Timezone: »
While clinicians can accurately identify different types of heartbeats in electrocardiograms (ECGs) from different patients, researchers have had limited success in applying supervised machine learning to the same task. The problem is made challenging by the variety of tasks, inter- and intra-patient differences, an often severe class imbalance, and the high cost of getting cardiologists to label data for individual patients. We address these difficulties using active learning to perform patient-adaptive and task-adaptive heartbeat classification. When tested on a benchmark database of cardiologist annotated ECG recordings, our method had considerably better performance than other recently proposed methods on the two primary classification tasks recommended by the Association for the Advancement of Medical Instrumentation. Additionally, our method required over 90% less patient-specific training data than the methods to which we compared it.
Author Information
Jenna Wiens (Massachusetts Institute of Technology)
John Guttag (Massachusetts Institute of Technology)
More from the Same Authors
-
2022 : Improved Text Classification via Test-Time Augmentation »
Helen Lu · Divya Shanmugam · Harini Suresh · John Guttag -
2013 Workshop: Machine Learning for Clinical Data Analysis and Healthcare »
Jenna Wiens · Finale P Doshi-Velez · Can Ye · Madalina Fiterau · Shipeng Yu · Le Lu · Balaji R Krishnapuram -
2012 Poster: Patient Risk Stratification for Hospital-Associated C. Diff as a Time-Series Classification Task »
Jenna Wiens · John Guttag · Eric Horvitz -
2012 Spotlight: Patient Risk Stratification for Hospital-Associated C. Diff as a Time-Series Classification Task »
Jenna Wiens · John Guttag · Eric Horvitz -
2010 Oral: Identifying Patients at Risk of Major Adverse Cardiovascular Events Using Symbolic Mismatch »
Zeeshan Syed · John Guttag -
2010 Poster: Identifying Patients at Risk of Major Adverse Cardiovascular Events Using Symbolic Mismatch »
Zeeshan Syed · John Guttag