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An alternative evaluation of post traumatic stress disorder with machine learning methods

机译:机床学习方法后创伤性应激障碍的替代评价

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In the world we live in, people from different professions are at increased risk for depressive symptoms and posttraumatic stress disorder (PTSD) due to hard working or extreme environmental conditions. Accurate diagnosis and determining the causes are very important to solve these kinds of psychological problems. Machine learning (ML) techniques are gaining popularity in neuroscience due to their high diagnostic capability and effective classification ability. In this paper, alternative hybrid systems which allowed us to develop automatic classifiers for finding the Posttraumatic stress disorder (PTSD) patients are proposed and compared. With the proposed system, not only the PTSD individuals are classified by ML techniques such as sequential minimal optimization (SMO), multilayer perceptron (MLP), Na?ve Bayes (NB) but also the important indications of patients' trauma are determined by three popular feature selection methods such as chi-square, principal component analysis (PCA) and correlation based-feature selection (CFS). The effectiveness of the proposed system is examined on a real world dataset. Due to obtained results we can estimate the individuals as PTSD or NONPTSD patients with 74–79% accuracy range, further to that instead of 39 features 7 features are remarked as the most critical symptoms for PTSD.
机译:在我们生活中,由于勤奋或极端的环境条件,来自不同职业的人们来自不同职业的风险增加了抑郁症状和暴力应激障碍(PTSD)。准确的诊断和确定原因对于解决这些心理问题非常重要。由于其高诊断能力和有效的分类能力,机器学习(ML)技术在神经科学中受到普及。在本文中,提出并比较了允许我们开发用于寻找前后应激障碍(PTSD)患者的自动分类剂的替代混合系统。利用所提出的系统,不仅PTSD个体被ML技术分类,如连续最小优化(SMO),Multilayer Perceptron(MLP),Na'Ve Bayes(NB),而且患者创伤的重要迹象是三个流行的特征选择方法,如Chi-Square,主成分分析(PCA)和基于相关的特征选择(CFS)。在现实世界数据集上审查了所提出的系统的有效性。由于获得的结果,我们可以将个体估计为具有74-79%的精度范围的PTSD或非斑块,而不是39个特征7个功能被评为最关键的PTSD症状。

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