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Please use this identifier to cite or link to this item: https://mnclhd.intersearch.com.au/mnclhdjspui/handle/123456789/381
Title: Quality management of head and neck patient treatments using statistical process control techniques
Authors: Sandford, M. J.;Steel, J. G.;Goodworth, J. R.;Lodge, P. J.
MNCLHD Author: Sandford, Michael J.
Steel, Jared G.
Goodworth, Josie R.
Issue Date: Oct-2024
Citation: Physical and Engineering Sciences in Medicine. 2024, 47:1781-1787.
Abstract: The treatment, planning, simulation, and setup of radiotherapy patients contain many processes subject to errors involving both staff and equipment. Cone-beam-CT (CBCT) provides a final check of patient positioning and corrections based on this can be made prior to treatment delivery. Statistical Process Control (SPC) techniques are used in various industries for quality management and error mitigation. The utility of SPC techniques to monitor process and equipment changes in our Head and Neck patient treatments was assessed by application to CBCT results from a quality-focused longitudinal study. Individuals and moving range (XmR) as well as exponentially-weighted moving average (EWMA) techniques were explored. The SPC techniques were sensitive to process changes and trends over the 12 years of data collected. A reduction in the random component of patient setup errors needing correction was observed. Systematic components of error remained more stable. An uptick in both datasets was observed correlating with the COVID-19 pandemic. Process control limits for use in prospective process monitoring were established. Challenges that arose from using SPC techniques in a retrospective study are outlined.
URI: https://mnclhd.intersearch.com.au/mnclhdjspui/handle/123456789/381
Keywords: Spiral Cone-Beam Computed Tomography;Patient Positioning
Appears in Collections:Oncology / Cancer

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