Convolutional Neural Net Learning Can Achieve Production-Level Brain Segmentation in Structural Magnetic Resonance Imaging

Deep learning implementations using convolutional neural nets have recently demonstrated promise in many areas of medical imaging. In this article we lay out the methods by which we have achieved consistently high quality, high throughput computation of intra-cranial segmentation from whole head mag...

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Main Authors: Evan Fletcher, Charles DeCarli, Audrey P. Fan, Alexander Knaack
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-06-01
Series:Frontiers in Neuroscience
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fnins.2021.683426/full
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spelling doaj-e04ecadb414949a3ab7eaafa492bc1662021-06-21T06:44:24ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2021-06-011510.3389/fnins.2021.683426683426Convolutional Neural Net Learning Can Achieve Production-Level Brain Segmentation in Structural Magnetic Resonance ImagingEvan Fletcher0Charles DeCarli1Audrey P. Fan2Audrey P. Fan3Alexander Knaack4Department of Neurology, University of California, Davis, Davis, CA, United StatesDepartment of Neurology, University of California, Davis, Davis, CA, United StatesDepartment of Neurology, University of California, Davis, Davis, CA, United StatesDepartment of Biomedical Engineering, University of California, Davis, Davis, CA, United StatesDepartment of Neurology, University of California, Davis, Davis, CA, United StatesDeep learning implementations using convolutional neural nets have recently demonstrated promise in many areas of medical imaging. In this article we lay out the methods by which we have achieved consistently high quality, high throughput computation of intra-cranial segmentation from whole head magnetic resonance images, an essential but typically time-consuming bottleneck for brain image analysis. We refer to this output as “production-level” because it is suitable for routine use in processing pipelines. Training and testing with an extremely large archive of structural images, our segmentation algorithm performs uniformly well over a wide variety of separate national imaging cohorts, giving Dice metric scores exceeding those of other recent deep learning brain extractions. We describe the components involved to achieve this performance, including size, variety and quality of ground truth, and appropriate neural net architecture. We demonstrate the crucial role of appropriately large and varied datasets, suggesting a less prominent role for algorithm development beyond a threshold of capability.https://www.frontiersin.org/articles/10.3389/fnins.2021.683426/fullmagnetic resonance imagingbrain segmentationdeep learningconvolutional neural networkmedical image processingmedical imaging data ground truth
collection DOAJ
language English
format Article
sources DOAJ
author Evan Fletcher
Charles DeCarli
Audrey P. Fan
Audrey P. Fan
Alexander Knaack
spellingShingle Evan Fletcher
Charles DeCarli
Audrey P. Fan
Audrey P. Fan
Alexander Knaack
Convolutional Neural Net Learning Can Achieve Production-Level Brain Segmentation in Structural Magnetic Resonance Imaging
Frontiers in Neuroscience
magnetic resonance imaging
brain segmentation
deep learning
convolutional neural network
medical image processing
medical imaging data ground truth
author_facet Evan Fletcher
Charles DeCarli
Audrey P. Fan
Audrey P. Fan
Alexander Knaack
author_sort Evan Fletcher
title Convolutional Neural Net Learning Can Achieve Production-Level Brain Segmentation in Structural Magnetic Resonance Imaging
title_short Convolutional Neural Net Learning Can Achieve Production-Level Brain Segmentation in Structural Magnetic Resonance Imaging
title_full Convolutional Neural Net Learning Can Achieve Production-Level Brain Segmentation in Structural Magnetic Resonance Imaging
title_fullStr Convolutional Neural Net Learning Can Achieve Production-Level Brain Segmentation in Structural Magnetic Resonance Imaging
title_full_unstemmed Convolutional Neural Net Learning Can Achieve Production-Level Brain Segmentation in Structural Magnetic Resonance Imaging
title_sort convolutional neural net learning can achieve production-level brain segmentation in structural magnetic resonance imaging
publisher Frontiers Media S.A.
series Frontiers in Neuroscience
issn 1662-453X
publishDate 2021-06-01
description Deep learning implementations using convolutional neural nets have recently demonstrated promise in many areas of medical imaging. In this article we lay out the methods by which we have achieved consistently high quality, high throughput computation of intra-cranial segmentation from whole head magnetic resonance images, an essential but typically time-consuming bottleneck for brain image analysis. We refer to this output as “production-level” because it is suitable for routine use in processing pipelines. Training and testing with an extremely large archive of structural images, our segmentation algorithm performs uniformly well over a wide variety of separate national imaging cohorts, giving Dice metric scores exceeding those of other recent deep learning brain extractions. We describe the components involved to achieve this performance, including size, variety and quality of ground truth, and appropriate neural net architecture. We demonstrate the crucial role of appropriately large and varied datasets, suggesting a less prominent role for algorithm development beyond a threshold of capability.
topic magnetic resonance imaging
brain segmentation
deep learning
convolutional neural network
medical image processing
medical imaging data ground truth
url https://www.frontiersin.org/articles/10.3389/fnins.2021.683426/full
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