论文标题

一种新的本体论引导的属性分区集合学习模型,用于早期使用定量结构MRI早期预测认知缺陷

A Novel Ontology-guided Attribute Partitioning Ensemble Learning Model for Early Prediction of Cognitive Deficits using Quantitative Structural MRI in Very Preterm Infants

论文作者

Li, Zhiyuan, Li, Hailong, Braimah, Adebayo, Dillman, Jonathan R., Parikh, Nehal A., He, Lili

论文摘要

结构磁共振成像研究表明,大脑解剖异常与早产儿的认知缺陷有关。大脑成熟和几何特征可以与机器学习模型一起使用,以预测后来的神经发育缺陷。但是,传统的机器学习模型将遭受较大的功能与现实比率(即大量功能,但少数实例/样本)。合奏学习是一种范式,从战略上生成和集成了机器学习分类器的库,并已成功地用于各种预测性建模问题,以提高模型性能。属性(即功能)包装方法是最常用的特征分区方案,它随机并反复从整个功能集中绘制特征子集。尽管属性装袋方法可以有效地降低特征维度来处理大型功能与实用比率,但它缺乏对域知识和特征之间的潜在关系的考虑。在这项研究中,我们提出了一种新型的本体论引导的属性分区(OAP)方法,以通过考虑特征之间特定于域的关系来更好地绘制特征子集。有了更好的分区功能子集,我们开发了一个集合学习框架,该框架称为OAP汇总学习(OAP-EL)。我们使用OAP-EL应用了2岁年龄的认知缺陷,使用定量脑成熟和在非常早产的年龄在期限年龄获得的几何特征。我们证明,所提出的OAP-EL方法显着优于同行集合学习和传统的机器学习方法。

Structural magnetic resonance imaging studies have shown that brain anatomical abnormalities are associated with cognitive deficits in preterm infants. Brain maturation and geometric features can be used with machine learning models for predicting later neurodevelopmental deficits. However, traditional machine learning models would suffer from a large feature-to-instance ratio (i.e., a large number of features but a small number of instances/samples). Ensemble learning is a paradigm that strategically generates and integrates a library of machine learning classifiers and has been successfully used on a wide variety of predictive modeling problems to boost model performance. Attribute (i.e., feature) bagging method is the most commonly used feature partitioning scheme, which randomly and repeatedly draws feature subsets from the entire feature set. Although attribute bagging method can effectively reduce feature dimensionality to handle the large feature-to-instance ratio, it lacks consideration of domain knowledge and latent relationship among features. In this study, we proposed a novel Ontology-guided Attribute Partitioning (OAP) method to better draw feature subsets by considering the domain-specific relationship among features. With the better partitioned feature subsets, we developed an ensemble learning framework, which is referred to as OAP-Ensemble Learning (OAP-EL). We applied the OAP-EL to predict cognitive deficits at 2 years of age using quantitative brain maturation and geometric features obtained at term equivalent age in very preterm infants. We demonstrated that the proposed OAP-EL approach significantly outperformed the peer ensemble learning and traditional machine learning approaches.

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