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Research ArticleAdult Brain
Open Access

Hybrid 3D/2D Convolutional Neural Network for Hemorrhage Evaluation on Head CT

P.D. Chang, E. Kuoy, J. Grinband, B.D. Weinberg, M. Thompson, R. Homo, J. Chen, H. Abcede, M. Shafie, L. Sugrue, C.G. Filippi, M.-Y. Su, W. Yu, C. Hess and D. Chow
American Journal of Neuroradiology September 2018, 39 (9) 1609-1616; DOI: https://doi.org/10.3174/ajnr.A5742
P.D. Chang
aFrom the Departments of Radiology (P.D.C., E.K., M.T., R.H., M.-Y.S., D.C.)
dDepartments of Radiology (P.D.C., L.S., C.H.), University of California, San Francisco, California
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E. Kuoy
aFrom the Departments of Radiology (P.D.C., E.K., M.T., R.H., M.-Y.S., D.C.)
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J. Grinband
eDepartment of Radiology (J.G.), Columbia University, New York, New York
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B.D. Weinberg
fDepartment of Radiology (B.D.W.), Emory University School of Medicine, Atlanta, Georgia
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M. Thompson
aFrom the Departments of Radiology (P.D.C., E.K., M.T., R.H., M.-Y.S., D.C.)
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R. Homo
aFrom the Departments of Radiology (P.D.C., E.K., M.T., R.H., M.-Y.S., D.C.)
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J. Chen
bNeurosurgery (J.C.)
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H. Abcede
cNeurology (H.A., M.S., W.Y.), University of California Irvine
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M. Shafie
cNeurology (H.A., M.S., W.Y.), University of California Irvine
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L. Sugrue
dDepartments of Radiology (P.D.C., L.S., C.H.), University of California, San Francisco, California
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C.G. Filippi
gDepartment of Radiology (C.G.F.), North Shore University Hospital, Long Island, New York.
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M.-Y. Su
aFrom the Departments of Radiology (P.D.C., E.K., M.T., R.H., M.-Y.S., D.C.)
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W. Yu
cNeurology (H.A., M.S., W.Y.), University of California Irvine
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C. Hess
dDepartments of Radiology (P.D.C., L.S., C.H.), University of California, San Francisco, California
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D. Chow
aFrom the Departments of Radiology (P.D.C., E.K., M.T., R.H., M.-Y.S., D.C.)
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Abstract

BACKGROUND AND PURPOSE: Convolutional neural networks are a powerful technology for image recognition. This study evaluates a convolutional neural network optimized for the detection and quantification of intraparenchymal, epidural/subdural, and subarachnoid hemorrhages on noncontrast CT.

MATERIALS AND METHODS: This study was performed in 2 phases. First, a training cohort of all NCCTs acquired at a single institution between January 1, 2017, and July 31, 2017, was used to develop and cross-validate a custom hybrid 3D/2D mask ROI-based convolutional neural network architecture for hemorrhage evaluation. Second, the trained network was applied prospectively to all NCCTs ordered from the emergency department between February 1, 2018, and February 28, 2018, in an automated inference pipeline. Hemorrhage-detection accuracy, area under the curve, sensitivity, specificity, positive predictive value, and negative predictive value were assessed for full and balanced datasets and were further stratified by hemorrhage type and size. Quantification was assessed by the Dice score coefficient and the Pearson correlation.

RESULTS: A 10,159-examination training cohort (512,598 images; 901/8.1% hemorrhages) and an 862-examination test cohort (23,668 images; 82/12% hemorrhages) were used in this study. Accuracy, area under the curve, sensitivity, specificity, positive predictive value, and negative-predictive value for hemorrhage detection were 0.975, 0.983, 0.971, 0.975, 0.793, and 0.997 on training cohort cross-validation and 0.970, 0.981, 0.951, 0.973, 0.829, and 0.993 for the prospective test set. Dice scores for intraparenchymal hemorrhage, epidural/subdural hemorrhage, and SAH were 0.931, 0.863, and 0.772, respectively.

CONCLUSIONS: A customized deep learning tool is accurate in the detection and quantification of hemorrhage on NCCT. Demonstrated high performance on prospective NCCTs ordered from the emergency department suggests the clinical viability of the proposed deep learning tool.

ABBREVIATIONS:

CNN
convolutional neural networks
EDH/SDH
epidural/subdural hemorrhage
GPU
graphics processing unit
ICH
intracranial hemorrhage
IPH
intraparenchymal hemorrhage
mask R-CNN
mask ROI-based CNN
  • © 2018 by American Journal of Neuroradiology

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American Journal of Neuroradiology: 39 (9)
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Cite this article
P.D. Chang, E. Kuoy, J. Grinband, B.D. Weinberg, M. Thompson, R. Homo, J. Chen, H. Abcede, M. Shafie, L. Sugrue, C.G. Filippi, M.-Y. Su, W. Yu, C. Hess, D. Chow
Hybrid 3D/2D Convolutional Neural Network for Hemorrhage Evaluation on Head CT
American Journal of Neuroradiology Sep 2018, 39 (9) 1609-1616; DOI: 10.3174/ajnr.A5742

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Hybrid 3D/2D Convolutional Neural Network for Hemorrhage Evaluation on Head CT
P.D. Chang, E. Kuoy, J. Grinband, B.D. Weinberg, M. Thompson, R. Homo, J. Chen, H. Abcede, M. Shafie, L. Sugrue, C.G. Filippi, M.-Y. Su, W. Yu, C. Hess, D. Chow
American Journal of Neuroradiology Sep 2018, 39 (9) 1609-1616; DOI: 10.3174/ajnr.A5742
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