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首页> 外文期刊>International journal of medical informatics >Melanoma lesion detection and segmentation using deep region based convolutional neural network and fuzzy C-means clustering
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Melanoma lesion detection and segmentation using deep region based convolutional neural network and fuzzy C-means clustering

机译:基于深度区域的卷积神经网络和模糊C均值聚类的黑色素瘤病变检测和分割

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Objective: Melanoma is a dangerous form of the skin cancer responsible for thousands of deaths every year. Early detection of melanoma is possible through visual inspection of pigmented lesions over the skin, treated with simple excision of the cancerous cells. However, due to the limited availability of dermatologists, the visual inspection alone has the limited and variable accuracy that leads the patient to undergo a series of biopsies and complicates the treatment. In this work, a deep learning method is proposed for automated Melanoma region segmentation using dermoscopic images to overcome the challenges of automated Melanoma region segmentation within dermoscopic images.Materials and methods: A deep region based convolutional neural network (RCNN) precisely detects the multiple affected regions in the form of bounding boxes that simplify localization through Fuzzy C-mean (FCM) clustering. Our method constitutes of three step process: skin refinement, localization of Melanoma region, and finally segmentation of Melanoma. We applied the proposed method on benchmark dataset ISIC-2016 by International Symposium on biomedical images (ISBI) having 900 training and 376 testing Melanoma dermatological images.Main findings: The performance is evaluated for Melanoma segmentation using various quantitative measures. Our method achieved average values of pixel level specificity (SP) as 0.9417, pixel level sensitivity (SE) as 0.9781, F1 _s core as 0.9589, pixel level accuracy (Ac) as 0.948. In addition, average dice score (Di) of segmentation was recorded as 0.94, which represents good segmentation performance. Moreover, Jaccard coefficient (Jc) averaged value on entire testing images was 0.93. Comparative analysis with the state of art methods and the results have demonstrated the superiority of the proposed method.Conclusion: In contrast with state of the art systems, the RCNN is capable to compute deep features with amen representation of Melanoma, and hence improves the segmentation performance. The RCNN can detect features for multiple skin diseases of the same patient as well as various diseases of different patients with efficient training mechanism. Series of experiments towards Melanoma detection and segmentation validates the effectiveness of our method.
机译:目的:黑色素瘤是皮肤癌的一种危险形式,每年导致数千人死亡。通过目测检查皮肤上色素沉着的病变,并通过简单切除癌细胞即可对黑素瘤进行早期检测。然而,由于皮肤科医生的可用性有限,仅视觉检查就具有有限且可变的准确性,这导致患者进行一系列活检并且使治疗复杂化。在这项工作中,提出了一种使用皮肤镜图像对黑素瘤区域进行自动分割的深度学习方法,以克服在皮肤镜图像内对黑素瘤区域进行自动分割的挑战。材料和方法:基于深度区域的卷积神经网络(RCNN)可以精确检测出多个受影响的区域边界框形式的区域,可通过模糊C均值(FCM)聚类简化定位。我们的方法包括三个步骤:皮肤细化,黑色素瘤区域的定位以及黑色素瘤的最终分割。我们将这种方法应用于国际生物医学图像研讨会(ISBI)的ISIC-2016基准数据集上,该研讨会进行了900次培训和376张黑色素瘤皮肤病学图像测试。主要发现:使用各种定量方法评估了黑色素瘤分割的性能。我们的方法获得的像素水平特异性(SP)平均值为0.9417,像素水平灵敏度(SE)为0.9781,F1 s核心为0.9589,像素水平精度(Ac)为0.948。另外,分割的平均骰子得分(Di)被记录为0.94,这表示良好的分割性能。此外,整个测试图像上的Jaccard系数(Jc)平均值为0.93。与现有技术的方法进行比较分析,结果表明了该方法的优越性。结论:与现有系统相比,RCNN能够计算黑色素瘤的深部特征,从而改善分割效果性能。 RCNN可以通过有效的训练机制检测同一患者的多种皮肤疾病以及不同患者的多种疾病的特征。针对黑色素瘤检测和分割的一系列实验证明了我们方法的有效性。

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