Semisupervised Deep Learning Techniques for Predicting Acute Respiratory Distress Syndrome From Time-Series Clinical Data: Model Development and Validation Study.
Carson LamChak Foon TsoAbigail Green-SaxenaEmily PellegriniZohora IqbalDaniel EvansJana L HoffmanJacob CalvertQingqing MaoRitankar DasPublished in: JMIR formative research (2021)
In the context of using time-series inpatient data and a careful model training design, unlabeled data can be used to improve the performance of machine learning models when labeled data for predicting ARDS development are scarce or expensive.