Abstract:
"In the healthcare sector, the field of remote patient monitoring and telemedicine is expanding and being developed quickly, giving healthcare professionals a tool to remotely monitor patient health data however most machine learning models utilized to generate patient status warnings are inefficient and have issues with performance, which are two drawbacks of the existing approaches used for assessing patient health status in remote patient monitoring systems.
In the past, remote patient monitoring systems that monitor vital signs have not used hybrid machine learning models for health status assessments. The author has decided to implement a novel hybrid machine learning model to perform health status assessments on the patient's vital signs because hybrid models have an excellent track record of handling similar challenges. The author also implements a vital sign forecasting model in order to use the forecasted vitals on the hybrid model to forecast the future health status of the patient as well.
The author was able to experiment and develop a hybrid health status assessment model where the evaluation metric results were a classification accuracy of 94% gained utilizing the prototype model for hybrid health status assessment. The precision and recall scores, which are 96% and 97% respectively with an F1 score of 96%. Cohen’s kappa score was also generated showcasing a result of 91.3% for the hybrid model. For the vital sign forecasting model developed, the author received results of an MAE score of 0.11% and an RMSE score of 0.03% when tested on the dataset which showcased satisfactory improvement gained."