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An Enhanced Ant Colony Optimization Mechanism for the Classification of Depressive Disorders

机译:一种增强的蚁群优化机制在抑郁障碍分类中的应用

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摘要

Bipolar disorder is marked by mood swings that alternate between mania and depression. The stages of bipolar disorder (BD), as one of the most common mental conditions, are often misdiagnosed as major depressive disorder (MDD), resulting in ineffective treatment and a poor prognosis. As a result, distinguishing MDD from BD at an earlier phase of the disease may aid in more efficient and targeted treatments. In this research, an enhanced ACO (IACO) technique biologically inspired by and following the required ant colony optimization (ACO) was utilized to minimize the number of features by deleting unrelated or redundant feature data. To distinguish MDD and BD individuals, the selected features were loaded into a support vector machine (SVM), a sophisticated mathematical technique for classification process, regression, functional estimates, and modeling operations. In respect of classifications efficiency and frequency of features extracted, the performance of the IACO method was linked to that of regular ACO, particle swarm optimization (PSO), and genetic algorithm (GA) techniques. The validation was performed using a nested cross-validation (CV) approach to produce nearly reliable estimates of classification error.
机译:双相情感障碍的特征是在躁狂和抑郁之间交替出现情绪波动。双相情感障碍 (BD) 的分期作为最常见的精神疾病之一,经常被误诊为重度抑郁症 (MDD),导致治疗无效和预后不良。因此,在疾病的早期阶段区分MDD和BD可能有助于更有效和更有针对性的治疗。在这项研究中,利用了一种增强的 ACO (IACO) 技术,该技术受生物学启发并遵循所需的蚁群优化 (ACO),通过删除不相关或冗余的特征数据来最大限度地减少特征数量。为了区分 MDD 和 BD 个体,将选定的特征加载到支持向量机 (SVM) 中,这是一种用于分类过程、回归、函数估计和建模操作的复杂数学技术。在特征提取的分类效率和频率方面,IACO方法的性能与常规ACO、粒子群优化(PSO)和遗传算法(GA)技术的性能相关。使用嵌套交叉验证 (CV) 方法进行验证,以产生近乎可靠的分类误差估计值。

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