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基于 MRI 图像分析的 GLCM 赋权 KNN 技术诊断前列腺癌

Diagnosis of Prostate Cancer Using GLCM Enabled KNN Technique by Analyzing MRI Images.

机构信息

Department of Networking and Communications, SRM Institute of Science and Technology, Chennai, India.

Dept. of Computer Science, Govt. College, Makdone (Vikram University), Ujjain, India.

出版信息

Biomed Res Int. 2023 Jan 24;2023:3913351. doi: 10.1155/2023/3913351. eCollection 2023.

Abstract

Cancer has a disproportionately large influence on the death rate of adults. A patient needs to get a diagnosis of their condition as quickly as is humanly feasible in order to have the greatest chance of surviving their sickness. Skilled medical professionals use medical imaging and other traditional diagnostic methods to search for clues that may indicate the presence of malignant tendencies inside the body. Nevertheless, manual diagnosis may be time-consuming and subjective owing to the wide range of interobserver variability induced by the enormous number of medical imaging data. This variability is caused by the fact that medical imaging data are collected. Because of this, the process of accurately diagnosing a patient could become more difficult. To execute jobs that included machine learning and the interpretation of complicated imagery, cutting-edge computer technology was necessary. Since the 1980s, researchers have been working on developing a computer-aided diagnostic system that would help medical professionals in the early diagnosis of various malignancies. According to the most recent projections, prostate cancer will be discovered in the body of one out of every seven men at some time throughout the course of their life. It is unacceptable how many men are being told that they have prostate cancer, and the condition is responsible for the deaths of a rising number of men every year. Because of the high quality and multidimensionality of the MRI pictures, you will also need a powerful diagnosis system in addition to the CAD tools. Since it has been shown that CAD technology is beneficial, researchers are looking at methods to improve the accuracy, precision, and speed of the systems that use it. The effectiveness of CAD technology has been shown. This research proposes a strategy that is both effective and efficient for the processing of images and the extraction of features as well as for machine learning. This work makes use of MRI scans and machine learning in an effort to detect prostate cancer at an early stage. Histogram equalization is used while doing the preliminary processing on photographs. The image's overall quality is elevated as a result. The fuzzy C means approach is used in order to segment the images. Using a Gray Level Cooccurrence Matrix (GLCM), it is feasible to extract features from a dataset. The KNN, random forest, and AdaBoost classification algorithms are used in the classification process.

摘要

癌症对成年人的死亡率有不成比例的巨大影响。为了使患者有最大的机会从疾病中存活下来,他们需要尽快获得对自身病情的诊断。熟练的医疗专业人员使用医学成像和其他传统诊断方法来寻找可能表明体内存在恶性倾向的线索。然而,由于医学成像数据数量巨大,导致观察者之间的差异很大,因此手动诊断可能既耗时又主观。这种可变性是由医学成像数据的采集方式引起的。正因为如此,准确诊断患者的过程可能会变得更加困难。为了执行包括机器学习和复杂图像解释在内的任务,需要先进的计算机技术。自 20 世纪 80 年代以来,研究人员一直在致力于开发计算机辅助诊断系统,以帮助医疗专业人员对各种恶性肿瘤进行早期诊断。根据最新预测,在男性的一生中,每七个人中就会有一个人在某个时候发现前列腺癌。有多少男性被告知患有前列腺癌,而这种疾病每年导致越来越多的男性死亡,这是不可接受的。由于 MRI 图像的高质量和多维性,除了 CAD 工具外,你还需要一个强大的诊断系统。由于已经证明 CAD 技术是有益的,研究人员正在研究如何提高使用它的系统的准确性、精度和速度。已经证明了 CAD 技术的有效性。本研究提出了一种既有效又高效的策略,用于图像处理和特征提取以及机器学习。这项工作利用 MRI 扫描和机器学习来早期检测前列腺癌。在对照片进行初步处理时,使用直方图均衡化。图像的整体质量得到提高。使用模糊 C 均值方法对图像进行分割。通过灰度共生矩阵(GLCM),可以从数据集中提取特征。在分类过程中使用 KNN、随机森林和 AdaBoost 分类算法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bd35/9889161/4ec61e4e5b1d/BMRI2023-3913351.001.jpg

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