Mammography is the most effective method for the early detection of breast diseases. However, the typical diagnostic signs such as microcalcifications and masses are difficult to detect because mammograms are low-contrast and noisy images. In this paper, a novel algorithm for image denoising and enhancement based on dyadic wavelet processing is proposed. The denoising phase is based on a local iterative noise variance estimation. Moreover, in the case of microcalcifications, we propose an adaptive tuning of enhancement degree at different wavelet scales, whereas in the case of mass detection, we developed a new segmentation method combining dyadic wavelet information with mathematical morphology. The innovative approach consists of using the same algorithmic core for processing images to detect both microcalcifications and masses. The proposed algorithm has been tested on a large number of clinical images, comparing the results with those obtained by several other algorithms proposed in the literature through both analytical indexes and the opinions of radiologists. Through preliminary tests, the method seems to meaningfully improve the diagnosis in the early breast cancer detection with respect to other approaches.

Mencattini, A., Salmeri, M., Lojacono, R., Frigerio, M., Caselli, F. (2008). Mammographic images enhancement and denoising for breast cancer detection using dyadic wavelet processing. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 57(7), 1422-1430 [10.1109/TIM.2007.915470].

Mammographic images enhancement and denoising for breast cancer detection using dyadic wavelet processing

MENCATTINI, ARIANNA;SALMERI, MARCELLO;LOJACONO, ROBERTO;Caselli, F.
2008-01-01

Abstract

Mammography is the most effective method for the early detection of breast diseases. However, the typical diagnostic signs such as microcalcifications and masses are difficult to detect because mammograms are low-contrast and noisy images. In this paper, a novel algorithm for image denoising and enhancement based on dyadic wavelet processing is proposed. The denoising phase is based on a local iterative noise variance estimation. Moreover, in the case of microcalcifications, we propose an adaptive tuning of enhancement degree at different wavelet scales, whereas in the case of mass detection, we developed a new segmentation method combining dyadic wavelet information with mathematical morphology. The innovative approach consists of using the same algorithmic core for processing images to detect both microcalcifications and masses. The proposed algorithm has been tested on a large number of clinical images, comparing the results with those obtained by several other algorithms proposed in the literature through both analytical indexes and the opinions of radiologists. Through preliminary tests, the method seems to meaningfully improve the diagnosis in the early breast cancer detection with respect to other approaches.
2008
Pubblicato
Rilevanza internazionale
Articolo
Sì, ma tipo non specificato
Settore ING-INF/07 - MISURE ELETTRICHE ED ELETTRONICHE
English
Con Impact Factor ISI
Dyadic wavelet transform; Image enhancement and denoising; Mass detection; Microcalcification detection
Mencattini, A., Salmeri, M., Lojacono, R., Frigerio, M., Caselli, F. (2008). Mammographic images enhancement and denoising for breast cancer detection using dyadic wavelet processing. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 57(7), 1422-1430 [10.1109/TIM.2007.915470].
Mencattini, A; Salmeri, M; Lojacono, R; Frigerio, M; Caselli, F
Articolo su rivista
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/36229
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