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知识模型作为调强放射治疗计划培训的教学辅助工具:肺癌案例研究

Knowledge Models as Teaching Aid for Training Intensity Modulated Radiation Therapy Planning: A Lung Cancer Case Study.

作者信息

Mistro Matt, Sheng Yang, Ge Yaorong, Kelsey Chris R, Palta Jatinder R, Cai Jing, Wu Qiuwen, Yin Fang-Fang, Wu Q Jackie

机构信息

Department of Radiation Oncology, Duke University Medical Center, Durham, NC, United States.

Medical Physics Graduate Program, Duke University, Durham, NC, United States.

出版信息

Front Artif Intell. 2020 Aug 28;3:66. doi: 10.3389/frai.2020.00066. eCollection 2020.

Abstract

Artificial intelligence (AI) employs knowledge models that often behave as a black-box to the majority of users and are not designed to improve the skill level of users. In this study, we aim to demonstrate the feasibility that AI can serve as an effective teaching aid to train individuals to develop optimal intensity modulated radiation therapy (IMRT) plans. The training program is composed of a host of training cases and a tutoring system that consists of a front-end visualization module powered by knowledge models and a scoring system. The current tutoring system includes a beam angle prediction model and a dose-volume histogram (DVH) prediction model. The scoring system consists of physician chosen criteria for clinical plan evaluation as well as specially designed criteria for learning guidance. The training program includes six lung/mediastinum IMRT patients: one benchmark case and five training cases. A plan for the benchmark case is completed by each trainee entirely independently pre- and post-training. Five training cases cover a wide spectrum of complexity from easy (2), intermediate (1) to hard (2). Five trainees completed the training program with the help of one trainer. Plans designed by the trainees were evaluated by both the scoring system and a radiation oncologist to quantify planning quality. For the benchmark case, trainees scored an average of 21.6% of the total max points pre-training and improved to an average of 51.8% post-training. In comparison, the benchmark case's clinical plans score an average of 54.1% of the total max points. Two of the five trainees' post-training plans on the benchmark case were rated as comparable to the clinically delivered plans by the physician and all five were noticeably improved by the physician's standards. The total training time for each trainee ranged between 9 and 12 h. This first attempt at a knowledge model based training program brought unexperienced planners to a level close to experienced planners in fewer than 2 days. The proposed tutoring system can serve as an important component in an AI ecosystem that will enable clinical practitioners to effectively and confidently use KBP.

摘要

人工智能(AI)所采用的知识模型,对大多数用户而言往往就像一个黑匣子,而且其设计目的并非提高用户的技能水平。在本研究中,我们旨在证明人工智能可作为一种有效的教学辅助工具,用以训练个人制定优化的调强放射治疗(IMRT)计划的可行性。培训项目由大量的训练案例和一个辅导系统组成,该辅导系统包括一个由知识模型驱动的前端可视化模块和一个评分系统。当前的辅导系统包括一个射束角度预测模型和一个剂量体积直方图(DVH)预测模型。评分系统由医生选择的临床计划评估标准以及专门设计的学习指导标准组成。培训项目包括六例肺/纵隔IMRT患者:一个基准案例和五个训练案例。每个学员在培训前后完全独立地完成基准案例的一个计划。五个训练案例涵盖了从简单(2个)、中等(1个)到困难(2个)的广泛复杂性。五名学员在一名培训师的帮助下完成了培训项目。学员设计的计划由评分系统和放射肿瘤学家进行评估,以量化计划质量。对于基准案例,学员在培训前的平均得分是总分最大值的21.6%,培训后提高到了平均51.8%。相比之下,基准案例的临床计划平均得分为总分最大值的54.1%。五名学员中有两名在基准案例上的培训后计划被医生评定为与临床实施的计划相当,并且按照医生的标准,所有五名学员的计划都有显著改进。每个学员的总培训时间在9到12小时之间。这次基于知识模型的培训项目的首次尝试,在不到两天的时间里就让没有经验的计划制定者达到了接近有经验的计划制定者的水平。所提出的辅导系统可以作为人工智能生态系统中的一个重要组成部分,使临床从业者能够有效且自信地使用基于知识的计划(KBP)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e7c1/7861316/89e6814dce7b/frai-03-00066-g0001.jpg

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