AILOAug 5, 2022

Planning and Scheduling in Digital Health with Answer Set Programming

arXiv:2208.03099v1h-index: 6
Originality Synthesis-oriented
AI Analysis

This work addresses operational challenges in digital health for hospitals, but it appears incremental as it expands on existing solutions and models new problems.

The paper tackles complex combinatorial problems in hospital planning and scheduling using Answer Set Programming, aiming to improve patient satisfaction and care quality, while also addressing the need for explainability due to GDPR requirements.

In the hospital world there are several complex combinatory problems, and solving these problems is important to increase the degree of patients' satisfaction and the quality of care offered. The problems in the healthcare are complex since to solve them several constraints and different type of resources should be taken into account. Moreover, the solutions must be evaluated in a small amount of time to ensure the usability in real scenarios. We plan to propose solutions to these kind of problems both expanding already tested solutions and by modelling solutions for new problems, taking into account the literature and by using real data when available. Solving these kind of problems is important but, since the European Commission established with the General Data Protection Regulation that each person has the right to ask for explanation of the decision taken by an AI, without developing Explainability methodologies the usage of AI based solvers e.g. those based on Answer Set programming will be limited. Thus, another part of the research will be devoted to study and propose new methodologies for explaining the solutions obtained.

Foundations

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