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SHR Neuro Cancer Cardio Lipid Metab Microb

Kommoss, KS; Winkler, JK; Mueller-Christmann, C; Bardehle, F; Toberer, F; Stolz, W; Kraenke, T; Hofmann-Wellenhof, R; Blum, A; Enk, A; Rosenberger, A; Haenssle, HA.
Observational study investigating the level of support from a convolutional neural network in face and scalp lesions deemed diagnostically 'unclear' by dermatologists.
Eur J Cancer. 2023; 185: 53-60. Doi: 10.1016/j.ejca.2023.02.025
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Co-authors Med Uni Graz
Hofmann-Wellenhof Rainer
Kränke Teresa Maria
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Abstract:
BACKGROUND: The clinical diagnosis of face and scalp lesions (FSL) is challenging due to overlapping features. Dermatologists encountering diagnostically 'unclear' lesions may benefit from artificial intelligence support via convolutional neural networks (CNN). METHODS: In a web-based classification task, dermatologists (n = 64) diagnosed a convenience sample of 100 FSL as 'benign', 'malignant', or 'unclear' and indicated their management decisions ('no action', 'follow-up', 'treatment/excision'). A market-approved CNN (Moleanalyzer-Pro®, FotoFinder Systems, Germany) was applied for binary classifications (benign/malignant) of dermoscopic images. RESULTS: After reviewing one dermoscopic image per case, dermatologists labelled 562 of 6400 diagnoses (8.8%) as 'unclear' and mostly managed these by follow-up examinations (57.3%, n = 322) or excisions (42.5%, n = 239). Management was incorrect in 58.8% of 291 truly malignant cases (171 'follow-up' or 'no action') and 43.9% of 271 truly benign cases (119 'excision'). Accepting CNN classifications in unclear cases would have reduced false management decisions to 4.1% in truly malignant and 31.7% in truly benign lesions (both p < 0.01). After receiving full case information 239 diagnoses (3.7%) remained 'unclear' to dermatologists, now triggering more excisions (72.0%) than follow-up examinations (28.0%). These management decisions were incorrect in 32.8% of 116 truly malignant cases and 76.4% of 123 truly benign cases. Accepting CNN classifications would have reduced false management decisions to 6.9% in truly malignant lesions and to 38.2% in truly benign cases (both p < 0.01). CONCLUSIONS: Dermatologists mostly managed diagnostically 'unclear' FSL by treatment/excision or follow-up examination. Following CNN classifications as guidance in unclear cases seems suitable to significantly reduce incorrect decisions.
Find related publications in this database (using NLM MeSH Indexing)
Humans - administration & dosage
Skin Neoplasms - diagnosis, pathology
Melanoma - pathology
Dermatologists - administration & dosage
Scalp - pathology
Artificial Intelligence - administration & dosage
Neural Networks, Computer - administration & dosage
Dermoscopy - methods

Find related publications in this database (Keywords)
Dermoscopy
Deep learning
Neural network
Skin cancer
Melanoma
Lentigo maligna
Solar lentigo
Actinic keratosis
Seborrhoeic keratosis
Basal cell carcinoma
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