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Dive into the research topics where Gerhard Wullink is active.

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Featured researches published by Gerhard Wullink.


Anesthesia & Analgesia | 2007

Improving operating room efficiency by applying bin-packing and portfolio techniques to surgical case scheduling

M. van Houdenhoven; J.M. van Oostrum; Elias W. Hans; Gerhard Wullink; Geert Kazemier

BACKGROUND:An operating room (OR) department has adopted an efficient business model and subsequently investigated how efficiency could be further improved. The aim of this study is to show the efficiency improvement of lowering organizational barriers and applying advanced mathematical techniques. METHODS:We applied advanced mathematical algorithms in combination with scenarios that model relaxation of various organizational barriers using prospectively collected data. The setting is the main inpatient OR department of a university hospital, which sets its surgical case schedules 2 wk in advance using a block planning method. The main outcome measures are the number of freed OR blocks and OR utilization. RESULTS:Lowering organizational barriers and applying mathematical algorithms can yield a 4.5% point increase in OR utilization (95% confidence interval 4.0%–5.0%). This is obtained by reducing the total required OR time. CONCLUSIONS:Efficient OR departments can further improve their efficiency. The paper shows that a radical cultural change that comprises the use of mathematical algorithms and lowering organizational barriers improves OR utilization.


Journal of Critical Care | 2008

Fewer intensive care unit refusals and a higher capacity utilization by using a cyclic surgical case schedule

Mark van Houdenhoven; Jeroen M. van Oostrum; Gerhard Wullink; Elias W. Hans; Johann L. Hurink; Jan Bakker; Geert Kazemier

PURPOSE Mounting health care costs force hospital managers to maximize utilization of scarce resources and simultaneously improve access to hospital services. This article assesses the benefits of a cyclic case scheduling approach that exploits a master surgical schedule (MSS). An MSS maximizes operating room (OR) capacity and simultaneously levels the outflow of patients toward the intensive care unit (ICU) to reduce surgery cancellation. MATERIALS AND METHODS Relevant data for Erasmus MC have been electronically collected since 1994. These data are used to construct an MSS that consisted of a set of surgical case types scheduled for a period or cycle. This cycle was executed repetitively. During such a cycle, surgical cases for each surgical department were scheduled on a specific day and OR. The experiments were performed for the Erasmus University Medical Center and for a virtual hospital. RESULTS Unused OR capacity can be reduced by up to 6.3% for a cycle length of 4 weeks, with simultaneous optimal leveling of the ICU workload. CONCLUSIONS Our findings show that the proposed cyclic OR planning policy may benefit OR utilization and reduce surgical case cancellation and peak demands on the ICU.


Anesthesia & Analgesia | 2008

A Simulation Model for Determining the Optimal Size of Emergency Teams on Call in the Operating Room at Night

Jeroen M. van Oostrum; Mark van Houdenhoven; Manon M. J. Vrielink; Jan Klein; Erwin W. Hans; Markus Klimek; Gerhard Wullink; Ewout W. Steyerberg; Geert Kazemier

BACKGROUND: Hospitals that perform emergency surgery during the night (e.g., from 11:00 pm to 7:30 am) face decisions on optimal operating room (OR) staffing. Emergency patients need to be operated on within a predefined safety window to decrease morbidity and improve their chances of full recovery. We developed a process to determine the optimal OR team composition during the night, such that staffing costs are minimized, while providing adequate resources to start surgery within the safety interval. METHODS: A discrete event simulation in combination with modeling of safety intervals was applied. Emergency surgery was allowed to be postponed safely. The model was tested using data from the main OR of Erasmus University Medical Center (Erasmus MC). Two outcome measures were calculated: violation of safety intervals and frequency with which OR and anesthesia nurses were called in from home. We used the following input data from Erasmus MC to estimate distributions of all relevant parameters in our model: arrival times of emergency patients, durations of surgical cases, length of stay in the postanesthesia care unit, and transportation times. In addition, surgeons and OR staff of Erasmus MC specified safety intervals. RESULTS: Reducing in-house team members from 9 to 5 increased the fraction of patients treated too late by 2.5% as compared to the baseline scenario. Substantially more OR and anesthesia nurses were called in from home when needed. CONCLUSION: The use of safety intervals benefits OR management during nights. Modeling of safety intervals substantially influences the number of emergency patients treated on time. Our case study showed that by modeling safety intervals and applying computer simulation, an OR can reduce its staff on call without jeopardizing patient safety.


Journal of Medical Systems | 2007

A Norm Utilisation for Scarce Hospital Resources: Evidence from Operating Rooms in a Dutch University Hospital

Mark van Houdenhoven; Erwin W. Hans; Jan Klein; Gerhard Wullink; Geert Kazemier

BackgroundUtilisation of operating rooms is high on the agenda of hospital managers and researchers. Many efforts in the area of maximising the utilisation have been focussed on finding the holy grail of 100% utilisation. The utilisation that can be realised, however, depends on the patient mix and the willingness to accept the risk of working in overtime.Materials and methodsThis is a mathematical modelling study that investigates the association between the utilisation and the patient mix that is served and the risk of working in overtime. Prospectively, consecutively, and routinely collected data of an operating room department in a Dutch university hospital are used. Basic statistical principles are used to establish the relation between realistic utilisation rates, patient mixes, and accepted risk of overtime.ResultsAccepting a low risk of overtime combined with a complex patient mix results a low utilisation rate. If the accepted risk of overtime is higher and the patient mix is less complex, the utilisation rate that can be reached is closer to 100%.ConclusionBecause of the inherent variability of health-care processes, the holy grail of 100% utilisation is unlikely to be found. The method proposed in this paper calculates a realistic benchmark utilisation that incorporates the patient mix characteristics and the willingness to accept risk of overtime.


Critical Care | 2007

Optimizing intensive care capacity using individual length-of-stay prediction models.

Mark van Houdenhoven; Duy-Tien Nguyen; Marinus J.C. Eijkemans; Ewout W. Steyerberg; Hugo W. Tilanus; Diederik Gommers; Gerhard Wullink; Jan Bakker; Geert Kazemier

IntroductionEffective planning of elective surgical procedures requiring postoperative intensive care is important in preventing cancellations and empty intensive care unit (ICU) beds. To improve planning, we constructed, validated and tested three models designed to predict length of stay (LOS) in the ICU in individual patients.MethodsRetrospective data were collected from 518 consecutive patients who underwent oesophagectomy with reconstruction for carcinoma between January 1997 and April 2005. Three multivariable linear regression models for LOS, namely preoperative, postoperative and intra-ICU, were constructed using these data. Internal validation was assessed using bootstrap sampling in order to obtain validated estimates of the explained variance (r2). To determine the potential gain of the best performing model in day-to-day clinical practice, prospective data from a second cohort of 65 consecutive patients undergoing oesophagectomy between May 2005 and April 2006 were used in the model, and the predictive performance of the model was compared with prediction based on mean LOS.ResultsThe intra-ICU model had an r2 of 45% after internal validation. Important prognostic variables for LOS included greater patient age, comorbidity, type of surgical approach, intraoperative respiratory minute volume and complications occurring within 72 hours in the ICU. The potential gain of the best model in day-to-day clinical practice was determined relative to mean LOS. Use of the model reduced the deficit number (underestimation) of ICU days by 65 and increased the excess number (overestimation) of ICU days by 23 for the cohort of 65 patients. A conservative analysis conducted in the second, prospective cohort of patients revealed that 7% more oesophagectomies could have been accommodated, and 15% of cancelled procedures could have been prevented.ConclusionPatient characteristics can be used to create models that will help in predicting LOS in the ICU. This will result in more efficient use of ICU beds and fewer cancellations.


Journal of Medical Systems | 2007

Closing Emergency Operating Rooms Improves Efficiency

Gerhard Wullink; Mark van Houdenhoven; Erwin W. Hans; Jeroen M. van Oostrum; Marieke van der Lans; Geert Kazemier


Management executive | 2006

Een nieuw stappenplan voor benchmarking

A.F. van Hoorn; Mark van Houdenhoven; Gerhard Wullink; Elias W. Hans; Geert Kazemier


Memorandum Afdeling TW | 2005

A model for generating master surgical schedules to allow cyclic scheduling in operating room departments

J.M. van Oostrum; M. van Houdenhoven; Johann L. Hurink; Elias W. Hans; Gerhard Wullink; Geert Kazemier


Granular Matter | 2004

Robust resource loading for engineer-to-order manufacturing

Gerhard Wullink; Erwin W. Hans; van A Aart Harten


Tijdschrift controlling | 2007

Een duurzaam stappenplan voor benchmarking in de operatiekamer

A.F. van Hoorn; Mark van Houdenhoven; Gerhard Wullink; Elias W. Hans; Geert Kazemier

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Geert Kazemier

VU University Medical Center

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Mark van Houdenhoven

Erasmus University Rotterdam

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Ewout W. Steyerberg

Erasmus University Rotterdam

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Jan Klein

Erasmus University Rotterdam

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M. van Houdenhoven

Erasmus University Rotterdam

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