This research explores the possibility of monitoring
apoptosis and classifying clusters of apoptotic cells based on
the changes in ultrasound backscatter signals from the tissues.
The backscatter from normal and apoptotic cells, using a high
frequency ultrasound instrument are modeled through an
Autoregressive (AR) modeling technique. The proper model
order is calculated by tracking the error criteria in the
reconstruction of the original signal. The AR model
coefficients, which are assumed to contain the main statistical
features of the signal, are passed as the input to Linear and
Nonlinear machine classifiers (Fisher Linear Discriminant,
Conditional Gaussian Classifier, Naive Bayes Classifier and
Neural Networks with nonlinear activation functions). In
addition, an adaptive signal segmentation method ,(Least
Squares Lattice Filter) is used to differentiate the data from
layers of different cell types into stationary parts ready for
modeling and classification.