mri衍生皮质分割的区域特定自动质量保证。

Shruti Gadewar, Alyssa H Zhu, Sophia I Thomopoulos, Zhuocheng Li, Iyad Ba Gari, Piyush Maiti, Paul M Thompson, Neda Jahanshad
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引用次数: 0

摘要

质量控制(QC)是所有科学数据分析的重要步骤,在生物医学科学中至关重要。图像分割是医学图像分析中的一项常见任务,目前已经建立了从人脑核磁共振成像中分割许多区域的自动化工具。然而,这些方法并不总是给出解剖学上正确的标签。传统的质量控制方法倾向于拒绝统计异常值,这可能不一定是不准确的。在这里,我们使用了一个包含超过12,000张大脑图像的大型数据库,其中包含68个人类皮层的包裹,每个包裹都由人类评估师评估了解剖学的准确性。我们训练了三个机器学习模型来确定一个区域在解剖学上是否准确(“通过”或“失败”),并在一个独立的数据集上测试了性能。我们发现大多数标记区域的性能都很好。这项工作将有助于更精确的解剖学上的大规模多位点研究。
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REGION SPECIFIC AUTOMATIC QUALITY ASSURANCE FOR MRI-DERIVED CORTICAL SEGMENTATIONS.

Quality control (QC) is a vital step for all scientific data analyses and is critically important in the biomedical sciences. Image segmentation is a common task in medical image analysis, and automated tools to segment many regions from human brain MRIs are now well established. However, these methods do not always give anatomically correct labels. Traditional methods for QC tend to reject statistical outliers, which may not necessarily be inaccurate. Here, we make use of a large database of over 12,000 brain images that contain 68 parcellations of the human cortex, each of which was assessed for anatomical accuracy by a human rater. We trained three machine learning models to determine if a region was anatomically accurate (as 'pass', or 'fail') and tested the performance on an independent dataset. We found good performance for the majority of labeled regions. This work will facilitate more anatomically accurate large-scale multi-site research.

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