使用机器学习技术预测斑秃

S. Aditya, Sanah Sidhu, M. Kanchana
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引用次数: 3

摘要

斑秃(AA)是一种慢性的自身免疫性疾病,它会攻击生长期的毛囊,导致突然脱发,导致圆形秃斑。这种疾病可能在成人和儿童中发展,其患病率约为每1000人中有1人,这使得大约2%的人口在其生命的某个阶段有患这种疾病的风险。现有的评估这种疾病的技术在很大程度上是由裸眼检查支持的,因此已经证明了名义上的准确性。近年来,机器学习为包括皮肤病学在内的各个医疗领域的疾病诊断铺平了道路。本研究假设计算机辅助诊断AA对医生提供更准确的预测和分类具有重要作用。我们提出的框架与健康头发和有AA症状的头发的分类有关。对于数据集,通过网络抓取和Figaro1k数据集收集了1000张健康头发的图像。超过500张AA图片和一些来自Dermnet数据集的图片一起被网络抓取。为了进一步改进数据集,对图像进行了预处理,包括图像增强、分割和数据增强。本研究旨在通过对SVM、KNN、随机森林分类器、高斯朴素贝叶斯和CNN算法的分类进行对比研究,分别获得85%、78%、88%、80%和92%的准确率,以提高皮肤科斑秃的准确预测诊断质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Alopecia Areata using Machine Learning Techniques
Alopecia areata (AA) is a chronic, autoimmune condition that attacks anagen hair follicles, causing sudden hair loss, resulting in circular bald patches. The disorder may be developed in both adults as well as children and the prevalence of the same is approximated to be 1 in every 1000 people, putting around 2% of the broad population at a risk of developing this disease at some point in their lives. Existing techniques to assess the disorder are heavily supported by naked-eye examination and thus have demonstrated nominal accuracy. In recent years, Machine Learning has paved the way for enhanced diagnosis of diseases in various fields of healthcare, including Dermatology. This study postulates a significant role of computer-aided diagnosis of AA to equip medical practitioners with a more accurate form of prediction and classification. Our proposed framework is in relevance to the categorization of healthy hair and hair with symptoms that indicate AA. For the dataset, a 1000 images of healthy hair were collected via web scraping and the Figaro1k dataset. Over 500 AA images were web scraped along with some of the same from the Dermnet dataset. To improve the dataset further, the images were preprocessed by performing image enhancement, segmentation and data augmentation. This study aims to elevate the quality of diagnosis carried out for accurate prediction of Alopecia areata in the field of Dermatology by conducting a comparative study for classification by implementing SVM, KNN, Random Forest Classifier, Gaussian Naive Bayes and CNN algorithms which gave 85%, 78%, 88%, 80% and 92% accuracy respectively.
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