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Maximum Credibility Voting (MCV) An Integrative Approach for Accurate Diagnosis of Major Depressive Disorder from Clinically Readily Available Data

机译:最大可信度投票(MCV)一种综合性诊断临床上可获得数据的主要抑郁症的综合方法

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Diagnosis of Major Depressive Disorder (MDD) is currently a lengthy procedure, due to the low diagnostic accuracy of clinically readily available biomarkers. We integrate predictions from multiple datasets based on a credibility parameter defined on the probabilistic distributions of individual sparse prediction models. We demonstrate by means of structural and resting-state functional Magnetic Resonance Imaging and blood markers obtained from 62 treatment naive MDD patients (age 40.63±9.28, 36 female, HRSD 20.03±4.94) and 66 controls without mental disease history (age 35.52±12.91, 30 female), that our method called Maximum Credibility Voting (MCV) significantly increases diagnostic accuracy from about 65% average classification accuracy of individual biomarker models to 80% (accuracy after integration of the models). Classification results from different combinations of the available datasets validate the method’s stability with respect to redundant or contradictory predictions. By definition, MCV is applicable to any desired data and compatible with missing values, ensuring continued improvement of diagnostic accuracy and patient comfort as new data acquisition methods and markers emerge.
机译:抑郁症的诊断(MDD)是目前冗长过程,由于临床上容易获得的生物标志物的低诊断的准确性。我们整合基于个人稀疏预测模型的概率分布定义的参数信誉多个数据集的预测。我们证明通过从62治疗幼稚MDD的患者获得的结构和静息态功能磁共振成像的装置和血液标志物(年龄40.63±9.28,36女,HRSD 20.03±4.94),并没有精神疾病史66个对照(年龄35.52±12.91 ,30女),我们的方法称为最大诚信表决(MCV)模型的整合之后显著增加了从个体的生物标志物模型的约65%的平均分类准确诊断准确率80%(准确度)。从可用数据集的不同组合的分类结果验证了该方法的稳定性相对于冗余或矛盾的预测。根据定义,MCV适用于任何需要的数据和缺失值,确保诊断的准确性和患者的舒适度的持续改善为新的数据采集方法和指标出现兼容。

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