Uskudar University, Faculty of Engineering and Natural Sciences, Department of Computer Engineering, Istanbul, Turkey.
NPIstanbul Hospital, Department of Psychiatry, Istanbul, Turkey; Uskudar University, Faculty of Humanities and Social Sciences, Department of Psychology, Istanbul, Turkey.
Comput Biol Med. 2015 Sep;64:127-37. doi: 10.1016/j.compbiomed.2015.06.021. Epub 2015 Jul 2.
Feature selection (FS) and classification are consecutive artificial intelligence (AI) methods used in data analysis, pattern classification, data mining and medical informatics. Beside promising studies in the application of AI methods to health informatics, working with more informative features is crucial in order to contribute to early diagnosis. Being one of the prevalent psychiatric disorders, depressive episodes of bipolar disorder (BD) is often misdiagnosed as major depressive disorder (MDD), leading to suboptimal therapy and poor outcomes. Therefore discriminating MDD and BD at earlier stages of illness could help to facilitate efficient and specific treatment. In this study, a nature inspired and novel FS algorithm based on standard Ant Colony Optimization (ACO), called improved ACO (IACO), was used to reduce the number of features by removing irrelevant and redundant data. The selected features were then fed into support vector machine (SVM), a powerful mathematical tool for data classification, regression, function estimation and modeling processes, in order to classify MDD and BD subjects. Proposed method used coherence, a promising quantitative electroencephalography (EEG) biomarker, values calculated from alpha, theta and delta frequency bands. The noteworthy performance of novel IACO-SVM approach stated that it is possible to discriminate 46 BD and 55 MDD subjects using 22 of 48 features with 80.19% overall classification accuracy. The performance of IACO algorithm was also compared to the performance of standard ACO, genetic algorithm (GA) and particle swarm optimization (PSO) algorithms in terms of their classification accuracy and number of selected features. In order to provide an almost unbiased estimate of classification error, the validation process was performed using nested cross-validation (CV) procedure.
特征选择(FS)和分类是数据分析、模式分类、数据挖掘和医学信息学中连续使用的人工智能(AI)方法。除了 AI 方法在健康信息学中的应用中有前途的研究外,使用更具信息量的特征对于早期诊断至关重要。作为一种常见的精神障碍,双相情感障碍(BD)的抑郁发作经常被误诊为重度抑郁症(MDD),导致治疗效果不佳和预后不良。因此,在疾病的早期阶段区分 MDD 和 BD 可以帮助促进有效的、有针对性的治疗。在这项研究中,使用了一种基于标准蚁群优化(ACO)的新型 FS 算法,称为改进的 ACO(IACO),通过去除不相关和冗余的数据来减少特征的数量。然后,将选择的特征输入支持向量机(SVM),这是一种用于数据分类、回归、函数估计和建模过程的强大数学工具,以对 MDD 和 BD 受试者进行分类。该方法使用相干性,这是一种有前途的定量脑电图(EEG)生物标志物,从 alpha、theta 和 delta 频带计算的值。新型 IACO-SVM 方法的出色性能表明,使用 48 个特征中的 22 个,可以区分 46 个 BD 和 55 个 MDD 受试者,总体分类准确率为 80.19%。还比较了 IACO 算法与标准 ACO、遗传算法(GA)和粒子群优化(PSO)算法在分类准确性和选择特征数量方面的性能。为了提供分类错误的几乎无偏估计,使用嵌套交叉验证(CV)过程进行验证过程。