Abstract

Background: Melanomas are often easy to recognize clinically but determining whether a melanoma is in situ (MIS) or invasive is often more challenging even with the aid of dermoscopy. Recently, convolutional neural networks (CNNs) have made significant and rapid advances within dermatology image analysis. The aims of this investigation were to create a de novo CNN for differentiating between MIS and invasive melanomas based on clinical close-up images and to compare its performance on a test set to seven dermatologists.Methods: A retrospective study including clinical images of MIS and invasive melanomas obtained from our department during a five-year time period (2016–2020) was conducted. Overall, 1,551 images [819 MIS (52.8%) and 732 invasive melanomas (47.2%)] were available. The images were randomized into three groups: training set (n = 1,051), validation set (n = 200), and test set (n = 300). A de novo CNN model with seven convolutional layers and a single dense layer was developed.Results: The area under the curve was 0.72 for the CNN (95% CI 0.66–0.78) and 0.81 for dermatologists (95% CI 0.76–0.86) (P < 0.001). The CNN correctly classified 208 out of 300 lesions (69.3%) whereas the corresponding number for dermatologists was 216 (72.0%). When comparing the CNN performance to each individual reader, three dermatologists significantly outperformed the CNN.Conclusions: For this classification problem, the CNN was outperformed by the dermatologist. However, since the algorithm was only trained and validated on 1,251 images, future refinement and development could make it useful for dermatologists in a real-world setting.

Highlights

  • Melanomas are most often easy to recognize and many are spotted instantly even without the aid of dermoscopy

  • The interobserver agreement between the readers in terms of answering melanoma is in situ (MIS) or invasive melanomas was moderate (κ = 0.56, 95% CI 0.53–0.58)

  • The area under the curve (AUC) was 0.72 for the convolutional neural networks (CNNs) and 0.81 for dermatologists (P < 0.001) (Figure 3)

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Summary

Introduction

Melanomas are most often easy to recognize and many are spotted instantly even without the aid of dermoscopy. Dermatologists are frequently confronted with this specific classification problem, in a preoperative setting While this issue may seem unimportant since the lesion still requires excision, this binary classification problem adds prognostic value that can be relayed to the patient preoperatively and might even have implications for the selection of the appropriate surgical margins for the first diagnostic excision. Melanomas are often easy to recognize clinically but determining whether a melanoma is in situ (MIS) or invasive is often more challenging even with the aid of dermoscopy. Convolutional neural networks (CNNs) have made significant and rapid advances within dermatology image analysis The aims of this investigation were to create a de novo CNN for differentiating between MIS and invasive melanomas based on clinical close-up images and to compare its performance on a test set to seven dermatologists

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