fMRI: A Benediction to Neuroscience

Vijay Khare, Shaurya Singh, Neha Mehra, Shamim Akhter, Chakresh Kumar Jain
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Abstract

Functional Magnetic Resonance Imaging (fMRI) is a looming technique utilized to study local brain functions in vivo on a large dimensional and temporal resolution. The technique is less expensive and completely noninvasive hence it has swiftly become one of the most preferred choices for brain mapping. It establishes on Magnetic Resonanc e Imaging and helps to identify neural correlations and brain-behavior relationship by detecting the changes in blood flow.fMRI is one of the most frequently used technique in the field of neuroscience which has provided researchers with unparalleled access to the brain in action. The imaging data generated from different neuroimaging techniques (primarily fMRI) is a time series data. A typical fMRI study provides huge volume of noisy data with a complex spatio-temporal correlation configuration. Statistics play a vital stint in apprehending the attributes of the data and gaining appropriate conclusions that can be used and understood by neuroscientists.The data is huge and is characterized by volume, velocity, variety and veracity. These attributes makes it fall under big data further raising the issues of big data analytics. Upcoming technologies such as cloud computing, Spark and massive parallel computational methods /algorithms could provide the possible solutions for analysis and mining of data. The review highlights fMRI as a source of Big Neuroimaging data, different databases & repositories where data is available, its role in healthcare, problems in the data analysis and how the present technologies provide possible solutions for data analysis.
功能磁共振成像:神经科学的祝福
功能磁共振成像(fMRI)是一种在大尺度和时间分辨率上研究局部脑功能的技术。该技术成本较低,且完全无创,因此迅速成为大脑测绘的首选技术之一。它建立在磁共振成像的基础上,通过检测血流的变化,帮助识别神经关联和脑-行为关系。功能磁共振成像是神经科学领域最常用的技术之一,它为研究人员提供了无与伦比的进入大脑活动的途径。不同的神经成像技术(主要是功能磁共振成像)产生的成像数据是一个时间序列数据。典型的功能磁共振成像研究提供了大量具有复杂时空相关结构的噪声数据。统计数据在理解数据的属性和获得神经科学家可以使用和理解的适当结论方面发挥着至关重要的作用。数据量大、速度快、种类多、准确性高。这些属性使其属于大数据,进一步提出了大数据分析的问题。即将到来的技术,如云计算、Spark和大规模并行计算方法/算法,可以为数据分析和挖掘提供可能的解决方案。这篇综述强调了fMRI作为大神经成像数据的来源,不同的数据库和数据存储库,它在医疗保健中的作用,数据分析中的问题以及当前技术如何为数据分析提供可能的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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