introducing kernel based morphology as an enhancement method for mass classification on mammography

نویسندگان

azardokht amirzadi

reza azmi

چکیده

since mammography images are in low-contrast, applying enhancement techniques as a pre-processing step are wisely recommended in classification of the abnormal lesions into benign or malignant. a new kind of structural enhancement is proposed by morphological operator which introduces an optimal gaussian kernel primitive, the kernel parameters are optimized the use of genetic algorithm­­. we also take the advantageous of optical density (od) images to promote the diagnosis rate. od images are free from scanner type, and their values are the degree of blackness presented at the given point on the film and distinguish small differences. when the proposed enhancement method is applied on both the gray level (gl) images and their od values respectively, morphological patterns get bolder on gray level images, therefore; local binary patterns (lbp) are extracted from this kind of images. applying the enhancement method on od images causes to remove some background pixels. those pixels that are more eligible to be mass are remained, and some statistical texture features are extracted. support vector machine is used for both approaches, and the final decision is made by combining these two classifiers. the classification performance rate is evaluated by a z , under the receiver operating characteristic (roc) curve. the designed method yields a ­­­z = 0.9231 which demonstrates good results.

Sign up for free to access the full text

اگر عضو سایت هستید لطفا وارد حساب کاربری خود شوید

منابع مشابه

Introducing Kernel Based Morphology as an Enhancement Method for Mass Classification on Mammography

Since mammography images are in low-contrast, applying enhancement techniques as a pre-processing step are wisely recommended in the classification of the abnormal lesions into benign or malignant. A new kind of structural enhancement is proposed by morphological operator, which introduces an optimal Gaussian Kernel primitive, the kernel parameters are optimized the use of Genetic Algorithm. We...

متن کامل

A Hybrid Method for Mammography Mass Detection Based on Wavelet Transform

Introduction:  Breast  cancer  is  a  leading  cause  of  death  among  females  throughout  the  world.  Currently,  radiologists are able to detect only 75% of breast cancer cases. Making use of computer-aided design (CAD)  can play an important role in helping radiologists perform more accurate diagnoses.   Material and Methods: Using our hybrid method, the background and the pectoral muscle...

متن کامل

a hybrid method for mammography mass detection based on wavelet transform

introduction:  breast  cancer  is  a  leading  cause  of  death  among  females  throughout  the  world.  currently,  radiologists are able to detect only 75% of breast cancer cases. making use of computer-aided design (cad)  can play an important role in helping radiologists perform more accurate diagnoses.   material and methods: using our hybrid method, the background and the pectoral muscle...

متن کامل

Mathematical Morphology Approach for Enhancement Digital Mammography Images

Mammography is a branch of radiology which could benefit greatly from the assimilation of digital imaging technologies. Computerized enhancement techniques could be used to ensure optimum presentation of all digital clinical images. In this research, two enhancement algorithms are proposed that are based on the mathematical morphology theory. The first proposed algorithm deals with the contrast...

متن کامل

Classification of mass and non-mass mammography based on Tsallis entropy

Breast cancer is a neoplasia that affects a high number of women in the world every year and it is the second on ranking of the diseases that more affects women. Mammography is the most important exam to aid in early detection and diagnosis of breast cancer. Computational methods have been developed to assist the radiologist in diagnosis and to improve the perception of the results. Feature ext...

متن کامل

Rough Morphology Hybrid Approach for Mammography Image Classification and Prediction

The objective of this research is to illustrate how rough sets can be successfully integrated with mathematical morphology and provide a more effective hybrid approach to resolve medical imaging problems. Hybridization of rough sets and mathematical morphology techniques has been applied to depict their ability to improve the classification of breast cancer images into two outcomes: malignant o...

متن کامل

منابع من

با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید


عنوان ژورنال:
journal of medical signals and sensors

جلد ۳، شماره ۲، صفحات ۰-۰

میزبانی شده توسط پلتفرم ابری doprax.com

copyright © 2015-2023