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MRI signatures of brain age and disease over the lifespan based on a deep brain network and 14 468 individuals worldwide

机译:基于深脑网络的寿命和疾病的MRI签名和全球14个4468个人

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摘要

Deep learning has emerged as a powerful approach to constructing imaging signatures of normal brain ageing as well as of various neuropathological processes associated with brain diseases. In particular, MRI-derived brain age has been used as a comprehensive biomarker of brain health that can identify both advanced and resilient ageing individuals via deviations from typical brain ageing. Imaging signatures of various brain diseases, including schizophrenia and Alzheimer's disease, have also been identified using machine learning. Prior efforts to derive these indices have been hampered by the need for sophisticated and not easily reproducible processing steps, by insufficiently powered or diversified samples from which typical brain ageing trajectories were derived, and by limited reproducibility across populations and MRI scanners. Herein, we develop and test a sophisticated deep brain network (DeepBrainNet) using a large (n = 11 729) set of MRI scans from a highly diversified cohort spanning different studies, scanners, ages and geographic locations around the world. Tests using both cross-validation and a separate replication cohort of 2739 individuals indicate that DeepBrainNet obtains robust brain-age estimates from these diverse datasets without the need for specialized image data preparation and processing. Furthermore, we show evidence that moderately fit brain ageing models may provide brain age estimates that are most discriminant of individuals with pathologies. This is not unexpected as tightly-fitting brain age models naturally produce brain-age estimates that offer little information beyond age, and loosely fitting models may contain a lot of noise. Our results offer some experimental evidence against commonly pursued tightly-fitting models. We show that the moderately fitting brain age models obtain significantly higher differentiation compared to tightly-fitting models in two of the four disease groups tested. Critically, we demonstrate that leveraging DeepBrainNet, along with transfer learning, allows us to construct more accurate classifiers of several brain diseases, compared to directly training classifiers on patient versus healthy control datasets or using common imaging databases such as ImageNet. We, therefore, derive a domain-specific deep network likely to reduce the need for application-specific adaptation and tuning of generic deep learning networks. We made the DeepBrainNet model freely available to the community for MRI-based evaluation of brain health in the general population and over the lifespan.
机译:深入学习被出现为构建正常脑老化的成像签名以及与大脑疾病相关的各种神经病理过程的强大方法。特别是,MRI衍生的脑年龄已被用作脑室健康的综合生物标志物,可以通过典型脑老化的偏差来确定先进和弹性老化的个体。还使用机器学习来确定各种脑病的成像签名,包括精神分裂症和阿尔茨海默病。通过对这些指数的努力,通过对典型脑老化轨迹的不足或多样化的样本来阻碍了这些指数的需要受到了复杂的并且不可再现的加工步骤,以及通过群体和MRI扫描仪的有限再现性。在此,我们使用大(n = 11729)的MRI扫描从跨越世界各地的不同研究,扫描仪,年龄和地理位置的高度多元化的队列,使用大(n = 11729)MRI扫描进行复杂的深脑网络(DEAMBRAINNET)。使用交叉验证的测试和2739个个人的单独复制队列表明DeepBrainNet从这些不同的数据集获得强大的脑电年龄估计,而无需专门的图像数据准备和处理。此外,我们显示了证据表明,适度适合脑老化模型可以提供大脑年龄估计,这些估计是具有病理学的个体的最判别。这并不意外,因为紧密拟合的脑年龄模型自然产生脑年龄估计,提供超越年龄的信息,并且松散的拟合模型可能包含大量噪音。我们的结果提供了一些针对普通拟合拟合模型的实验证据。我们表明,与测试中的两种疾病组中的两种疾病组中的两个拟合模型相比,适度拟合的脑年龄模型获得显着更高的分化。批判性地,与直接培训患者与健康控制数据集的直接训练分类器相比,使用患者与诸如想象成的常见成像数据库等培训分类器相比,我们证明利用DeepbrainNet允许我们构建多种脑病的更准确的分类器。因此,我们派生了一个特定于域的深网络,可能会减少对普通深度学习网络的特定应用程序的适应和调整的需求。我们使Deepbrainnet模型自由地提供给社区,以获得基于MRI的脑部健康的评估,在一般人群和寿命上。

著录项

  • 来源
    《Brain: A journal of neurology》 |2020年第7期|共13页
  • 作者单位

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Natl Inst Aging Lab Epidemiol &

    Populat Sci Bethesda MD USA;

    Univ Melbourne Florey Inst Neurosci &

    Mental Hlth Melbourne Vic Australia;

    Univ Melbourne Florey Inst Neurosci &

    Mental Hlth Melbourne Vic Australia;

    Nankai Univ Tianjin Mental Hlth Ctr Affiliated Tianjin Anding Hosp Tianjin Peoples R China;

    Ernst Moritz Arndt Univ Greifswald Inst Community Med Greifswald Germany;

    Univ Wisconsin Wisconsin Alzheimers Inst Sch Med &

    Publ Hlth Madison WI USA;

    Australian E Hlth Res Ctr CSIRO CSIRO Hlth &

    Biosecur Melbourne Vic Australia;

    Ludwig Maximilian Univ Munich Dept Psychiat &

    Psychotherapy Munich Germany;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

    Univ Penn Dept Psychiat Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Philadelphia PA 19104 USA;

    Washington Univ Dept Neurol St Louis MO 63110 USA;

    Johns Hopkins Univ Sch Med Dept Neurol Baltimore MD 21205 USA;

    Ernst Moritz Arndt Univ Greifswald Dept Psychiat &

    Psychotherapy Greifswald Mecklenburg Vor;

    Natl Inst Aging Lab Behav Neurosci Bethesda MD USA;

    Univ Texas Austin Dept Diagnost Med Austin TX 78712 USA;

    Univ Penn Dept Neurol Philadelphia PA 19104 USA;

    Univ Penn Dept Biostat Epidemiol &

    Informat Philadelphia PA 19104 USA;

    Univ Penn Dept Radiol Ctr Biomed Image Comp &

    Analyt Philadelphia PA 19104 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 神经病学;
  • 关键词

    brain age; deep learning; transfer learning;

    机译:脑年龄;深入学习;转移学习;

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