Brain FMRI clustering using interaction K-means algorithm with PCA

K. Vijay, K. Selvakumar
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引用次数: 16

Abstract

An uncontrolled development of tissues in the human being is a tumor. To spot exact locality of tumor and its data being an essential task. To find the tumor, magnetic resonance image has used. FMRI (Functional Magnetic Resonance Imaging) is non-invasive procedure is to see the brain activity and to calculate of blood circulation level in the brain. The FMRI data are time series of 3D-dimensional volume images of the brain based on interaction pattern. This data is traditionally analyzed within a mass-univariate framework essentially relying on classical inferential statistics. Segmentation of FMRI plays a vital role to acquire the data of brain activities of the human brain. Feature Selection is a complicated to handle in Interaction pattern. To overcome the difficulty of the feature selection process, we use the Principal Component Analysis (PCA). PCA is a technique to pre-process the data before carrying out any data mining responsibilities, e.g., categorization and grouping. By this PC Analysis, profitable predictors are achievable in FMRI data. Using the features selected from PCA, we present a clustering novel technique. Based on this new cluster notion interaction K-means (IKM) have applied. IKM is a well-organized procedure for clustering. In this paper, Trained MRI data has taken out using the PC Analysis and IKM technique have applied over the specified data. By this, improvement has conquered in the performance in terms of accuracy and complexity in multivariate data.
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基于交互K-means算法与PCA的脑FMRI聚类
人体组织不受控制的发展就是肿瘤。确定肿瘤的准确位置及其数据是一项重要的任务。为了发现肿瘤,磁共振成像已经使用。FMRI(功能性磁共振成像)是一种非侵入性的方法,可以观察大脑的活动并计算大脑的血液循环水平。FMRI数据是基于相互作用模式的大脑三维体积图像的时间序列。这些数据传统上是在质量单变量框架内进行分析的,基本上依赖于经典的推理统计。功能磁共振成像(FMRI)的分割对获取人脑的脑活动数据起着至关重要的作用。特征选择在交互模式中是一个比较复杂的问题。为了克服特征选择过程中的困难,我们使用了主成分分析(PCA)。PCA是一种在执行任何数据挖掘职责(例如分类和分组)之前对数据进行预处理的技术。通过这种PC分析,可以在FMRI数据中实现有利可图的预测。利用从主成分分析中选择的特征,提出了一种新的聚类技术。基于这一新的聚类概念,应用了相互作用的K-means (IKM)。IKM是一个组织良好的聚类过程。在本文中,使用PC分析和IKM技术对指定数据进行了训练的MRI数据提取。通过这种方法,在多变量数据的准确性和复杂性方面取得了很大的进步。
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