Review of Machine Learning Classifier Toolbox of Neuroimaging Data

Rashmi Lad, P. Metkewar
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Abstract

Machine learning and artificial neural network is a growing field in medical imaging or neuroimaging in the present decade. Structural and functional neuroimaging is involved in the investigation of diagnosis of brain tumor and mental illness. To acquire the knowledge from previous experience and perception is called learning. Supervised and unsupervised machine learning algorithm also works on the same principles. It trains neuroimaging techniques like fMRI, EEG, MEG & PET data to extract features from the existing information and then predicts or makes decision that are useful for diagnoses in the medical field. The objective of this study is to give overview of machine learning toolbox that is used for analyzing the neuroimaging data without the deep knowledge of programming languages. These entire machine learning tools helps the experts, researchers for further investigation in the field of neuroimaging data.
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神经影像数据机器学习分类器工具箱综述
机器学习和人工神经网络是近十年来医学影像学或神经影像学的一个新兴领域。结构和功能神经影像学涉及脑肿瘤和精神疾病的诊断研究。从以前的经验和知觉中获得知识叫做学习。有监督和无监督机器学习算法也基于相同的原理。它训练神经成像技术,如fMRI、EEG、MEG和PET数据,从现有信息中提取特征,然后预测或做出对医学领域诊断有用的决策。本研究的目的是概述用于分析神经成像数据的机器学习工具箱,而无需深入了解编程语言。这些完整的机器学习工具帮助专家、研究人员在神经成像数据领域进行进一步的研究。
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