Sakarya University, Faculty of Computer and Information Sciences, Department of Computer Engineering, Sakarya, Turkey.
Sakarya University, Faculty of Computer and Information Sciences, Department of Information Systems Engineering, Sakarya, Turkey.
Comput Biol Med. 2023 Jul;161:107003. doi: 10.1016/j.compbiomed.2023.107003. Epub 2023 May 9.
Undiagnosed prenatal anxiety and depression have the potential to worsen and have an adverse effect on both the mother and the infant. Although the diagnosis is made by specialist doctors, it is unclear which parameters are more effective. Especially in medicine, it is crucial to diagnose disease with high accuracy. For this reason, in this study, a questionnaire study was first conducted on pregnant women, and real original data were collected. Then, the Marine Predators Algorithm (MPA), one of the current metaheuristic algorithms inspired by nature, was combined with K-Nearest Neighbors (kNN) to determine high-priority features in the collected data. As a result, five of the 147 features selected by the proposed method were determined as high priority and approved by the doctors. In addition, the proposed method is compared with the Chi-square method, which is one of the filter-based feature selection methods. Thanks to the proposed feature selection method based on MPA and kNN, it has been observed that the classification gives more successful results in a shorter time with 98.11% success, and the model supports the diagnosis stage of the doctors.
未确诊的产前焦虑和抑郁有可能恶化,并对母亲和婴儿都产生不良影响。虽然诊断是由专科医生做出的,但目前还不清楚哪些参数更为有效。特别是在医学领域,准确诊断疾病至关重要。出于这个原因,在这项研究中,首先对孕妇进行了问卷调查研究,收集了真实的原始数据。然后,将受自然启发的元启发式算法之一——海洋捕食者算法(MPA)与 K-最近邻(kNN)相结合,以确定所收集数据中的高优先级特征。结果,在所提出的方法中选择的 147 个特征中有 5 个被确定为高优先级,并得到了医生的认可。此外,还将所提出的基于 MPA 和 kNN 的特征选择方法与卡方方法(一种基于过滤的特征选择方法)进行了比较。由于基于 MPA 和 kNN 的特征选择方法,分类在更短的时间内以 98.11%的成功率获得了更成功的结果,并且该模型支持医生的诊断阶段。