Hao Yupei, Zhang Jinyuan, Yu Jing, Yu Ze, Yang Lin, Hao Xin, Gao Fei, Zhou Chunhua
Department of Clinical Pharmacy, the First Hospital of Hebei Medical University, Shijiazhuang, China.
The Technology Innovation Center for Artificial Intelligence in Clinical Pharmacy of Hebei Province, The First Hospital of Hebei Medical University, Shijiazhuang, China.
Ann Gen Psychiatry. 2024 Jan 6;23(1):5. doi: 10.1186/s12991-023-00483-w.
Being one of the most widespread, pervasive, and troublesome illnesses in the world, depression causes dysfunction in various spheres of individual and social life. Regrettably, despite obtaining evidence-based antidepressant medication, up to 70% of people are going to continue to experience troublesome symptoms. Quetiapine, as one of the most commonly prescribed antipsychotic medication worldwide, has been reported as an effective augmentation strategy to antidepressants. The right quetiapine dose and personalized quetiapine treatment are frequently challenging for clinicians. This study aimed to identify important influencing variables for quetiapine dose by maximizing the use of data from real world, and develop a predictive model of quetiapine dose through machine learning techniques to support selections for treatment regimens.
The study comprised 308 depressed patients who were medicated with quetiapine and hospitalized in the First Hospital of Hebei Medical University, from November 1, 2019, to August 31, 2022. To identify the important variables influencing the dose of quetiapine, a univariate analysis was applied. The prediction abilities of nine machine learning models (XGBoost, LightGBM, RF, GBDT, SVM, LR, ANN, DT) were compared. Algorithm with the optimal model performance was chosen to develop the prediction model.
Four predictors were selected from 38 variables by the univariate analysis (p < 0.05), including quetiapine TDM value, age, mean corpuscular hemoglobin concentration, and total bile acid. Ultimately, the XGBoost algorithm was used to create a prediction model for quetiapine dose that had the greatest predictive performance (accuracy = 0.69) out of nine models. In the testing cohort (62 cases), a total of 43 cases were correctly predicted of the quetiapine dose regimen. In dose subgroup analysis, AUROC for patients with daily dose of 100 mg, 200 mg, 300 mg and 400 mg were 0.99, 0.75, 0.93 and 0.86, respectively.
In this work, machine learning techniques are used for the first time to estimate the dose of quetiapine for patients with depression, which is valuable for the clinical drug recommendations.
抑郁症是世界上最普遍、最广泛且最棘手的疾病之一,会导致个人和社会生活各个领域的功能障碍。遗憾的是,尽管使用了循证抗抑郁药物,但仍有高达70%的人会持续出现令人困扰的症状。喹硫平作为全球最常用的抗精神病药物之一,已被报道为一种有效的抗抑郁增效策略。确定合适的喹硫平剂量以及个性化的喹硫平治疗方案对临床医生来说常常具有挑战性。本研究旨在通过最大限度地利用真实世界的数据来确定影响喹硫平剂量的重要变量,并通过机器学习技术开发喹硫平剂量的预测模型,以支持治疗方案的选择。
本研究纳入了2019年11月1日至2022年8月31日期间在河北医科大学第一医院住院并接受喹硫平治疗的308例抑郁症患者。为了确定影响喹硫平剂量的重要变量,进行了单因素分析。比较了九种机器学习模型(XGBoost、LightGBM、RF、GBDT、SVM、LR、ANN、DT)的预测能力。选择具有最佳模型性能的算法来开发预测模型。
通过单因素分析从38个变量中筛选出4个预测因子(p < 0.05),包括喹硫平血药浓度监测值、年龄、平均红细胞血红蛋白浓度和总胆汁酸。最终,使用XGBoost算法创建了喹硫平剂量的预测模型,该模型在九个模型中具有最大的预测性能(准确率 = 0.69)。在测试队列(62例)中,共正确预测了43例患者的喹硫平剂量方案。在剂量亚组分析中,每日剂量为100 mg、200 mg、300 mg和400 mg患者的曲线下面积分别为0.99、0.75、0.93和0.86。
在本研究中,首次使用机器学习技术来估计抑郁症患者的喹硫平剂量,这对临床药物推荐具有重要价值。