IF 3.5 3区 医学
Xin Luo, Jinjun Zhao, Danfeng Zou, Xiaoning Luo, Meida Fan, Hongling Hu, Ping Zheng, Yilei Li, Renfei Xia, Liqian Mo
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引用次数: 0

摘要

目前,还没有可用于临床实践的糖皮质激素剂量预测模型。本研究旨在利用机器学习技术开发和验证个性化剂量模型。研究对象为在南方医院登记并接受泼尼松治疗的系统性红斑狼疮患者。研究采用单变量分析来确认特征变量。随后,利用随机森林(RF)算法对特征变量的缺失值进行插值。最后,我们评估了 11 种机器学习和深度学习算法(Logistic、SVM、RF、Adaboost、Bagging、XGBoost、LightGBM、CatBoost、MLP 和 TabNet)的预测能力。最后,使用混淆矩阵对三种治疗方案进行验证。共有 129 名患者符合纳入标准。XGBoost 算法因其卓越的性能而被选为首选方法,准确率达到 0.81。与泼尼松剂量相关性最高的因素是 CYP3A4 (rs4646437)、白蛋白 (ALB)、血红蛋白 (HGB)、抗双链 DNA 抗体 (Anti-dsDNA)、红细胞沉降率 (ESR)、年龄和 HLA-DQA1 (rs2187668)。根据验证结果,小剂量泼尼松(⩾5 毫克但
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction and evaluation of glucocorticoid dose prediction model based on genetic and clinical characteristics of patients with systemic lupus erythematosus.

Currently, no glucocorticoid dose prediction model is available for clinical practice. This study aimed to utilise machine learning techniques to develop and validate personalised dosage models. Participants were patients with SLE who were registered at Nanfang Hospital and received prednisone. Univariate analysis was used to confirm the feature variables. Subsequently, the random forest (RF) algorithm was utilised to interpolate the absent values of the feature variables. Finally, we assessed the prediction capabilities of 11 machine learning and deep-learning algorithms (Logistic, SVM, RF, Adaboost, Bagging, XGBoost, LightGBM, CatBoost, MLP, and TabNet). Finally, a confusion matrix was used to validate the three regimens. In total, 129 patients met the inclusion criteria. The XGBoost algorithm was selected as the preferred method because of its superior performance, achieving an accuracy of 0.81. The factors exhibiting the highest correlation with the prednisone dose were CYP3A4 (rs4646437), albumin (ALB), haemoglobin (HGB), anti-double-stranded DNA antibodies (Anti-dsDNA), erythrocyte sedimentation rate (ESR), age, and HLA-DQA1 (rs2187668). Based on validation, the precision and recall rates for low-dose prednisone (⩾5 mg but <7.5 mg/d) were 100% and 40% respectively. Similarly, for medium-dose prednisone (⩾7.5 mg but <30 mg/d), the accuracy and recall rates were 88% and 88%, and for high-dose prednisone (⩾30 mg but ⩽100 mg/d), the accuracy and recall rates were 62% and 100% respectively. A robust machine learning model was developed to accurately predict prednisone dosage by integrating the identified genetic and clinical factors.

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来源期刊
International Journal of Immunopathology and Pharmacology
International Journal of Immunopathology and Pharmacology Immunology and Microbiology-Immunology
自引率
0.00%
发文量
88
期刊介绍: International Journal of Immunopathology and Pharmacology is an Open Access peer-reviewed journal publishing original papers describing research in the fields of immunology, pathology and pharmacology. The intention is that the journal should reflect both the experimental and clinical aspects of immunology as well as advances in the understanding of the pathology and pharmacology of the immune system.
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