Applying an artificial intelligence deep learning approach to routine dermatopathological diagnosis of basal cell carcinoma

Author:

Duschner Nicole1,Baguer Daniel Otero2,Schmidt Maximilian2,Griewank Klaus Georg34,Hadaschik Eva14,Hetzer Sonja1,Wiepjes Bettina1,Le'Clerc Arrastia Jean2,Jansen Philipp5,Maass Peter2,Schaller Jörg1

Affiliation:

1. MVZ Dermatopathology Duisburg Essen Essen Germany

2. Center for Technical Mathematics (ZeTeM) University of Bremen Bremen Germany

3. Dermatopathologie bei Mainz Nieder‐Olm Germany

4. Department of Dermatology University Hospital Essen Essen Germany

5. Department of Dermatology and Allergology University Hospital Bonn Bonn Germany

Abstract

SummaryBackgroundInstitutes of dermatopathology are faced with considerable challenges including a continuously rising numbers of submitted specimens and a shortage of specialized health care practitioners. Basal cell carcinoma (BCC) is one of the most common tumors in the fair‐skinned western population and represents a major part of samples submitted for histological evaluation. Digitalizing glass slides has enabled the application of artificial intelligence (AI)‐based procedures. To date, these methods have found only limited application in routine diagnostics. The aim of this study was to establish an AI‐based model for automated BCC detection.Patients and MethodsIn three dermatopathological centers, daily routine practice BCC cases were digitalized. The diagnosis was made both conventionally by analog microscope and digitally through an AI‐supported algorithm based on a U‐Net architecture neural network.ResultsIn routine practice, the model achieved a sensitivity of 98.23% (center 1) and a specificity of 98.51%. The model generalized successfully without additional training to samples from the other centers, achieving similarly high accuracies in BCC detection (sensitivities of 97.67% and 98.57% and specificities of 96.77% and 98.73% in centers 2 and 3, respectively). In addition, automated AI‐based basal cell carcinoma subtyping and tumor thickness measurement were established.ConclusionsAI‐based methods can detect BCC with high accuracy in a routine clinical setting and significantly support dermatopathological work.

Publisher

Wiley

Subject

Dermatology

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Emerging Applications of Artificial Intelligence in Dermatopathology;Current Dermatology Reports;2024-06-17

2. Artificial intelligence and skin cancer;Frontiers in Medicine;2024-03-19

3. Digitalisierung und Einsatz von Künstlicher Intelligenz in der Dermatopathologie;JDDG: Journal der Deutschen Dermatologischen Gesellschaft;2023-11

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