Developing and Visualising a Retrieval-Augmented Deep Learning Model for Population Health Management
Lead Research Organisation:
City St George’s, University of London
Department Name: Sch of Engineering and Mathematical Sci
Abstract
Retrieval-based machine learning (ML) models enable data to be supplemented by relevant information, retrieved from auxiliary databases and "memories". This enables the explainability of decisions made by the model and makes previously acquired knowledge accessible to human decision-makers.
In healthcare, routinely collected data typically cannot be entirely relied upon to make predictions for specific adverse events. Furthermore, explainable aspects (such as feature attribution) can be misinformed by the complex and incomplete nature of the data. This project will aim to:
i. Develop a ML model that uses retrieval-based query augmentation to build outcome predictions based on a multitude of linked data sources.
ii. Develop a visual analytics interface that supports feature engineering and decision provenance.
In healthcare, routinely collected data typically cannot be entirely relied upon to make predictions for specific adverse events. Furthermore, explainable aspects (such as feature attribution) can be misinformed by the complex and incomplete nature of the data. This project will aim to:
i. Develop a ML model that uses retrieval-based query augmentation to build outcome predictions based on a multitude of linked data sources.
ii. Develop a visual analytics interface that supports feature engineering and decision provenance.
People |
ORCID iD |
| Seyed Hosseini (Student) |
Studentship Projects
| Project Reference | Relationship | Related To | Start | End | Student Name |
|---|---|---|---|---|---|
| EP/W524608/1 | 30/09/2022 | 29/09/2028 | |||
| 2905946 | Studentship | EP/W524608/1 | 01/02/2024 | 30/07/2027 | Seyed Hosseini |