The continuation of this research project aims at extracting new and relevant tissue information from spectra of broadband ultrasonic echoes. The ultimate goal of this project is to improve the detection capabilities of malignant tissues with ultrasound imaging. A unique aspect of this project is its focus on characterizing Fourier phase and magnitude of rf ultrasonic tissue echoes with spectral redundancy methods, such as those based on the spectral autocorrelation function (also referred to as the generalized spectrum). Previous work has shown that estimates using the generalized spectrum can reliably reveal the nature of tissue regularity in the presence of diffuse scatterers over relatively small (several millimeters) segments of tissue. The good convergence properties of spectral correlation methods have allowed for creating relatively high resolution parametric images that reveal spatial changes in tissue structure parameters, such as the mean scatterer spacing and echo specularity. Future work focuses on understanding and applying new generalized spectrum features such as the specular scatterer size, dispersion, multiple scatterer spacings, and the degree of regularity for both resolvable and unresolvable spacings. While other methods have been used to extract resolvable scatterer spacing information, the new features utilize the unique way in which the generalized spectrum presents information as a function of frequency. In addition, statistical tests and significance levels will be used in analyzing generalized spectra for more automatic and repeatable classifications of tissue regions. B-scans on liver and breast tissues will be examined to determine changes in spectral redundancy parameters for normal, benign and malignant tissue regions. Databases will be established to statistically examine the nature and consistency with which malignant neoplasms disrupt the normal tissue structures. The success of the proposed research will enhance capabilities for diagnostic ultrasound, particularly for early detection of cancer.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Program Projects (P01)
Project #
2P01CA052823-07A1
Application #
6102621
Study Section
Project Start
1998-08-20
Project End
1999-05-31
Budget Start
Budget End
Support Year
7
Fiscal Year
1998
Total Cost
Indirect Cost
Name
Drexel University
Department
Type
DUNS #
061197161
City
Philadelphia
State
PA
Country
United States
Zip Code
19104
Wheatley, Margaret A; Forsberg, Flemming; Oum, Kelleny et al. (2006) Comparison of in vitro and in vivo acoustic response of a novel 50:50 PLGA contrast agent. Ultrasonics 44:360-7
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