论文标题

AI的表现优于每个皮肤科医生:通过在优化的深层CNN体系结构中定制批处理逻辑和损失功能,改善了皮肤镜的黑色素瘤诊断

AI outperformed every dermatologist: Improved dermoscopic melanoma diagnosis through customizing batch logic and loss function in an optimized Deep CNN architecture

论文作者

Pham, Cong Tri, Luong, Mai Chi, Van Hoang, Dung, Doucet, Antoine

论文摘要

黑色素瘤是皮肤癌最危险的类型之一,以非常高的死亡率重新染色。早期检测和切除是成功治愈的两个关键点。最近的研究使用人工智能对黑色素瘤和测素进行了分类,并将这些算法的评估与皮肤科医生的评估进行了比较。但是,灵敏度和特异性措施的不平衡影响了现有模型的性能。这项研究提出了一种使用深层卷积神经网络的方法,旨在将黑色素瘤视为二元分类问题。它涉及3个关键功能,即定制的批处理逻辑,自定义损耗功能以及改革的完全连接层。训练数据集保持最新状态,其中包括17,302张黑色素瘤和柳树的图像;这是迄今为止最大的数据集。将模型性能与基于MCLASS-D数据集的12家大学医院的157家皮肤科医生进行了比较。该模型的表现优于所有157家皮肤科医生,并以94.4%的AUC实现了最先进的性能,灵敏度为85.0%,特异性为95.0%,使用100个皮肤镜图像的MCLASS-D数据集的预测阈值为0.5。此外,与其他研究相比,0.40858的阈值表现出最平衡的措施,并且有希望地用于医学诊断,敏感性为90.0%,特异性为93.8%。

Melanoma, one of most dangerous types of skin cancer, re-sults in a very high mortality rate. Early detection and resection are two key points for a successful cure. Recent research has used artificial intelligence to classify melanoma and nevus and to compare the assessment of these algorithms to that of dermatologists. However, an imbalance of sensitivity and specificity measures affected the performance of existing models. This study proposes a method using deep convolutional neural networks aiming to detect melanoma as a binary classification problem. It involves 3 key features, namely customized batch logic, customized loss function and reformed fully connected layers. The training dataset is kept up to date including 17,302 images of melanoma and nevus; this is the largest dataset by far. The model performance is compared to that of 157 dermatologists from 12 university hospitals in Germany based on MClass-D dataset. The model outperformed all 157 dermatologists and achieved state-of-the-art performance with AUC at 94.4% with sensitivity of 85.0% and specificity of 95.0% using a prediction threshold of 0.5 on the MClass-D dataset of 100 dermoscopic images. Moreover, a threshold of 0.40858 showed the most balanced measure compared to other researches, and is promisingly application to medical diagnosis, with sensitivity of 90.0% and specificity of 93.8%.

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