A fully automatic white matter lesion segmentation method has been developed and evaluated. The method uses multispectral magnetic resonance imaging (MRI) data (T1,T2 and Proton Density). First fuzzy c means (FCM) was used to segment normal brain tissues (white matter,grey matter, and cerebrospinal fluid). The holes in normal white matter were used to sample the WML intensities in the different images. The segmentation of WML was optimized by a graph cut approach. The method was trained by using 9 manually segmented datasets and evaluated by comparison to 11 other manually segmented, and visually evaluated, datasets. The graph cut part of the automatic segmentation requires, on average, 30 seconds per dataset. The results correlated well (r...
Abstract. White matter lesions are common pathological findings in MR tomograms of elderly subjects....
Abstract. White matter lesions are common pathological findings in MR tomograms of elderly subjects....
Purpose: Automatic brain-lesion segmentation has the potential to greatly expand the analysis of the...
A fully automatic white matter lesion segmentation method has been developed and evaluated. The meth...
A fully automated brain tissue segmentation method is optimized and extended with white matter lesio...
A method to automatically segment cerebrospinal fluid, gray matter, white matter and white matter le...
A method to automatically segment cerebrospinal fluid, gray matter, white matter and white matter le...
Recent studies show that, cerebral White Matter Lesion (WML) is related to cerebrovascular diseases,...
Our purpose in this study was to develop an automated method for segmentation of white matter (WM) a...
A fully automated magnetic resonance (MR) segmentation method for identification and volume measurem...
The segmentation of MRI scans of patients with white matter lesions (WML) is difficult because the M...
White matter lesion (WML) is an abnormal tissue occurring in white matter. It indicated the damage o...
This research presents an independent standalone graphical computational tool which functions as a n...
Conventional magnetic resonance imaging (MRI) techniques are highly sensitive to detect multiple scl...
This paper presents a fully automatic white matter lesion (WML) segmentation method, based on local ...
Abstract. White matter lesions are common pathological findings in MR tomograms of elderly subjects....
Abstract. White matter lesions are common pathological findings in MR tomograms of elderly subjects....
Purpose: Automatic brain-lesion segmentation has the potential to greatly expand the analysis of the...
A fully automatic white matter lesion segmentation method has been developed and evaluated. The meth...
A fully automated brain tissue segmentation method is optimized and extended with white matter lesio...
A method to automatically segment cerebrospinal fluid, gray matter, white matter and white matter le...
A method to automatically segment cerebrospinal fluid, gray matter, white matter and white matter le...
Recent studies show that, cerebral White Matter Lesion (WML) is related to cerebrovascular diseases,...
Our purpose in this study was to develop an automated method for segmentation of white matter (WM) a...
A fully automated magnetic resonance (MR) segmentation method for identification and volume measurem...
The segmentation of MRI scans of patients with white matter lesions (WML) is difficult because the M...
White matter lesion (WML) is an abnormal tissue occurring in white matter. It indicated the damage o...
This research presents an independent standalone graphical computational tool which functions as a n...
Conventional magnetic resonance imaging (MRI) techniques are highly sensitive to detect multiple scl...
This paper presents a fully automatic white matter lesion (WML) segmentation method, based on local ...
Abstract. White matter lesions are common pathological findings in MR tomograms of elderly subjects....
Abstract. White matter lesions are common pathological findings in MR tomograms of elderly subjects....
Purpose: Automatic brain-lesion segmentation has the potential to greatly expand the analysis of the...