Department of Radiation Oncology, University of California, Los Angeles, California, USA.
Department of Pediatrics, University of California, San Francisco, California, USA.
J Appl Clin Med Phys. 2022 May;23(5):e13568. doi: 10.1002/acm2.13568. Epub 2022 Mar 3.
Little is known about the scale of clinical implementation of automated treatment planning techniques in the United States. In this work, we examine the barriers and facilitators to adoption of commercially available automated planning tools into the clinical workflow using a survey of medical dosimetrists.
METHODS/MATERIALS: Survey questions were developed based on a literature review of automation research and cognitive interviews of medical dosimetrists at our institution. Treatment planning automation was defined to include auto-contouring and automated treatment planning. Survey questions probed frequency of use, positive and negative perceptions, potential implementation changes, and demographic and institutional descriptive statistics. The survey sample was identified using both a LinkedIn search and referral requests sent to physics directors and senior physicists at 34 radiotherapy clinics in our state. The survey was active from August 2020 to April 2021.
Thirty-four responses were collected out of 59 surveys sent. Three categories of barriers to use of automation were identified. The first related to perceptions of limited accuracy and usability of the algorithms. Eighty-eight percent of respondents reported that auto-contouring inaccuracy limited its use, and 62% thought it was difficult to modify an automated plan, thus limiting its usefulness. The second barrier relates to the perception that automation increases the probability of an error reaching the patient. Third, respondents were concerned that automation will make their jobs less satisfying and less secure. Large majorities reported that they enjoyed plan optimization, would not want to lose that part of their job, and expressed explicit job security fears.
To our knowledge this is the first systematic investigation into the views of automation by medical dosimetrists. Potential barriers and facilitators to use were explicitly identified. This investigation highlights several concrete approaches that could potentially increase the translation of automation into the clinic, along with areas of needed research.
在美国,关于自动化治疗计划技术在临床实施规模的信息知之甚少。在这项工作中,我们使用对医疗剂量师的调查,研究了将商业上可用的自动化计划工具纳入临床工作流程的障碍和促进因素。
方法/材料: 根据自动化研究的文献回顾和我们机构的医疗剂量师的认知访谈,制定了调查问题。治疗计划自动化被定义为包括自动勾画和自动化治疗计划。调查问题探讨了使用频率、正面和负面看法、潜在的实施变化以及人口统计学和机构描述性统计数据。使用 LinkedIn 搜索和向我们州的 34 家放疗诊所的物理主任和高级物理学家发送的推荐请求来确定调查样本。该调查于 2020 年 8 月至 2021 年 4 月期间开放。
在发送的 59 份调查中,共收到 34 份回复。确定了使用自动化的三个障碍类别。第一个与算法的准确性和可用性有限的看法有关。88%的受访者报告说,自动勾画的不准确性限制了其使用,而 62%的人认为修改自动化计划很困难,因此限制了其有用性。第二个障碍与认为自动化增加了错误到达患者的可能性有关。第三,受访者担心自动化会使他们的工作不那么令人满意和不安全。绝大多数人表示他们喜欢计划优化,不想失去工作的这一部分,并明确表示对工作安全的担忧。
据我们所知,这是首次对医疗剂量师对自动化的看法进行的系统调查。明确确定了使用的潜在障碍和促进因素。这项调查突出了几种具体的方法,这些方法可能会增加自动化在临床中的转化,同时还需要研究一些领域。