Yan Yan, Yao Xu-Jing, Wang Shui-Hua, Zhang Yu-Dong
School of Computing and Mathematical Sciences, University of Leicester, University Road, Leicester LE1 7RH, UK.
Biology (Basel). 2021 Oct 22;10(11):1084. doi: 10.3390/biology10111084.
Tumors are new tissues that are harmful to human health. The malignant tumor is one of the main diseases that seriously affect human health and threaten human life. For cancer treatment, early detection of pathological features is essential to reduce cancer mortality effectively. Traditional diagnostic methods include routine laboratory tests of the patient's secretions, and serum, immune and genetic tests. At present, the commonly used clinical imaging examinations include X-ray, CT, MRI, SPECT scan, etc. With the emergence of new problems of radiation noise reduction, medical image noise reduction technology is more and more investigated by researchers. At the same time, doctors often need to rely on clinical experience and academic background knowledge in the follow-up diagnosis of lesions. However, it is challenging to promote clinical diagnosis technology. Therefore, due to the medical needs, research on medical imaging technology and computer-aided diagnosis appears. The advantages of a convolutional neural network in tumor diagnosis are increasingly obvious. The research on computer-aided diagnosis based on medical images of tumors has become a sharper focus in the industry. Neural networks have been commonly used to research intelligent methods to assist medical image diagnosis and have made significant progress. This paper introduces the traditional methods of computer-aided diagnosis of tumors. It introduces the segmentation and classification of tumor images as well as the diagnosis methods based on CNN to help doctors determine tumors. It provides a reference for developing a CNN computer-aided system based on tumor detection research in the future.
肿瘤是对人体健康有害的新组织。恶性肿瘤是严重影响人类健康并威胁人类生命的主要疾病之一。对于癌症治疗,早期发现病理特征对于有效降低癌症死亡率至关重要。传统的诊断方法包括对患者分泌物、血清、免疫和基因检测的常规实验室检查。目前,常用的临床影像检查包括X射线、CT、MRI、SPECT扫描等。随着辐射降噪新问题的出现,医学图像降噪技术越来越受到研究人员的关注。同时,医生在病变的后续诊断中往往需要依靠临床经验和学术背景知识。然而,推动临床诊断技术具有挑战性。因此,出于医疗需求,出现了对医学成像技术和计算机辅助诊断的研究。卷积神经网络在肿瘤诊断中的优势日益明显。基于肿瘤医学图像的计算机辅助诊断研究已成为该行业更尖锐的焦点。神经网络已普遍用于研究辅助医学图像诊断的智能方法并取得了重大进展。本文介绍了肿瘤计算机辅助诊断的传统方法。介绍了肿瘤图像的分割与分类以及基于卷积神经网络的诊断方法,以帮助医生确定肿瘤。为未来基于肿瘤检测研究开发卷积神经网络计算机辅助系统提供参考。