Vahid Khalkhali, Hayan Lee, Joseph Nguyen, Sergio Zamora-Erazo, Camille Ragin, Abhishek Aphale, Alfonso Bellacosa, Ellis P Monk, Saroj K Biswas
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引用次数: 0
摘要
皮肤癌数据集中缺乏肤色信息,这对使用人工智能模型进行准确诊断构成了重大挑战,特别是对于非白人人群。本文基于比Fitzpatrick尺度偏差更小的Monk Skin Tone (MST)尺度,提出了一种用于国际皮肤成像合作(ISIC)档案等大数据集图像肤色检测的新方法MST- ai。该方法包括使用卷积神经网络的自动框架,病变去除和病变分割,以及使用变分贝叶斯高斯混合模型(VB-GMM)对正常肤色建模。使用Kullback-Leibler散度(KLD)度量将肤色预测的分布与MST尺度概率分布函数(pdf)进行比较。对手工标注的验证以及与图像和皮肤平均rgb的K-means聚类的比较表明,MST-AI的性能优越,Kendall的Tau, Spearman的Rho和归一化贴现累积增益(NDGC)分别为0.68,0.69和1.00。本研究为通过解决大型数据集中的肤色失衡问题,开发用于早期皮肤癌诊断的无偏见人工智能模型奠定了基础。
MST-AI: Skin Color Estimation in Skin Cancer Datasets.
The absence of skin color information in skin cancer datasets poses a significant challenge for accurate diagnosis using artificial intelligence models, particularly for non-white populations. In this paper, based on the Monk Skin Tone (MST) scale, which is less biased than the Fitzpatrick scale, we propose MST-AI, a novel method for detecting skin color in images of large datasets, such as the International Skin Imaging Collaboration (ISIC) archive. The approach includes automatic frame, lesion removal, and lesion segmentation using convolutional neural networks, and modeling normal skin tones with a Variational Bayesian Gaussian Mixture Model (VB-GMM). The distribution of skin color predictions was compared with MST scale probability distribution functions (PDFs) using the Kullback-Leibler Divergence (KLD) metric. Validation against manual annotations and comparison with K-means clustering of image and skin mean RGBs demonstrated the superior performance of the MST-AI, with Kendall's Tau, Spearman's Rho, and Normalized Discounted Cumulative Gain (NDGC) of 0.68, 0.69, and 1.00, respectively. This research lays the groundwork for developing unbiased AI models for early skin cancer diagnosis by addressing skin color imbalances in large datasets.