Hazard testing to reduce risk in the development of automated planning tools

Author:

Nealon Kelly A.1,Douglas Raphael J.2,Han Eun Young3,Kry Stephen F.4,Reed Valerie K.5,Simiele Samantha J.3,Court Laurence E.3

Affiliation:

1. Department of Radiation Physics – Research The University of Texas MD Anderson Cancer Center and The University of Texas MD Anderson Cancer Center UTHealth Houston Graduate School of Biomedical Sciences Houston Texas USA

2. Department of Radiation Physics – Research The University of Texas MD Anderson Cancer Center Houston Texas USA

3. Department of Radiation Physics – Patient Care The University of Texas MD Anderson Cancer Center Houston Texas USA

4. Department of Radiation Physics Outreach The University of Texas MD Anderson Cancer Center Houston Texas USA

5. Department of Radiation Oncology The University of Texas MD Anderson Cancer Center Houston Texas USA

Abstract

AbstractPurposeHazard scenarios were created to assess and reduce the risk of planning errors in automated planning processes. This was accomplished through iterative testing and improvement of examined user interfaces.MethodsAutomated planning requires three user inputs: a computed tomography (CT), a prescription document, known as the service request, and contours. We investigated the ability of users to catch errors that were intentionally introduced into each of these three stages, according to an FMEA analysis. Five radiation therapists each reviewed 15 patient CTs, containing three errors: inappropriate field of view, incorrect superior border, and incorrect identification of isocenter. Four radiation oncology residents reviewed 10 service requests, containing two errors: incorrect prescription and treatment site. Four physicists reviewed 10 contour sets, containing two errors: missing contour slices and inaccurate target contour. Reviewers underwent video training prior to reviewing and providing feedback for various mock plans.ResultsInitially, 75% of hazard scenarios were detected in the service request approval. The visual display of prescription information was then updated to improve the detectability of errors based on user feedback. The change was then validated with five new radiation oncology residents who detected 100% of errors present. 83% of the hazard scenarios were detected in the CT approval portion of the workflow. For the contour approval portion of the workflow none of the errors were detected by physicists, indicating this step will not be used for quality assurance of contours. To mitigate the risk from errors that could occur at this step, radiation oncologists must perform a thorough review of contour quality prior to final plan approval.ConclusionsHazard testing was used to pinpoint the weaknesses of an automated planning tool and as a result, subsequent improvements were made. This study identified that not all workflow steps should be used for quality assurance and demonstrated the importance of performing hazard testing to identify points of risk in automated planning tools.

Publisher

Wiley

Subject

Radiology, Nuclear Medicine and imaging,Instrumentation,Radiation

Reference28 articles.

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3. RaySearch Laboratories.Automated treatment planning in RayStation. Accessed February 25 2021.https://www.raysearchlabs.com/raystation

4. MIM Software Inc.Expect more from auto‐contouring | Radiation Oncology Automation. Accessed August 19 2022.https://www.mimsoftware.com/radiation‐oncology/contour‐protegeai

5. RaySearch Labratories.Automated treatment planning | RaySearch Laboratories. Accessed August 19 2022.https://www.raysearchlabs.com/automated‐treatment‐planning/

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