Applying Artificial Intelligence to Support the Detection and Treatment of Melasma

Van Lam Ho, Vu Tuan Anh, Tran Xuan Viet
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Abstract

This study, we propose a solution to apply artificial intelligence to assist in detecting whether a person may have melasma or not through data sets related to information about a person's daily activities, then If we detect a person with a high likelihood of having melasma, we will apply machine learning to diagnose the type of melasma through a photo taken of that person. Through a machine learning model of predicting and diagnosing a person's melasma, we also suggest relevant prevention and treatment options based on the disease's prevention and treatment regimen. Our method build predict Melasma model based on Catboost machine learning algorithm on users' data combined with medical practice data commu-nity by dermatologists to predict the disease and make some necessary recommendations in the patient screening. Based on our dataset, we have statistically described the data characteristics as well as the correlated data parameters that may cause Melasma. The method using for diagnosing melasma disease based on machine learning algorithms with input data being facial images. we built a machine learning model for diagnosing melasma to detect melasma objects to support dermatologists in predicting the risk of melasma in a person after entering his/her facial image. Our dataset of facial images combined with the expertise of melasma experts to classify different types of melasma. We used YOLO V8 with machine learning algorithms to detect melasma objects to build a diagnostic model for whether a patient has melasma and with which type of melasma such as central melasma, butterfly-shaped melasma, or mandibular melasma.
应用人工智能支持黄褐斑的检测和治疗
本研究提出了一种解决方案,即通过与人的日常活动信息相关的数据集,应用人工智能来辅助检测一个人是否可能患有黄褐斑,如果检测到一个人患有黄褐斑的可能性很高,我们就会通过该人的照片应用机器学习来诊断黄褐斑的类型。通过预测和诊断黄褐斑的机器学习模型,我们还可以根据疾病的预防和治疗方案提出相关的预防和治疗建议。我们的方法基于 Catboost 机器学习算法,在用户数据的基础上,结合皮肤科医生的医疗实践数据,建立黄褐斑预测模型,预测疾病,并在患者筛查中提出一些必要的建议。基于我们的数据集,我们对数据特征以及可能导致黄褐斑的相关数据参数进行了统计描述。我们建立了一个用于诊断黄褐斑的机器学习模型,以检测黄褐斑对象,支持皮肤科医生在输入一个人的面部图像后预测其患黄褐斑的风险。我们的面部图像数据集与黄褐斑专家的专业知识相结合,对不同类型的黄褐斑进行了分类。我们使用 YOLO V8 和机器学习算法来检测黄褐斑对象,从而建立一个诊断模型,判断患者是否患有黄褐斑以及黄褐斑的类型,如中央型黄褐斑、蝴蝶型黄褐斑或下颌型黄褐斑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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