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The monitoring of the effects of retinopathy on the visual system
can be assisted by analyzing the vascular architecture of the
retina. This book presents methods based on Gabor filters to detect
blood vessels in fundus images of the retina. Forty images of the
retina from the Digital Retinal Images for Vessel Extraction
(DRIVE) database were used to evaluate the performance of the
methods. The results demonstrate high efficiency in the detection
of blood vessels with an area under the receiver operating
characteristic curve of 0.96. Monitoring the openness of the major
temporal arcade (MTA) could facilitate improved diagnosis and
optimized treatment of retinopathy. This book presents methods for
the detection and modeling of the MTA, including the generalized
Hough transform to detect parabolic forms. Results obtained with 40
images of the DRIVE database, compared with hand-drawn traces of
the MTA, indicate a mean distance to the closest point of about
0.24mm. This book illustrates applications of the methods mentioned
above for the analysis of the effects of proliferative diabetic
retinopathy and retinopathy of prematurity on retinal vascular
architecture.
Digital measurement of the analog acoustical parameters of a music
performance hall is difficult. The aim of such work is to create a
digital acoustical derivation that is an accurate numerical
representation of the complex analog characteristics of the hall.
The present study describes the exponential sine sweep (ESS)
measurement process in the derivation of an acoustical impulse
response function (AIRF) of three music performance halls in
Canada. It examines specific difficulties of the process, such as
preventing the external effects of the measurement transducers from
corrupting the derivation, and provides solutions, such as the use
of filtering techniques in order to remove such unwanted effects.
In addition, the book presents a novel method of numerical
verification through mean-squared error (MSE) analysis in order to
determine how accurately the derived AIRF represents the acoustical
behavior of the actual hall.
Architectural distortion is an important and early sign of breast
cancer, but because of its subtlety, it is a common cause of
false-negative findings on screening mammograms. Screening
mammograms obtained prior to the detection of cancer could contain
subtle signs of early stages of breast cancer, in particular,
architectural distortion. This book presents image processing and
pattern recognition techniques to detect architectural distortion
in prior mammograms of interval-cancer cases. The methods are based
upon Gabor filters, phase portrait analysis, procedures for the
analysis of the angular spread of power, fractal analysis, Laws'
texture energy measures derived from geometrically transformed
regions of interest (ROIs), and Haralick's texture features. With
Gabor filters and phase-portrait analysis, 4,224 ROIs were
automatically obtained from 106 prior mammograms of 56
interval-cancer cases, including 301 true-positive ROIs related to
architectural distortion, and from 52 mammograms of 13 normal
cases. For each ROI, the fractal dimension, the entropy of the
angular spread of power, 10 Laws' texture energy measures, and
Haralick's 14 texture features were computed. The areas under the
receiver operating characteristic (ROC) curves obtained using the
features selected by stepwise logistic regression and the
leave-one-image-out method are 0.77 with the Bayesian classifier,
0.76 with Fisher linear discriminant analysis, and 0.79 with a
neural network classifier. Free-response ROC analysis indicated
sensitivities of 0.80 and 0.90 at 5.7 and 8.8 false positives (FPs)
per image, respectively, with the Bayesian classifier and the
leave-one-image-out method. The present study has demonstrated the
ability to detect early signs of breast cancer 15 months ahead of
the time of clinical diagnosis, on the average, for interval-cancer
cases, with a sensitivity of 0.8 at 5.7 FP/image. The presented
computer-aided detection techniques, dedicated to accurate
detection and localization of architectural distortion, could lead
to efficient detection of early and subtle signs of breast cancer
at pre-mass-formation stages. Table of Contents: Introduction /
Detection of Early Signs of Breast Cancer / Detection and Analysis
of Oriented Patterns / Detection of Potential Sites of
Architectural Distortion / Experimental Set Up and Datasets /
Feature Selection and Pattern Classification / Analysis of Oriented
Patterns Related to Architectural Distortion / Detection of
Architectural Distortion in Prior Mammograms / Concluding Remarks
Fractal analysis is useful in digital image processing for the
characterization of shape roughness and gray-scale texture or
complexity. Breast masses present shape and gray-scale
characteristics in mammograms that vary between benign masses and
malignant tumors. This book demonstrates the use of fractal
analysis to classify breast masses as benign masses or malignant
tumors based on the irregularity exhibited in their contours and
the gray-scale variability exhibited in their mammographic images.
A few different approaches are described to estimate the fractal
dimension (FD) of the contour of a mass, including the ruler
method, box-counting method, and the power spectral analysis (PSA)
method. Procedures are also described for the estimation of the FD
of the gray-scale image of a mass using the blanket method and the
PSA method. To facilitate comparative analysis of FD as a feature
for pattern classification of breast masses, several other shape
features and texture measures are described in the book. The shape
features described include compactness, spiculation index,
fractional concavity, and Fourier factor. The texture measures
described are statistical measures derived from the gray-level
cooccurrence matrix of the given image. Texture measures reveal
properties about the spatial distribution of the gray levels in the
given image; therefore, the performance of texture measures may be
dependent on the resolution of the image. For this reason, an
analysis of the effect of spatial resolution or pixel size on
texture measures in the classification of breast masses is
presented in the book. The results demonstrated in the book
indicate that fractal analysis is more suitable for
characterization of the shape than the gray-level variations of
breast masses, with area under the receiver operating
characteristics of up to 0.93 with a dataset of 111 mammographic
images of masses. The methods and results presented in the book are
useful for computer-aided diagnosis of breast cancer. Table of
Contents: Computer-Aided Diagnosis of Breast Cancer / Detection and
Analysis of\newline Breast Masses / Datasets of Images of Breast
Masses / Methods for Fractal Analysis / Pattern Classification /
Results of Classification of Breast Masses / Concluding Remarks
Content-based image retrieval (CBIR) is the process of retrieval of
images from a database that are similar to a query image, using
measures derived from the images themselves, rather than relying on
accompanying text or annotation. To achieve CBIR, the contents of
the images need to be characterized by quantitative features; the
features of the query image are compared with the features of each
image in the database and images having high similarity with
respect to the query image are retrieved and displayed. CBIR of
medical images is a useful tool and could provide radiologists with
assistance in the form of a display of relevant past cases. One of
the challenging aspects of CBIR is to extract features from the
images to represent their visual, diagnostic, or
application-specific information content. In this book, methods are
presented for preprocessing, segmentation, landmarking, feature
extraction, and indexing of mammograms for CBIR. The preprocessing
steps include anisotropic diffusion and the Wiener filter to remove
noise and perform image enhancement. Techniques are described for
segmentation of the breast and fibroglandular disk, including
maximum entropy, a moment-preserving method, and Otsu's method.
Image processing techniques are described for automatic detection
of the nipple and the edge of the pectoral muscle via analysis in
the Radon domain. By using the nipple and the pectoral muscle as
landmarks, mammograms are divided into their internal, external,
upper, and lower parts for further analysis. Methods are presented
for feature extraction using texture analysis, shape analysis,
granulometric analysis, moments, and statistical measures. The CBIR
system presented provides options for retrieval using the Kohonen
self-organizing map and the k-nearest-neighbor method. Methods are
described for inclusion of expert knowledge to reduce the semantic
gap in CBIR, including the query point movement method for
relevance feedback (RFb). Analysis of performance is described in
terms of precision, recall, and relevance-weighted precision of
retrieval. Results of application to a clinical database of
mammograms are presented, including the input of expert
radiologists into the CBIR and RFb processes. Models are presented
for integration of CBIR and computer-aided diagnosis (CAD) with a
picture archival and communication system (PACS) for efficient
workflow in a hospital. Table of Contents: Introduction to
Content-based Image Retrieval / Mammography and CAD of Breast
Cancer / Segmentation and Landmarking of Mammograms / Feature
Extraction and Indexing of Mammograms / Content-based Retrieval of
Mammograms / Integration of CBIR and CAD into Radiological Workflow
Fundus images of the retina are color images of the eye taken by
specially designed digital cameras. Ophthalmologists rely on fundus
images to diagnose various diseases that affect the eye, such as
diabetic retinopathy and retinopathy of prematurity. A crucial
preliminary step in the analysis of retinal images is the
identification and localization of important anatomical structures,
such as the optic nerve head (ONH), the macula, and the major
vascular arcades. Identification of the ONH is an important initial
step in the detection and analysis of the anatomical structures and
pathological features in the retina. Different types of retinal
pathology may be detected and analyzed via the application of
appropriately designed techniques of digital image processing and
pattern recognition. Computer-aided analysis of retinal images has
the potential to facilitate quantitative and objective analysis of
retinal lesions and abnormalities. Accurate identification and
localization of retinal features and lesions could contribute to
improved diagnosis, treatment, and management of retinopathy. This
book presents an introduction to diagnostic imaging of the retina
and an overview of image processing techniques for ophthalmology.
In particular, digital image processing algorithms and pattern
analysis techniques for the detection of the ONH are described. In
fundus images, the ONH usually appears as a bright region, white or
yellow in color, and is indicated as the convergent area of the
network of blood vessels. Use of the geometrical and intensity
characteristics of the ONH, as well as the property that the ONH
represents the location of entrance of the blood vessels and the
optic nerve into the retina, is demonstrated in developing the
methods. The image processing techniques described in the book
include morphological filters for preprocessing fundus images,
filters for edge detection, the Hough transform for the detection
of lines and circles, Gabor filters to detect the blood vessels,
and phase portrait analysis for the detection of convergent or
node-like patterns. Illustrations of application of the methods to
fundus images from two publicly available databases are presented,
in terms of locating the center and the boundary of the ONH.
Methods for quantitative evaluation of the results of detection of
the ONH using measures of overlap and free-response receiver
operating characteristics are also described. Table of Contents:
Introduction / Computer-aided Analysis of Images of the Retina /
Detection of Geometrical Patterns / Datasets and Experimental Setup
/ Detection of the\\Optic Nerve Head\\Using the Hough Transform /
Detection of the\\Optic Nerve Head\\Using Phase Portraits /
Concluding Remarks
Segmentation and landmarking of computed tomographic (CT) images of
pediatric patients are important and useful in computer-aided
diagnosis (CAD), treatment planning, and objective analysis of
normal as well as pathological regions. Identification and
segmentation of organs and tissues in the presence of tumors are
difficult. Automatic segmentation of the primary tumor mass in
neuroblastoma could facilitate reproducible and objective analysis
of the tumor's tissue composition, shape, and size. However, due to
the heterogeneous tissue composition of the neuroblastic tumor,
ranging from low-attenuation necrosis to high-attenuation
calcification, segmentation of the tumor mass is a challenging
problem. In this context, methods are described in this book for
identification and segmentation of several abdominal and thoracic
landmarks to assist in the segmentation of neuroblastic tumors in
pediatric CT images. Methods to identify and segment automatically
the peripheral artifacts and tissues, the rib structure, the
vertebral column, the spinal canal, the diaphragm, and the pelvic
surface are described. Techniques are also presented to evaluate
quantitatively the results of segmentation of the vertebral column,
the spinal canal, the diaphragm, and the pelvic girdle by comparing
with the results of independent manual segmentation performed by a
radiologist. The use of the landmarks and removal of several
tissues and organs are shown to assist in limiting the scope of the
tumor segmentation process to the abdomen, to lead to the reduction
of the false-positive error, and to improve the result of
segmentation of neuroblastic tumors. Table of Contents:
Introduction to Medical Image Analysis / Image Segmentation /
Experimental Design and Database / Ribs, Vertebral Column, and
Spinal Canal / Delineation of the Diaphragm / Delineation of the
Pelvic Girdle / Application of Landmarking / Concluding Remarks
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