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Design on Modeling of Multimodal Depression Aided Diagnosis from Psychological Perspective

机译:心理视角型多峰抑郁症辅助诊断建模设计

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The pervasive hopelessness and high risk of suicide in depressive patients suggested that the self might be abnormal among them. Current state-of-the-art depression diagnostic methods include on the basis of an interview style assessment between a clinician and a patient, patient self-reporting, and typical rating scales. However, these tests are subjective and single in nature, low diagnostic accuracy and lack an objective predictor of depression. Therefore, in order to enhance current diagnostic methods, an objective screening mechanism based on physiological and behavioral signals is needed. Learning from previous relevant research and preliminary experimental result, a range of acoustic features have already been identified for applying to the classification of depression. The current project will systematically address above issue, by focusing on abnormalities of self-related processing in patients with unipolar depressive disorder and healthy controls. On the basis of multimodal data acquisition, we will utilize accurate and sophisticated ways of feature extraction and fusion to develop a depression classification model. We present a method of combining the deep learning algorithm with classical psychological experiment technology, which improves the accuracy recognition and provides an objective basis for clinical diagnosis. The result will not only provide new evidence and support for studies on abnormalities of self-related processing in depression via multimodal analysis, but also lay a solid foundation for enriching the diagnosis of depression.
机译:抑郁症患者的普遍绝望和自杀的高风险表明,它们之间的异常可能是异常的。目前最先进的抑郁型诊断方法包括基于临床医生和患者,患者自我报告和典型评级尺度之间的面试风格评估。然而,这些测试是主观的,单身的性质,低诊断准确性,缺乏抑郁的客观预测因子​​。因此,为了增强电流诊断方法,需要基于生理和行为信号的客观筛选机制。从以前的相关研究和初步实验结果学习,已经确定了一系列声学特征来申请抑郁症的分类。通过专注于单极抑郁症和健康对照的患者的自相关处理异常,将系统地解决上述问题。在多模式数据采集的基础上,我们将利用精确和复杂的特征提取和融合方式来开发抑郁分类模型。我们提出了一种与经典心理实验技术结合的方法,提高了准确性识别,为临床诊断提供了客观基础。结果不仅可以提供新的证据和支持,可以通过多式联运分析对抑郁症中自相关加工异常的研究进行研究,但也为富集抑郁症的诊断奠定了坚实的基础。

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