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首页> 外文期刊>Molecular Neurobiology >Development of a Novel Neuro-immune and Opioid-Associated Fingerprint with a Cross-Validated Ability to Identify and Authenticate Unknown Patients with Major Depression: Far Beyond Differentiation, Discrimination, and Classification
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Development of a Novel Neuro-immune and Opioid-Associated Fingerprint with a Cross-Validated Ability to Identify and Authenticate Unknown Patients with Major Depression: Far Beyond Differentiation, Discrimination, and Classification

机译:开发一种新型神经免疫和阿片类药物相关的指纹,具有交叉验证的能力,用于识别和验证具有重大抑郁症的未知患者:远远超出分化,歧视和分类

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摘要

Major depressive disorder (MDD) is characterized by signaling aberrations in interleukin (IL)-6, IL-10, beta-endorphins as well as mu (MOR) and kappa (KOR) opioid receptors. Here we examined whether these biomarkers may aid in the classification of unknown subjects into the target class MDD. The aforementioned biomarkers were assayed in 60 first-episode, drug-naive depressed patients and 30 controls. We used joint principal component analysis (PCA) performed on all subjects to check whether subjects cluster by classes; support vector machine (SVM) with 10-fold validation; and linear discriminant analysis (LDA) and SIMCA performed on calibration and validation sets and we computed the figures of merit and learnt from the data. PCA shows that both groups were well separated using the first three PCs, while correlation loadings show that all five biomarkers have discriminatory value. SVM and LDA yielded an accuracy of 100% in validation samples. Using SIMCA, there was a highly significant discrimination of both groups (model-to-model distance = 110.2); all biomarkers showed a significant discrimination and modeling power, while 100% of the patients were authenticated as MDD cases with a specificity of 93.3%. We have delineated that MDD is a distinct class with respect to neuro-immune and opioid biomarkers and that future unknown subjects can be authenticated as having MDD using this SIMCA fingerprint. Precision psychiatry should employ SIMCA to (a) authenticate patients as belonging to the claimed target class and identify other subjects as outsiders, members of another class, or aliens; and (b) acquire knowledge through learning from the data by constructing a biomarker fingerprint of the target class.
机译:主要抑郁症(MDD)的特征在于白细胞介素(IL)-6,IL-10,β-内啡肽中的信号畸变以及穆(MOR)和Kappa(kor)阿片受体。在这里,我们检查了这些生物标志物是否可以有助于将未知受试者分类到目标类MDD中。上述生物标志物在60个第一发断,药物 - 幼稚抑制患者和30例对照中进行测定。我们在所有受试者上使用了联合主成分分析(PCA),以检查受试者是否按类集群;支持向量机(SVM),验证为10倍;在校准和验证集上执行的线性判别分析(LDA)和SIMCA,我们计算了Merit的数字并从数据中学习。 PCA表明,两个组使用前三名PC分离得很好,而相关载荷表明所有五个生物标志物都具有歧视性值。 SVM和LDA在验证样本中产生100%的精度。使用SIMCA,两组有一个非常显着的歧视(模型 - 型距离= 110.2);所有生物标志物都表现出显着的歧视和建模能力,而100%的患者被鉴定为特异性93.3%的MDD病例。我们已经描绘了MDD是关于神经免疫和阿片类药物的独特类别,并且未来未知的受试者可以通过使用此SIMCA指纹的MDD进行身份验证。精密精神病学应该雇用SIMCA(a)验证患者属于所要求保护的目标课程,并将其他主题识别为外人,另一堂课的成员或外国人; (b)通过构建目标类的生物标志物指纹来获取知识通过从数据学习。

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