Literature DB >> 31735138

Fully Automated Segmentation Algorithm for Hematoma Volumetric Analysis in Spontaneous Intracerebral Hemorrhage.

Natasha Ironside1, Ching-Jen Chen1, Simukayi Mutasa2, Justin L Sim3, Saurabh Marfatia2, David Roh4, Dale Ding5, Stephan A Mayer6, Angela Lignelli2, Edward Sander Connolly3.   

Abstract

Background and Purpose- Hematoma volume measurements influence prognosis and treatment decisions in patients with spontaneous intracerebral hemorrhage (ICH). The aims of this study are to derive and validate a fully automated segmentation algorithm for ICH volumetric analysis using deep learning methods. Methods- In-patient computed tomography scans of 300 consecutive adults (age ≥18 years) with spontaneous, supratentorial ICH who were enrolled in the ICHOP (Intracerebral Hemorrhage Outcomes Project; 2009-2018) were separated into training (n=260) and test (n=40) datasets. A fully automated segmentation algorithm was derived using convolutional neural networks, and it was trained on manual segmentations from the training dataset. The algorithm's performance was assessed against manual and semiautomated segmentation methods in the test dataset. Results- The mean volumetric Dice similarity coefficients for the fully automated segmentation algorithm when tested against manual and semiautomated segmentation methods were 0.894±0.264 and 0.905±0.254, respectively. ICH volumes derived from fully automated versus manual (R2=0.981; P<0.0001), fully automated versus semiautomated (R2=0.978; P<0.0001), and semiautomated versus manual (R2=0.990; P<0001) segmentation methods had strong between-group correlations. The fully automated segmentation algorithm (mean 12.0±2.7 s/scan) was significantly faster than both of the manual (mean 201.5±92.2 s/scan; P<0.001) and semiautomated (mean 288.58±160.3 s/scan; P<0.001) segmentation methods. Conclusions- The fully automated segmentation algorithm quantified hematoma volumes from computed tomography scans of supratentorial ICH patients with similar accuracy and substantially greater efficiency compared with manual and semiautomated segmentation methods. External validation of the fully automated segmentation algorithm is warranted.

Entities:  

Keywords:  algorithm; cerebral hemorrhage; deep learning; hematoma; tomography

Mesh:

Year:  2019        PMID: 31735138     DOI: 10.1161/STROKEAHA.119.026561

Source DB:  PubMed          Journal:  Stroke        ISSN: 0039-2499            Impact factor:   7.914


  9 in total

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Journal:  Radiol Artif Intell       Date:  2022-02-02

2.  Bayesian deep learning outperforms clinical trial estimators of intracerebral and intraventricular hemorrhage volume.

Authors:  Matthew F Sharrock; W Andrew Mould; Meghan Hildreth; E Paul Ryu; Nathan Walborn; Issam A Awad; Daniel F Hanley; John Muschelli
Journal:  J Neuroimaging       Date:  2022-04-17       Impact factor: 2.324

3.  Development and Validation of an Automatic System for Intracerebral Hemorrhage Medical Text Recognition and Treatment Plan Output.

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Journal:  Front Aging Neurosci       Date:  2022-04-08       Impact factor: 5.702

4.  A fast and fully-automated deep-learning approach for accurate hemorrhage segmentation and volume quantification in non-contrast whole-head CT.

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Journal:  Sci Rep       Date:  2020-11-09       Impact factor: 4.379

5.  A study on the association between the inferior nasal turbinate volume and the maxillary sinus mucosal lining using cone beam tomography.

Authors:  Shishir Ram Shetty; Saad Wahby Al-Bayatti; Sausan Al Kawas; Natheer Hashim Al-Rawi; Vinayak Kamath; Raghavendra Shetty; Sunaina Shetty; Vijay Desai; Leena David
Journal:  Heliyon       Date:  2022-03-26

6.  Segmentation of Spontaneous Intracerebral Hemorrhage on CT With a Region Growing Method Based on Watershed Preprocessing.

Authors:  Zhengsong Zhou; Hongli Wan; Haoyu Zhang; Xumiao Chen; Xiaoyu Wang; Shiluo Lili; Tao Zhang
Journal:  Front Neurol       Date:  2022-03-29       Impact factor: 4.003

7.  3D Deep Neural Network Segmentation of Intracerebral Hemorrhage: Development and Validation for Clinical Trials.

Authors:  Matthew F Sharrock; W Andrew Mould; Hasan Ali; Meghan Hildreth; Issam A Awad; Daniel F Hanley; John Muschelli
Journal:  Neuroinformatics       Date:  2020-09-27

8.  Efficiency of a deep learning-based artificial intelligence diagnostic system in spontaneous intracerebral hemorrhage volume measurement.

Authors:  Tao Wang; Na Song; Lingling Liu; Zichao Zhu; Bing Chen; Wenjun Yang; Zhiqiang Chen
Journal:  BMC Med Imaging       Date:  2021-08-13       Impact factor: 1.930

9.  Imaging-Based Outcome Prediction of Acute Intracerebral Hemorrhage.

Authors:  Jawed Nawabi; Helge Kniep; Sarah Elsayed; Constanze Friedrich; Peter Sporns; Thilo Rusche; Maik Böhmer; Andrea Morotti; Frieder Schlunk; Lasse Dührsen; Gabriel Broocks; Gerhard Schön; Fanny Quandt; Götz Thomalla; Jens Fiehler; Uta Hanning
Journal:  Transl Stroke Res       Date:  2021-02-06       Impact factor: 6.829

  9 in total

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