Advanced deep learning algorithms in oral cancer detection: Techniques and applications.

IF 1.2 4区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES Journal of Environmental Science and Health Part C-Toxicology and Carcinogenesis Pub Date : 2025-01-17 DOI:10.1080/26896583.2024.2445957
Dipali Wankhade, Chitra Dhawale, Mrunal Meshram
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Abstract

As the 16th most common cancer globally, oral cancer yearly accounts for some 355,000 new cases. This study underlines that an early diagnosis can improve the prognosis and cut down on mortality. It discloses a multifaceted approach to the detection of oral cancer, including clinical examination, biopsies, imaging techniques, and the incorporation of artificial intelligence and deep learning methods. This study is distinctive in that it provides a thorough analysis of the most recent AI-based methods for detecting oral cancer, including deep learning models and machine learning algorithms that use convolutional neural networks. By improving the precision and effectiveness of cancer cell detection, these models eventually make early diagnosis and therapy possible. This study also discusses the importance of techniques in image pre-processing and segmentation in improving image quality and feature extraction, an essential component of accurate diagnosis. These techniques have shown promising results, with classification accuracies reaching up to 97.66% in some models. Integrating the conventional methods with the cutting-edge AI technologies, this study seeks to advance early diagnosis of oral cancer, thus enhancing patient outcomes and cutting down on the burden this disease is imposing on healthcare systems.

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口腔癌检测中的高级深度学习算法:技术与应用。
口腔癌是全球第16大最常见的癌症,每年约有35.5万新病例。本研究强调早期诊断可以改善预后,降低死亡率。它公开了一种检测口腔癌的多方面方法,包括临床检查、活检、成像技术,以及人工智能和深度学习方法的结合。这项研究的独特之处在于,它全面分析了最新的基于人工智能的口腔癌检测方法,包括使用卷积神经网络的深度学习模型和机器学习算法。通过提高癌细胞检测的准确性和有效性,这些模型最终使早期诊断和治疗成为可能。本研究还讨论了图像预处理和分割技术在提高图像质量和特征提取方面的重要性,这是准确诊断的重要组成部分。这些技术已经显示出很好的效果,在一些模型中分类准确率达到了97.66%。该研究将传统方法与尖端人工智能技术相结合,旨在推进口腔癌的早期诊断,从而提高患者的治疗效果,减轻这种疾病给医疗系统带来的负担。
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CiteScore
4.60
自引率
0.00%
发文量
10
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