Abstract:
Early detection of breast cancer as well as classi¯cation of breast tumors into benign-
malignant and/or BI-RADS ·3, 4, 5 through a noninvasive imaging modality is of
prime importance all over the world since the rate of positive ¯ndings at biopsy, the
gold standard for diagnosis of breast cancer, is signi¯cantly low. In this dissertation,
novel techniques for the detection and classi¯cation of breast tumors are presented
employing ultrasound elastography (UE) and conventional B-mode ultrasound (US)
based bi-modal imaging with a view to improve the quantitative diagnostic accuracy
of breast tumors and thereby reduce the number of unnecessary biopsies.
In this work, a new phase-based robust strain imaging algorithm is developed for the
detection of breast tumors. The axial strain is calculated by exploiting the direct phase-
strain relationship derived from the phase of the zero-lag cross-correlation function
between the windowed pre-compression and stretched post-compression analytic RF
signals. Unlike conventional phase-based strain estimators, strain is computed in one
step using the secant algorithm. To maintain strain continuity, instead of using the
instantaneous phase of the interrogative window alone, an average phase function is
de¯ned using the phases of the neighboring windows with the assumption that the
strain is essentially similar in a close physical proximity of the interrogative window.
Comparative results using the simulation and experimental phantom data and in vivo
breast data demonstrate that the strain image quality as well as the quantitative image
indices of the proposed phase-based elasticity method is better than the other reported
techniques.
Novel quantitative methods for classi¯cation of 201 breast tumors into benign-
malignant employing a bi-modal feature reduction approach in the original as well
as in the transform domain are proposed in this dissertation. An original domain
bi-modal characterization index is de¯ned from a linear combination of the selected
US and UE features along with two new quantitative US features proposed in this
work. The weights of linear combination are estimated employing the genetic algorithm
(GA). Next, a reduced bi-modal feature based multi-class (i.e., two as well as BI-
RADS ·3, 4, 5) classi¯er of breast tumors in the transform domain is proposed. The
objective of this part is to construct a minimal set of transform domain features from
the de-correlated EMD and DWT coe±cients of an optimally ordered sequence of the
original features, employing the wrapper/¯lter approach. Additionally, in order for
micro feature-based classi¯cation, two novel spectral domain techniques for estimation
of attenuation coe±cient (AC) from the slope of the regression line ¯tted to the 1)
modi¯ed average midband ¯t value, and 2) average center frequency shift along depth, Early detection of breast cancer as well as classi¯cation of breast tumors into benign-
malignant and/or BI-RADS ·3, 4, 5 through a noninvasive imaging modality is of
prime importance all over the world since the rate of positive ¯ndings at biopsy, the
gold standard for diagnosis of breast cancer, is signi¯cantly low. In this dissertation,
novel techniques for the detection and classi¯cation of breast tumors are presented
employing ultrasound elastography (UE) and conventional B-mode ultrasound (US)
based bi-modal imaging with a view to improve the quantitative diagnostic accuracy
of breast tumors and thereby reduce the number of unnecessary biopsies.
In this work, a new phase-based robust strain imaging algorithm is developed for the
detection of breast tumors. The axial strain is calculated by exploiting the direct phase-
strain relationship derived from the phase of the zero-lag cross-correlation function
between the windowed pre-compression and stretched post-compression analytic RF
signals. Unlike conventional phase-based strain estimators, strain is computed in one
step using the secant algorithm. To maintain strain continuity, instead of using the
instantaneous phase of the interrogative window alone, an average phase function is
de¯ned using the phases of the neighboring windows with the assumption that the
strain is essentially similar in a close physical proximity of the interrogative window.
Comparative results using the simulation and experimental phantom data and in vivo
breast data demonstrate that the strain image quality as well as the quantitative image
indices of the proposed phase-based elasticity method is better than the other reported
techniques.
Novel quantitative methods for classi¯cation of 201 breast tumors into benign-
malignant employing a bi-modal feature reduction approach in the original as well
as in the transform domain are proposed in this dissertation. An original domain
bi-modal characterization index is de¯ned from a linear combination of the selected
US and UE features along with two new quantitative US features proposed in this
work. The weights of linear combination are estimated employing the genetic algorithm
(GA). Next, a reduced bi-modal feature based multi-class (i.e., two as well as BI-
RADS ·3, 4, 5) classi¯er of breast tumors in the transform domain is proposed. The
objective of this part is to construct a minimal set of transform domain features from
the de-correlated EMD and DWT coe±cients of an optimally ordered sequence of the
original features, employing the wrapper/¯lter approach. Additionally, in order for
micro feature-based classi¯cation, two novel spectral domain techniques for estimation
of attenuation coe±cient (AC) from the slope of the regression line ¯tted to the 1)
modi¯ed average midband ¯t value, and 2) average center frequency shift along depth, are proposed. Unlike conventional approaches, this algorithm enforces a controlled
continuity in the estimated AC, using the weighted nearest neighbors approach. The
highly improved classi¯cation performance of the proposed original domain bi-modal
characterization index compared to the conventional bi- or uni-modal indices and even
enhanced performance by the transform domain reduced feature vectors in comparison
to the original domain ones indicates the potency of both methods in the reduction of
unnecessary biopsies. Although the accuracy of the proposed AC estimation algorithm
is better than the other reported techniques, the classi¯cation performance of AC alone
is not satisfactory yet.