Centre for Medical Image Computing, University College London, London WC1V 6LJ, UK.
Department of Neurology, Massachusetts General Hospital, Harvard Medical School, Boston, MA 02114.
Proc Natl Acad Sci U S A. 2023 Feb 28;120(9):e2216399120. doi: 10.1073/pnas.2216399120. Epub 2023 Feb 21.
Every year, millions of brain MRI scans are acquired in hospitals, which is a figure considerably larger than the size of any research dataset. Therefore, the ability to analyze such scans could transform neuroimaging research. Yet, their potential remains untapped since no automated algorithm is robust enough to cope with the high variability in clinical acquisitions (MR contrasts, resolutions, orientations, artifacts, and subject populations). Here, we present , an AI segmentation suite that enables robust analysis of heterogeneous clinical datasets. In addition to whole-brain segmentation, also performs cortical parcellation, intracranial volume estimation, and automated detection of faulty segmentations (mainly caused by scans of very low quality). We demonstrate in seven experiments, including an aging study on 14,000 scans, where it accurately replicates atrophy patterns observed on data of much higher quality. is publicly released as a ready-to-use tool to unlock the potential of quantitative morphometry.
每年,医院都会获取数以百万计的脑部 MRI 扫描,这一数字远远超过任何研究数据集的规模。因此,分析这些扫描的能力可以改变神经影像学研究。然而,由于没有任何自动化算法强大到足以应对临床采集的高度变异性(MR 对比、分辨率、方向、伪影和研究人群),其潜力尚未被挖掘。在这里,我们提出了一个 AI 分割套件,它可以实现对异质临床数据集的稳健分析。除了全脑分割,还进行皮质分割、颅内体积估计和自动检测错误分割(主要是由质量非常低的扫描引起的)。我们在七个实验中展示了它的性能,包括一项针对 14000 个扫描的老化研究,它准确地复制了在质量更高的数据上观察到的萎缩模式。是作为一个即用型工具公开发布的,旨在释放定量形态计量学的潜力。