利用AM-FM处理进行特征提取的视网膜疾病检测和表型分析

C. Agurto, S. Murillo, V. Murray, M. Pattichis, S. Russell, M. Abràmoff, P. Soliz
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引用次数: 11

摘要

我们提出了一种调幅调频(AM-FM)方法的应用,用于提取潜在的相关特征,以区分病变视网膜和健康视网膜。在AM-FM特征方面,我们使用在不同频率尺度上提取的瞬时振幅、瞬时频率角度和瞬时频率幅值的直方图。为了对AM-FM特征进行分类,我们使用了聚类方法和偏最小二乘(PLS)的组合。使用来自四个风险级别中的每个级别的18张图像,进行了三个实验,以测试该算法从三个病理级别(即风险1,风险2和风险3)中区分对照(风险0)的能力。对于风险0和风险3,接受者操作系统下的区域(AROC)为0.99,最佳灵敏度为100%,特异性为95%。对于风险0和风险2,AROC为0.96,敏感性为94%,特异性为85%。对于风险0和风险1,AROC为0.93,敏感性/特异性为94%/67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and phenotyping of retinal disease using AM-FM processing for feature extraction
We present the application of an Amplitude-Modulation Frequency-Modulation (AM-FM) method for extracting potentially relevant features towards the classification of diseased retinas from healthy retinas. In terms of AM-FM features, we use histograms of the instantaneous amplitude, the angle of the instantaneous frequency and the magnitude of the instantaneous frequency extracted over different frequency scales. To classify the AM-FM features, we use a combination of a clustering method and Partial Least Squares (PLS). Using 18 images from each of the four risk levels, three experiments were performed to test the algorithm's ability to differentiate the controls (Risk 0) from each of the three levels of pathology, i.e. Risk 1, Risk 2, and Risk 3. For Risk 0 versus Risk 3 an area under the receiver operating system (AROC) of 0.99 was achieved with a best sensitivity of 100% and a specificity of 95%. For Risk 0 versus Risk 2, the AROC was 0.96 with 94% sensitivity and 85% specificity. For Risk 0 versus Risk 1, the AROC was 0.93 and a sensitivity/specificity of 94%/67%.
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