Deep learning for early diagnosis of oral cancer via smartphone and DSLR image analysis: a systematic review.

Expert review of medical devices Pub Date : 2024-12-01 Epub Date: 2024-11-28 DOI:10.1080/17434440.2024.2434732
Tapabrat Thakuria, Taibur Rahman, Deva Raj Mahanta, Sanjib Kumar Khataniar, Rahul Dev Goswami, Tashnin Rahman, Lipi B Mahanta
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Abstract

Introduction: Diagnosing oral cancer is crucial in healthcare, with technological advancements enhancing early detection and outcomes. This review examines the impact of handheld AI-based tools, focusing on Convolutional Neural Networks (CNNs) and their advanced architectures in oral cancer diagnosis.

Methods: A comprehensive search across PubMed, Scopus, Google Scholar, and Web of Science identified papers on deep learning (DL) in oral cancer diagnosis using digital images. The review, registered with PROSPERO, employed PRISMA and QUADAS-2 for search and risk assessment, with data analyzed through bubble and bar charts.

Results: Twenty-five papers were reviewed, highlighting classification, segmentation, and object detection as key areas. Despite challenges like limited annotated datasets and data imbalance, models such as DenseNet121, VGG19, and EfficientNet-B0 excelled in binary classification, while EfficientNet-B4, Inception-V4, and Faster R-CNN were effective for multiclass classification and object detection. Models achieved up to 100% precision, 99% specificity, and 97.5% accuracy, showcasing AI's potential to improve diagnostic accuracy. Combining datasets and leveraging transfer learning enhances detection, particularly in resource-limited settings.

Conclusion: Handheld AI tools are transforming oral cancer diagnosis, with ethical considerations guiding their integration into healthcare systems. DL offers explainability, builds trust in AI-driven diagnoses, and facilitates telemedicine integration.

通过智能手机和数码单反相机图像分析进行口腔癌早期诊断的深度学习:系统综述。
简介口腔癌诊断在医疗保健领域至关重要,技术进步可提高早期发现率和治疗效果。本综述探讨了基于人工智能的手持工具的影响,重点关注卷积神经网络(CNN)及其先进架构在口腔癌诊断中的应用:方法:通过对 PubMed、Scopus、Google Scholar 和 Web of Science 的全面搜索,发现了利用数字图像进行口腔癌诊断的深度学习 (DL) 论文。该综述已在 PROSPERO 注册,采用 PRISMA 和 QUADAS-2 进行搜索和风险评估,并通过气泡图和柱状图分析数据:结果:共审查了 25 篇论文,重点关注分类、分割和对象检测等关键领域。尽管存在注释数据集有限和数据不平衡等挑战,但 DenseNet121、VGG19 和 EfficientNet-B0 等模型在二元分类方面表现出色,而 EfficientNet-B4、Inception-V4 和 Faster R-CNN 在多类分类和对象检测方面也很有效。这些模型的精确度高达 100%,特异性高达 99%,准确率高达 97.5%,展示了人工智能在提高诊断准确性方面的潜力。结合数据集和利用迁移学习可提高检测能力,尤其是在资源有限的环境中:结论:手持式人工智能工具正在改变口腔癌的诊断,将其纳入医疗保健系统需要考虑伦理因素。DL 提供了可解释性,建立了对人工智能诊断的信任,并促进了远程医疗的整合。
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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