Stevens Laura, Kao David, Hall Jennifer, Görg Carsten, Abdo Kaitlyn, Linstead Erik
Department of Cardiology, University of Colorado Medical School, Aurora, CO 80045, USA.
Cardiovascular Medicine, Institute for Precision Cardiovascular Medicine at the American Heart Association, Dallas, TX 75231, USA.
Appl Sci (Basel). 2020 May;10(9). doi: 10.3390/app10093309. Epub 2020 May 9.
Accessible interactive tools that integrate machine learning methods with clinical research and reduce the programming experience required are needed to move science forward. Here, we present Machine Learning for Medical Exploration and Data-Inspired Care (ML-MEDIC), a point-and-click, interactive tool with a visual interface for facilitating machine learning and statistical analyses in clinical research. We deployed ML-MEDIC in the American Heart Association (AHA) Precision Medicine Platform to provide secure internet access and facilitate collaboration. ML-MEDIC's efficacy for facilitating the adoption of machine learning was evaluated through two case studies in collaboration with clinical domain experts. A domain expert review was also conducted to obtain an impression of the usability and potential limitations.
为推动科学发展,需要有可访问的交互式工具,将机器学习方法与临床研究相结合,并减少所需的编程经验。在此,我们展示了用于医学探索和数据启发式护理的机器学习(ML-MEDIC),这是一种点击式交互式工具,具有可视化界面,可促进临床研究中的机器学习和统计分析。我们将ML-MEDIC部署在美国心脏协会(AHA)精准医学平台上,以提供安全的互联网访问并促进合作。通过与临床领域专家合作进行的两个案例研究,评估了ML-MEDIC在促进机器学习应用方面的功效。还进行了领域专家评审,以了解其可用性和潜在局限性。