论文标题

使用皮肤镜图像对皮肤病变进行分类的方法

Method to Classify Skin Lesions using Dermoscopic images

论文作者

Charan, Dusa Sai, Nadipineni, Hemanth, Sahayam, Subin, Jayaraman, Umarani

论文摘要

皮肤癌是构成癌症病例三分之一的现有世界中最常见的癌症。良性皮肤癌不是致命的,可以用适当的药物治愈。但这与恶性皮肤癌不同。就恶性黑色素瘤而言,在其峰值阶段,最大预期寿命小于或等于5年。但是,如果在早期阶段检测到可以治愈。尽管有许多临床程序,但诊断的准确性降低了49%至81%,而且耗时。因此,皮肤镜检查已被带入图片中。它有助于提高诊断的准确性,但无法拆除容易出错的行为。需要快速且较少的错误解决方案来诊断这种主要生长的皮肤癌。该项目涉及对皮肤病变分类中深度学习的使用。在该项目中,使用CNN(卷积神经网络)作为训练模型开发了使用皮肤镜图像进行皮肤病变分类的自动模型。卷积神经网络以捕获图像的特征而闻名。因此,在分析医学图像以找到推动模型取得成功的特征方面,他们是优选的。诸如解决阶级不平衡的数据增加,专注于感兴趣区域的细分以及使模型鲁棒的10倍交叉验证的技术已进入图片中。该项目还包括使用某些预处理技术,例如使用零件线性转换功能,图像的灰度转换来调整图像,调整图像大小。该项目通过带来新的输入策略,预处理技术来就模型的准确性进行一系列有价值的见解。该模型可以实现的最佳准确性是0.886。

Skin cancer is the most common cancer in the existing world constituting one-third of the cancer cases. Benign skin cancers are not fatal, can be cured with proper medication. But it is not the same as the malignant skin cancers. In the case of malignant melanoma, in its peak stage, the maximum life expectancy is less than or equal to 5 years. But, it can be cured if detected in early stages. Though there are numerous clinical procedures, the accuracy of diagnosis falls between 49% to 81% and is time-consuming. So, dermoscopy has been brought into the picture. It helped in increasing the accuracy of diagnosis but could not demolish the error-prone behaviour. A quick and less error-prone solution is needed to diagnose this majorly growing skin cancer. This project deals with the usage of deep learning in skin lesion classification. In this project, an automated model for skin lesion classification using dermoscopic images has been developed with CNN(Convolution Neural Networks) as a training model. Convolution neural networks are known for capturing features of an image. So, they are preferred in analyzing medical images to find the characteristics that drive the model towards success. Techniques like data augmentation for tackling class imbalance, segmentation for focusing on the region of interest and 10-fold cross-validation to make the model robust have been brought into the picture. This project also includes usage of certain preprocessing techniques like brightening the images using piece-wise linear transformation function, grayscale conversion of the image, resize the image. This project throws a set of valuable insights on how the accuracy of the model hikes with the bringing of new input strategies, preprocessing techniques. The best accuracy this model could achieve is 0.886.

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