首页> 外文会议>Biomedical Imaging (ISBI), 2012 9th IEEE International Symposium on >Predicting temporal lobe volume on MRI from genotypes using L1-L2 regularized regression
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Predicting temporal lobe volume on MRI from genotypes using L1-L2 regularized regression

机译:使用L 1 -L 2 正则回归从基因型预测MRI颞叶体积

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Penalized or sparse regression methods are gaming increasing attention in imaging genomics, as they can select optimal regressors from a large set of predictors whose individual effects are small or mostly zero. We applied a multivanate approach, based on L1-L2-Aregulanzed regression (elastic net) to predict a magnetic resonance imaging (MRI) tensor-based morphometry-derived measure of temporal lobe volume from a genome-wide scan in 740 Alzheimer''s Disease Neuroimaging Initiative (ADNI) subjects. We tuned the elastic net model''s parameters using internal cross-validation and evaluated the model on independent test sets. Compared to 100,000 permutations performed with randomized imaging measures, the predictions were found to be statistically significant (p ∼ 0.001). The rs9933137 variant in the RBFOX1 gene was a highly contributory genotype, along with rs10845840 in GRIN2B and rs2456930, discovered previously in a univanate genome-wide search.
机译:惩罚性或稀疏回归方法在成像基因组学中越来越引起人们的关注,因为它们可以从大量个体预测值很小或几乎为零的预测变量中选择最佳回归变量。我们基于L 1 -L 2 -正则回归(弹性网)应用了多变量方法来预测基于磁共振成像(MRI)张量的形态学测量740名阿尔茨海默氏病神经影像学倡议(ADNI)受试者的全基因组扫描结果显示颞叶体积。我们使用内部交叉验证对弹性网模型的参数进行了调整,并在独立的测试集上对模型进行了评估。与使用随机成像方法进行的100,000个排列相比,发现预测具有统计学意义(p〜0.001)。 RBFOX1基因中的rs9933137变体与GRIN2B中的rs10845840和rs2456930中的rs10845840一样,是一个高度贡献的基因型,以前在单基因组全基因组搜索中被发现。

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