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Reading Profiles in Multi-Site Data With Missingness

机译:在缺少位置的情况下读取多站点数据中的配置文件

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摘要

Children with reading disability exhibit varied deficits in reading and cognitive abilities that contribute to their reading comprehension problems. Some children exhibit primary deficits in phonological processing, while others can exhibit deficits in oral language and executive functions that affect comprehension. This behavioral heterogeneity is problematic when missing data prevent the characterization of different reading profiles, which often occurs in retrospective data sharing initiatives without coordinated data collection. Here we show that reading profiles can be reliably identified based on Random Forest classification of incomplete behavioral datasets, after the missForest method is used to multiply impute missing values. Results from simulation analyses showed that reading profiles could be accurately classified across degrees of missingness (e.g., ∼5% classification error for 30% missingness across the sample). The application of missForest to a real multi-site dataset with missingness (n = 924) showed that reading disability profiles significantly and consistently differed in reading and cognitive abilities for cases with and without missing data. The results of validation analyses indicated that the reading profiles (cases with and without missing data) exhibited significant differences for an independent set of behavioral variables that were not used to classify reading profiles. Together, the results show how multiple imputation can be applied to the classification of cases with missing data and can increase the integrity of results from multi-site open access datasets.
机译:有阅读障碍的儿童在阅读和认知能力上表现出各种缺陷,这会导致他们的阅读理解问题。一些孩子在语音处理方面表现出主要的缺陷,而另一些孩子则表现出会影响理解力的口语和执行功能方面的缺陷。当丢失的数据阻止了不同阅读配置文件的表征时,这种行为异质性是有问题的,这通常发生在回顾性数据共享计划中,而没有协调的数据收集。在这里,我们展示了在使用missForest方法乘以归因缺失值之后,可以基于不完整行为数据集的随机森林分类来可靠地识别阅读配置文件。模拟分析的结果表明,可以根据缺失程度对阅读资料进行准确分类(例如,样本中30%缺失的分类误差约为5%)。 missForest在具有缺失项的真实多站点数据集(n = 924)中的应用表明,对于有或没有缺失数据的病例,阅读障碍状况在阅读和认知能力上存在显着且一致的差异。验证分析的结果表明,对于不用于对阅读资料进行分类的独立行为变量集,阅读资料(有和没有数据缺失的案例)表现出显着差异。总之,结果显示了如何将多重归因应用于缺少数据的案件分类,并可以提高多站点开放获取数据集的结果完整性。

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