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Classification of Major Depressive Disorder via Multi-site Weighted LASSO Model

机译:多站点加权套索模型分类重大抑郁紊乱

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Large-scale collaborative analysis of brain imaging data, in psychiatry and neurology, offers a new source of statistical power to discover features that boost accuracy in disease classification, differential diagnosis, and outcome prediction. However, due to data privacy regulations or limited accessibility to large datasets across the world, it is challenging to efficiently integrate distributed information. Here we propose a novel classification framework through multi-site weighted LASSO: each site performs an iterative weighted LASSO for feature selection separately. Within each iteration, the classification result and the selected features are collected to update the weighting parameters for each feature. This new weight is used to guide the LASSO process at the next iteration. Only the features that help to improve the classification accuracy are preserved. In tests on data from five sites (299 patients with major depressive disorder (MDD) and 258 normal controls), our method boosted classification accuracy for MDD by 4.9% on average. This result shows the potential of the proposed new strategy as an effective and practical collaborative platform for machine learning on large scale distributed imaging and biobank data.
机译:在精神病学和神经病学中,对脑成像数据进行大规模协作分析,提供了一种新的统计能源来源,以发现促进疾病分类,鉴别诊断和结果预测的准确性的特征。但是,由于数据隐私法规或全球大型数据集的可访问性有限,有效地整合分布式信息有挑战性。在这里,我们通过多站点加权套索提出了一种新颖的分类框架:每个站点对特征选择进行迭代加权套索。在每个迭代中,收集分类结果和所选功能以更新每个功能的加权参数。这种新重量用于在下一次迭代时引导套索过程。只保留有助于提高分类准确性的功能。在从五个地点的数据测试中(299名具有重大抑郁症(MDD)和258名正常控制患者),我们的方法平均提高了MDD的分类准确性。这一结果表明,提出的新策略的潜力是大规模分布式成像和BioBank数据的机器学习的有效和实用的协作平台。

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