Clinical Research Center and Division of Mood Disorders, Shanghai Mental Health Center, Shanghai Jiao Tong University School of Medicine, Shanghai, 200030, China.
Division of Mood Disorders, Shanghai Hongkou Mental Health Center, Shanghai, 200083, China.
Neurosci Bull. 2022 Sep;38(9):979-991. doi: 10.1007/s12264-022-00871-4. Epub 2022 May 19.
Early distinction of bipolar disorder (BD) from major depressive disorder (MDD) is difficult since no tools are available to estimate the risk of BD. In this study, we aimed to develop and validate a model of oxidative stress injury for predicting BD. Data were collected from 1252 BD and 1359 MDD patients, including 64 MDD patients identified as converting to BD from 2009 through 2018. 30 variables from a randomly-selected subsample of 1827 (70%) patients were used to develop the model, including age, sex, oxidative stress markers (uric acid, bilirubin, albumin, and prealbumin), sex hormones, cytokines, thyroid and liver function, and glycolipid metabolism. Univariate analyses and the Least Absolute Shrinkage and Selection Operator were applied for data dimension reduction and variable selection. Multivariable logistic regression was used to construct a model for predicting bipolar disorder by oxidative stress biomarkers (BIOS) on a nomogram. Internal validation was assessed in the remaining 784 patients (30%), and independent external validation was done with data from 3797 matched patients from five other hospitals in China. 10 predictors, mainly oxidative stress markers, were shown on the nomogram. The BIOS model showed good discrimination in the training sample, with an AUC of 75.1% (95% CI: 72.9%-77.3%), sensitivity of 0.66, and specificity of 0.73. The discrimination was good both in internal validation (AUC 72.1%, 68.6%-75.6%) and external validation (AUC 65.7%, 63.9%-67.5%). In this study, we developed a nomogram centered on oxidative stress injury, which could help in the individualized prediction of BD. For better real-world practice, a set of measurements, especially on oxidative stress markers, should be emphasized using big data in psychiatry.
早期区分双相障碍 (BD) 和重性抑郁障碍 (MDD) 较为困难,因为目前尚无工具可用于评估 BD 的风险。本研究旨在开发和验证一种氧化应激损伤模型以预测 BD。数据来自 1252 例 BD 和 1359 例 MDD 患者,其中 64 例 MDD 患者在 2009 年至 2018 年期间被诊断为转为 BD。从 1827 例(70%)患者中随机选择的子样本中收集了 30 个变量,包括年龄、性别、氧化应激标志物(尿酸、胆红素、白蛋白和前白蛋白)、性激素、细胞因子、甲状腺和肝功能以及糖脂代谢。采用单变量分析和最小绝对值收缩和选择算子进行数据降维和变量选择。多元逻辑回归用于构建基于氧化应激生物标志物(BIOS)的预测 BD 模型。在其余 784 例患者(30%)中进行内部验证,并使用来自中国其他 5 家医院的 3797 例匹配患者的数据进行独立外部验证。在列线图上显示了 10 个预测因子,主要是氧化应激标志物。BIOS 模型在训练样本中具有良好的判别能力,AUC 为 75.1%(95%CI:72.9%-77.3%),灵敏度为 0.66,特异性为 0.73。内部验证(AUC 72.1%,68.6%-75.6%)和外部验证(AUC 65.7%,63.9%-67.5%)的判别效果均良好。本研究以氧化应激损伤为中心开发了一个列线图,可以帮助进行个体化的 BD 预测。为了更好地应用于实际,应在精神科中使用大数据强调一组测量方法,特别是氧化应激标志物的测量。