神经网络在癌症检测中的临床应用

Kishore Kanna R, R. Ravindraiah, C. Priya, R. Gomalavalli, Nimmagadda Muralikrishna
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引用次数: 0

摘要

导言:医学诊断领域目前面临着癌症这一重大障碍。确保对癌症病人进行适当的治疗对医务工作者来说至关重要。目的:因此,准确识别癌细胞具有重要意义。及时发现病情有助于及时诊断和干预。众多研究人员已设计出多种早期检测癌症的方法。方法:准确预测癌症一直是医学专业人员和研究人员面临的一项重大而艰巨的任务。本文探讨了用于诊断癌症的各种神经网络技术。结果:神经网络已成为医学科学领域,尤其是心脏病学、放射学和肿瘤学等学科的一个重要研究领域。结论:本次调查结果表明,神经网络技术在诊断癌症方面表现出很高的功效。在对肿瘤细胞进行分类时,相当一部分神经网络表现出了极高的精确度。
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Clinical Application of Neural Network for Cancer Detection Application
  INTRODUCTION: The field of medical diagnostics is currently confronted with a significant obstacle in the shape of cancer, a disease that tragically results in the loss of millions of lives each year. Ensuring the administration of appropriate treatment to cancer patients is of paramount significance for medical practitioners. OBJECTIVES: Hence, the accurate identification of cancer cells holds significant importance. The timely identification of a condition can facilitates prompt diagnosis and intervention. Numerous researchers have devised multiple methodologies for the early detection of cancer. METHODS: The accurate anticipation of cancer has consistently posed a significant and formidable undertaking for medical professionals and researchers. This article examines various neural network technologies utilised in the diagnosis of cancer. RESULTS: Neural networks have emerged as a prominent area of research within the medical science field, particularly in disciplines such as cardiology, radiology, and oncology, among others. CONCLUSION: The findings of this survey indicate that neural network technologies demonstrate a high level of efficacy in the diagnosis of cancer. A significant proportion of neural networks exhibit exceptional precision when it comes to categorizing tumours cells.
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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