented into CADx systems to support doctors in their clinical practice and act as a new endpoint in clinical trials.ConclusionOur work proves the potential usefulness of artificial intelligence in the practice of evidence‐based dermatology: models trained on the consensus of large clinical boards have the potential to empower dermatologists in their daily practice and replace current standard clinical endpoints.

Publisher

Wiley

Subject

Dermatology

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