Unlocking treatment success: predicting atypical antipsychotic continuation in youth with mania.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS BMC Medical Informatics and Decision Making Pub Date : 2024-08-02 DOI:10.1186/s12911-024-02622-z
Xiangying Yang, Wenbo Huang, Li Liu, Lei Li, Song Qing, Na Huang, Jun Zeng, Kai Yang
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Abstract

Purpose: This study aimed to create and validate robust machine-learning-based prediction models for antipsychotic drug (risperidone) continuation in children and teenagers suffering from mania over one year and to discover potential variables for clinical treatment.

Method: The study population was collected from the national claims database in China. A total of 4,532 patients aged 4-18 who began risperidone therapy for mania between September 2013 and October 2019 were identified. The data were randomly divided into two datasets: training (80%) and testing (20%). Five regularly used machine learning methods were employed, in addition to the SuperLearner (SL) algorithm, to develop prediction models for the continuation of atypical antipsychotic therapy. The area under the receiver operating characteristic curve (AUC) with a 95% confidence interval (CI) was utilized.

Results: In terms of discrimination and robustness in predicting risperidone treatment continuation, the generalized linear model (GLM) performed the best (AUC: 0.823, 95% CI: 0.792-0.854, intercept near 0, slope close to 1.0). The SL model (AUC: 0.823, 95% CI: 0.791-0.853, intercept near 0, slope close to 1.0) also exhibited significant performance. Furthermore, the present findings emphasize the significance of several unique clinical and socioeconomic variables, such as the frequency of emergency room visits for nonmental health disorders.

Conclusions: The GLM and SL models provided accurate predictions regarding risperidone treatment continuation in children and adolescents with episodes of mania and hypomania. Consequently, applying prediction models in atypical antipsychotic medicine may aid in evidence-based decision-making.

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开启治疗成功之门:预测非典型抗精神病药物在躁狂症青少年中的持续应用。
目的:本研究旨在创建并验证基于机器学习的抗精神病药物(利培酮)对患有躁狂症的儿童和青少年一年内持续用药的稳健预测模型,并发现临床治疗的潜在变量:研究对象来自中国的国家理赔数据库。方法:研究人群来自中国国家理赔数据库,共确定了4532名4-18岁患者,这些患者在2013年9月至2019年10月期间因躁狂症开始接受利培酮治疗。数据被随机分为两个数据集:训练集(80%)和测试集(20%)。除了超级学习器(SL)算法外,还采用了五种常用的机器学习方法来开发非典型抗精神病药物治疗持续性的预测模型。结果显示,在非典型抗精神病药物治疗的辨别力和稳健性方面,机器学习方法均优于其他方法:就预测利培酮治疗持续性的区分度和稳健性而言,广义线性模型(GLM)表现最佳(AUC:0.823,95% CI:0.792-0.854,截距接近0,斜率接近1.0)。SL 模型(AUC:0.823,95% CI:0.791-0.853,截距接近 0,斜率接近 1.0)也表现出显著的性能。此外,本研究结果还强调了几个独特的临床和社会经济变量的重要性,如非精神疾病的急诊就诊频率:结论:GLM和SL模型能准确预测躁狂和躁狂发作的儿童和青少年利培酮治疗的持续性。因此,在非典型抗精神病药物治疗中应用预测模型有助于循证决策。
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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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