首页> 外文期刊>Pattern recognition letters >Attributes based skin lesion detection and recognition: A mask RCNN and transfer learning-based deep learning framework
【24h】

Attributes based skin lesion detection and recognition: A mask RCNN and transfer learning-based deep learning framework

机译:基于属性的皮肤病变检测和识别:面具RCNN和基于转移学习的深度学习框架

获取原文
获取原文并翻译 | 示例
       

摘要

Malignant melanoma is considered to be one of the deadliest types of skin cancers which is responsible for the massive number of deaths worldwide. According to the American Cancer Society (ACS), more than a million Americans are living with this melanoma. Since 2019, 192,310 new cases of melanoma are registered, where 95,380 are noninvasive, and 96,480 are invasive. The numbers of deaths due to melanoma in 2019 alone are 7,230, comprising 4,740 men and 2,490 women. Melanoma may be curable if diagnosed at the earlier stages; however, the manual diagnosis is time-consuming and also dependent on the expert dermatologist. In this work, a fully automated computerized aided diagnosis (CAD) system is proposed based on the deep learning framework. In the proposed scheme, the original dermoscopic images are initially pre-processed using the decorrelation formulation technique, which later passes the resultant images to the MASK-RCNN for the lesion segmentation. In this step, the MASK RCNN model is trained using the segmented RGB images generated from the ground truth images of ISBI2016 and ISIC2017 datasets. The resultant segmented images are later passed to the DenseNet deep model for feature extraction. Two different layers, average pool and fully connected, are used for feature extraction, which are later combined, and the resultant vector is forwarded to the feature selection block for down sampling using proposed entropy-controlled least square SVM (LS-SVM). Three datasets are utilized for validation ISBI2016, ISBI2017, and HAM10 0 0 0 to achieve an accuracy of 96.3%, 94.8%, and 88.5% respectively. Further, the performance of MASK-RCNN is also validated on ISBI2016 and ISBI2017 to attain an accuracy of 93.6% and 92.7%. To further increase our confidence in the proposed framework, a fair comparison with other state-of-the-art is also provided. (c) 2021 Elsevier B.V. All rights reserved.
机译:恶性黑素瘤被认为是最致命类型的皮肤癌之一,这是全世界大量死亡的负责。根据美国癌症协会(ACS),超过一百万的美国人与这种黑素瘤生活。自2019年以来,192,310个新的黑素瘤病例注册,其中95,380是非侵入性的,96,480件是侵入性的。仅2019年对黑色素瘤引起的死亡人数为7,230,包括4,740名男性和2,490名女性。如果在早期阶段诊断,那可以治愈黑素瘤;然而,手动诊断是耗时的,也依赖于专家皮肤科医生。在这项工作中,基于深度学习框架提出了一个全自动的计算机化辅助诊断(CAD)系统。在所提出的方案中,最初使用脱皮制剂技术预处理原始DerMospopic图像,其后来将所得到的图像转移到用于病变分割的掩模-RCNN。在该步骤中,使用来自ISBI2016的地面真实图像生成的分段的RGB图像和ISIC2017数据集来训练掩模RCNN模型。后来将得到的分段图像传递给DenSenet深度模型以进行特征提取。两个不同的层,平均池和完全连接,用于稍后组合的特征提取,并且所得到的向量被转发到特征选择块,用于使用所提出的熵控制最小二乘SVM(LS-SVM)进行抽样。三个数据集用于验证ISBI2016,ISBI2017和HAM10 0 0,以达到96.3%,94.8%和88.5%的准确性。此外,掩模-RCNN的性能也在ISBI2016和ISBI2017上验证,以获得93.6%和92.7%的精度。为了进一步提高我们对拟议框架的信心,还提供了与其他最先进的框架的公平比较。 (c)2021 Elsevier B.v.保留所有权利。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号