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首页> 外文期刊>NeuroImage: Clinical >Classification of multi-site MR images in the presence of heterogeneity using multi-task learning
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Classification of multi-site MR images in the presence of heterogeneity using multi-task learning

机译:使用多任务学习在存在异构性的情况下对多站点MR图像进行分类

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With the advent of Big Data Imaging Analytics applied to neuroimaging, datasets from multiple sites need to be pooled into larger samples. However, heterogeneity across different scanners, protocols and populations, renders the task of finding underlying disease signatures challenging. The current work investigates the value of multi-task learning in finding disease signatures that generalize across studies and populations. Herein, we present a multi-task learning type of formulation, in which different tasks are from different studies and populations being pooled together. We test this approach in an MRI study of the neuroanatomy of schizophrenia (SCZ) by pooling data from 3 different sites and populations: Philadelphia, Sao Paulo and Tianjin (50 controls and 50 patients from each site), which posed integration challenges due to variability in disease chronicity, treatment exposure, and data collection. Some existing methods are also tested for comparison purposes. Experiments show that classification accuracy of multi-site data outperformed that of single-site data and pooled data using multi-task feature learning, and also outperformed other comparison methods. Several anatomical regions were identified to be common discriminant features across sites. These included prefrontal, superior temporal, insular, anterior cingulate cortex, temporo-limbic and striatal regions consistently implicated in the pathophysiology of schizophrenia, as well as the cerebellum, precuneus, and fusiform, middle temporal, inferior parietal, postcentral, angular, lingual and middle occipital gyri. These results indicate that the proposed multi-task learning method is robust in finding consistent and reliable structural brain abnormalities associated with SCZ across different sites, in the presence of multiple sources of heterogeneity. Highlights ? Multi-task learning is tested to classify MRI data of 3 sites (50 controls and 50 schizophrenia patients from each site). ? Classification accuracy of multi-site data outperformed that of single-site and pooled data. ? Several cortical and subcortical anatomical regions were found to be common discriminant features across different sites. ? Multi-task learning is robust in finding reliable structural brain abnormalities of schizophrenia across different sites.
机译:随着大数据成像分析技术应用于神经成像技术的出现,需要将来自多个站点的数据集汇总到更大的样本中。但是,不同扫描仪,协议和人群之间的异质性使得寻找潜在疾病特征的任务变得具有挑战性。当前的工作调查了多任务学习在寻找普遍存在于研究和人群中的疾病特征的价值。在本文中,我们提出了一种多任务学习的表述形式,其中不同的任务来自不同的研究,并且人群被集中在一起。我们在MRI研究中对精神分裂症(SCZ)的神经解剖学进行了测试,方法是汇总3个不同地点和人群的数据:费城,圣保罗和天津(每个地点分别有50名对照和50名患者),由于变异性,这给整合带来了挑战疾病慢性病,治疗暴露和数据收集。为了比较,还测试了一些现有方法。实验表明,通过多任务特征学习,多站点数据的分类精度优于单站点数据和池化数据的分类精度,并且优于其他比较方法。几个解剖区域被确定为跨站点的常见区别特征。这些包括前额叶,颞上叶,岛状,前扣带回皮层,颞缘和纹状体区域,这些区域始终与精神分裂症的病理生理学有关,以及小脑,前胎和梭形,中颞叶,顶下壁,中央,角,舌和舌状枕中中回。这些结果表明,在存在多种异质性来源的情况下,所提出的多任务学习方法在发现与SCZ相关的一致且可靠的结构性大脑异常方面具有鲁棒性。强调 ?测试了多任务学习以对3个部位的MRI数据进行分类(每个部位有50名对照和50名精神分裂症患者)。 ?多站点数据的分类准确性优于单站点和合并数据的分类准确性。 ?发现多个皮层和皮层下解剖区域是跨不同部位的共同鉴别特征。 ?多任务学习在发现不同部位的精神分裂症的可靠结构性脑部异常方面非常可靠。

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