A Hybrid Method for Mammography Mass Detection Based on Wavelet Transform

Publish Year: 1387
نوع سند: مقاله ژورنالی
زبان: English
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شناسه ملی سند علمی:

JR_IJMP-5-2_005

تاریخ نمایه سازی: 5 شهریور 1402

Abstract:

Introduction:  Breast  cancer  is  a  leading  cause  of  death  among  females  throughout  the  world.  Currently,  radiologists are able to detect only ۷۵% 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 were removed  from mammography images and image contrast was enhanced using an adaptive density weighted method.  First,  suspected  regions  were  extracted  based  on  mathematical  morphology  and  adaptive  thresholding  approaches. Then, in order to reduce the false positives in the suspected regions obtained in the first stage, the  corresponding features were extracted using a wavelet transform, followed by the application of a support  vector machine to detect masses.   Results: A Mammographic Image Analysis Society (MIAS) database was used to evaluate the performance  of  the  algorithm.  The  sensitivity  of  ۸۱%  and  specificity  of  ۸۴%  were  achieved  in  detecting  masses.  Improvement  of  sensitivity  and  specificity  with  our  proposed  hybrid  algorithm  was  demonstrated  by  subjective  expert-based  and  objective  ROC-based  techniques  in  comparison  with  the  currently  acceptable  method by Masotti.  Disscusion and Conclusion: In this paper, a hybrid method of pixel-based and region-based mass detection  approaches is proposed to increase the specificity of the results. The accessory stage (using wavelet features)  increased the sensitivity by ۳۰%. It can be concluded that the proposed algorithm is an efficient and robust  method for different types of mass detection in low-quality mammography images.

Authors

Nima Sahba

Master of Science in Biomedical Engineering, Research Center for Science and Technology in Medicine, Islamic Azad University, Tehran, Iran

Alireza Ahmadian

Associate Professor in Biomedical Engineering and Physics, Research Center for Science and Technology in Medicine, Tehran University of Medical Sciences, Tehran, Iran

Nader Riahi Alam

Associate Professor in Biomedical Engineering and Physics, Research Center for Science and Technology in Medicine, Tehran University of Medical Sciences, Tehran, Iran

Masoumeh Giti

Radiologist, Imaging Center, Imam Khomeini Hospital, Tehran University of Medical Sciences, Tehran, Iran