A Unified Framework for Differentiated Services in Intelligent Healthcare Systems
| Author | Al-Abbasi, A. O. | 
| Author | Samara, L. | 
| Author | Salem, S. | 
| Author | Hamila, R. | 
| Author | Al-Dhahir, N. | 
| Available date | 2023-04-04T09:09:07Z | 
| Publication Date | 2022 | 
| Publication Name | IEEE Transactions on Network Science and Engineering | 
| Resource | Scopus | 
| Abstract | The Coronavirus disease 2019 (COVID-19) outbreak continues to significantly expose the vulnerabilities of healthcare systems around the world. These unprecedented circumstances create an opportunity for improving healthcare services which is desperately needed. This paper proposes a novel framework that distributes the patients across heterogeneous medical facilities (MFs) so that a weighted sum of the expected service time (EST) and service time tail probability (STTP) for all patients is minimized. We propose a model-based and model-free algorithms to schedule patients requests across the MFs. Our algorithms prioritize the patients with severe/critical conditions over others who can tolerate more delay in service. Based on the model-based approach, we formulate an optimization problem as a convex combination of both EST and STTP metrics, and apply an efficient iterative algorithm to solve it. Then, a more practical model-free scheme is proposed by adopting a deep reinforcement learning approach. Our model-free approach does not rely on pre-defined models or assumptions about the environment. Rather, it learns to choose scheduling decisions solely through observations of the resulting performance of past decisions. Our extensive results demonstrate a significant performance improvement of our proposed scheduling schemes when compared with other algorithms and competitive baselines. 2013 IEEE. | 
| Language | en | 
| Publisher | IEEE | 
| Subject | Healthcare Model-Free Reinforcement learning Scheduling Service Time  | 
| Type | Article | 
| Pagination | 622-633 | 
| Issue Number | 2 | 
| Volume Number | 9 | 
Files in this item
| Files | Size | Format | View | 
|---|---|---|---|
| 
 There are no files associated with this item.  | 
|||
This item appears in the following Collection(s)
- 
Electrical Engineering [2849 items ]
 

