2020
DOI: 10.1371/journal.pmed.1003381
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Assessment of deep neural networks for the diagnosis of benign and malignant skin neoplasms in comparison with dermatologists: A retrospective validation study

Abstract: Background The diagnostic performance of convolutional neural networks (CNNs) for diagnosing several types of skin neoplasms has been demonstrated as comparable with that of dermatologists using clinical photography. However, the generalizability should be demonstrated using a large-scale external dataset that includes most types of skin neoplasms. In this study, the performance of a neural network algorithm was compared with that of dermatologists in both real-world practice and experimental settings. Metho… Show more

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Cited by 36 publications
(41 citation statements)
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“…Therefore, comparative studies that are solely based on single images fall short of the clinical routine. Interestingly enough, in these [4,18,24] and other [7,29] studies in which multiple images were provided to human experts, the participants only attained at most equivalent results in comparison with CNN-based classification. Nevertheless, to enable a fair comparison, future reader studies should not only provide clinicians but also provide CNNs with additional close-up images and patient information (e.g.…”
Section: Test Settingmentioning
confidence: 83%
See 2 more Smart Citations
“…Therefore, comparative studies that are solely based on single images fall short of the clinical routine. Interestingly enough, in these [4,18,24] and other [7,29] studies in which multiple images were provided to human experts, the participants only attained at most equivalent results in comparison with CNN-based classification. Nevertheless, to enable a fair comparison, future reader studies should not only provide clinicians but also provide CNNs with additional close-up images and patient information (e.g.…”
Section: Test Settingmentioning
confidence: 83%
“…Han et al [29] established a direct comparison between the performance of a CNN-based classifier and the results obtained by dermatologists for the binary classification into malignant and benign lesions, as well as the automated discrimination between MM and 31 other skin diseases (see Supplementary Table 7). The authors were the first to provide a clinical image reader study in a clinical setting by incorporating 65 attending clinicians that recorded their diagnoses during thorough examinations in clinical practice.…”
Section: Automated Skin Cancer Classification Of Clinical Imagesmentioning
confidence: 99%
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“…Attempts to access data at source revealed eight regulated access datasets (table) and three regulated access atlases. [56][57][58] Of the eight datasets, six required ethical committee or institutional approval, 10,50,[53][54][55] one required a £75 fee and a licencing agreement, 51 and one required a competition invitation. 52 Thumbnails of images from Asan, Hallym, SNU, and Severance datasets were available for download, but access to full-size images required formal approval from local data access or ethics committees, 50 or the originating hospitals.…”
Section: Resultsmentioning
confidence: 99%
“…obtiveram acurácias de 84.9% com classificação binária e 49.5% com classificação multiclasse. [189][190] As matrizes de confusão binária obtidas com os resultados obtidos com custom CNN (Gráfico 4.9), mostraram uma alta taxa de predição com um accuracy de 88. Esses resultados demonstram a sensibilidade de Tradescantia minima às nanopartículas de prata, portanto, essa espécie também poderia ser usada como bioindicador de contaminação por AgNPs.…”
Section: Tamanho Das Plantasunclassified