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  4. Applying an artificial intelligence deep learning approach to routine dermatopathological diagnosis of basal cell carcinoma.
 
Zitierlink DOI
10.26092/elib/4170
Verlagslink DOI
10.1111/ddg.15180

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

Veröffentlichungsdatum
2023-10-09
Autoren
Duschner, Nicole
Otero Baguer, Daniel  
Schmidt, Maximilian  
Griewank, Klaus Georg
Hadaschik, Eva
Hetzer, Sonja
Wiepjes, Bettina
Le’Clerc Arrastia, Jean  
Jansen, Philipp
Maaß, Peter  
Schaller, Jörg
Zusammenfassung
Background: Institutes 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 Methods: In 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.

Results: In 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.

Conclusions: AI-based methods can detect BCC with high accuracy in a routine clinical setting and significantly support dermatopathological work.
Schlagwörter
basal cell carcinoma

; 

artificial intelligence

; 

deep learning

; 

dermatopathological diagnosis
Verlag
Wiley
Institution
Universität Bremen  
Fachbereich
Fachbereich 03: Mathematik/Informatik (FB 03)  
Zentrale Wissenschaftliche Einrichtungen und Kooperationen  
Institute
AG Technomathematik  
MAPEX Center for Materials and Processes  
Dokumenttyp
Wissenschaftlicher Artikel
Zeitschrift/Sammelwerk
JDDG: Journal der Deutschen Dermatologischen Gesellschaft
ISSN
1610-0387
Band
21
Heft
11
Startseite
1329
Endseite
1337
Zweitveröffentlichung
Ja
Dokumentversion
Postprint
Lizenz
Alle Rechte vorbehalten
Sprache
Englisch
Dateien
Lade...
Vorschaubild
Name

Duschner et al_Applying an artificial intelligence deep learning approach [...] dermatopathological diagnosis of basal cell carcinoma_2023_accepted-version.pdf

Size

2.42 MB

Format

Adobe PDF

Checksum

(MD5):fec739ebf6c88f34ccbe282b889dc471

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