应用扩散张量成像和NODDI对慢性创伤性脑损伤的机器学习分类:一项复制和扩展研究

Q4 Neuroscience
J. Michael Maurer , Keith A. Harenski , Subhadip Paul , Victor M. Vergara , David D. Stephenson , Aparna R. Gullapalli , Nathaniel E. Anderson , Gerard J.B. Clarke , Prashanth K. Nyalakanti , Carla L. Harenski , Jean Decety , Andrew R. Mayer , David B. Arciniegas , Vince D. Calhoun , Todd B. Parrish , Kent A. Kiehl
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引用次数: 0

摘要

急性和慢性创伤性脑损伤(TBI)患者与独特的白质(WM)结构异常有关,包括分数各向异性(FA)差异。我们的研究小组之前在线性支持向量机(SVM)模式分类器中使用FA作为特征,观察到患有和没有急性TBI的个体之间的高度分类(即曲线下面积[AUC]值为75.50%)。然而,尚不清楚FA是否能在患有和没有慢性TBI史的个体之间进行类似的分类。在这里,我们试图用一个新的样本复制我们之前的工作,调查FA是否可以在有(n=80)和没有(n=80。此外,考虑到FA的局限性,包括低估了含有交叉纤维的WM束中的FA值,我们在之前的研究基础上,结合了轴突定向分散和密度成像(NODDI)指标,包括定向分散(ODI)和各向同性体积(Viso)。与我们之前的研究类似,本文采用了一种基于线性SVM的分类方法,将FA和NODDI指标作为单独的特征,在有和没有自我报告的慢性TBI的个体之间进行分类。当将FA和NODDI ODI指标作为特征时,总体分类率相似(AUC:82.50%)。此外,基于NODDI的指标提供了最高的敏感性(ODI:85.00%)和特异性(Viso:82.55%)。目前的研究是对我们之前研究的复制和扩展,观察到多重扩散MRI指标可以可靠地在有和没有慢性TBI自我报告史的个体之间进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning classification of chronic traumatic brain injury using diffusion tensor imaging and NODDI: A replication and extension study

Individuals with acute and chronic traumatic brain injury (TBI) are associated with unique white matter (WM) structural abnormalities, including fractional anisotropy (FA) differences. Our research group previously used FA as a feature in a linear support vector machine (SVM) pattern classifier, observing high classification between individuals with and without acute TBI (i.e., an area under the curve [AUC] value of 75.50%). However, it is not known whether FA could similarly classify between individuals with and without history of chronic TBI. Here, we attempted to replicate our previous work with a new sample, investigating whether FA could similarly classify between incarcerated men with (n = 80) and without (n = 80) self-reported history of chronic TBI. Additionally, given limitations associated with FA, including underestimation of FA values in WM tracts containing crossing fibers, we extended upon our previous study by incorporating neurite orientation dispersion and density imaging (NODDI) metrics, including orientation dispersion (ODI) and isotropic volume (Viso). A linear SVM based classification approach, similar to our previous study, was incorporated here to classify between individuals with and without self-reported chronic TBI using FA and NODDI metrics as separate features. Overall classification rates were similar when incorporating FA and NODDI ODI metrics as features (AUC: 82.50%). Additionally, NODDI-based metrics provided the highest sensitivity (ODI: 85.00%) and specificity (Viso: 82.50%) rates. The current study serves as a replication and extension of our previous study, observing that multiple diffusion MRI metrics can reliably classify between individuals with and without self-reported history of chronic TBI.

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来源期刊
Neuroimage. Reports
Neuroimage. Reports Neuroscience (General)
CiteScore
1.90
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87 days
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