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Efficacy of a Deep Learning Convolutional Neural Network System for Melanoma Diagnosis in a Hospital Population

Author

Listed:
  • Manuel Martin-Gonzalez

    (Service of Dermatology, Hospital Universitario Ramón y Cajal, 28034 Madrid, Spain
    Instituto Ramón y Cajal de Investigación Sanitaria, 28034 Madrid, Spain)

  • Carlos Azcarraga

    (Service of Dermatology, Hospital Universitario Ramón y Cajal, 28034 Madrid, Spain)

  • Alba Martin-Gil

    (Ocupharm Research Group, Department of Optometry and Vision, Faculty of Optics and Optometry, Complutense University of Madrid, 28037 Madrid, Spain)

  • Carlos Carpena-Torres

    (Ocupharm Research Group, Department of Optometry and Vision, Faculty of Optics and Optometry, Complutense University of Madrid, 28037 Madrid, Spain)

  • Pedro Jaen

    (Service of Dermatology, Hospital Universitario Ramón y Cajal, 28034 Madrid, Spain
    Instituto Ramón y Cajal de Investigación Sanitaria, 28034 Madrid, Spain)

Abstract

(1) Background: The purpose of this study was to evaluate the efficacy in terms of sensitivity, specificity, and accuracy of the quantusSKIN system, a new clinical tool based on deep learning, to distinguish between benign skin lesions and melanoma in a hospital population. (2) Methods: A retrospective study was performed using 232 dermoscopic images from the clinical database of the Ramón y Cajal University Hospital (Madrid, Spain). The skin lesions images, previously diagnosed as nevus ( n = 177) or melanoma ( n = 55), were analyzed by the quantusSKIN system, which offers a probabilistic percentage (diagnostic threshold) for melanoma diagnosis. The optimum diagnostic threshold, sensitivity, specificity, and accuracy of the quantusSKIN system to diagnose melanoma were quantified. (3) Results: The mean diagnostic threshold was statistically lower ( p < 0.001) in the nevus group (27.12 ± 35.44%) compared with the melanoma group (72.50 ± 34.03%). The area under the ROC curve was 0.813. For a diagnostic threshold of 67.33%, a sensitivity of 0.691, a specificity of 0.802, and an accuracy of 0.776 were obtained. (4) Conclusions: The quantusSKIN system is proposed as a useful screening tool for melanoma detection to be incorporated in primary health care systems.

Suggested Citation

  • Manuel Martin-Gonzalez & Carlos Azcarraga & Alba Martin-Gil & Carlos Carpena-Torres & Pedro Jaen, 2022. "Efficacy of a Deep Learning Convolutional Neural Network System for Melanoma Diagnosis in a Hospital Population," IJERPH, MDPI, vol. 19(7), pages 1-8, March.
  • Handle: RePEc:gam:jijerp:v:19:y:2022:i:7:p:3892-:d:779031
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