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Unsupervised learning toward brain imaging data analysis: Cigarette craving and resistance related neuronal activations from functional magnetic resonance imaging data analysis

机译:进行脑成像数据分析的无监督学习:功能性磁共振成像数据分析中的烟瘾和与抵抗相关的神经元激活

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A data-driven unsupervised learning such as an independent component analysis was gainfully applied to blood-oxygenation-level-dependent (BOLD) functional magnetic resonance imaging (fMRI) data compared to a model-based general linear model (GLM). This is due to an ability of this unsupervised learning method to extract a meaningful neuronal activity from BOLD signal that is a mixture of confounding non-neuronal artifacts such as head motions and physiological artifacts as well as neuronal signals. In this study, we support this claim by identifying neuronal underpinnings of cigarette craving and cigarette resistance. The fMRI data were acquired from heavy cigarette smokers (n = 14) while they alternatively watched images with and without cigarette smoking. During acquisition of two fMRI runs, they were asked to crave when they watched cigarette smoking images or to resist the urge to smoke. Data driven approaches of group independent component analysis (GICA) method based on temporal concatenation (TC) and TC-GICA with an extension of iterative dual-regression (TC-GICA-iDR) were applied to the data. From the results, cigarette craving and cigarette resistance related neuronal activations were identified in the visual area and superior frontal areas, respectively with a greater statistical significance from the TC-GICA-iDR method than the TC-GICA method. On the other hand, the neuronal activity levels in many of these regions were not statistically different from the GLM method between the cigarette craving and cigarette resistance due to potentially aberrant BOLD signals.
机译:与基于模型的通用线性模型(GLM)相比,将数据驱动的无监督学习(例如独立成分分析)有针对性地应用于血氧水平相关(BOLD)的功能磁共振成像(fMRI)数据。这是由于这种无监督学习方法能够从BOLD信号中提取有意义的神经元活动,而BOLD信号是混杂的非神经伪影(例如头部运动和生理伪影)以及神经元信号的混合物。在这项研究中,我们通过确定香烟渴望和香烟抵抗力的神经基础来支持这一主张。 fMRI数据是从大量吸烟者(n = 14)获得的,他们分别观看有和没有烟的图像。在采集两次fMRI运行期间,他们被要求在观看吸烟图像时渴望或抵制吸烟的欲望。将基于时间级联(TC)和带有迭代双回归扩展(TC-GICA-iDR)的TC-GICA的数据独立组分析(GICA)方法应用于数据。从结果可以看出,在视觉区域和额叶上皮区域分别确定了渴望香烟和与香烟抵抗相关的神经元激活,与TC-GICA方法相比,TC-GICA-iDR方法具有更大的统计学意义。另一方面,由于潜在的异常大胆信号,在这些区域中的许多区域的神经元活性水平在香烟渴望和香烟抵抗之间与GLM方法没有统计学差异。

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