利用fnirs和深度神经网络鉴别双相抑郁与重性抑郁障碍

Tengfei Ma, Hailong Lyu, Jingjing Liu, Yuting Xia, C. Qian, Julian S Evans, Wei-juan Xu, Jianbo Hu, Shao-hua Hu, and Sailing He
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引用次数: 8

摘要

多种心理量表是目前临床上诊断心境障碍最重要的依据。经验丰富的精神科医生根据临床症状和相关的评估分数来评估和诊断情绪障碍。这种基于症状的临床标准受到精神科医生经验的限制。在实践中,双相情感障碍伴抑郁发作(bipolar depression, BD)患者与重度抑郁障碍(major depressive disorder, MDD)患者难以区分。功能近红外光谱(fNIRS)技术通常用于感知人类的情绪。它测量大脑的血流动力学参数,这些参数与大脑活动有关。在此,我们提出了一种基于深度神经网络的机器学习分类方法,用于情绪障碍的大脑激活。该方法使用注意、长、短时记忆神经网络确定大时间尺度的连通性,使用InceptionTime神经网络考虑短时特征信息。我们的组合方法被称为AttentionLSTM-InceptionTime (ALSTMIT)。我们收集了36例重度抑郁症患者和48例抑郁状态BD患者的fNIRS数据。所有患者在进行语言流畅性测试(VFT)时均采用fNIRS监测。我们用ALSTMIT网络训练模型。该算法能够有效区分两类患者,在测试集上的平均分类准确率稳定达到96.2%。分类可以为临床医生提供客观的诊断工具,该算法可能对情绪障碍患者的早期发现和精确治疗至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DISTINGUISHING BIPOLAR DEPRESSION FROM MAJOR DEPRESSIVE DISORDER USING FNIRS AND DEEP NEURAL NETWORK
A variety of psychological scales are utilized at present as the most important basis for clinical diagnosis of mood disorders. An experienced psychiatrist assesses and diagnoses mood disorders based on clinical symptoms and relevant assessment scores. This symptom based clinical criterion is limited by the psychiatrist’s experience. In practice, it is difficult to distinguish the patients with bipolar disorder with depression episode (bipolar depression, BD) from those with major depressive disorder (MDD). The functional near-infrared spectroscopy (fNIRS) technology is commonly used to perceive the emotions of a human. It measures the hemodynamic parameters of the brain, which correlate with cerebral activation. Here, we propose a machine learning classification method based on deep neural network for the brain activations of mood disorders. Large time scale connectivity is determined using an attention long short term memory neural network and short-time feature information are considered using the InceptionTime neural network in this method. Our combined method is referred to as AttentionLSTM-InceptionTime (ALSTMIT). We collected fNIRS data of 36 MDD patients and 48 BD patients who were in the depressed state. All the patients were monitored by fNIRS during conducting the verbal fluency task (VFT). We trained the model with the ALSTMIT network. The algorithm can distinguish the two types of patients effectively: the average accuracy of classification on the test set can reach 96.2% stably. The classification can provide an objective diagnosis tool for clinicians, and this algorithm may be critical for the early detection and precise treatment for the patients with mood disorders.
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