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Identification of Subclinical Language Deficit Using Machine Learning Classification Based on Poststroke Functional Connectivity Derived from Low Frequency Oscillations

机译:基于来自低频振荡的中风后功能连接的机器学习分类识别亚临床语言缺陷

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摘要

Post-stroke neuropsychological evaluation is time-intensive in assessing impairments in subjects without overt clinical deficits. We utilized functional connectivity (FC) from ten-minute non-invasive resting-state functional MRI (rs-fMRI) to identify stroke subjects at risk for subclinical language deficit (SLD) using machine learning. Discriminative ability of FC derived from slow-5 (0.01–0.027 Hz), slow-4 (0.027–0.073 Hz) and low frequency oscillations (LFO; 0.01–0.1 Hz) was compared. Sixty clinically non-aphasic right-handed subjects were categorized into three subgroups based on stroke status and normalized verbal fluency (NVF) score: 20 ischemic early-stage stroke subjects at higher risk for SLD (LD+; mean VFS=−1.77), 20 ischemic early-stage stroke subjects with at risk for SLD (LD-; mean VFS=−0.05), 20 healthy controls (HC; mean VFS=0.29). T1-weighted and rs-fMRI were acquired within 30 days of stroke onset. Blood-oxygen-level-dependent signal was extracted within the language network. FC was evaluated and used by a multiclass support vector machine to classify test subject into a subgroup which was assessed by nested leave-one-out cross-validation. FC derived from slow-4 (70%) provided the best accuracy relative to LFO (65%) and slow-5 (50%), reasonably higher than random chance (33.33%). Using subgroup-specific accuracy, classification was best realized within slow-4 for LD+ (81.6%) and LD- (78.3%) and slow-4/LFO for HC (80%), i.e., early-stage stroke subjects showed a slow-4 FC dominance whereas HC also indicated the normalized involvement within LFO. While frontal FC differentiated stroke from healthy, occipital FC differentiated between the two stroke subgroups. Thus, stroke subjects at risk for SLD can be identified using rs-fMRI reasonably in an expedited manner.
机译:中风后神经心理学评估在评估没有明显临床缺陷的受试者的损伤方面需要大量时间。我们利用十分钟的非侵入式静止状态功能MRI(rs-fMRI)中的功能连接(FC),使用机器学习来识别有亚临床语言缺陷(SLD)风险的中风受试者。比较了慢5(0.01-0.027 Hz),慢4(0.027-0.073 Hz)和低频振荡(LFO; 0.01-0.1 Hz)产生的FC的判别能力。根据卒中状态和正常口语流利度(NVF)评分,将60例临床上无失语的右撇子受试者分为三个亚组:20位SLD风险较高的局部缺血性早期卒中患者(LD +;平均VFS = −1.77),20具有SLD风险(LD-;平均VFS = -0.05),20名健康对照(HC;平均VFS = 0.29)的缺血性早期卒中受试者。在卒中发作后30天内获得T1加权和rs-fMRI。在语言网络中提取了依赖于血氧水平的信号。通过多类支持向量机对FC进行了评估,并使用FC将测试对象分类为一个亚组,并通过嵌套的留一法交叉验证对其进行了评估。相对于LFO(65%)和slow-5(50%),慢速4(70%)派生的FC提供了最高的准确性,合理地高于随机机会(33.33%)。使用亚组特定的准确性,最好在LD +(81.6%)和LD-(78.3%)的慢4和HC(80%)的慢4 / LFO内实现分类,即早期卒中受试者表现出慢-4 FC占主导地位,而HC也表明LFO中的标准化参与。额叶FC将中风与健康区分开来,枕骨FC在两个中风亚组之间进行了区分。因此,可以合理地使用rs-fMRI快速识别具有SLD风险的中风受试者。

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