AI EMPOWERED DIAGNOSIS OF PEMPHIGUS: A MACHINE LEARNING APPROACH FOR AUTOMATED SKIN LESION DETECTION

Mamun Ahmed, Salma Binta Islam, Aftab Uddin Alif, Mirajul Islam, Sabrina Motin Saima
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Abstract

Pemphigus is a skin disease that can cause a serious damage to human skin. Pemphigus can result in other issues including painful patches and infected blisters, which can result in sepsis, weight loss, and starvation, all of which can be life-threatening, tooth decay and gum disease. Early prediction of Pemphigus may save us from fatal disease. Machine learning has the potential to offer a highly efficient approach for decision-making and precise forecasting. The healthcare sector is experiencing remarkable advancements through the utilization of machine learning techniques. Therefore, to identify Pemphigus using images, we suggested machine learning-based techniques. This proposed system uses a large dataset collected from various web sources to detect Pemphigus. Augmentation has been applied on our dataset using techniques such as zoom, flip, brightness, distortion, magnitude, height, width to enhance the breadth and variety of the dataset and improve model’s performance. Five popular machine learning algorithms has been employed to train and evaluate model, these are K-Nearest Neighbor (referred to as KNN), Decision Tree (DT), Logistic Regression (LR), Random Forest (RF), and Convolutional Neural Network (CNN). Our outcome indicate that the CNN based model outperformed the other algorithms by achieving accuracy of 93% whereas LR, KNN, RF and DT achieved accuracies of 78%, 70%, 85% and 75% respectively.
天疱疮的人工智能诊断:自动皮肤病变检测的机器学习方法
丘疹性荨麻疹是一种可对人体皮肤造成严重损害的皮肤病。丘疹性荨麻疹还可能导致其他问题,包括疼痛的斑块和感染的水疱,这可能导致败血症、体重减轻和饥饿,所有这些都可能危及生命、蛀牙和牙龈疾病。对丘疹性荨麻疹的早期预测可能会使我们免于致命疾病。机器学习有可能为决策和精确预测提供一种高效的方法。通过利用机器学习技术,医疗保健领域正在取得显著进步。因此,为了利用图像识别丘疹性荨麻疹,我们提出了基于机器学习的技术。该拟议系统使用从各种网络来源收集的大型数据集来检测丘疹性荨麻疹。我们使用缩放、翻转、亮度、失真、幅度、高度、宽度等技术对数据集进行了增强,以提高数据集的广度和多样性,并改善模型的性能。我们采用了五种流行的机器学习算法来训练和评估模型,它们是 K-近邻(简称 KNN)、决策树(DT)、逻辑回归(LR)、随机森林(RF)和卷积神经网络(CNN)。结果表明,基于 CNN 的模型准确率达到 93%,优于其他算法,而 LR、KNN、RF 和 DT 的准确率分别为 78%、70%、85% 和 75%。
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