4.7 Article

eICAB: A novel deep learning pipeline for Circle of Willis multiclass segmentation and analysis

期刊

NEUROIMAGE
卷 260, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2022.119425

关键词

Magnetic Resonance Angiography; Circle of Willis; Semantic segmentation; Deep learning; Magnetic Resonance Angiography; Circle of Willis; Semantic segmentation; Deep learning; Magnetic Resonance Angiography; Circle of Willis; Semantic segmentation; Deep learning

资金

  1. Canada Research Chairs (CRC)
  2. Natural Sciences and Engineering Research Council of Canada (NSERC) Discovery
  3. Natural Sciences and Engineering Research Council of Canada (NSERC), Canada Graduate Scholarships - Master's program
  4. NIH
  5. National Institute of Biomedical Imaging and BioEngineering
  6. [PGSD3-475005-2015]
  7. [P50 AG00561]
  8. [P30 NS09857781]
  9. [P01 AG026276]
  10. [P01 AG003991]
  11. [R01 AG043434]
  12. [UL1 TR000448]
  13. [R01 EB009352.]

向作者/读者索取更多资源

A deep convolutional neural network method was developed to accurately segment and quantify Circle of Willis (CW) arteries on Magnetic Resonance Angiography images. This method showed reliable results in both qualitative and quantitative assessments, and demonstrated high reliability in test-retest analysis.
Background: The accurate segmentation, labeling and quantification of cerebral blood vessels on MR imaging is important for basic and clinical research, yet results are not generalizable, and often require user intervention. New methods are needed to automate this process.Purpose: To automatically segment, label and quantify Circle of Willis (CW) arteries on Magnetic Resonance Angiography images using deep convolutional neural networks.Materials and methods: MRA images were pooled from three public and private databases. A total of 116 subjects (mean age 56 years +/- 21 [standard deviation]; 72 women) were used to make up the training set (N = 101) and the testing set (N = 15). In each image, fourteen arterial segments making up or surrounding the CW were manually annotated and validated by a clinical expert. Convolutional neural network (CNN) models were trained on a training set to be finally combined in an ensemble to develop eICAB. Model performances were evaluated using (1) quantitative analysis (dice score on test set) and (2) qualitative analysis (external datasets, N = 121). The reliability was assessed using multiple MRAs of healthy participants (ICC of vessel diameters and volumes on test-retest).Results: Qualitative analysis showed that eICAB correctly predicted the large, medium and small arteries in 99 +/- 0.4%, 97 +/- 1% and 88 +/- 7% of all images, respectively. For quantitative assessment, the average dice score coefficients for the large (ICAs, BA), medium (ACAs, MCAs, PCAs-P2), and small (AComm, PComm, PCAs-P1) vessels were 0.76 +/- 0.07, 0.76 +/- 0.08 and 0.41 +/- 0.27, respectively. These results were similar and, in some cases, statistically better (p < 0.05) than inter-expert annotation variability and robust to image SNR. Finally, test-retest analysis showed that the model yielded high diameter and volume reliability (ICC = 0.99).Conclusion: We have developed a quick and reliable open-source CNN-based method capable of accurately seg-menting and labeling the CW in MRA images. This method is largely independent of image quality. In the future, we foresee this approach as a critical step towards fully automated analysis of MRA databases in basic and clinical research.

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