听觉奇球功能MRI分类精神分裂症患者与健康人的新方法

A. Juneja, Bharti, R. Agrawal
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引用次数: 3

摘要

精神分裂症是一种严重的精神疾病,需要早期准确诊断。功能磁共振成像(fMRI)可以识别精神分裂症患者与健康受试者在激活模式上的差异。然而,使用功能磁共振成像的人工诊断依赖于主观观察,可能是错误的。这促使模式识别和机器学习研究界为精神分裂症患者和健康受试者的分类开发一个可靠和有效的决策模型。然而,功能磁共振成像数据的高维性和低可用性导致了决策模型的低维问题,从而降低了决策模型的性能。本研究采用特征提取和特征选择相结合的方法,对精神分裂症患者和健康受试者进行相关和非冗余特征的分类。使用一般线性模型方法从预处理的fMRI数据中提取特征。接下来,采用单变量方法Fisher’s discriminant ratio进行特征选择,即确定判别特征的子集。此外,采用最小冗余最大相关性(mRMR)多变量特征选择方法,获得一组相关和非冗余特征,用于支持向量机学习决策模型。实验使用了两个平衡且年龄匹配良好的听觉怪任务数据集,这些数据集来自于一个公开的多站点FBIRN数据集。第一个数据集包括通过1.5台特斯拉扫描仪获得的34名精神分裂症患者和34名健康受试者的fMRI扫描,第二个数据集包括通过3台特斯拉扫描仪获得的25名精神分裂症患者和25名健康受试者。从敏感性、特异性和分类准确性三个方面对该方法进行了评价,并与两种已知的利用fMRI对精神分裂症患者和健康受试者进行分类的方法进行了比较。实验结果表明,该模型在灵敏度、特异性和分类精度方面均优于现有方法。该方法在1.5个特斯拉和3个特斯拉数据集上的分类准确率分别为88.2%和78.0%。此外,还鉴定了包含鉴别特征的大脑区域,这些区域可能是使用功能磁共振成像诊断精神分裂症的潜在生物标志物。
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A Novel Approach for Classification of Schizophrenia Patients and Healthy Subjects Using Auditory Oddball Functional MRI
Schizophrenia is a serious psychiatric illness which needs early and accurate diagnosis. Difference in activation patterns of schizophrenia patients and healthy subjects can be identified with the help of functional magnetic resonance imaging (fMRI). However, manual diagnosis using fMRI depends on subjective observation and may be erroneous. This has motivated the pattern recognition and machine learning research community to develop a reliable and efficient decision model for classification of schizophrenia patients and healthy subjects. However, high dimensionality and low availability of fMRI data leads to the curse-of-dimensionality problem which may degrade the performance of decision model. In the present research work, a combination of feature extraction and feature selection techniques is utilised to obtain a reduced set of relevant and non-redundant features for classification of schizophrenia patients and healthy subjects. Features are extracted from pre-processed fMRI data using a general linear model approach. Next Fisher's discriminant ratio, a univariate method, is employed for feature selection i.e. To determine a subset of discriminative features. Further, minimum Redundancy Maximum Relevance (mRMR) feature selection, a multivariate method, is employed to obtain a set of relevant and non-redundant features which are used for learning a decision model using support vector machine. Two balanced and well-age matched datasets of auditory oddball task derived from a publicly available multisite FBIRN dataset are used for experiments. First dataset consists of fMRI scans of 34 schizophrenia patients and 34 healthy subjects acquired through 1.5 Tesla scanners while second dataset consists of 25 schizophrenia patients and 25 healthy subjects acquired through 3 Tesla scanners. The performance is evaluated in terms of sensitivity, specificity and classification accuracy, and compared with two well-known existing approaches for classification of schizophrenia patients and healthy subjects using fMRI. Experimental results demonstrate that the proposed model outperforms the existing approaches in terms of sensitivity, specificity and classification accuracy. The proposed approach achieves classification accuracy of 88.2% and 78.0% for 1.5 Tesla and 3 Tesla datasets respectively. In addition, the brain regions containing the discriminative features are identified which may be potential biomarkers for diagnosis of schizophrenia using fMRI.
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