Paper
12 March 2007 A new approach to analysis of RF ultrasound echo signals for tissue characterization: animal studies
Mehdi Moradi, Parvin Mousavi, Philip A. Isotalo M.D., David R. Siemens, Eric E. Sauerbrei, Purang Abolmaesumi
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Abstract
We present the results of an animal tissue characterization study to demonstrate the effectiveness of a novel approach in collecting and analyzing ultrasound echo signals. In this approach, we continuously record RF echo signals backscattered from a tissue sample, while the imaging probe and the tissue are fixed in position. The continuously recorded RF data generates a time series of RF signal samples. The Higuchi fractal dimension of the resulting time series at each spatial coordinate of the RF frame, averaged over a region of interest, serves as our tissue characterizing feature. The proposed feature is used along with Bayesian classifiers and feed-forward neural networks to distinguish different types of animal tissue. Pairwise classification of four different types of animal tissue are performed. Accuracies are in the range of 68%-96% and are significantly higher than the natural split of the data. The promising results of this study show that analysis of RF time series as proposed here, can potentially give rise to effective measures for ultrasound-based tissue characterization.
© (2007) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Mehdi Moradi, Parvin Mousavi, Philip A. Isotalo M.D., David R. Siemens, Eric E. Sauerbrei, and Purang Abolmaesumi "A new approach to analysis of RF ultrasound echo signals for tissue characterization: animal studies", Proc. SPIE 6513, Medical Imaging 2007: Ultrasonic Imaging and Signal Processing, 65130P (12 March 2007); https://doi.org/10.1117/12.708630
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Cited by 10 scholarly publications.
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KEYWORDS
Tissues

Ultrasonography

Liver

Fractal analysis

Neural networks

Breast

Network architectures

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