Halpern Yoni, Choi Youngduck, Horng Steven, Sontag David
New York University, New York, NY.
Beth Israel Deaconess Medical Center, Boston, MA.
AMIA Annu Symp Proc. 2014 Nov 14;2014:606-15. eCollection 2014.
We present a novel framework for learning to estimate and predict clinical state variables without labeled data. The resulting models can used for electronic phenotyping, triggering clinical decision support, and cohort selection. The framework relies on key observations which we characterize and term "anchor variables". By specifying anchor variables, an expert encodes a certain amount of domain knowledge about the problem while the rest of learning proceeds in an unsupervised manner. The ability to build anchors upon standardized ontologies and the framework's ability to learn from unlabeled data promote generalizability across institutions. We additionally develop a user interface to enable experts to choose anchor variables in an informed manner. The framework is applied to electronic medical record-based phenotyping to enable real-time decision support in the emergency department. We validate the learned models using a prospectively gathered set of gold-standard responses from emergency physicians for nine clinically relevant variables.
我们提出了一个全新的框架,用于在无标记数据的情况下学习估计和预测临床状态变量。由此产生的模型可用于电子表型分析、触发临床决策支持和队列选择。该框架依赖于关键观察结果,我们将其描述并称为“锚定变量”。通过指定锚定变量,专家对有关该问题的一定量领域知识进行编码,而其余的学习则以无监督的方式进行。基于标准化本体构建锚定的能力以及该框架从未标记数据中学习的能力促进了跨机构的通用性。我们还开发了一个用户界面,使专家能够以明智的方式选择锚定变量。该框架应用于基于电子病历的表型分析,以在急诊科提供实时决策支持。我们使用从急诊医生那里前瞻性收集的一组针对九个临床相关变量的金标准响应来验证所学习的模型。