Discovering Blood Donor Arrival Patterns Using Data Mining: A Method to Investigate Service Quality at Blood Centers

Blood centers without fixed appointments for collecting blood often experience nonconstant donor arrival rates, which vary due to time-of-day, day-of-week, etc. When a constant workforce size is employed in such blood centers, there is either idle personnel, or donor satisfaction is compromised due to long waiting times, or both conditions alternate over time. Consequently, a method to obtain adaptive workforce requirements might be valuable. This study utilized the Two-Step Cluster method and the Classification and Regression Trees method in succession to identify both daily and hourly donor arrival patterns at Hacettepe University Hospitals’ Blood Center. A serial queuing network model of the donation process was then employed for each of the identified donor arrival patterns. By considering and accomodating variations in the donor arrival patterns, required workforce sizes and their decomposition among process steps were predicted to achieve predetermined target values of expected waiting times and to balance workforce utilizations in the blood donation processes. Although a blood center is considered for the proposed methodology, the approach is general and applications in various operations of healthcare organizations are possible.

[1]  Sally C. Brailsford,et al.  Using simulation to improve the blood supply chain , 2007, J. Oper. Res. Soc..

[2]  P F Lynam,et al.  Client flow analysis: a practical management technique for outpatient clinic settings. , 1994, International journal for quality in health care : journal of the International Society for Quality in Health Care.

[3]  Angus Jeang Flexible nursing staff planning when patient demands are uncertain , 2005, Journal of Medical Systems.

[4]  P. Burke The Output of a Queuing System , 1956 .

[5]  Ward Whitt,et al.  APPROXIMATIONS FOR THE GI/G/m QUEUE , 1993 .

[6]  Pierre Le Gall The overall sojourn time in tandem queues with identical successive service times and renewal input , 1994 .

[7]  Angus Jeang Flexible nursing staff planning with adjustable patient demands , 2005, Journal of Medical Systems.

[8]  Angus Jeang,et al.  A stochastic model for determining the necessary staff level in a service industry , 2004, Journal of Medical Systems.

[9]  Maxine Whittaker,et al.  Towards Strategic Quality Management of Health Care , 1999 .

[10]  Walton M. Hancock,et al.  A model to determine staff levels, cost, and productivity of hospital units , 1987, Journal of Medical Systems.

[11]  Magne Aldrin,et al.  Predicting blood donor arrival , 2005, Transfusion.

[12]  Murray J. Côté,et al.  Patient flow and resource utilization in an outpatient clinic , 1999 .

[13]  Kurt M. Bretthauer,et al.  A Model for Planning Resource Requirements in Health Care Organizations , 1998 .

[14]  M. Pratt,et al.  Computer simulation analysis of blood donor queueing problems , 1982, Transfusion.

[15]  D. Tirupati,et al.  Capacity planning in manufacturing networks with discrete options , 1989 .

[16]  Leo Breiman,et al.  Classification and Regression Trees , 1984 .

[17]  Bruce L. Golden,et al.  Go with the Flow: Improving Red Cross Bloodmobiles Using Simulation Analysis , 1992 .