基于深度学习集成框架的指甲疾病预测

S. Marulkar, Bhavana Narain
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引用次数: 0

摘要

指甲单位可能发生的畸形被称为“指甲疾病”。尽管指甲被认为是皮肤的附属品,但这些疾病有自己独特的体征、原因和结果,可能与其他疾病有关,也可能与其他疾病无关。识别和识别某些指甲疾病可能具有挑战性,因此本研究提出了一种新的深度学习框架,可以从图像中识别和分类这些疾病。该框架是专门根据指甲颜色确定九种不同类型的指甲疾病的,包括黑色、蓝色、灰色、紫色、红色、白色和黄色的带博氏纹的指甲、色素沉着、甲真菌病、甲下血肿、黄指甲综合症、牛皮癣、甲癣、甲裂、钳子指甲、白甲和甲裂。为了做到这一点,特征提取是使用卷积神经网络(cnn)的混合进行的。研究人员创建了他们自己的数据集来评估他们建议的框架的有效性,因为没有一个全面的数据集可以方便地用于这项任务。结果与其他尖端算法进行了对比,包括RF, SVM, ANN和KNN,这些算法以擅长特征提取而闻名。该框架的准确率为87.33%,区分了具有可比性能的各种指甲状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nail Disease Prediction using a Deep Learning Integrated Framework
Deformities that may develop in the nail unit are referred to as "nail diseases". Even though the nail unit is regarded as a skin accessory, these diseases have their own distinct set of signs, causes, and outcomes that may or may not be connected to other illnesses. It can be challenging to identify and recognize certain nail disorders, hence this research suggests a novel deep learning framework that can identify and categorize these diseases from images. The framework is specifically made to identify nine different types of nail diseases based on nail colour, including black, blue, grey, purple, red, white, and yellow coloured nails with beau's lines, hyperpigmentation, onychomycosis, subungual hematoma, yellow nail syndrome, psoriasis, koilonychias, paronychia, pincer nails, leukonychia, and onychorrhexis. In order to do this, feature extraction is carried out using a mix of convolutional neural networks (CNNs). The researchers created their own dataset to assess the effectiveness of their suggested framework because there isn't a comprehensive dataset readily accessible for this assignment. The outcomes were contrasted with those of other cutting-edge algorithms, including RF, SVM, ANN, and KNN, which are renowned for excelling in feature extraction. With an accuracy of 87.33%, the suggested framework distinguished between varieties of nail conditions with comparable performance.
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