Staff dimensioning in homecare services with uncertain demands

10/29/2018
by   C. Rodriguez, et al.
0

The problem addressed in this paper is how to calculate the amount of personnel required to ensure the activity of a home health care (HHC) center on a tactical horizon. Design of quantitative approaches for this question is challenging. The number of caregivers has to be determined for each profession in order to balance the coverage of patients in a region and the workforce cost over several months. Unknown demand in care and spatial dimensions, combination of skills to cover a care and individual trips visiting patients make the underlaying optimization problem very hard. Few studies are dedicated to staff dimensioning for HHC compared to patient to nurses assignment/sequencing and centers location problems. We propose an original two-stage approach based on integer linear stochastic programming, that exploits historical medical data. The first stage calculates (near-)optimal levels of resources for possible demand scenarios , while the second stage computes the optimal number of caregiver for each profession to meet a target coverage indicator. For decision-makers, our algorithm gives the number of employees for each category required to satisfy the demand without any recourse (overtime, external resources) with fixed probability and confidence interval. The approach has been tested on various instances built from data of the French agency of hospitalization data (ATIH).

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/24/2019

Patients, Primary Care, and Policy: Simulation Modeling for Health Care Decision Support

Demand for health care is constantly increasing due to the ongoing demog...
research
11/06/2020

Optimal Resource and Demand Redistribution for Healthcare Systems Under Stress from COVID-19

When facing an extreme stressor, such as the COVID-19 pandemic, healthca...
research
11/27/2020

A Mixed Integer Linear Program For Human And Material Resources Optimization In Emergency Department

The discrepancy between patient demand and the emergency departments (ED...
research
12/17/2019

A learning-based algorithm to quickly compute good primal solutions for Stochastic Integer Programs

We propose a novel approach using supervised learning to obtain near-opt...
research
08/23/2019

Optimal Heterogeneous Asset Location Modeling for Expected Spatiotemporal Search and Rescue Demands using Historic Event Data

The United States Coast Guard is charged with the coordination of all se...
research
04/22/2022

Some Optimization Solutions for Relief Distribution

Humanitarian logistics remain a challenging area of application for oper...
research
11/28/2018

Prepare for the Expected Worst: Algorithms for Reconfigurable Resources Under Uncertainty

In this paper we study how to optimally balance cheap inflexible resourc...

Please sign up or login with your details

Forgot password? Click here to reset