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Computationally Intelligent Methods for Mining 3D Medical Images

机译:挖掘3D医学图像的计算智能方法

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摘要

We present novel intelligent tools for mining 3D medical images. We focus on detecting discriminative Regions of Interest (ROIs) and mining associations between their spatial distribution and other clinical assessment. To identify these highly informative regions, we propose utilizing statistical tests to selectively partition the 3D space into a number of hyper-rectangles. We apply quantitative characterization techniques to extract k-dimensional signatures from the highly discriminative ROIs. Finally, we use neural networks for classification. As a case study, we analyze an fMRI dataset obtained from a study on Alzheimer's disease. We seek to discover brain activation regions that discriminate controls from patients. The overall classification based on activation patterns in these areas exceeded 90% with nearly 100% accuracy on patients, outperforming the naive static partitioning approach. The proposed intelligent tools have great potential for revealing relationships between ROIs in medical images and other clinical variables assisting systems that support medical diagnosis.
机译:我们提出了用于挖掘3D医学图像的新颖智能工具。我们专注于检测可区分的兴趣区域(ROI)并挖掘其空间分布与其他临床评估之间的关联。为了识别这些信息丰富的区域,我们建议利用统计测试将3D空间选择性地划分为多个超矩形。我们应用定量表征技术从高度区分的ROI中提取k维签名。最后,我们使用神经网络进行分类。作为案例研究,我们分析了一项从阿尔茨海默氏病研究获得的功能磁共振成像数据集。我们试图发现区分患者控制的大脑激活区域。在这些区域中,基于激活模式的总体分类超过了90%,对患者的准确性接近100%,优于单纯的静态分区方法。所提出的智能工具具有很大的潜力,可以揭示医学图像中ROI与支持医学诊断的其他临床变量辅助系统之间的关系。

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