LAMA:用于皮肤病变分割的病变感知混合增强技术。

Norsang Lama, Ronald Joe Stanley, Binita Lama, Akanksha Maurya, Anand Nambisan, Jason Hagerty, Thanh Phan, William Van Stoecker
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引用次数: 0

摘要

在实验图像环境中,深度学习可以超越皮肤科医生的诊断准确率。然而,目前的方法对多皮损图像的分割并不准确。因此,专家可以获得的多皮损图像中的信息无法通过机器学习进行检索。虽然皮损图像一般只能捕捉到单个皮损,但在某些情况下,患者的皮肤变异可能会被识别为皮损,从而导致在单张图像中出现多个假阳性分割。相反,图像分割方法可能只能找到一个区域,而无法捕捉到图像中的多个病变。为了解决这些问题,我们提出了一种新颖有效的数据增强技术,用于在具有多个皮损的皮肤镜图像中进行皮损分割。病变感知混合增强(LAMA)方法通过混合训练集中的两幅或多幅病变图像,生成合成的多病变图像。我们使用公开的国际皮肤成像协作组织(ISIC)2017 挑战赛皮损分割数据集,用提出的 LAMA 方法训练深度神经网络。由于之前的皮损数据集(包括 ISIC 2017)都没有考虑每张图像有多个皮损,因此我们利用公开的 ISIC 2020 皮损图像创建了一个新的多皮损(MuLe)分割数据集,每张图像有多个皮损。MuLe 被用作测试集来评估所提出方法的有效性。测试结果表明,在 MuLe 测试图像上,与基线模型相比,所提出的方法将 Jaccard 分数从 0.687 提高到 0.744,提高了 8.3%;将 Dice 分数从 0.7923 提高到 0.8321,提高了 5%。在单离子ISIC 2017测试图像上,LAMA将基线模型的分割性能提高了0.08%,Jaccard得分从0.7947提高到0.8013,Dice得分从0.8714提高到0.8766,提高了0.6%。实验结果表明,LAMA 提高了单病灶和多病灶皮肤镜图像的分割准确率。拟议的 LAMA 技术值得进一步研究。
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LAMA: Lesion-Aware Mixup Augmentation for Skin Lesion Segmentation.

Deep learning can exceed dermatologists' diagnostic accuracy in experimental image environments. However, inaccurate segmentation of images with multiple skin lesions can be seen with current methods. Thus, information present in multiple-lesion images, available to specialists, is not retrievable by machine learning. While skin lesion images generally capture a single lesion, there may be cases in which a patient's skin variation may be identified as skin lesions, leading to multiple false positive segmentations in a single image. Conversely, image segmentation methods may find only one region and may not capture multiple lesions in an image. To remedy these problems, we propose a novel and effective data augmentation technique for skin lesion segmentation in dermoscopic images with multiple lesions. The lesion-aware mixup augmentation (LAMA) method generates a synthetic multi-lesion image by mixing two or more lesion images from the training set. We used the publicly available International Skin Imaging Collaboration (ISIC) 2017 Challenge skin lesion segmentation dataset to train the deep neural network with the proposed LAMA method. As none of the previous skin lesion datasets (including ISIC 2017) has considered multiple lesions per image, we created a new multi-lesion (MuLe) segmentation dataset utilizing publicly available ISIC 2020 skin lesion images with multiple lesions per image. MuLe was used as a test set to evaluate the effectiveness of the proposed method. Our test results show that the proposed method improved the Jaccard score 8.3% from 0.687 to 0.744 and the Dice score 5% from 0.7923 to 0.8321 over a baseline model on MuLe test images. On the single-lesion ISIC 2017 test images, LAMA improved the baseline model's segmentation performance by 0.08%, raising the Jaccard score from 0.7947 to 0.8013 and the Dice score 0.6% from 0.8714 to 0.8766. The experimental results showed that LAMA improved the segmentation accuracy on both single-lesion and multi-lesion dermoscopic images. The proposed LAMA technique warrants further study.

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