2010
DOI: 10.1117/12.843791
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IVUS-based histology of atherosclerotic plaques: improving longitudinal resolution

Abstract: Although Virtual Histology (VH) is the in-vivo gold standard for atherosclerosis plaque characterization in IVUS images, it suffers from a poor longitudinal resolution due to ECG-gating. In this paper, we propose an imagebased approach to overcome this limitation. Since each tissue have different echogenic characteristics, they show in IVUS images different local frequency components. By using Redundant Wavelet Packet Transform (RWPT), IVUS images are decomposed in multiple sub-band images. To encode the textu… Show more

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“…It selects the optimal set of orthogonal subspaces that can provide maximum dissimilarity information among different classes [13,14]. Up to date, LDB has been applied to deal with real-world classification problems in the areas of audio signal analysis [15,16], physiological signal classification [17,18], and vibration data processing [13,19]. From these applications, it can be seen that the results of LDB algorithm for a given dataset are driven by the nature of the dataset and the dissimilarity measures.…”
Section: Introductionmentioning
confidence: 99%
“…It selects the optimal set of orthogonal subspaces that can provide maximum dissimilarity information among different classes [13,14]. Up to date, LDB has been applied to deal with real-world classification problems in the areas of audio signal analysis [15,16], physiological signal classification [17,18], and vibration data processing [13,19]. From these applications, it can be seen that the results of LDB algorithm for a given dataset are driven by the nature of the dataset and the dissimilarity measures.…”
Section: Introductionmentioning
confidence: 99%