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Bridging Imaging, Genetics, and Diagnosis in a Coupled Low-Dimensional Framework

机译:在耦合的低维框架中桥接成像,遗传学和诊断

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We propose a joint dictionary learning framework that couples imaging and genetics data in a low dimensional subspace as guided by clinical diagnosis. We use a graph regularization penalty to simultaneously capture inter-regional brain interactions and identify the representative set anatomical basis vectors that span the low dimensional space. We further employ group sparsity to find the representative set of genetic basis vectors that span the same latent space. Finally, the latent projection is used to classify patients versus controls. We have evaluated our model on two task fMRI paradigms and single nucleotide polymorphism (SNP) data from schizophrenic patients and matched neu-rotypical controls. We employ a ten fold cross validation technique to show the predictive power of our model. We compare our model with canonical correlation analysis of imaging and genetics data and random forest classification. Our approach shows better prediction accuracy on both task datasets. Moreover, the implicated brain regions and genetic variants underlie the well documented deficits in schizophrenia.
机译:我们提出了一个联合词典学习框架,该框架在临床诊断的指导下,在低维子空间中耦合成像和遗传数据。我们使用图正则化惩罚来同时捕获区域间的大脑交互作用,并确定跨越低维空间的代表性集合解剖学基础向量。我们进一步利用群体稀疏性来找到跨越相同潜在空间的代表性遗传基础向量集。最后,潜在投影用于对患者和对照组进行分类。我们在两个任务功能磁共振成像范例和来自精神分裂症患者和匹配的神经轮状对照的单核苷酸多态性(SNP)数据上评估了我们的模型。我们采用十折交叉验证技术来显示模型的预测能力。我们将我们的模型与影像和遗传数据以及随机森林分类的​​规范相关分析进行了比较。我们的方法在两个任务数据集上均显示出更好的预测准确性。此外,牵连的大脑区域和遗传变异是精神分裂症中公认的缺陷的基础。

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