Department of Neurology, University of Pennsylvania, Philadelphia, Pennsylvania.
Department of Radiology, Penn Image Computing and Science Lab, University of Pennsylvania, Pennsylvania.
Hum Brain Mapp. 2017 Nov;38(11):5603-5615. doi: 10.1002/hbm.23752. Epub 2017 Aug 7.
The severity of post-stroke aphasia and the potential for recovery are highly variable and difficult to predict. Evidence suggests that optimal estimation of aphasia severity requires the integration of multiple neuroimaging modalities and the adoption of new methods that can detect multivariate brain-behavior relationships. We created and tested a multimodal framework that relies on three information sources (lesion maps, structural connectivity, and functional connectivity) to create an array of unimodal predictions which are then fed into a final model that creates "stacked multimodal predictions" (STAMP). Crossvalidated predictions of four aphasia scores (picture naming, sentence repetition, sentence comprehension, and overall aphasia severity) were obtained from 53 left hemispheric chronic stroke patients (age: 57.1 ± 12.3 yrs, post-stroke interval: 20 months, 25 female). Results showed accurate predictions for all four aphasia scores (correlation true vs. predicted: r = 0.79-0.88). The accuracy was slightly smaller but yet significant (r = 0.66) in a full split crossvalidation with each patient considered as new. Critically, multimodal predictions produced more accurate results that any single modality alone. Topological maps of the brain regions involved in the prediction were recovered and compared with traditional voxel-based lesion-to-symptom maps, revealing high spatial congruency. These results suggest that neuroimaging modalities carry complementary information potentially useful for the prediction of aphasia scores. More broadly, this study shows that the translation of neuroimaging findings into clinically useful tools calls for a shift in perspective from unimodal to multimodal neuroimaging, from univariate to multivariate methods, from linear to nonlinear models, and, conceptually, from inferential to predictive brain mapping. Hum Brain Mapp 38:5603-5615, 2017. © 2017 Wiley Periodicals, Inc.
脑卒中后失语症的严重程度和恢复潜力具有高度的可变性和难以预测性。有证据表明,最佳的失语症严重程度估计需要整合多种神经影像学模式,并采用能够检测多变量脑-行为关系的新方法。我们创建并测试了一种多模态框架,该框架依赖于三种信息源(病灶图、结构连接和功能连接)来创建一系列单模态预测,然后将这些预测输入最终模型,创建“堆叠多模态预测”(STAMP)。从 53 名左侧半球慢性脑卒中患者(年龄:57.1±12.3 岁,脑卒中后间隔:20 个月,女性 25 名)获得了对四种失语症评分(图片命名、句子重复、句子理解和整体失语症严重程度)的交叉验证预测。结果显示,对所有四种失语症评分的预测都非常准确(真实与预测的相关性:r=0.79-0.88)。在每个患者都被视为新患者的完全分割交叉验证中,准确性略小但仍具有统计学意义(r=0.66)。关键的是,多模态预测比任何单一模态的预测结果都更准确。还恢复了参与预测的大脑区域的拓扑图,并将其与传统的基于体素的病灶-症状图进行了比较,显示出高度的空间一致性。这些结果表明,神经影像学模式携带互补信息,可能对失语症评分的预测有用。更广泛地说,这项研究表明,将神经影像学发现转化为临床有用的工具需要从单模态到多模态神经影像学、从单变量到多变量方法、从线性到非线性模型,以及从推理到预测脑图的视角转变。人类大脑映射 38:5603-5615,2017。©2017 威利期刊公司