Optimizing Resource Allocation in Hospitals Using Predictive Analytics and Information Systems

预测分析 分析 资源配置 计算机科学 资源(消歧) 数据科学 运筹学 工程类 计算机网络
作者
Piyush Ingole
出处
期刊:Journal of Information Systems Engineering and Management 卷期号:10 (1s): 400-415 被引量:2
标识
DOI:10.52783/jisem.v10i1s.224
摘要

Effectively allocating resources in hospitals is a key part of making sure that patients get good care while also keeping operations running smoothly. Hospitals often have trouble making the best use of their limited resources, such as medical staff, tools, and places to care for patients. Even though traditional methods of managing resources are useful, they might not fully capture how complicated and variable patient needs and resource use are. This study looks into how predictive analytics and information systems can be used to make the best use of hospitals' resources. It focuses on how these technologies can help make decisions, make operations more efficient, and cut costs. The combination of machine learning models and statistical methods in predictive analytics makes it a strong way to predict patient demand, hospital admissions, and the best staffing levels. Predictive models can help hospitals better handle their resources by looking at past data and predicting what will happen in the future. For instance, predictive analytics can help hospitals plan for times when they will have a lot of patients, so they can make changes to their staffing and resource access. This method lowers the chance of not having enough staff or using too many resources, so the hospital can meet patients' needs without lowering the level of care. Information tools help with this process by keeping track of and keeping an eye on medical resources in real time. When predictive analytics are built into hospital information systems, data flows smoothly, giving decision-makers access to the most up-to-date information on how resources are being used. With real-time information on workers, tools, and available beds, hospitals can better decide how to use their resources, which cuts down on wait times and makes service better. Decision support systems can also handle some resource management jobs, which frees up hospital managers to focus on long-term planning and changes.
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