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Data mining techniques used for uterus fibroid diagnosis and prognosis

机译:用于子宫肌瘤诊断和预后的数据挖掘技术

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摘要

The availability of massive amounts of medical data leads to the requirement for powerful data analysis tools to extract useful knowledge. Researchers have long been committed applying statistical and data processing tools to spice up data analysis on large data sets. Health problem identification is one in every of the applications where data mining tools are proving flourishing results. Uterus Fibroid diagnosis and Prognosis square measure two medical applications cause a good challenge to the researchers. The employment of machine learning and method techniques has revolutionized the entire process of Fibroid diagnosis and Prognosis. The diagnosis of fibroid present within the different parts of the female internal reproductive organ distinguishes it's eliminated or detain the female internal reproductive organ. Fibroid Prognosis predicts once Fibroid is probably going to recur in patients that have had their cancers excised. Thus, these two issues are mainly within the scope of the classification issues. This study paper summarizes numerous data mining techniques, review and technical articles on Fibroid diagnosis and prognosis. During this paper we tend to present an outline of the present research being carried out using the data mining techniques to reinforce the Fibroid diagnosis and prognosis.
机译:大量医学数据的可用性导致需要强大的数据分析工具来提取有用的知识。长期以来,研究人员一直致力于应用统计和数据处理工具来提高大型数据集的数据分析的趣味性。健康问题识别是数据挖掘工具正在蓬勃发展的结果的每个应用程序之一。子宫肌瘤的诊断和预后平方测量两种医学应用对研究人员提出了很好的挑战。机器学习和方法技术的应用彻底改变了肌瘤诊断和预后的整个过程。对女性子宫内生殖器官不同部位中存在的肌瘤的诊断可将其消灭或保留在女性子宫内生殖器官中。子宫肌瘤的预后预测一旦切除了癌的患者,子宫肌瘤很可能会复发。因此,这两个问题主要在分类问题的范围内。本研究论文总结了许多有关肌瘤诊断和预后的数据挖掘技术,综述和技术文章。在本文中,我们倾向于介绍使用数据挖掘技术来加强肌瘤诊断和预后的当前研究概况。

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