首页> 外文会议>International Workshop on Predictive Intelligence In MEdicine;International Conference on Medical Image Computing and Computer Assisted Intervention >Progressive Infant Brain Connectivity Evolution Prediction from Neonatal MRI Using Bidirectionally Supervised Sample Selection
【24h】

Progressive Infant Brain Connectivity Evolution Prediction from Neonatal MRI Using Bidirectionally Supervised Sample Selection

机译:使用双向监督样本选择从新生儿MRI进行渐进式婴儿脑连通性进化预测

获取原文

摘要

The early postnatal developmental period is highly dynamic, where brain connections undergo both growth and pruning processes. Understanding typical brain connectivity evolution would enable us to spot abnormal connectional development patterns. However, this generally requires the acquisition of longitudinal neuroimaging datasets that densely cover the first years of postnatal development. This might not be easily investigated since neonatal follow-up scans are rarely acquired in a clinical setting. Furthermore, waiting for the acquisition of later brain scans would hinder early neurodevelopmental disorder diagnosis. To solve this problem, we unprecedentedly propose a bidirectionally supervised sample selection framework, while leveraging the time-dependency between consecutive observations, for predicting neonatal brain connectome evolution from a single structural magnetic resonance imaging (MRI) acquired around birth. Specifically, we propose to learn how to select the best training samples by supervisedly training a bidirectional ensemble of regressors from the space of pairwise neonatal connectome disparities to their expected prediction scores resulting from using one training connectome to predict another training connectome. The proposed supervised ensemble learning is time-dependent and has a recall memory anchored at the ground truth baseline observation, allowing to progressively pass over previous predictions through the connectome evolution trajectory. We then rank training samples at current timepoint t_(i-1) based on their expected prediction scores by the ensemble and average their connectomes at follow-up timepoint t_i to predict the testing connectome at t_i. Our framework significantly outperformed comparison methods in leave-one-out cross-validation.
机译:出生后的早期发育阶段是高度动态的,其中大脑连接同时经历生长和修剪过程。了解典型的大脑连接性进化将使我们能够发现异常的连接发育模式。但是,这通常需要获取纵向神经影像数据集,该数据集覆盖了出生后发育的最初几年。由于在临床环境中很少进行新生儿随访扫描,因此可能不容易对此进行调查。此外,等待后期脑部扫描的采集将阻碍早期神经发育障碍的诊断。为了解决这个问题,我们前所未有地提出了一个双向监督的样本选择框架,同时利用连续观察之间的时间依赖性,从出生时获得的单个结构磁共振成像(MRI)预测新生儿大脑连接体的进化。具体而言,我们建议学习如何通过监督训练成对新生儿双向连接差异的空间到它们的预期预测分数,来监督使用双向回归集成的方法,从而选择最佳的训练样本。拟议的监督集成学习是时间相关的,并且具有基于地面真相基线观测的回忆记忆,从而可以通过连接体进化轨迹逐步超越先前的预测。然后,我们根据集合的预期预测得分对当前时间点t_(i-1)上的训练样本进行排序,并在后续时间点t_i上对它们的连接组求平均,以预测t_i处的测试连接组。我们的框架在留一法式交叉验证中明显优于比较方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号