基于可操纵小波的脑图像异常检测数据采样不平衡

Dao Nam Anh
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引用次数: 1

摘要

长期以来,人工智能在医学成像中的应用一直是一个目标,即能够适当地检测大脑MRI图像中的异常,以支持癌症的早期诊断。为了提高异常检测的准确性,本文提出了一种依靠对脑图像数据库数据采样的类不平衡分析而不是误差统计的解决方案。在异常检测中,我们对多数类和少数类的训练数据集进行了修改,以克服过分割和欠分割的问题,其中异常被视为少数类,但假设其分布未知。该方法采用机器学习方法对基于小波变换的特征进行编码,以研究数据采样不平衡。为了提高检测灵敏度,在学习任务中从多个特征集中选择一组小波特征。实验结果表明了该方法对脑图像异常检测的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data sampling imbalance with steerable wavelets for abnormality detection in brain images
A long standing goal within artificial intelligence application for medical imaging has been the ability for appropriate detecting abnormalities in MRI image of brains to support early diagnostics of cancer. This paper presents a solution relying on analysis of class imbalance in data sampling from brain image database instead of error statistics to improve accuracy of the abnormality detection. Here we use modification of training data set both for minority class and majority class to overcome under-segmentation and over-segmentation in detection of abnormality where abnormality is seen as minority class but its distribution is assumed unknown. In this approach, steerable wavelet based features are encoded with machine learning methods to allow the study of data sampling imbalance. In order to increase the detection sensitivity a set of wavelet features is selected from a number of feature sets in the learning task. The results with a benchmark medical image database show the effectiveness of the proposed method for abnormality detection in brain images.
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