Oral Cancer Detection using Deep Learning Techniques

Nagamani Tenali, Vasavi Sripriya Desu, Charishma Boppa, Varshith Chowdary Chintala, Bhavana Guntupalli
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引用次数: 1

Abstract

One of the most serious tumors that affects the oral cavity is oral cancer. Smoking cigarettes and increased tobacco use are the main risk factors for mouth cancer. When oral cancer is found in its early stages and treated successfully, many lives can be saved Histological analysis of an oral cavity tissue sample is the accepted method in medicine for identifying oral cancer. This method requires more time and is more invasive than obtaining a brush sample and then performing a cytological analysis. For a better prognosis, treatment plan, and chance of survival, early diagnosis is essential. Therefore, this paper suggests deep learning techniques to perform early detection of oral cancer and eventually leads to its prevention. Deep learning techniques enable early detection of disease to provide precision medicine. According to the recent research reports, this method has significantly advanced the extraction of data and interpretation of crucial information related to medical imaging. It has the potential to identify oral cancer with a cost-efficient, non-invasive, and effective method, having substantial clinical implications.
使用深度学习技术检测口腔癌
口腔癌是影响口腔的最严重的肿瘤之一。吸烟和增加烟草使用是口腔癌的主要危险因素。当口腔癌在早期阶段被发现并成功治疗时,可以挽救许多生命,口腔组织样本的组织学分析是医学上公认的识别口腔癌的方法。这种方法需要更多的时间,比获得刷样,然后进行细胞学分析更具侵入性。为了更好的预后、治疗计划和生存机会,早期诊断是必不可少的。因此,本文建议使用深度学习技术进行口腔癌的早期检测,并最终导致其预防。深度学习技术可以早期发现疾病,提供精准医疗。根据最近的研究报告,这种方法大大提高了与医学成像相关的关键信息的数据提取和解释。它有可能以一种成本效益高、无创、有效的方法来识别口腔癌,具有重要的临床意义。
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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