LASSO regression

LASSO 回归
  • 文章类型: Systematic Review
    最小绝对收缩和选择算子(Lasso)回归是一种统计技术,可用于研究临床变量在结果预测中的影响。在这项研究中,我们旨在系统回顾Lasso回归在胃肠病学中的应用,以建立预测模型,并提供执行Lasso回归的方法.在PubMed中进行了全面的搜索策略,Embase和CochraneCENTRAL数据库(关键词:套索回归;胃肠道/疾病)遵循系统评价和荟萃分析(PRISMA)指南的首选报告项目。根据预定义的选择标准筛选研究的合格性,并使用标准化表格提取数据。共纳入16项研究,包括各种胃肠病相关结局。样本量为134至8861名受试者。11项研究报告了与肝脏疾病相关的预测模型,而五个侧重于非肝病因模型。Lasso回归用于变量选择,风险预测和模型开发,使用各种验证方法和性能指标。模型性能指标包括接收机工作特性下的区域(AUROC),C指数和校准图。在胃肠病学中,套索回归已用于各种疾病,如炎症性肠病,肝病和食道癌。它对于具有许多预测因子的复杂场景很有价值。然而,其有效性取决于高质量和完整的数据。虽然它确定了重要的变量,它没有提供因果解释。因此,考虑到研究设计和数据质量,谨慎的解释是必要的。
    Least absolute shrinkage and selection operator (Lasso) regression is a statistical technique that can be used to study the effects of clinical variables in outcome prediction. In this study, we aimed at systematically reviewing the application of Lasso regression in gastroenterology for developing predictive models and providing a method of performing Lasso regression. A comprehensive search strategy was conducted in PubMed, Embase and Cochrane CENTRAL databases (Keywords: lasso regression; gastrointestinal tract/diseases) following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. Studies were screened for eligibility based on pre-defined selection criteria and the data was extracted using a standardized form. Total 16 studies were included, comprising a diverse range of gastroenterological disease-related outcomes. Sample sizes ranged from 134 to 8861 subjects. Eleven studies reported liver disease-related prediction models, while five focused on non-hepatic etiology models. Lasso regression was applied for variable selection, risk prediction and model development, with various validation methods and performance metrics used. Model performance metrics included Area Under the Receiver Operating Characteristics (AUROC), C-index and calibration plots. In gastroenterology, Lasso regression has been used in various diseases such as inflammatory bowel disease, liver disease and esophageal cancer. It is valuable for complex scenarios with many predictors. However, its effectiveness depends on high-quality and complete data. While it identifies important variables, it doesn\'t provide causal interpretations. Therefore, cautious interpretation is necessary considering the study design and data quality.
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