A model for preemptive maintenance of medical linear accelerators—predictive maintenance

BackgroundUnscheduled accelerator downtime can negatively impact the quality of life of patients during their struggle against cancer. Currently digital data accumulated in the accelerator system is not being exploited in a systematic manner to assist in more efficient deployment of service engineering resources. The purpose of this study is to develop an effective process for detecting unexpected deviations in accelerator system operating parameters and/or performance that predicts component failure or system dysfunction and allows maintenance to be performed prior to the actuation of interlocks.MethodsThe proposed predictive maintenance (PdM) model is as follows: 1) deliver a daily quality assurance (QA) treatment; 2) automatically transfer and interrogate the resulting log files; 3) once baselines are established, subject daily operating and performance values to statistical process control (SPC) analysis; 4) determine if any alarms have been triggered; and 5) alert facility and system service engineers. A robust volumetric modulated arc QA treatment is delivered to establish mean operating values and perform continuous sampling and monitoring using SPC methodology. Chart limits are calculated using a hybrid technique that includes the use of the standard SPC 3σ limits and an empirical factor based on the parameter/system specification.ResultsThere are 7 accelerators currently under active surveillance. Currently 45 parameters plus each MLC leaf (120) are analyzed using Individual and Moving Range (I/MR) charts. The initial warning and alarm rule is as follows: warning (2 out of 3 consecutive values ≥ 2σ hybrid) and alarm (2 out of 3 consecutive values or 3 out of 5 consecutive values ≥ 3σ hybrid). A customized graphical user interface provides a means to review the SPC charts for each parameter and a visual color code to alert the reviewer of parameter status. Forty-five synthetic errors/changes were introduced to test the effectiveness of our initial chart limits. Forty-three of the forty-five errors (95.6 %) were detected in either the I or MR chart for each of the subsystems monitored.ConclusionOur PdM model shows promise in providing a means for reducing unscheduled downtime. Long term monitoring will be required to establish the effectiveness of the model.

[1]  Dose verification of volumetric modulated arc therapy (VMAT) by use of in-treatment linac parameters , 2013, Radiological Physics and Technology.

[2]  Fang-Fang Yin,et al.  Task Group 142 report: quality assurance of medical accelerators. , 2009, Medical physics.

[3]  C Able,et al.  Statistical Process Control: Quality Control of Linear Accelerator Treatment Delivery , 2010 .

[4]  Dean V. Neubauer Manual on Presentation of Data and Control Chart Analysis, 8th Edition , 2010 .

[5]  David Sjostrom,et al.  Implementing RapidArc into clinical routine: a comprehensive program from machine QA to TPS validation and patient QA. , 2011, Medical physics.

[6]  Alan H Baydush,et al.  Initial investigation using statistical process control for quality control of accelerator beam steering , 2011, Radiation oncology.

[7]  C Able,et al.  SU-E-T-207: Flatness and Symmetry Threshold Detection Using Statistical Process Control. , 2012, Medical physics.

[8]  R. Barish A Primer on Theory and Operation of Linear Accelerators in Radiation Therapy , 1990 .

[9]  William Ian Miller Statistical Process Control , 2013 .

[10]  Tim Stapenhurst Mastering Statistical Process Control , 2005 .

[11]  C Able,et al.  SU-C-137-04: Effective Control Limits for Predictive Maintenance (PdM) of Accelerator Beam Uniformity. , 2013, Medical physics.

[12]  Donald J. Wheeler,et al.  Understanding Statistical Process Control , 1986 .

[13]  Smiley W. Cheng Manual on Presentation of Data and Control Chart Analysis , 1993 .

[14]  C Able,et al.  SU-E-T-205: MLC Predictive Maintenance Using Statistical Process Control Analysis. , 2012, Medical physics.

[15]  H. Hughes ASTM Manual on Quality Control of Materials. , 1952 .

[16]  Yuquan Wei,et al.  Effect of MLC leaf position, collimator rotation angle, and gantry rotation angle errors on intensity-modulated radiotherapy plans for nasopharyngeal carcinoma. , 2013, Medical dosimetry : official journal of the American Association of Medical Dosimetrists.

[17]  J. Palta,et al.  Comprehensive QA for radiation oncology: report of AAPM Radiation Therapy Committee Task Group 40. , 1994, Medical physics.