Implementing Optimization Algorithms in Swedish Healthcare AI-Based Simulation and Optimization of Internal Patient Trans- ports at Sahlgrenska University Hospital
Ladda ner
Publicerad
Typ
Examensarbete på kandidatnivå
Bachelor Thesis
Bachelor Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
Artificial Intelligence (AI) is increasingly being integrated into the field of medicine
to improve treatment outcome, enhance efficiency and streamline internal hospi-
tal transports. This study investigates the application of AI to optimize patient
transport at Sahlgrenska University Hospital. The goal is to identify different meth-
ods that can help to improve patient flow and resource allocation. Interviews at
Sahlgrenska along with an expert within AI were conducted to gain a better un-
derstanding of how AI can be altered and used. Anonymous important data from
Sahlgrenska with patient transport times, different departments and porter avail-
ability were analyzed over the course of a year’s time. The main challenge was creat-
ing an AI-based simulation system that accurately represents Sahlgrenska and also
showcases a model of how the porters transport patients throughout the hospital.
This was done with genetic algorithms (GA) as well as integer linear programming
(ILP) and for the systems to give valid data the hospital transport data must closely
replicate the actual size and operations of the hospital.
The results show that the AI-based system could substantially improve hospital
transports in regards to distributing the workload more equitably, maximizing ef-
ficiency and reducing cost as well as preventing further financial losses. Finally
a conclusion that an AI-based system for coordinating patient transport could be
drawn. Challenges for implementations include system integration, data privacy and
ethical task allocation. Nevertheless, strategic planning along with investments, AI
offers considerable potential when it comes to modernizing hospital logistics and
fostering a more efficient and patient-oriented healthcare system.
Keywords: Artificial Intelligence (AI), Patient Transport Optimization, Healthcare
Logistics, Simulation Modeling, Genetic Algorithms (GA), Integer Linear Program-
ming (ILP), Workload Balancing, Resource Allocation, Efficiency Improvement,
Sahlgrenska University Hospital
Beskrivning
Ämne/nyckelord
Artificial Intelligence (AI), Patient Transport Optimization, Healthcare Logistics, Simulation Modeling, Genetic Algorithms (GA), Integer Linear Programming (ILP), Workload Balancing, Resource Allocation, Efficiency Improvement, Sahlgrenska University Hospital