A Deep Attentive Convolutional Neural Network for Automatic Cortical
Plate Segmentation in Fetal MRI
- URL: http://arxiv.org/abs/2004.12847v3
- Date: Fri, 2 Apr 2021 13:28:34 GMT
- Title: A Deep Attentive Convolutional Neural Network for Automatic Cortical
Plate Segmentation in Fetal MRI
- Authors: Haoran Dou, Davood Karimi, Caitlin K. Rollins, Cynthia M. Ortinau,
Lana Vasung, Clemente Velasco-Annis, Abdelhakim Ouaalam, Xin Yang, Dong Ni,
and Ali Gholipour
- Abstract summary: We develop a new and powerful deep learning segmentation method for fetal brain MRI scans.
Our method exploits new deep attentive modules with mixed kernel convolutions within a fully convolutional neural network architecture.
Our method can facilitate and accelerate large-scale studies on normal and altered fetal brain cortical maturation and folding.
- Score: 12.554154620492772
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fetal cortical plate segmentation is essential in quantitative analysis of
fetal brain maturation and cortical folding. Manual segmentation of the
cortical plate, or manual refinement of automatic segmentations is tedious and
time-consuming. Automatic segmentation of the cortical plate, on the other
hand, is challenged by the relatively low resolution of the reconstructed fetal
brain MRI scans compared to the thin structure of the cortical plate, partial
voluming, and the wide range of variations in the morphology of the cortical
plate as the brain matures during gestation. To reduce the burden of manual
refinement of segmentations, we have developed a new and powerful deep learning
segmentation method. Our method exploits new deep attentive modules with mixed
kernel convolutions within a fully convolutional neural network architecture
that utilizes deep supervision and residual connections. We evaluated our
method quantitatively based on several performance measures and expert
evaluations. Results show that our method outperforms several state-of-the-art
deep models for segmentation, as well as a state-of-the-art multi-atlas
segmentation technique. We achieved average Dice similarity coefficient of
0.87, average Hausdorff distance of 0.96 mm, and average symmetric surface
difference of 0.28 mm on reconstructed fetal brain MRI scans of fetuses scanned
in the gestational age range of 16 to 39 weeks. With a computation time of less
than 1 minute per fetal brain, our method can facilitate and accelerate
large-scale studies on normal and altered fetal brain cortical maturation and
folding.
Related papers
- Meta-Analysis of Transfer Learning for Segmentation of Brain Lesions [0.0]
Manual segmentation of stroke lesions from 3D magnetic resonance (MR) imaging volumes, the current gold standard, is not only very time-consuming, but its accuracy highly depends on the operator's experience.
We have implemented and tested a fully automatic method for stroke lesion segmentation using eight different 2D-model architectures trained via transfer learning (TL) and mixed data approaches.
Cross-validation results indicate that our new method can efficiently and automatically segment lesions fast and with high accuracy compared to ground truth.
arXiv Detail & Related papers (2023-06-20T17:42:30Z) - Deep Learning Framework for Real-time Fetal Brain Segmentation in MRI [15.530500862944818]
We analyze the speed-accuracy performance of a variety of deep neural network models.
We devised a symbolically small convolutional neural network that combines spatial details at high resolution with context features extracted at lower resolutions.
We trained our model as well as eight alternative, state-of-the-art networks with manually-labeled fetal brain MRI slices.
arXiv Detail & Related papers (2022-05-02T20:43:14Z) - Learning to segment fetal brain tissue from noisy annotations [6.456673654519456]
Automatic fetal brain tissue segmentation can enhance the quantitative assessment of brain development at this critical stage.
Deep learning methods represent the state of the art in medical image segmentation and have also achieved impressive results in brain segmentation.
However, effective training of a deep learning model to perform this task requires a large number of training images to represent the rapid development of the transient fetal brain structures.
arXiv Detail & Related papers (2022-03-25T21:22:24Z) - Multi-Scale Input Strategies for Medulloblastoma Tumor Classification
using Deep Transfer Learning [59.30734371401316]
Medulloblastoma is the most common malignant brain cancer among children.
CNN has shown promising results for MB subtype classification.
We study the impact of tile size and input strategy.
arXiv Detail & Related papers (2021-09-14T09:42:37Z) - Segmentation of the cortical plate in fetal brain MRI with a topological
loss [0.22369578015657957]
We propose for the first time the integration of a topological constraint, as an additional loss function, to enhance the morphological consistency of a deep learning-based segmentation of the fetal cortical plate.
We quantitatively evaluate our method on 18 fetal brain atlases ranging from 21 to 38 weeks of gestation, showing the significant benefits of our method through all gestational ages.
arXiv Detail & Related papers (2020-10-23T13:25:45Z) - Patch-based Brain Age Estimation from MR Images [64.66978138243083]
Brain age estimation from Magnetic Resonance Images (MRI) derives the difference between a subject's biological brain age and their chronological age.
Early detection of neurodegeneration manifesting as a higher brain age can potentially facilitate better medical care and planning for affected individuals.
We develop a new deep learning approach that uses 3D patches of the brain as well as convolutional neural networks (CNNs) to develop a localised brain age estimator.
arXiv Detail & Related papers (2020-08-29T11:50:37Z) - Segmentation of the Myocardium on Late-Gadolinium Enhanced MRI based on
2.5 D Residual Squeeze and Excitation Deep Learning Model [55.09533240649176]
The aim of this work is to develop an accurate automatic segmentation method based on deep learning models for the myocardial borders on LGE-MRI.
A total number of 320 exams (with a mean number of 6 slices per exam) were used for training and 28 exams used for testing.
The performance analysis of the proposed ensemble model in the basal and middle slices was similar as compared to intra-observer study and slightly lower at apical slices.
arXiv Detail & Related papers (2020-05-27T20:44:38Z) - Local semi-supervised approach to brain tissue classification in child
brain MRI [0.0]
Most segmentation methods in child brain MRI are supervised and are based on global intensity probabilistic computation of major brain structures.
In this paper, we consider classification into major tissue classes (white matter and grey matter) and the cerebrospinal fluid.
We show that our method improves detection of the tissue classes by its comparison to state-of-the-art classification techniques known as Partial Volume Estimation.
arXiv Detail & Related papers (2020-05-20T06:43:41Z) - A Global Benchmark of Algorithms for Segmenting Late Gadolinium-Enhanced
Cardiac Magnetic Resonance Imaging [90.29017019187282]
" 2018 Left Atrium Challenge" using 154 3D LGE-MRIs, currently the world's largest cardiac LGE-MRI dataset.
Analyse of the submitted algorithms using technical and biological metrics was performed.
Results show the top method achieved a dice score of 93.2% and a mean surface to a surface distance of 0.7 mm.
arXiv Detail & Related papers (2020-04-26T08:49:17Z) - 4D Deep Learning for Multiple Sclerosis Lesion Activity Segmentation [49.32653090178743]
We investigate whether extending this problem to full 4D deep learning using a history of MRI volumes can improve performance.
We find that our proposed architecture outperforms previous approaches with a lesion-wise true positive rate of 0.84 at a lesion-wise false positive rate of 0.19.
arXiv Detail & Related papers (2020-04-20T11:41:01Z) - Microvascular Dynamics from 4D Microscopy Using Temporal Segmentation [81.30750944868142]
We are able to track changes in cerebral blood volume over time and identify spontaneous arterial dilations that propagate towards the pial surface.
This new imaging capability is a promising step towards characterizing the hemodynamic response function upon which functional magnetic resonance imaging (fMRI) is based.
arXiv Detail & Related papers (2020-01-14T22:55:03Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.