We report the results of a comparative study of Fourier domain analysis (FDA) and texture analysis (TA) of optical coherence tomography (OCT) images of resected human breast tissues for binary classification between normal-abnormal classes and benign-malignant classes. With the incorporation of Fisher linear discriminant analysis (FLDA) in TA for feature extraction, the TA-based algorithm provided improved diagnostic performance as compared to the FDA-based algorithm in discriminating OCT images corresponding to breast tissues with three different pathologies. The specificity and sensitivity values obtained for normal-abnormal classification were both 100%, whereas they were 90% and 85%, respectively for benign-malignant classification
ABSTRACT: The identification of normal breast tissues in mammograms is an important step in identify...
Three-dimensional (3D) tissue imaging methods are expected to improve surgical management of cancer....
It has been shown that the accuracy of mammographic abnormality detection methods is strongly depend...
We report the results of a comparative study of Fourier domain analysis (FDA) and texture analysis (...
Computer-aided diagnosis of ophthalmic diseases using optical coherence tomography (OCT) relies on t...
Abstract— Breast cancer is a major public health problem in women from developed and developing coun...
Texture analysis of light scattering in tissue is proposed to obtain diagnostic information from bre...
We demonstrate a method for differentiating tissue disease states using the intrinsic texture proper...
Ultrasonic pulse-echo rf waveform analysis and selected pattern rec-ognition methods were applied to...
Ovarian cancer has the lowest survival rate among all gynecologic cancers due to predominantly late ...
The identification of glandular tissue in breast X-rays (mammograms) is import-ant both in assessing...
Textural analysis of tissue scattering images is proposed for healthy versus tumor discrimination. S...
Optical Coherence Tomography (OCT) offers real-time high-resolution three-dimensional images of tiss...
Breast tissue classification can provide quantitative measurements of breast composition, density an...
<div><p>Breast cancer diagnosis is still done by observation of biopsies under the microscope. The d...
ABSTRACT: The identification of normal breast tissues in mammograms is an important step in identify...
Three-dimensional (3D) tissue imaging methods are expected to improve surgical management of cancer....
It has been shown that the accuracy of mammographic abnormality detection methods is strongly depend...
We report the results of a comparative study of Fourier domain analysis (FDA) and texture analysis (...
Computer-aided diagnosis of ophthalmic diseases using optical coherence tomography (OCT) relies on t...
Abstract— Breast cancer is a major public health problem in women from developed and developing coun...
Texture analysis of light scattering in tissue is proposed to obtain diagnostic information from bre...
We demonstrate a method for differentiating tissue disease states using the intrinsic texture proper...
Ultrasonic pulse-echo rf waveform analysis and selected pattern rec-ognition methods were applied to...
Ovarian cancer has the lowest survival rate among all gynecologic cancers due to predominantly late ...
The identification of glandular tissue in breast X-rays (mammograms) is import-ant both in assessing...
Textural analysis of tissue scattering images is proposed for healthy versus tumor discrimination. S...
Optical Coherence Tomography (OCT) offers real-time high-resolution three-dimensional images of tiss...
Breast tissue classification can provide quantitative measurements of breast composition, density an...
<div><p>Breast cancer diagnosis is still done by observation of biopsies under the microscope. The d...
ABSTRACT: The identification of normal breast tissues in mammograms is an important step in identify...
Three-dimensional (3D) tissue imaging methods are expected to improve surgical management of cancer....
It has been shown that the accuracy of mammographic abnormality detection methods is strongly depend...