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用于识别疾病特征的多分辨率和小波表示法。

Multi-resolution and wavelet representations for identifying signatures of disease.

作者信息

Sajda Paul, Laine Andrew, Zeevi Yehoshua

机构信息

Department of Biomedical Engineering, Columbia University, New York, NY 10027, USA.

出版信息

Dis Markers. 2002;18(5-6):339-63. doi: 10.1155/2002/108741.

Abstract

Identifying physiological and anatomical signatures of disease in signals and images is one of the fundamental challenges in biomedical engineering. The challenge is most apparent given that such signatures must be identified in spite of tremendous inter and intra-subject variability and noise. Crucial for uncovering these signatures has been the development of methods that exploit general statistical properties of natural signals. The signal processing and applied mathematics communities have developed, in recent years, signal representations which take advantage of Gabor-type and wavelet-type functions that localize signal energy in a joint time-frequency and/or space-frequency domain. These techniques can be expressed as multi-resolution transformations, of which perhaps the best known is the wavelet transform. In this paper we review wavelets, and other related multi-resolution transforms, within the context of identifying signatures for disease. These transforms construct a general representation of signals which can be used in detection, diagnosis and treatment monitoring. We present several examples where these transforms are applied to biomedical signal and imaging processing. These include computer-aided diagnosis in mammography, real-time mosaicking of ophthalmic slit-lamp imagery, characterization of heart disease via ultrasound, predicting epileptic seizures and signature analysis of the electroencephalogram, and reconstruction of positron emission tomography data.

摘要

在信号和图像中识别疾病的生理和解剖特征是生物医学工程中的基本挑战之一。鉴于必须在存在巨大的个体间和个体内变异性以及噪声的情况下识别这些特征,这一挑战最为明显。揭示这些特征的关键在于开发利用自然信号一般统计特性的方法。近年来,信号处理和应用数学领域已经开发出了利用伽柏型和小波型函数在联合时频和/或空间频域中定位信号能量的信号表示方法。这些技术可以表示为多分辨率变换,其中最著名的可能是小波变换。在本文中,我们在识别疾病特征的背景下回顾小波以及其他相关的多分辨率变换。这些变换构建了信号的通用表示形式,可用于检测、诊断和治疗监测。我们给出了几个将这些变换应用于生物医学信号和图像处理的例子。这些例子包括乳腺X线摄影中的计算机辅助诊断、眼科裂隙灯图像的实时拼接、通过超声表征心脏病、预测癫痫发作以及脑电图的特征分析,还有正电子发射断层扫描数据的重建。

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