Mishra Archana, Maiti Rituparna, Jena Monalisa, Srinivasan Anand
All India Institute of Medical Sciences (AIIMS), Bhubaneswar, Odisha, India.
Psychiatr Danub. 2025 May;37(1):46-54. doi: 10.24869/psyd.2025.46.
A post-hoc analysis was planned to create and compare machine learning algorithms to predict treatment responses to sleep disturbances in patients with schizophrenia.
This post-hoc analysis was done on a randomized controlled trial (NCT03075657), studying the effect of add-on ramelteon on sleep and circadian rhythm disturbances in 120 patients with schizophrenia. We created models using random forest, k-nearest neighbors, extreme gradient boosting machine, R part Classification and regression trees and logistic regression algorithms. R language with mlbench, caret, MASS, rPART packages were used. Box plot and dot plot were plotted to visualize comparisons among the models.
The logistic regression algorithm was found to be the best-fit model with a specificity of 0.93 and sensitivity of 0.45, and ROC 0.78. Predominant symptom domain (positive or negative), urinary melatonin and global PSQI score at baseline were the most important variables when plotted in terms of mean decrease accuracy. These variables contributed significantly to the final model in the logistic regression algorithm, and the accuracy of this algorithm was found to be 90% for prediction.
Machine learning models are an emerging trend in clinical research and should be translated into clinical practice. The logistic regression model predicted responders with 90% accuracy.
计划进行一项事后分析,以创建并比较机器学习算法,用于预测精神分裂症患者对睡眠障碍的治疗反应。
这项事后分析基于一项随机对照试验(NCT03075657)开展,该试验研究了120例精神分裂症患者添加雷美替胺对睡眠和昼夜节律障碍的影响。我们使用随机森林、k近邻、极端梯度提升机、R部分分类与回归树以及逻辑回归算法创建模型。使用了带有mlbench、caret、MASS、rPART包的R语言。绘制箱线图和点图以直观展示各模型之间的比较。
发现逻辑回归算法是最佳拟合模型,特异性为0.93,敏感性为0.45,曲线下面积为0.78。按平均精度下降绘制时,主要症状领域(阳性或阴性)、尿褪黑素和基线时的总体匹兹堡睡眠质量指数得分是最重要的变量。这些变量对逻辑回归算法中的最终模型有显著贡献,该算法的预测准确率为90%。
机器学习模型是临床研究中的一个新兴趋势,应转化为临床实践。逻辑回归模型预测反应者的准确率为90%。