Abstract
Background: White matter lesions (WML) have been proved to be significantly associated with many brain diseases. Precise evaluation of burden of WML at early stage could provide insights in the prognosis and assist in intervention. However, acute ischemic lesions (AIL) exhibit hyperintensities on FLAIR images either, and are detected by diffusion weighted imaging (DWI). It is challenging to identify and segment WML in the patients with WML and AIL. Convolutional neural network (CNN) based architecture has been validated as an efficient tool for automatic segmentation. This study aimed to evaluate the performance of U-net in evaluation of WML in the patients with WML and AIL.Methods: A total of 208 cases from Chinese Atherosclerosis Risk Evaluation (CARE II) study were recruited in the present study. All subjects underwent imaging of FLAIR and DWI on 3.0 Tesla scanners. The contours of WML delineated by the observer and its scores rated by the observer were considered as gold standard. Among all 208 cases, 108 were randomly selected as train set, and the remaining 100 cases were used as test set. The performance of lesion segmentation toolbox (LST) and three U-net models were evaluated on three levels: pixel, lesion, and subject levels. The performance of all methods in WML identification and segmentation was also evaluated among the cases with different lesion volumes and between the cases with and without AIL.Results: All U-net models outperformed LST on pixel, lesion, and subject levels, while no differences were found among three U-net models. All segmentation methods performed best in the cases with WML volume (WMLV) > 20 ml but worst in those with WMLV < 5 ml. In addition, all methods showed similar performance between the cases with and without AIL. The scores determined by U-net exhibited a strong correlation with the gold standard (all Spearman correlation coefficients >0.89, ICCs >0.88, p-values <0.001).Conclusion: U-net performs well on identification and segmentation of WML in the patients with WML and AIL. The performance of U-net is validated by a dataset of multicenter study. Our results indicate that U-net has an advantage in assessing the burden of WML in the patients suffered from both WML and AIL.
Highlights
White matter lesion (WML), known as white matter hyperintensities (WMH), is a type of cerebral small vessel disease which is highly prevalent in the elderly (>60 years old) [1, 2]
Some patients with WML always suffer from acute ischemic lesions (AIL) which is characterized by hyperintensity on FLAIR images as well
The combination of FLAIR and Diffusion weighted imaging (DWI) imaging modalities might be a potential for improving the precision of WML identification and segmentation in the patients with both WML and AIL
Summary
White matter lesion (WML), known as white matter hyperintensities (WMH), is a type of cerebral small vessel disease which is highly prevalent in the elderly (>60 years old) [1, 2]. Evaluation of WML at early stage can provide insights in the prognosis and assist in the intervention. Some patients with WML always suffer from acute ischemic lesions (AIL) which is characterized by hyperintensity on FLAIR images as well. Quantification of WML in the patients with WML and AIL relies on the precise identification and segmentation of AIL. Different from WML, AIL exhibits hyperintensity on DWI images. The combination of FLAIR and DWI imaging modalities might be a potential for improving the precision of WML identification and segmentation in the patients with both WML and AIL. Precise evaluation of burden of WML at early stage could provide insights in the prognosis and assist in intervention. Acute ischemic lesions (AIL) exhibit hyperintensities on FLAIR images either, and are detected by diffusion weighted imaging (DWI).
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.