Behara Kavita, Bhero Ernest, Agee John Terhile
Department of Electrical Engineering, Mangosuthu University of Technology, Durban, Kwazulu- Natal, South Africa.
Discipline of Computer Engineering, University of KwaZulu Natal, Durban, KwaZulu-Natal, South Africa.
PeerJ Comput Sci. 2024 Dec 5;10:e2530. doi: 10.7717/peerj-cs.2530. eCollection 2024.
Artificial Intelligence (AI) is significantly transforming dermatology, particularly in early skin cancer detection and diagnosis. This technological advancement addresses a crucial public health issue by enhancing diagnostic accuracy, efficiency, and accessibility. AI integration in medical imaging and diagnostic procedures offers promising solutions to the limitations of traditional methods, which often rely on subjective clinical evaluations and histopathological analyses. This study systematically reviews current AI applications in skin cancer classification, providing a comprehensive overview of their advantages, challenges, methodologies, and functionalities.
In this study, we conducted a comprehensive analysis of artificial intelligence (AI) applications in the classification of skin cancer. We evaluated publications from three prominent journal databases: Scopus, IEEE, and MDPI. We conducted a thorough selection process using the PRISMA guidelines, collecting 1,156 scientific articles. Our methodology included evaluating the titles and abstracts and thoroughly examining the full text to determine their relevance and quality. Consequently, we included a total of 95 publications in the final study. We analyzed and categorized the articles based on four key dimensions: advantages, difficulties, methodologies, and functionalities.
AI-based models exhibit remarkable performance in skin cancer detection by leveraging advanced deep learning algorithms, image processing techniques, and feature extraction methods. The advantages of AI integration include significantly improved diagnostic accuracy, faster turnaround times, and increased accessibility to dermatological expertise, particularly benefiting underserved areas. However, several challenges remain, such as concerns over data privacy, complexities in integrating AI systems into existing workflows, and the need for large, high-quality datasets. AI-based methods for skin cancer detection, including CNNs, SVMs, and ensemble learning techniques, aim to improve lesion classification accuracy and increase early detection. AI systems enhance healthcare by enabling remote consultations, continuous patient monitoring, and supporting clinical decision-making, leading to more efficient care and better patient outcomes.
This comprehensive review highlights the transformative potential of AI in dermatology, particularly in skin cancer detection and diagnosis. While AI technologies have significantly improved diagnostic accuracy, efficiency, and accessibility, several challenges remain. Future research should focus on ensuring data privacy, developing robust AI systems that can generalize across diverse populations, and creating large, high-quality datasets. Integrating AI tools into clinical workflows is critical to maximizing their utility and effectiveness. Continuous innovation and interdisciplinary collaboration will be essential for fully realizing the benefits of AI in skin cancer detection and diagnosis.
人工智能(AI)正在显著改变皮肤病学,尤其是在早期皮肤癌检测和诊断方面。这一技术进步通过提高诊断准确性、效率和可及性,解决了一个关键的公共卫生问题。将AI整合到医学成像和诊断程序中,为传统方法的局限性提供了有前景的解决方案,传统方法往往依赖主观的临床评估和组织病理学分析。本研究系统回顾了当前AI在皮肤癌分类中的应用,全面概述了其优势、挑战、方法和功能。
在本研究中,我们对人工智能(AI)在皮肤癌分类中的应用进行了全面分析。我们评估了来自三个著名期刊数据库的出版物:Scopus、IEEE和MDPI。我们使用PRISMA指南进行了严格的筛选过程,收集了1156篇科学文章。我们的方法包括评估标题和摘要,并对全文进行深入审查,以确定其相关性和质量。因此,我们在最终研究中纳入了总共95篇出版物。我们根据四个关键维度对文章进行了分析和分类:优势、困难、方法和功能。
基于AI的模型通过利用先进的深度学习算法、图像处理技术和特征提取方法,在皮肤癌检测中表现出卓越的性能。整合AI的优势包括显著提高诊断准确性、缩短周转时间以及增加获得皮肤病学专业知识的机会,尤其使服务不足地区受益。然而,仍然存在一些挑战,例如对数据隐私的担忧、将AI系统集成到现有工作流程中的复杂性,以及对大型高质量数据集的需求。用于皮肤癌检测的基于AI的方法,包括卷积神经网络(CNNs)、支持向量机(SVMs)和集成学习技术,旨在提高病变分类准确性并增加早期检测。AI系统通过实现远程会诊、持续患者监测以及支持临床决策,改善了医疗保健,从而带来更高效的护理和更好的患者预后。
这一全面综述突出了AI在皮肤病学中的变革潜力,尤其是在皮肤癌检测和诊断方面。虽然AI技术显著提高了诊断准确性、效率和可及性,但仍存在一些挑战。未来的研究应专注于确保数据隐私、开发能够在不同人群中通用的强大AI系统,以及创建大型高质量数据集。将AI工具集成到临床工作流程中对于最大化其效用和有效性至关重要。持续创新和跨学科合作对于充分实现AI在皮肤癌检测和诊断中的益处至关重要。