Facebook Pixel
Inventurbedingt kommt es zwischen 31.10.2025 und dem 11.11.2025 zu Lieferverzögerungen bei Produkten von LexisNexis.
Wir bitte um Verständnis!

Chemotherapy Appointment Scheduling

Addressing Uncertainty and Fairness
ISBN:
978-3-03-211551-5
Verlag:
Springer International Publishing
Land des Verlags:
Schweiz
Erscheinungsdatum:
20.01.2026
Reihe:
Synthesis Lectures on Operations Research and Applications
Format:
Hardcover
Seitenanzahl:
80
Ladenpreis
60,49EUR (inkl. MwSt. zzgl. Versand)
Beim Kauf dieses Artikels handelt es sich um eine Vorbestellung. Der angegebene Preis kann sich gegebenenfalls noch ändern.
Updates zu dieser Vorbestellung erhalten?
Hinweis: Da dieses Werk nicht aus Österreich stammt, ist es wahrscheinlich, dass es nicht die österreichische Rechtslage enthält. Bitte berücksichtigen Sie dies bei ihrem Kauf.

This book discusses how analytics can handle uncertainty and fairness issues in scheduling chemotherapy treatments.  Specifically, the authors explore the complexities of chemotherapy scheduling, showing how analytics can be used to create fairer and more efficient chemotherapy schedules. By addressing uncertainty in infusion times and balancing the needs of both patient and staff, the book offers novel insights, practical models, and actionable solutions for healthcare professionals aiming to improve patient care in chemotherapy clinics.  Readers will gain a deep understanding of the unique challenges in scheduling chemotherapy treatments, with a focus on handling uncertainty in treatment durations, coordinating clinic resources, and ensuring fairness among patients. This book uses real data from chemotherapy clinics to develop models and generate solutions representing fair and efficient schedules. Alongside methodological knowledge, readers will acquire managerial insights that can directly enhance the scheduling processes in real-world oncology settings.

Biografische Anmerkung

Serhat Gul, Ph.D., is an Associate Professor in the Department of Industrial University at TED University.  He completed his Ph.D. and M.Sc. in Industrial Engineering at Arizona State University in 2010 and 2007, respectively, and earned his B.Sc. in Industrial Engineering from Sabancı University in 2006. He has been a faculty member at TED University in Ankara, Turkey, since 2014. In 2023-2024, he served as a visiting assistant professor at the Isenberg School of Management, University of Massachusetts Amherst. Dr. Gül's primary research interests lie in stochastic optimization and its applications to healthcare delivery systems.

Özlem Karsu, Ph.D., is an Associate Professor in the Department of Industrial Engineering at Bilkent University and a visiting scholar at the Technical University of Munich for the 2025–2026 academic year. She received her B.S and M.S. degrees from the Industrial Engineering Department of the Middle East Technical University, in 2008 and 2010, respectively. She received her Ph.D. degree in Operational Research from the London School of Economics in 2014.  Dr. Karsu’s research lies in the domains of inequity-averse optimization and multicriteria decision making. She aims to help decision makers to address equity (fairness) concerns through operations research tools.