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Related Concept Videos

Magnetic Resonance Imaging01:24

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Magnetic resonance imaging (MRI) is a noninvasive medical imaging technique based on a phenomenon of nuclear physics discovered in the 1930s, in which matter exposed to magnetic fields and radio waves was found to emit radio signals. In 1970, a physician and researcher named Raymond Damadian noticed that malignant (cancerous) tissue gave off different signals than normal body tissue. He applied for a patent for the first MRI scanning device in clinical use by the early 1980s. The early MRI...
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Automated Segmentation of Cortical Grey Matter from T1-Weighted MRI Images
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Motion Artifact Detection for T1-Weighted Brain MR Images Using Convolutional Neural Networks.

Erik Roecher1, Lucas Mösch1, Jana Zweerings1

  • 1Department of Psychiatry, Psychotherapy and Psychosomatics, Faculty of Medicine, RWTH Aachen, Germany.

International Journal of Neural Systems
|July 11, 2024
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Summary
This summary is machine-generated.

This study introduces a convolutional neural network (CNN) to automatically detect random head motion artifacts in MRI scans. The AI model efficiently identifies images with significant motion, improving quality assessment for large datasets.

Keywords:
CNNDNNStructural MRIclinical image acquisitionmotion artifactsquality assessment

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Area of Science:

  • Medical Imaging
  • Artificial Intelligence
  • Neuroscience

Background:

  • Quality assessment (QA) of magnetic resonance imaging (MRI) is crucial but often lacks standardization, relying on manual inspection.
  • Large datasets exacerbate challenges in manual MRI quality evaluation due to time and expertise requirements.
  • Automated methods, particularly machine learning with convolutional neural networks (CNNs), offer a promising solution for consistent MRI QA.

Purpose of the Study:

  • To develop and evaluate a CNN for automated detection of random head motion artifacts (RHM) in T1-weighted MRI.
  • To assess the performance of the CNN in identifying images with pronounced motion artifacts.
  • To explore the feasibility of a multi-class classification for nuanced artifact evaluation.

Main Methods:

  • A CNN model was trained to detect RHM in 420 T1-weighted whole-brain MRI volumes.
  • A two-step approach was employed: first, identifying images with significant artifacts, then evaluating a three-class classification.
  • Human experts manually classified artifact prominence to create ground truth labels.

Main Results:

  • The CNN achieved 95% accuracy in identifying MRI volumes with pronounced random head motion artifacts.
  • A subsequent three-class classification, including an intermediate artifact level, maintained 76% accuracy.
  • The model demonstrated high efficacy in flagging images requiring closer inspection.

Conclusions:

  • CNN-based automated QA shows significant potential for enhancing efficiency in post-hoc analysis of large MRI datasets.
  • Automated detection of motion artifacts can streamline the identification of lower-quality scans.
  • This approach can improve the reliability and scalability of MRI quality control.