FEDD -基于弥散的公平、高效和多样化的病灶分割和恶性分类

H'ector Carri'on, Narges Norouzi
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摘要

皮肤病影响着全世界所有种族的数百万人。提高诊断的可及性需要公平和准确的皮肤图像分割和分类。然而,标注医学图像的稀缺性,特别是对于罕见疾病和代表性不足的肤色,对公平和准确模型的发展提出了挑战。在这项研究中,我们引入了一个公平、高效和多样化的基于扩散的皮肤病变分割和恶性肿瘤分类框架。FEDD利用通过去噪扩散概率主干学习到的语义上有意义的特征嵌入,并通过线性探针对其进行处理,以在多种皮肤病图像(DDI)上实现最先进的性能。我们在分别使用5%、10%、15%和20%标记样本的情况下,实现了0.18、0.13、0.06和0.07的交集与并的改进。此外,在DDI的10%上训练FEDD,恶性肿瘤分类准确率达到81%,比最先进的方法高14%。我们在数据受限的情况下展示了高效率,同时为不同肤色和罕见的恶性疾病提供了公平的性能。我们新标注的DDI分割掩码和训练代码可以在https://github.com/hectorcarrion/fedd上找到。
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FEDD - Fair, Efficient, and Diverse Diffusion-based Lesion Segmentation and Malignancy Classification
Skin diseases affect millions of people worldwide, across all ethnicities. Increasing diagnosis accessibility requires fair and accurate segmentation and classification of dermatology images. However, the scarcity of annotated medical images, especially for rare diseases and underrepresented skin tones, poses a challenge to the development of fair and accurate models. In this study, we introduce a Fair, Efficient, and Diverse Diffusion-based framework for skin lesion segmentation and malignancy classification. FEDD leverages semantically meaningful feature embeddings learned through a denoising diffusion probabilistic backbone and processes them via linear probes to achieve state-of-the-art performance on Diverse Dermatology Images (DDI). We achieve an improvement in intersection over union of 0.18, 0.13, 0.06, and 0.07 while using only 5%, 10%, 15%, and 20% labeled samples, respectively. Additionally, FEDD trained on 10% of DDI demonstrates malignancy classification accuracy of 81%, 14% higher compared to the state-of-the-art. We showcase high efficiency in data-constrained scenarios while providing fair performance for diverse skin tones and rare malignancy conditions. Our newly annotated DDI segmentation masks and training code can be found on https://github.com/hectorcarrion/fedd.
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