4.7 Article

White matter hyperintensities segmentation using an ensemble of neural networks

期刊

HUMAN BRAIN MAPPING
卷 43, 期 3, 页码 929-939

出版社

WILEY
DOI: 10.1002/hbm.25695

关键词

CNN; ensemble models; segmentation; white matter hyperintensities

资金

  1. Natural Science Foundation of China [81871434, 61971017, 92046016]
  2. CAMS Innovation Fund for Medical Sciences [2019-I2M5-029]
  3. Beijing Municipal Committee of Science and Technology [Z201100005620010]
  4. Beijing Talents Project [2018000021223ZK03]
  5. National Key R&D Programme of China [2019YFC0118602, 2017YFC1310901]
  6. Beijing Natural Science Foundation [Z200016]

向作者/读者索取更多资源

The study introduced a pipeline using deep fully convolutional network and ensemble models to automatically segment WMHs and estimate their volumes and locations, achieving the best performance among different methods in both research and clinical datasets. The model showed superior generalization ability when trained on the research dataset compared to the clinical dataset, highlighting its effectiveness in WMHs segmentation tasks.
White matter hyperintensities (WMHs) represent the most common neuroimaging marker of cerebral small vessel disease (CSVD). The volume and location of WMHs are important clinical measures. We present a pipeline using deep fully convolutional network and ensemble models, combining U-Net, SE-Net, and multi-scale features, to automatically segment WMHs and estimate their volumes and locations. We evaluated our method in two datasets: a clinical routine dataset comprising 60 patients (selected from Chinese National Stroke Registry, CNSR) and a research dataset composed of 60 patients (selected from MICCAI WMH Challenge, MWC). The performance of our pipeline was compared with four freely available methods: LGA, LPA, UBO detector, and U-Net, in terms of a variety of metrics. Additionally, to access the model generalization ability, another research dataset comprising 40 patients (from Older Australian Twins Study and Sydney Memory and Aging Study, OSM), was selected and tested. The pipeline achieved the best performance in both research dataset and the clinical routine dataset with DSC being significantly higher than other methods (p < .001), reaching .833 and .783, respectively. The results of model generalization ability showed that the model trained on the research dataset (DSC = 0.736) performed higher than that trained on the clinical dataset (DSC = 0.622). Our method outperformed widely used pipelines in WMHs segmentation. This system could generate both image and text outputs for whole brain, lobar and anatomical automatic labeling WMHs. Additionally, software and models of our method are made publicly available at .

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