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Deep learning ensembles for melanoma recognition in dermoscopy images

机译:深度学习集成在皮肤镜图像中识别黑色素瘤

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摘要

Melanoma is the deadliest form of skin cancer. While curable with early detection, only highly trained specialists are capable of accurately recognizing the disease. As expertise is in limited supply, automated systems capable of identifying disease could save lives, reduce unnecessary biopsies, and reduce costs. Toward this goal, we propose a system that combines recent developments in deep learning with established machine learning approaches, creating ensembles of methods that are capable of segmenting skin lesions, as well as analyzing the detected area and surrounding tissue for melanoma detection. The system is evaluated using the largest publicly available benchmark dataset of dermoscopic images, containing 900 training and 379 testing images. New state-of-the-art performance levels are demonstrated, leading to an improvement in the area under receiver operating characteristic curve of 7.5% (0.843 versus 0.783), in average precision of 4% (0.649 versus 0.624), and in specificity measured at the clinically relevant 95% sensitivity operating point 2.9 times higher than the previous state of the art (36.8% specificity compared to 12.5%). Compared to the average of eight expert dermatologists on a subset of 100 test images, the proposed system produces a higher accuracy (76% versus 70.5%), and specificity (62% versus 59%) evaluated at an equivalent sensitivity (82%).
机译:黑色素瘤是皮肤癌最致命的形式。尽管可以通过早期发现治愈,但只有训练有素的专家才能准确识别这种疾病。由于专业知识的供应有限,能够识别疾病的自动化系统可以挽救生命,减少不必要的活检并降低成本。为了实现这一目标,我们提出了一种系统,该系统将深度学习的最新进展与已建立的机器学习方法相结合,创建了能够分割皮肤病变以及分析检测区域和周围组织以进行黑素瘤检测的方法。该系统使用最大的公开皮肤镜基准图像数据集进行评估,其中包含900张训练图像和379张测试图像。展示了最新的性能水平,从而使接收器工作特性曲线下的面积提高了7.5%(0.843对0.783),平均精度提高了4%(0.649对0.624),并且测量的特异性也得到了改善在临床上具有相关性的95%灵敏度工作点时,其灵敏度是先前技术水平的2.9倍(特异性为36.8%,而后者为12.5%)。与在100张测试图像的子集上八位皮肤专家的平均水平相比,所提出的系统产生了更高的准确性(76%比70.5%),并且在等效灵敏度(82%)下评估了特异性(62%比59%)。

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