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Computers have become an integral part of medical imaging systems
and are used for everything from data acquisition and image
generation to image display and analysis. As the scope and
complexity of imaging technology steadily increase, more advanced
techniques are required to solve the emerging challenges.
Biomedical Image Analysis demonstrates the benefits reaped from the
application of digital image processing, computer vision, and
pattern analysis techniques to biomedical images, such as adding
objective strength and improving diagnostic confidence through
quantitative analysis. The book focuses on post-acquisition
challenges such as image enhancement, detection of edges and
objects, analysis of shape, quantification of texture and
sharpness, and pattern analysis, rather than on the imaging
equipment and imaging techniques. Each chapter addresses several
problems associated with imaging or image analysis, outlining the
typical processes, then detailing more sophisticated methods
directed to the specific problems of interest. Biomedical Image
Analysis is useful for senior undergraduate and graduate biomedical
engineering students, practicing engineers, and computer scientists
working in diverse areas such as telecommunications, biomedical
applications, and hospital information systems.
With the development of rapidly increasing medical imaging
modalities and their applications, the need for computers and
computing in image generation, processing, visualization, archival,
transmission, modeling, and analysis has grown substantially.
Computers are being integrated into almost every medical imaging
system. Medical Image Analysis and Informatics demonstrates how
quantitative analysis becomes possible by the application of
computational procedures to medical images. Furthermore, it shows
how quantitative and objective analysis facilitated by medical
image informatics, CBIR, and CAD could lead to improved diagnosis
by physicians. Whereas CAD has become a part of the clinical
workflow in the detection of breast cancer with mammograms, it is
not yet established in other applications. CBIR is an alternative
and complementary approach for image retrieval based on measures
derived from images, which could also facilitate CAD. This book
shows how digital image processing techniques can assist in
quantitative analysis of medical images, how pattern recognition
and classification techniques can facilitate CAD, and how CAD
systems can assist in achieving efficient diagnosis, in designing
optimal treatment protocols, in analyzing the effects of or
response to treatment, and in clinical management of various
conditions. The book affirms that medical imaging, medical image
analysis, medical image informatics, CBIR, and CAD are proven as
well as essential techniques for health care.
The identification and interpretation of the signs of breast cancer
in mammographic images from screening programs can be very
difficult due to the subtle and diversified appearance of breast
disease. This book presents new image processing and pattern
recognition techniques for computer-aided detection and diagnosis
of breast cancer in its various forms. The main goals are: (1) the
identification of bilateral asymmetry as an early sign of breast
disease which is not detectable by other existing approaches; and
(2) the detection and classification of masses and regions of
architectural distortion, as benign lesions or malignant tumors, in
a unified framework that does not require accurate extraction of
the contours of the lesions. The innovative aspects of the work
include the design and validation of landmarking algorithms,
automatic Tabar masking procedures, and various feature descriptors
for quantification of similarity and for contour independent
classification of mammographic lesions. Characterization of breast
tissue patterns is achieved by means of multidirectional Gabor
filters. For the classification tasks, pattern recognition
strategies, including Fisher linear discriminant analysis, Bayesian
classifiers, support vector machines, and neural networks are
applied using automatic selection of features and cross-validation
techniques. Computer-aided detection of bilateral asymmetry
resulted in accuracy up to 0.94, with sensitivity and specificity
of 1 and 0.88, respectively. Computer-aided diagnosis of
automatically detected lesions provided sensitivity of detection of
malignant tumors in the range of [0.70, 0.81] at a range of falsely
detected tumors of [0.82, 3.47] per image. The techniques presented
in this work are effective in detecting and characterizing various
mammographic signs of breast disease.
The presence of oriented features in images often conveys important
information about the scene or the objects contained; the analysis
of oriented patterns is an important task in the general framework
of image understanding. As in many other applications of computer
vision, the general framework for the understanding of oriented
features in images can be divided into low- and high-level
analysis. In the context of the study of oriented features,
low-level analysis includes the detection of oriented features in
images; a measure of the local magnitude and orientation of
oriented features over the entire region of analysis in the image
is called the orientation field. High-level analysis relates to the
discovery of patterns in the orientation field, usually by
associating the structure perceived in the orientation field with a
geometrical model. This book presents an analysis of several
important methods for the detection of oriented features in images,
and a discussion of the phase portrait method for high-level
analysis of orientation fields. In order to illustrate the concepts
developed throughout the book, an application is presented of the
phase portrait method to computer-aided detection of architectural
distortion in mammograms. Table of Contents: Detection of Oriented
Features in Images / Analysis of Oriented Patterns Using Phase
Portraits / Optimization Techniques / Detection of Sites of
Architectural Distortion in Mammograms
Comprehensive resource covering recent developments, applications
of current interest, and advanced techniques for biomedical signal
analysis Biomedical Signal Analysis provides extensive insight into
digital signal processing techniques for filtering, identification,
characterization, classification, and analysis of biomedical
signals with the aim of computer-aided diagnosis, taking a unique
approach by presenting case studies encountered in the authors’
research work. Each chapter begins with the statement of a
biomedical signal problem, followed by a selection of real-life
case studies and illustrations with the associated signals. Signal
processing, modeling, or analysis techniques are then presented,
starting with relatively simple "textbook" methods, followed by
more sophisticated research-informed approaches. Each chapter
concludes with solutions to practical applications. Illustrations
of real-life biomedical signals and their derivatives are included
throughout. The third edition expands on essential background
material and advanced topics without altering the underlying
pedagogical approach and philosophy of the successful first and
second editions. The book is enhanced by a large number of study
questions and laboratory exercises as well as an online repository
with solutions to problems and data files for laboratory work and
projects. Biomedical Signal Analysis provides theoretical and
practical information on: The origin and characteristics of several
biomedical signals Analysis of concurrent, coupled, and correlated
processes, with applications in monitoring of sleep apnea Filtering
for removal of artifacts, random noise, structured noise, and
physiological interference in signals generated by stationary,
nonstationary, and cyclostationary processes Detection and
characterization of events, covering methods for QRS detection,
identification of heart sounds, and detection of the dicrotic notch
Analysis of waveshape and waveform complexity Interpretation and
analysis of biomedical signals in the frequency domain
Mathematical, electrical, mechanical, and physiological modeling of
biomedical signals and systems Sophisticated analysis of
nonstationary, multicomponent, and multisource signals using
wavelets, time-frequency representations, signal decomposition, and
dictionary-learning methods Pattern classification and
computer-aided diagnosis Biomedical Signal Analysis is an ideal
learning resource for senior undergraduate and graduate engineering
students. Introductory sections on signals, systems, and transforms
make this book accessible to students in disciplines other than
electrical engineering.
Edited by and featuring contributions from world-class researchers,
Ophthalmological Imaging and Applications offers a unified work of
the latest human eye imaging and modeling techniques that have been
proposed and applied to the diagnosis of ophthalmologic problems,
including inflammation, cataracts, diabetic retinopathy, and
glaucoma. With a focus on theory, basic principles, and results
derived from research, the book: Explores various morphological,
textural, higher-order spectral, and wavelet transformation
techniques used to extract salient features from images of the
human eye Examines 2D and 3D finite element and boundary element
models of the human eye developed to simulate thermal steady-state
conditions Addresses the difficult task of benchmarking the
validity of human eye imaging techniques and computer-simulated
results with experimental measurements Intended to be a companion
to Image Analysis and Modeling in Ophthalmology, this volume covers
several aspects of multimodal ophthalmological imaging and
applications, presenting information in an accessible manner to
appeal to a wide audience of students, researchers, and
practitioners. Ophthalmological Imaging and Applications considers
promising simulations that pave the way for new possibilities in
computational methods for eye health care.
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