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Automated, Efficient, and Accelerated Knowledge Modeling of the Cognitive Neuroimaging Literature Using the ATHENA Toolkit

机译:使用雅典娜工具包的认知神经影像文献的自动化,高效和加速的知识建模

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摘要

Neuroimaging research is growing rapidly, providing expansive resources for synthesizing data. However, navigating these dense resources is complicated by the volume of research articles and variety of experimental designs implemented across studies. The advent of machine learning algorithms and text-mining techniques has advanced automated labeling of published articles in biomedical research to alleviate such obstacles. As of yet, a comprehensive examination of document features and classifier techniques for annotating neuroimaging articles has yet to be undertaken. Here, we evaluated which combination of corpus (abstract-only or full-article text), features (bag-of-words or Cognitive Atlas terms), and classifier (Bernoulli naïve Bayes, k-nearest neighbors, logistic regression, or support vector classifier) resulted in the highest predictive performance in annotating a selection of 2,633 manually annotated neuroimaging articles. We found that, when utilizing full article text, data-driven features derived from the text performed the best, whereas if article abstracts were used for annotation, features derived from the Cognitive Atlas performed better. Additionally, we observed that when features were derived from article text, anatomical terms appeared to be the most frequently utilized for classification purposes and that cognitive concepts can be identified based on similar representations of these anatomical terms. Optimizing parameters for the automated classification of neuroimaging articles may result in a larger proportion of the neuroimaging literature being annotated with labels supporting the meta-analysis of psychological constructs.
机译:神经影像研究正在迅速发展,为合成数据提供了广阔的资源。但是,由于研究文章的数量大,以及跨研究实施的各种实验设计的复杂性,浏览这些密集的资源变得很复杂。机器学习算法和文本挖掘技术的出现已在生物医学研究中对已发表文章进行了高级自动标记,以减轻此类障碍。迄今为止,尚未对用于注释神经成像文章的文档特征和分类器技术进行全面检查。在这里,我们评估了语料库(仅摘要或全文文章),特征(单词袋或认知地图集术语)和分类器(伯努利朴素贝叶斯,k近邻,逻辑回归或支持向量)的哪种组合分类器)在对2,633篇人工注释的神经影像文章进行注释时,具有最高的预测性能。我们发现,当使用文章全文时,从文本派生的数据驱动功能表现最好,而如果将文章摘要用于注释,则从认知图集派生的功能表现更好。此外,我们观察到从文章文本中提取特征时,解剖学术语似乎是最常用于分类目的的,并且可以基于这些解剖学术语的相似表示来识别认知概念。用于神经影像文章的自动分类的优化参数可能会导致较大比例的神经影像文献被标记为支持心理结构的元分析的标签。

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