人工神经网络算法预测人类脱发相关的自身免疫性疾病问题

Shabnam Sayyad, Farook Sayyad
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引用次数: 0

摘要

在这项研究中,人工神经网络被用于诊断患者的脱发。一种被称为斑秃(AA)的自身免疫性疾病会导致患处脱发。来自世界各地的最新数据显示,每1000人中就有1人患有AA,发病率为2%。根据数据集中健康头发的照片外观,采用机器学习技术对条件进行分类。在进行预测之前,每个Ann算法都会使用健康头发的图片创建一个预测模型。本研究的目的是评估神经网络在人类受试者脱发检测中的准确性。该研究提出了一个区分健康头发(HHs)和斑秃(AA)的分类框架。该框架结合了对比度有限自适应直方图均衡(CLAHE)增强和分割技术,以提高图像的质量。此外,数据增强(DA)被用于生成额外的数据并提高所提出的框架的精度。为了从图像中提取特征,使用了两种强大的技术。视觉几何组(VGG)由设计用于大规模图像识别的非常深的卷积网络组成。VGG网络已被证明在直接从数据中学习复杂特征方面是有效的,无需手动提取特征。此外,还采用了卷积神经网络(CNN),这是一种专门为图像处理任务设计的深度学习网络架构。为了创建用于分类的机器学习模型,使用了支持向量机(SVM)方法。SVM是一种在监督学习中广泛使用的算法,能够同时解决分类和回归问题。它的通用性和有效性使其成为本研究分类任务的合适选择。通过结合CLAHE增强、分割、数据增强、使用VGG和CNN的特征提取以及使用SVM的分类,该框架旨在准确地对HHs和AA病例进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial neural networks algorithms for prediction of human hair loss related autoimmune disorder problem
In this study, artificial neural networks (ANNs) are being used to diagnose hair loss in patients. An autoimmune condition known as Alopecia Areata (AA) results in hair loss in the affected area. The most recent figures from throughout the world show that AA affects 1 in 1000 persons and has a 2% incidence rate. Based on the look of photographs with healthy hair in the dataset, machine learning techniques were employed to classify the conditions. Before making predictions, each of these ANNs algorithms creates a prediction model using pictures of healthy hair. The aim of this study is to evaluate the accuracy of neural networks for alopecia detection in human subjects. The study presents a classification framework for distinguishing between healthy hairs (HHs) and Alopecia Areata (AA). The framework incorporates Contrast Limited Adaptive Histogram Equalization (CLAHE) enhancement and segmentation techniques to enhance the quality of the images. Additionally, Data Augmentation (DA) is employed to generate additional data and improve the precision of the proposed framework. To extract features from the images, two powerful techniques are utilized. The Visual Geometry Group (VGG), which consists of very deep convolutional networks designed for large-scale image recognition, is employed. VGG networks have proven to be effective in learning complex features directly from data, eliminating the need for manual feature extraction. Additionally, a Convolutional Neural Network (CNN), a deep learning network architecture specifically designed for image processing tasks, is employed. To create a machine learning model for classification, the Support Vector Machine (SVM) approach is utilized. SVM is a widely used algorithm in supervised learning, capable of solving both classification and regression problems. Its versatility and effectiveness make it a suitable choice for the classification task in this study. By combining the CLAHE enhancement, segmentation, data augmentation, feature extraction using VGG and CNN, and classification using SVM, the proposed framework aims to accurately classify HHs and AA cases.
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