AIJul 31, 2023

Multicriteria Optimization Techniques for Understanding the Case Mix Landscape of a Hospital

arXiv:2308.07322v17 citationsh-index: 41
Originality Incremental advance
AI Analysis

This work addresses hospital resource management by providing a decision support tool for identifying optimal patient case mixes, though it is incremental as it builds on existing multicriteria optimization techniques.

The paper tackles the problem of optimizing hospital case mix for capacity utilization by proposing an improved multicriteria optimization approach, resulting in a significantly faster parallel random corrective method that generates more solutions than prior methods.

Various medical and surgical units operate in a typical hospital and to treat their patients these units compete for infrastructure like operating rooms (OR) and ward beds. How that competition is regulated affects the capacity and output of a hospital. This article considers the impact of treating different patient case mix (PCM) in a hospital. As each case mix has an economic consequence and a unique profile of hospital resource usage, this consideration is important. To better understand the case mix landscape and to identify those which are optimal from a capacity utilisation perspective, an improved multicriteria optimization (MCO) approach is proposed. As there are many patient types in a typical hospital, the task of generating an archive of non-dominated (i.e., Pareto optimal) case mix is computationally challenging. To generate a better archive, an improved parallelised epsilon constraint method (ECM) is introduced. Our parallel random corrective approach is significantly faster than prior methods and is not restricted to evaluating points on a structured uniform mesh. As such we can generate more solutions. The application of KD-Trees is another new contribution. We use them to perform proximity testing and to store the high dimensional Pareto frontier (PF). For generating, viewing, navigating, and querying an archive, the development of a suitable decision support tool (DST) is proposed and demonstrated.

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