In the present contribution, a chance-constrained scheduling model is presented for determining admission dates of elective surgical patients. The admission scheduling problem is modelled on a dynamic, stochastic decision-making environment. The primary aim of the model concerns the minimization of operating theatre costs and patient waiting times, while simultaneously avoiding bed shortages at a fixed certainty level through a chance-constrained formulation. This stochastic model is implemented by means of sample average approximation and is solved by a meta-heuristic algorithm. To illustrate the applicability of the model, the approach is used to implement four admission scheduling policies on this dynamic decision-making setting that are...
Objective: Our goal is to propose and solve a new formulation of the recently-formalized patient adm...
We study a Coordinated clinic and surgery Appointment Scheduling (CAS) problem for in-advance schedu...
The present dissertation focuses on developing operational decision support models and algorithms fo...
Rising healthcare expenditure over past decades has led governments worldwide to re-evaluate their s...
A stochastic optimization model is presented for surgery admission scheduling in hospitals. By means...
This paper addresses Operating Room scheduling problems in elective surgery. In particular, we study...
Waiting for surgery caused by an ineffective schedule may lead to the loss of opportunity for care, ...
In this paper, we consider the Advance Scheduling Problem, in which candidate patients from the pati...
This work concerns the advance scheduling of elective surgery when the operating rooms' capacity uti...
In this paper we consider the problem of scheduling patients in allocated surgery blocks in a Master...
This work investigates two types of scheduling problems in the healthcare industry. One is the elect...
This thesis proposes a solution approach to the operating room scheduling problem (ORSP) with two ty...
This thesis proposes two mathematical stochastic optimisation models handling two different aspects ...
The objective of this study is to generate an optimal surgery schedule of elective surgery patients ...
The managerial aspects to run a healthcare system are becoming increasingly important for patient sa...
Objective: Our goal is to propose and solve a new formulation of the recently-formalized patient adm...
We study a Coordinated clinic and surgery Appointment Scheduling (CAS) problem for in-advance schedu...
The present dissertation focuses on developing operational decision support models and algorithms fo...
Rising healthcare expenditure over past decades has led governments worldwide to re-evaluate their s...
A stochastic optimization model is presented for surgery admission scheduling in hospitals. By means...
This paper addresses Operating Room scheduling problems in elective surgery. In particular, we study...
Waiting for surgery caused by an ineffective schedule may lead to the loss of opportunity for care, ...
In this paper, we consider the Advance Scheduling Problem, in which candidate patients from the pati...
This work concerns the advance scheduling of elective surgery when the operating rooms' capacity uti...
In this paper we consider the problem of scheduling patients in allocated surgery blocks in a Master...
This work investigates two types of scheduling problems in the healthcare industry. One is the elect...
This thesis proposes a solution approach to the operating room scheduling problem (ORSP) with two ty...
This thesis proposes two mathematical stochastic optimisation models handling two different aspects ...
The objective of this study is to generate an optimal surgery schedule of elective surgery patients ...
The managerial aspects to run a healthcare system are becoming increasingly important for patient sa...
Objective: Our goal is to propose and solve a new formulation of the recently-formalized patient adm...
We study a Coordinated clinic and surgery Appointment Scheduling (CAS) problem for in-advance schedu...
The present dissertation focuses on developing operational decision support models and algorithms fo...