首页> 外国专利> A STRATIFICATION METHOD FOR OVERCOMING UNBALANCED CASE NUMBERS IN COMPUTER-AIDED LUNG NODULE FALSE POSITIVE REDUCTION

A STRATIFICATION METHOD FOR OVERCOMING UNBALANCED CASE NUMBERS IN COMPUTER-AIDED LUNG NODULE FALSE POSITIVE REDUCTION

机译:一种克服计算机辅助肺结节假阳性减少中平衡病例数的分层方法

摘要

A method for computer aided detection (CAD) and classification of regions of interest detected within HRCT medical image data. The method includes post-CAD machine learning techniques applied to maximize specificity and sensitivity of identification of a region/volume as being a nodule or non-nodule. The regions are identified by a CAD process, and automatically segmented. A feature pool is identified and extracted from each segmented region, and processed by genetic algorithm to identify an optimal feature subset, wherein a data stratification method is used to balance the number of cases in different classes. The subset determined by GA is used to train the support vector machine to classify candidate region/volumes found within non-training data.
机译:一种用于计算机辅助检测(CAD)以及对HRCT医学图像数据中检测到的感兴趣区域进行分类的方法。该方法包括CAD后机器学习技术,其被应用以最大化识别区域/体积为结节或非结节的特异性和敏感性。通过CAD流程识别区域,然后自动进行分段。识别特征池并从每个分割区域中提取特征池,并通过遗传算法进行处理以识别最佳特征子集,其中使用数据分层方法来平衡不同类别中案例的数量。由GA确定的子集用于训练支持向量机,以对非训练数据中发现的候选区域/体积进行分类。

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