Wang Xinkai, Feng Yanbo, Tong Boning, Bao Jingxuan, Ritchie Marylyn D, Saykin Andrew J, Moore Jason H, Urbanowicz Ryan, Shen Li
University of Pennsylvania, Philadelphia, PA.
Indiana University, Indianapolis, IN.
AMIA Jt Summits Transl Sci Proc. 2023 Jun 16;2023:544-553. eCollection 2023.
STREAMLINE is a simple, transparent, end-to-end automated machine learning (AutoML) pipeline for easily conducting rigorous machine learning (ML) modeling and analysis. The initial version is limited to binary classification. In this work, we extend STREAMLINE through implementing multiple regression-based ML models, including linear regression, elastic net, group lasso, and L21 norm. We demonstrate the effectiveness of the regression version of STREAMLINE by applying it to the prediction of Alzheimer's disease (AD) cognitive outcomes using multimodal brain imaging data. Our empirical results demonstrate the feasibility and effectiveness of the newly expanded STREAMLINE as an AutoML pipeline for evaluating AD regression models, and for discovering multimodal imaging biomarkers.
STREAMLINE是一个简单、透明的端到端自动化机器学习(AutoML)管道,用于轻松进行严格的机器学习(ML)建模和分析。初始版本仅限于二元分类。在这项工作中,我们通过实现基于回归的多个ML模型来扩展STREAMLINE,包括线性回归、弹性网络、组套索和L21范数。我们将STREAMLINE的回归版本应用于使用多模态脑成像数据预测阿尔茨海默病(AD)认知结果,以此证明其有效性。我们的实证结果表明,新扩展的STREAMLINE作为一个AutoML管道,在评估AD回归模型和发现多模态成像生物标志物方面具有可行性和有效性。