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[Image: see text] A risk assessment of automated treatment planning and recommendations for clinical deployment

PURPOSE: To assess the risk of failure of a recently developed automated treatment planning tool, the radiation planning assistant (RPA), and to determine the reduction in these risks with implementation of a quality assurance (QA) program specifically designed for the RPA. METHODS: We used failure...

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Autores principales: Kisling, Kelly, Johnson, Jennifer L., Simonds, Hannah, Zhang, Lifei, Jhingran, Anuja, Beadle, Beth M., Burger, Hester, du Toit, Monique, Joubert, Nanette, Makufa, Remigio, Shaw, William, Trauernicht, Christoph, Balter, Peter, Howell, Rebecca M., Schmeler, Kathleen, Court, Laurence
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6561826/
https://www.ncbi.nlm.nih.gov/pubmed/31002389
http://dx.doi.org/10.1002/mp.13552
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author Kisling, Kelly
Johnson, Jennifer L.
Simonds, Hannah
Zhang, Lifei
Jhingran, Anuja
Beadle, Beth M.
Burger, Hester
du Toit, Monique
Joubert, Nanette
Makufa, Remigio
Shaw, William
Trauernicht, Christoph
Balter, Peter
Howell, Rebecca M.
Schmeler, Kathleen
Court, Laurence
author_facet Kisling, Kelly
Johnson, Jennifer L.
Simonds, Hannah
Zhang, Lifei
Jhingran, Anuja
Beadle, Beth M.
Burger, Hester
du Toit, Monique
Joubert, Nanette
Makufa, Remigio
Shaw, William
Trauernicht, Christoph
Balter, Peter
Howell, Rebecca M.
Schmeler, Kathleen
Court, Laurence
author_sort Kisling, Kelly
collection PubMed
description PURPOSE: To assess the risk of failure of a recently developed automated treatment planning tool, the radiation planning assistant (RPA), and to determine the reduction in these risks with implementation of a quality assurance (QA) program specifically designed for the RPA. METHODS: We used failure mode and effects analysis (FMEA) to assess the risk of the RPA. The steps involved in the workflow of planning a four‐field box treatment of cervical cancer with the RPA were identified. Then, the potential failure modes at each step and their causes were identified and scored according to their likelihood of occurrence, severity, and likelihood of going undetected. Additionally, the impact of the components of the QA program on the detectability of the failure modes was assessed. The QA program was designed to supplement a clinic's standard QA processes and consisted of three components: (a) automatic, independent verification of the results of automated planning; (b) automatic comparison of treatment parameters to expected values; and (c) guided manual checks of the treatment plan. A risk priority number (RPN) was calculated for each potential failure mode with and without use of the QA program. RESULTS: In the RPA automated treatment planning workflow, we identified 68 potential failure modes with 113 causes. The average RPN was 91 without the QA program and 68 with the QA program (maximum RPNs were 504 and 315, respectively). The reduction in RPN was due to an improvement in the likelihood of detecting failures, resulting in lower detectability scores. The top‐ranked failure modes included incorrect identification of the marked isocenter, inappropriate beam aperture definition, incorrect entry of the prescription into the RPA plan directive, and lack of a comprehensive plan review by the physician. CONCLUSIONS: Using FMEA, we assessed the risks in the clinical deployment of an automated treatment planning workflow and showed that a specialized QA program for the RPA, which included automatic QA techniques, improved the detectability of failures, reducing this risk. However, some residual risks persisted, which were similar to those found in manual treatment planning, and human error remained a major cause of potential failures. Through the risk analysis process, we identified three key aspects of safe deployment of automated planning: (a) user training on potential failure modes; (b) comprehensive manual plan review by physicians and physicists; and (c) automated QA of the treatment plan.
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spelling pubmed-65618262019-11-18 [Image: see text] A risk assessment of automated treatment planning and recommendations for clinical deployment Kisling, Kelly Johnson, Jennifer L. Simonds, Hannah Zhang, Lifei Jhingran, Anuja Beadle, Beth M. Burger, Hester du Toit, Monique Joubert, Nanette Makufa, Remigio Shaw, William Trauernicht, Christoph Balter, Peter Howell, Rebecca M. Schmeler, Kathleen Court, Laurence Med Phys THERAPEUTIC INTERVENTIONS PURPOSE: To assess the risk of failure of a recently developed automated treatment planning tool, the radiation planning assistant (RPA), and to determine the reduction in these risks with implementation of a quality assurance (QA) program specifically designed for the RPA. METHODS: We used failure mode and effects analysis (FMEA) to assess the risk of the RPA. The steps involved in the workflow of planning a four‐field box treatment of cervical cancer with the RPA were identified. Then, the potential failure modes at each step and their causes were identified and scored according to their likelihood of occurrence, severity, and likelihood of going undetected. Additionally, the impact of the components of the QA program on the detectability of the failure modes was assessed. The QA program was designed to supplement a clinic's standard QA processes and consisted of three components: (a) automatic, independent verification of the results of automated planning; (b) automatic comparison of treatment parameters to expected values; and (c) guided manual checks of the treatment plan. A risk priority number (RPN) was calculated for each potential failure mode with and without use of the QA program. RESULTS: In the RPA automated treatment planning workflow, we identified 68 potential failure modes with 113 causes. The average RPN was 91 without the QA program and 68 with the QA program (maximum RPNs were 504 and 315, respectively). The reduction in RPN was due to an improvement in the likelihood of detecting failures, resulting in lower detectability scores. The top‐ranked failure modes included incorrect identification of the marked isocenter, inappropriate beam aperture definition, incorrect entry of the prescription into the RPA plan directive, and lack of a comprehensive plan review by the physician. CONCLUSIONS: Using FMEA, we assessed the risks in the clinical deployment of an automated treatment planning workflow and showed that a specialized QA program for the RPA, which included automatic QA techniques, improved the detectability of failures, reducing this risk. However, some residual risks persisted, which were similar to those found in manual treatment planning, and human error remained a major cause of potential failures. Through the risk analysis process, we identified three key aspects of safe deployment of automated planning: (a) user training on potential failure modes; (b) comprehensive manual plan review by physicians and physicists; and (c) automated QA of the treatment plan. John Wiley and Sons Inc. 2019-05-06 2019-06 /pmc/articles/PMC6561826/ /pubmed/31002389 http://dx.doi.org/10.1002/mp.13552 Text en © 2019 The Authors. Medical Physics published by Wiley Periodicals, Inc. on behalf of American Association of Physicists in Medicine. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle THERAPEUTIC INTERVENTIONS
Kisling, Kelly
Johnson, Jennifer L.
Simonds, Hannah
Zhang, Lifei
Jhingran, Anuja
Beadle, Beth M.
Burger, Hester
du Toit, Monique
Joubert, Nanette
Makufa, Remigio
Shaw, William
Trauernicht, Christoph
Balter, Peter
Howell, Rebecca M.
Schmeler, Kathleen
Court, Laurence
[Image: see text] A risk assessment of automated treatment planning and recommendations for clinical deployment
title [Image: see text] A risk assessment of automated treatment planning and recommendations for clinical deployment
title_full [Image: see text] A risk assessment of automated treatment planning and recommendations for clinical deployment
title_fullStr [Image: see text] A risk assessment of automated treatment planning and recommendations for clinical deployment
title_full_unstemmed [Image: see text] A risk assessment of automated treatment planning and recommendations for clinical deployment
title_short [Image: see text] A risk assessment of automated treatment planning and recommendations for clinical deployment
title_sort [image: see text] a risk assessment of automated treatment planning and recommendations for clinical deployment
topic THERAPEUTIC INTERVENTIONS
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6561826/
https://www.ncbi.nlm.nih.gov/pubmed/31002389
http://dx.doi.org/10.1002/mp.13552
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