Automatic image segmentation using Region-Based convolutional networks for Melanoma skin cancer detection

IF 0.1 Q4 MULTIDISCIPLINARY SCIENCES
Karen Dayana Tovar-Parra, Luis Alexander Calvo-Valverde, Ernesto Montero-Zeledón, Mac Arturo Murillo-Fernández, Jose Esteban Perez-Hidalgo, Dionisio Alberto Gutiérrez-Fallas
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引用次数: 0

Abstract

Melanoma is one of the most aggressive skin cancers, however, its early detection can significantly increase probabilities to cure it. Unfortunately, it is one of the most difficult skin cancers to detect, its detection relies mainly on the dermatologist’s expertise and experience with Melanoma. This research deals with targeting most of the common Melanoma stains or spots that could potentially evolve to Melanoma skin cancer. Region-based Convolutional Neural Networks were used as the model to detect and segment images of the skin area of interest. The neural network model is focused on providing instance segmentation rather than only a boxbounding object detection. The Mask R-CNN model was implemented to provide a solution for small trained datasets scenarios. Two pipelines were implemented, the first one was with only the Region-Based Convolutional Neural Network and the other one was a combined pipeline with a first stage using Mask R-CNN and then getting the result to use as feedback in a second stage implementing Grabcut, which is another segmentation method based on graphic cuts. Results demonstrated through Dice Similarity Coefficient and Jaccard Index that Mask R-CNN alone performed better in proper segmentation than Mask R-CNN + Grabcut model. In both models’ results, variation was very small when the training dataset size changed between 160, 100, and 50 images. In both of the pipelines, the models were capable of running the segmentation correctly, which illustrates that focalization of the zone is possible with very small datasets and the potential use of automatic segmentation to assist in Melanoma detection.
基于区域卷积网络的黑素瘤皮肤癌自动图像分割
黑色素瘤是最具侵袭性的皮肤癌之一,然而,它的早期发现可以显著增加治愈的可能性。不幸的是,它是最难检测的皮肤癌之一,它的检测主要依赖于皮肤科医生的专业知识和黑色素瘤的经验。这项研究针对大多数常见的黑色素瘤污渍或斑点,这些斑点可能会演变成黑色素瘤皮肤癌。使用基于区域的卷积神经网络作为模型对感兴趣的皮肤区域图像进行检测和分割。神经网络模型的重点是提供实例分割,而不仅仅是一个装箱目标检测。Mask R-CNN模型的实现为小型训练数据集场景提供了解决方案。实现了两种管道,第一种是仅基于区域的卷积神经网络,另一种是结合管道,第一阶段使用Mask R-CNN,然后在第二阶段实现Grabcut作为反馈,Grabcut是另一种基于图形切割的分割方法。结果表明,通过Dice Similarity Coefficient和Jaccard Index,单独使用Mask R-CNN比Mask R-CNN + Grabcut模型在正确分割上表现更好。在这两个模型的结果中,当训练数据集大小在160、100和50张图像之间变化时,变化非常小。在这两个管道中,模型都能够正确地运行分割,这说明了在非常小的数据集上聚焦区域是可能的,并且可以使用自动分割来辅助黑色素瘤的检测。
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来源期刊
Tecnologia en Marcha
Tecnologia en Marcha MULTIDISCIPLINARY SCIENCES-
自引率
0.00%
发文量
93
审稿时长
28 weeks
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