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深度学习卷积神经网络系统在医院人群中用于黑色素瘤诊断的疗效

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

作者信息

Martin-Gonzalez Manuel, Azcarraga Carlos, Martin-Gil Alba, Carpena-Torres Carlos, Jaen Pedro

机构信息

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

Instituto Ramón y Cajal de Investigación Sanitaria, 28034 Madrid, Spain.

出版信息

Int J Environ Res Public Health. 2022 Mar 24;19(7):3892. doi: 10.3390/ijerph19073892.

DOI:10.3390/ijerph19073892
PMID:35409575
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8997631/
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.

摘要

(1) 背景:本研究旨在评估基于深度学习的新型临床工具quantusSKIN系统在区分医院人群中良性皮肤病变和黑色素瘤方面的敏感性、特异性和准确性等效能。(2) 方法:使用来自西班牙马德里拉蒙·伊·卡哈尔大学医院临床数据库的232张皮肤镜图像进行回顾性研究。之前诊断为痣(n = 177)或黑色素瘤(n = 55)的皮肤病变图像由quantusSKIN系统进行分析,该系统提供黑色素瘤诊断的概率百分比(诊断阈值)。对quantusSKIN系统诊断黑色素瘤的最佳诊断阈值、敏感性、特异性和准确性进行了量化。(3) 结果:痣组的平均诊断阈值(27.12 ± 35.44%)与黑色素瘤组(72.50 ± 34.03%)相比,在统计学上更低(p < 0.001)。ROC曲线下面积为0.813。对于67.33%的诊断阈值,获得的敏感性为0.691,特异性为0.802,准确性为0.776。(4) 结论:quantusSKIN系统被提议作为一种有用的黑色素瘤检测筛查工具,可纳入初级卫生保健系统。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8bf7/8997631/0c4a1a3063f5/ijerph-19-03892-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8bf7/8997631/0f31b5350869/ijerph-19-03892-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8bf7/8997631/0c4a1a3063f5/ijerph-19-03892-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8bf7/8997631/0f31b5350869/ijerph-19-03892-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8bf7/8997631/0c4a1a3063f5/ijerph-19-03892-g002.jpg

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Melanoma Diagnosis Using Deep Learning and Fuzzy Logic.使用深度学习和模糊逻辑的黑色素瘤诊断
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