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Machine Learning for Large-Scale Quality Control of 3D Shape Models in Neuroimaging

机译:机器学习用于神经影像3D形状模型的大规模质量控制

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摘要

As very large studies of complex neuroimaging phenotypes become more common, human quality assessment of MRI-derived data remains one of the last major bottlenecks. Few attempts have so far been made to address this issue with machine learning. In this work, we optimize predictive models of quality for meshes representing deep brain structure shapes. We use standard vertex-wise and global shape features computed homologously across 19 cohorts and over 7500 human-rated subjects, training kernelized Support Vector Machine and Gradient Boosted Decision Trees classifiers to detect meshes of failing quality. Our models generalize across datasets and diseases, reducing human workload by 30–70%, or equivalently hundreds of human rater hours for datasets of comparable size, with recall rates approaching inter-rater reliability.
机译:随着对复杂的神经影像表型的大量研究变得越来越普遍,对MRI衍生数据进行人类质量评估仍然是最后的主要瓶颈之一。迄今为止,很少有人尝试通过机器学习来解决这个问题。在这项工作中,我们优化了代表深部大脑结构形状的网格的质量预测模型。我们使用在19个队列和7500多个人类评级受试者中进行同源计算的标准顶点方式和全局形状特征,训练核化的支持向量机和梯度提升决策树分类器来检测质量不合格的网格。我们的模型可以跨数据集和疾病进行概括,对于可比较大小的数据集,可将人员工作量减少30–70%,或相当于数百个人类评估者工作时间,召回率接近评估者之间的可靠性。

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