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A support vector machine model provides an accurate transcript-level-based diagnostic for major depressive disorder

机译:支持向量机模型为重度抑郁症提供准确的基于转录本水平的诊断

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摘要

Major depressive disorder (MDD) is a critical cause of morbidity and disability with an economic cost of hundreds of billions of dollars each year, necessitating more effective treatment strategies and novel approaches to translational research. A notable barrier in addressing this public health threat involves reliable identification of the disorder, as many affected individuals remain undiagnosed or misdiagnosed. An objective blood-based diagnostic test using transcript levels of a panel of markers would provide an invaluable tool for MDD as the infrastructure—including equipment, trained personnel, billing, and governmental approval—for similar tests is well established in clinics worldwide. Here we present a supervised classification model utilizing support vector machines (SVMs) for the analysis of transcriptomic data readily obtained from a peripheral blood specimen. The model was trained on data from subjects with MDD (n=32) and age- and gender-matched controls (n=32). This SVM model provides a cross-validated sensitivity and specificity of 90.6% for the diagnosis of MDD using a panel of 10 transcripts. We applied a logistic equation on the SVM model and quantified a likelihood of depression score. This score gives the probability of a MDD diagnosis and allows the tuning of specificity and sensitivity for individual patients to bring personalized medicine closer in psychiatry.
机译:严重抑郁症(MDD)是发病和致残的重要原因,每年的经济成本高达数千亿美元,因此需要更有效的治疗策略和新颖的转化研究方法。解决这一公共卫生威胁的显着障碍涉及对疾病的可靠识别,因为许多受影响的个体仍未得到诊断或误诊。客观的基于血液的诊断测试使用一组标记物的转录水平,将为MDD提供宝贵的工具,因为在全世界的诊所中,类似设备的基础设施(包括设备,训练有素的人员,账单和政府批准)都已建立。在这里,我们介绍了一种利用支持向量机(SVM)进行监督的分类模型,用于分析易于从外周血标本中获得的转录组数据。该模型是根据来自MDD(n = 32),年龄和性别匹配的对照(n = 32)的受试者的数据进行训练的。该SVM模型使用一组10个转录本,对MDD的诊断提供了90.6%的交叉验证敏感性和特异性。我们在SVM模型上应用了逻辑方程,并量化了抑郁评分的可能性。该分数给出了MDD诊断的可能性,并允许调整个别患者的特异性和敏感性,从而使个性化药物在精神病学领域的应用更加紧密。

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