Guide for quality control and safety of external radiotherapy planning systems and treatment plans

Authors

  • Alejandro García Romero Hospital Clínico Universitario Lozano Blesa de Zaragoza.
  • Montserrat Baeza Trujillo Hospital Universitario Virgen del Rocío de Sevilla.
  • Antonio Teijeiro García Hospital Do Meixoeiro de Vigo.
  • Francisco Clemente Gutiérrez Complejo Hospitalario de Toledo
  • Daniel Morera Cano Hospital Univeritario Son Espases, Palma de Mallorca.
  • Víctor Hernández Masgrau Hospital Sant Joan de Reus, IISPV.

DOI:

https://doi.org/10.37004/sefm/2024.25.1.008

Keywords:

Treatment planning system, plan verification, quality assurance, initial reference state, audits, end-to-end tests

Abstract

The content of the document reflects the recommendations of the SEFM for the quality control and safe use of external radiotherapy  treatment planning systems. An initial exposition is presented regarding the reasons, general considerations, and main updates to be  taken into account in current planning systems before proceeding to analyze in detail the characterization of treatment units and the  parameters to consider in their modeling, with special emphasis on those related to the multileaf collimator.

The document is divided into three distinct sections aimed at comprehensively covering all aspects influencing the quality and safety of  the treatment planning system product, the treatment plan. These sections emcompass quality control of the planning system, quality assurance of the planning process, and treatment plan verification, all while maintaining the perspective provided by the  associated risk analysis.

The quality control program is established in three steps: initial reference state, periodic checks, and checks after updates. In addition to this, the planning process is analyzed, ensuring its quality through global processes such as audits and end-to-end tests, plan  evaluation, and systematization related to standardization and class solutions. Finally, the document describes plan verification tools  and their limitations, associated metrics, and potential verification strategies. The entire document concludes with a final chapter summarizing all recommendations based on the exposition and specifying tolerances to be used at each stage.

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2024-05-05

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Guide for quality control and safety of external radiotherapy planning systems and treatment plans. (2024). Revista De Física Médica, 25(1), 123-182. https://doi.org/10.37004/sefm/2024.25.1.008

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