Literature DB >> 29793060

A computational framework for the detection of subcortical brain dysmaturation in neonatal MRI using 3D Convolutional Neural Networks.

Rafael Ceschin1, Alexandria Zahner2, William Reynolds2, Jenna Gaesser3, Giulio Zuccoli2, Cecilia W Lo4, Vanathi Gopalakrishnan5, Ashok Panigrahy6.   

Abstract

Deep neural networks are increasingly being used in both supervised learning for classification tasks and unsupervised learning to derive complex patterns from the input data. However, the successful implementation of deep neural networks using neuroimaging datasets requires adequate sample size for training and well-defined signal intensity based structural differentiation. There is a lack of effective automated diagnostic tools for the reliable detection of brain dysmaturation in the neonatal period, related to small sample size and complex undifferentiated brain structures, despite both translational research and clinical importance. Volumetric information alone is insufficient for diagnosis. In this study, we developed a computational framework for the automated classification of brain dysmaturation from neonatal MRI, by combining a specific deep neural network implementation with neonatal structural brain segmentation as a method for both clinical pattern recognition and data-driven inference into the underlying structural morphology. We implemented three-dimensional convolution neural networks (3D-CNNs) to specifically classify dysplastic cerebelli, a subset of surface-based subcortical brain dysmaturation, in term infants born with congenital heart disease. We obtained a 0.985 ± 0. 0241-classification accuracy of subtle cerebellar dysplasia in CHD using 10-fold cross-validation. Furthermore, the hidden layer activations and class activation maps depicted regional vulnerability of the superior surface of the cerebellum, (composed of mostly the posterior lobe and the midline vermis), in regards to differentiating the dysplastic process from normal tissue. The posterior lobe and the midline vermis provide regional differentiation that is relevant to not only to the clinical diagnosis of cerebellar dysplasia, but also genetic mechanisms and neurodevelopmental outcome correlates. These findings not only contribute to the detection and classification of a subset of neonatal brain dysmaturation, but also provide insight to the pathogenesis of cerebellar dysplasia in CHD. In addition, this is one of the first examples of the application of deep learning to a neuroimaging dataset, in which the hidden layer activation revealed diagnostically and biologically relevant features about the clinical pathogenesis. The code developed for this project is open source, published under the BSD License, and designed to be generalizable to applications both within and beyond neonatal brain imaging.
Copyright © 2018 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Congenital heart disease; Deep learning; Neonatal imaging; Structural MR

Mesh:

Year:  2018        PMID: 29793060      PMCID: PMC6503677          DOI: 10.1016/j.neuroimage.2018.05.049

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  8 in total

Review 1.  Medical Image Analysis using Convolutional Neural Networks: A Review.

Authors:  Syed Muhammad Anwar; Muhammad Majid; Adnan Qayyum; Muhammad Awais; Majdi Alnowami; Muhammad Khurram Khan
Journal:  J Med Syst       Date:  2018-10-08       Impact factor: 4.460

2.  Association between Subcortical Morphology and Cerebral White Matter Energy Metabolism in Neonates with Congenital Heart Disease.

Authors:  Nina Gertsvolf; Jodie K Votava-Smith; Rafael Ceschin; Sylvia Del Castillo; Vince Lee; Hollie A Lai; Stefan Bluml; Lisa Paquette; Ashok Panigrahy
Journal:  Sci Rep       Date:  2018-09-19       Impact factor: 4.996

3.  Deep Learning Techniques for Automatic Detection of Embryonic Neurodevelopmental Disorders.

Authors:  Omneya Attallah; Maha A Sharkas; Heba Gadelkarim
Journal:  Diagnostics (Basel)       Date:  2020-01-07

4.  From a deep learning model back to the brain-Identifying regional predictors and their relation to aging.

Authors:  Gidon Levakov; Gideon Rosenthal; Ilan Shelef; Tammy Riklin Raviv; Galia Avidan
Journal:  Hum Brain Mapp       Date:  2020-04-22       Impact factor: 5.038

5.  Histo-CADx: duo cascaded fusion stages for breast cancer diagnosis from histopathological images.

Authors:  Omneya Attallah; Fatma Anwar; Nagia M Ghanem; Mohamed A Ismail
Journal:  PeerJ Comput Sci       Date:  2021-04-27

6.  Reduced Cerebellar Volume in Term Infants with Complex Congenital Heart Disease: Correlation with Postnatal Growth Measurements.

Authors:  Rafael Ceschin; Alexandria Zahner; William Reynolds; Nancy Beluk; Ashok Panigrahy
Journal:  Diagnostics (Basel)       Date:  2022-07-06

Review 7.  Precision Medicine in Neonates: A Tailored Approach to Neonatal Brain Injury.

Authors:  Maria Luisa Tataranno; Daniel C Vijlbrief; Jeroen Dudink; Manon J N L Benders
Journal:  Front Pediatr       Date:  2021-05-19       Impact factor: 3.418

8.  Detecting neonatal acute bilirubin encephalopathy based on T1-weighted MRI images and learning-based approaches.

Authors:  Miao Wu; Xiaoxia Shen; Can Lai; Weihao Zheng; Yingqun Li; Zhongli Shangguan; Chuanbo Yan; Tingting Liu; Dan Wu
Journal:  BMC Med Imaging       Date:  2021-06-22       Impact factor: 1.930

  8 in total

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