Fully Automated Segmentation Algorithm for Perihematomal Edema Volumetry After Spontaneous Intracerebral Hemorrhage

Author:

Ironside Natasha1,Chen Ching-Jen1,Mutasa Simukayi2,Sim Justin L.3,Ding Dale4,Marfatiah Saurabh2,Roh David5,Mukherjee Sugoto6,Johnston Karen C.7,Southerland Andrew M.7,Mayer Stephan A.8,Lignelli Angela2,Connolly Edward Sander3

Affiliation:

1. From the Department of Neurological Surgery (N.I., C.-J.C.), University of Virginia Health System, Charlottesville, VA

2. Department of Radiology (S. Mutasa, S. Marfatiah, A. Lignelli), Columbia University Irving Medical Center, New York

3. Department of Neurological Surgery (J.L.S., E.S.C.), Columbia University Irving Medical Center, New York

4. Department of Neurological Surgery, University of Louisville School of Medicine, KY (D.D.)

5. Department of Neurology (D.R.), Columbia University Irving Medical Center, New York

6. Department of Radiology (S. Mukherjee), University of Virginia Health System, Charlottesville, VA

7. Department of Neurology (K.C.J., A.M.S.), University of Virginia Health System, Charlottesville, VA

8. Department of Neurology, Henry Ford Health System, Detroit, MI (S.A.M.).

Abstract

Background and Purpose— Perihematomal edema (PHE) is a promising surrogate marker of secondary brain injury in patients with spontaneous intracerebral hemorrhage, but it can be challenging to accurately and rapidly quantify. The aims of this study are to derive and internally validate a fully automated segmentation algorithm for volumetric analysis of PHE. Methods— Inpatient computed tomography scans of 400 consecutive adults with spontaneous, supratentorial intracerebral hemorrhage enrolled in the Intracerebral Hemorrhage Outcomes Project (2009–2018) were separated into training (n=360) and test (n=40) datasets. A fully automated segmentation algorithm was derived from manual segmentations in the training dataset using convolutional neural networks, and its performance was compared with that of manual and semiautomated segmentation methods in the test dataset. Results— The mean volumetric dice similarity coefficients for the fully automated segmentation algorithm were 0.838±0.294 and 0.843±0.293 with manual and semiautomated segmentation methods as reference standards, respectively. PHE volumes derived from the fully automated versus manual (r=0.959; P <0.0001), fully automated versus semiautomated (r=0.960; P <0.0001), and semiautomated versus manual (r=0.961; P <0.0001) segmentation methods had strong between-group correlations. The fully automated segmentation algorithm (mean 18.0±1.8 seconds/scan) quantified PHE volumes at a significantly faster rate than both of the manual (mean 316.4±168.8 seconds/scan; P <0.0001) and semiautomated (mean 480.5±295.3 seconds/scan; P <0.0001) segmentation methods. Conclusions— The fully automated segmentation algorithm accurately quantified PHE volumes from computed tomography scans of supratentorial intracerebral hemorrhage patients with high fidelity and greater efficiency compared with manual and semiautomated segmentation methods. External validation of fully automated segmentation for assessment of PHE is warranted.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Advanced and Specialized Nursing,Cardiology and Cardiovascular Medicine,Neurology (clinical)

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