Publications by authors named "Erheng Zhong"

Article Synopsis
  • Early assessment using machine learning can enhance diagnosis and treatment, helping patients receive timely care.
  • Knowledge graph-based methods are popular for organizing medical information but struggle with multi-granularity and temporal data, limiting their diagnostic capabilities.
  • The FIT-Graph framework addresses these issues by organizing medical data at different levels and time stages, resulting in a 5% improvement in performance compared to baseline models in disease diagnosis applications.
View Article and Find Full Text PDF

As a widely used vital sign within cardiology, Electrocardiography (ECG) provides the basis for assessing heart function and diagnosing cardiovascular diseases. Automated anomaly detection for ECG plays an important role in improving patient diagnosis efficiency and reducing healthcare costs. Practically, due to the limits of electronics support or the medical system setting, image is a more common format for large-scale ECG storage in most clinical institutions.

View Article and Find Full Text PDF

State-of-the-art learning algorithms accept data in feature vector format as input. Examples belonging to different classes may not always be easy to separate in the original feature space. One may ask: can transformation of existing features into new space reveal significant discriminative information not obvious in the original space? Since there can be infinite number of ways to extend features, it is impractical to first enumerate and then perform feature selection.

View Article and Find Full Text PDF