Literature DB >> 32980970

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

Matthew F Sharrock1, W Andrew Mould2, Hasan Ali2, Meghan Hildreth2, Issam A Awad3, Daniel F Hanley2, John Muschelli4.   

Abstract

Intracranial hemorrhage (ICH) occurs when a blood vessel ruptures in the brain. This leads to significant morbidity and mortality, the likelihood of which is predicated on the size of the bleeding event. X-ray computed tomography (CT) scans allow clinicians and researchers to qualitatively and quantitatively diagnose hemorrhagic stroke, guide interventions and determine inclusion criteria of patients in clinical trials. There is no currently available open source, validated tool to quickly segment hemorrhage. Using an automated pipeline and 2D and 3D deep neural networks, we show that we can quickly and accurately estimate ICH volume with high agreement with time-consuming manual segmentation. The training and validation datasets include significant heterogeneity in terms of pathology, such as the presence of intraventricular (IVH) or subdural hemorrhages (SDH) as well as variable image acquisition parameters. We show that deep neural networks trained with an appropriate anatomic context in the network receptive field, can effectively perform ICH segmentation, but those without enough context will overestimate hemorrhage along the skull and around calcifications in the ventricular system. We trained with all data from a multi-center phase II study (n = 112) achieving a best mean and median Dice coefficient of 0.914 and 0.919, a volume correlation of 0.979 and an average volume difference of 1.7 ml and root mean squared error of 4.7 ml in 500 out-of-sample scans from the corresponding multi-center phase III study. 3D networks with appropriate anatomic context outperformed both 2D and random forest models. Our results suggest that deep neural network models, when carefully developed can be incorporated into the workflow of an ICH clinical trial series to quickly and accurately segment ICH, estimate total hemorrhage volume and minimize segmentation failures. The model, weights and scripts for deployment are located at https://github.com/msharrock/deepbleed . This is the first publicly available neural network model for segmentation of ICH, the only model evaluated with the presence of both IVH and SDH and the only model validated in the workflow of a series of clinical trials.

Entities:  

Keywords:  Clinical trials; Deep neural networks; Intracerebral hemorrhage

Mesh:

Year:  2020        PMID: 32980970      PMCID: PMC7997814          DOI: 10.1007/s12021-020-09493-5

Source DB:  PubMed          Journal:  Neuroinformatics        ISSN: 1539-2791


  35 in total

Review 1.  Deep learning.

Authors:  Yann LeCun; Yoshua Bengio; Geoffrey Hinton
Journal:  Nature       Date:  2015-05-28       Impact factor: 49.962

2.  Segmentation and quantification of intra-ventricular/cerebral hemorrhage in CT scans by modified distance regularized level set evolution technique.

Authors:  K N Bhanu Prakash; Shi Zhou; Tim C Morgan; Daniel F Hanley; Wieslaw L Nowinski
Journal:  Int J Comput Assist Radiol Surg       Date:  2012-09       Impact factor: 2.924

3.  Volume of ventricular blood is an important determinant of outcome in supratentorial intracerebral hemorrhage.

Authors:  S Tuhrim; D R Horowitz; M Sacher; J H Godbold
Journal:  Crit Care Med       Date:  1999-03       Impact factor: 7.598

4.  A reproducible evaluation of ANTs similarity metric performance in brain image registration.

Authors:  Brian B Avants; Nicholas J Tustison; Gang Song; Philip A Cook; Arno Klein; James C Gee
Journal:  Neuroimage       Date:  2010-09-17       Impact factor: 6.556

5.  Volume of intracerebral hemorrhage. A powerful and easy-to-use predictor of 30-day mortality.

Authors:  J P Broderick; T G Brott; J E Duldner; T Tomsick; G Huster
Journal:  Stroke       Date:  1993-07       Impact factor: 7.914

6.  Quantitative Intracerebral Hemorrhage Localization.

Authors:  John Muschelli; Natalie L Ullman; Elizabeth M Sweeney; Ani Eloyan; Neil Martin; Paul Vespa; Daniel F Hanley; Ciprian M Crainiceanu
Journal:  Stroke       Date:  2015-10-08       Impact factor: 7.914

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

Authors:  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
Journal:  AJNR Am J Neuroradiol       Date:  2018-07-26       Impact factor: 3.825

Review 8.  Intraventricular hemorrhage: severity factor and treatment target in spontaneous intracerebral hemorrhage.

Authors:  Daniel F Hanley
Journal:  Stroke       Date:  2009-02-26       Impact factor: 7.914

9.  Intensive blood pressure reduction in acute cerebral haemorrhage trial (INTERACT): a randomised pilot trial.

Authors:  Craig S Anderson; Yining Huang; Ji Guang Wang; Hisatomi Arima; Bruce Neal; Bin Peng; Emma Heeley; Christian Skulina; Mark W Parsons; Jong Sung Kim; Qing Ling Tao; Yue Chun Li; Jian Dong Jiang; Li Wen Tai; Jin Li Zhang; En Xu; Yan Cheng; Stephane Heritier; Lewis B Morgenstern; John Chalmers
Journal:  Lancet Neurol       Date:  2008-04-07       Impact factor: 44.182

10.  PItcHPERFeCT: Primary Intracranial Hemorrhage Probability Estimation using Random Forests on CT.

Authors:  John Muschelli; Elizabeth M Sweeney; Natalie L Ullman; Paul Vespa; Daniel F Hanley; Ciprian M Crainiceanu
Journal:  Neuroimage Clin       Date:  2017-02-15       Impact factor: 4.881

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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

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4.  An optimal deep learning framework for multi-type hemorrhagic lesions detection and quantification in head CT images for traumatic brain injury.

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Review 5.  Computational Approaches for Acute Traumatic Brain Injury Image Recognition.

Authors:  Emily Lin; Esther L Yuh
Journal:  Front Neurol       Date:  2022-03-09       Impact factor: 4.003

Review 6.  Automated Detection and Screening of Traumatic Brain Injury (TBI) Using Computed Tomography Images: A Comprehensive Review and Future Perspectives.

Authors:  Vidhya V; Anjan Gudigar; U Raghavendra; Ajay Hegde; Girish R Menon; Filippo Molinari; Edward J Ciaccio; U Rajendra Acharya
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7.  Post-Trial Enhanced Deployment and Technical Performance with the MISTIE Procedure per Lessons Learned.

Authors:  Ali Mansour; Andrea Loggini; Faten El Ammar; Ronald Alvarado-Dyer; Sean Polster; Agnieszka Stadnik; Paramita Das; Peter C Warnke; Bakhtiar Yamini; Christos Lazaridis; Christopher Kramer; W Andrew Mould; Meghan Hildreth; Matthew Sharrock; Daniel F Hanley; Fernando D Goldenberg; Issam A Awad
Journal:  J Stroke Cerebrovasc Dis       Date:  2021-07-22       Impact factor: 2.677

  7 in total

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