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Detection Study of Bipolar Depression Through the Application of a Model-Based Algorithm in Terms of Clinical Feature and Peripheral Biomarkers

机译:通过基于模型的算法根据临床特征和周围生物标志物检测双相抑郁症的研究

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摘要

>Objectives: The nature of the diagnostic classification of mood disorder is a typical dichotomous data problem and the method of combining different dimensions of evidences to make judgments might be more statistically reliable. In this paper, we aimed to explore whether peripheral neurotrophic factors could be helpful for early detection of bipolar depression. >Methods: A screening method combining peripheral biomarkers and clinical characteristics was applied in 30 patients with major depressive disorder (MDD) and 23 patients with depressive episode of bipolar disorder. By a model-based algorithm, some information was extracted from the dataset and used as a “model” to approach penalized regression model for stably differential diagnosis for bipolar depression. >Results: A simple and efficient model of approaching the diagnosis of individuals with depressive symptoms was established with a fitting degree (90.58%) and an acceptable cross-validation error rate. Neurotrophic factors of our interest were successfully screened out from the feature selection and optimized model performance as reliable predictive variables. >Conclusion: It seems to be feasible to combine different types of clinical characteristics with biomarkers in order to detect bipolarity of all depressive episodes. Neurotrophic factors of our interest presented its stable discriminant potentiality in unipolar and bipolar depression, deserving validation analysis in larger samples.
机译:>目的:情绪障碍的诊断分类是典型的二分数据问题,结合证据的不同维度做出判断的方法在统计学上可能更可靠。在本文中,我们旨在探讨外周神经营养因子是否有助于早期发现双相抑郁症。 >方法:在30例重度抑郁症(MDD)患者和23例双相情感障碍抑郁症患者中应用了一种结合周边生物标志物和临床特征的筛选方法。通过基于模型的算法,从数据集中提取了一些信息,并将其用作“模型”,以建立用于双相抑郁症稳定鉴别诊断的惩罚回归模型。 >结果:建立了一个适用于抑郁症状个体诊断的简单有效模型,其拟合度(90.58%)和可接受的交叉验证错误率。我们从特征选择和优化的模型性能中成功筛选出了我们感兴趣的神经营养因子,并将其作为可靠的预测变量。 >结论:将不同类型的临床特征与生物标志物结合以检测所有抑郁发作的双相性似乎是可行的。我们感兴趣的神经营养因子在单相和双相抑郁中表现出稳定的判别潜力,值得在较大样本中进行验证分析。

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