Continuous patient state attention model for addressing irregularity in electronic health records.
Vinod Kumar ChauhanAnshul ThakurOdhran O'DonoghueOmid RohanianSoheila MolaeiDavid A CliftonPublished in: BMC medical informatics and decision making (2024)
Perceiver presents a computationally efficient potential alternative for processing long sequences of time series in healthcare, and the continuous patient state attention models outperform the traditional and advanced techniques to handle irregularity in the time series. Moreover, the predictive uncertainty of the model helps in the development of transparent and trustworthy systems, which can be utilised as per the availability of clinicians.