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首页> 外文期刊>Radiotherapy and oncology: Journal of the European Society for Therapeutic Radiology and Oncology >Evaluation of an artificial intelligence guided inverse planning system: clinical case study.
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Evaluation of an artificial intelligence guided inverse planning system: clinical case study.

机译:人工智能指导的逆向计划系统的评估:临床案例研究。

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PURPOSE: An artificial intelligence (AI) guided method for parameter adjustment of inverse planning was implemented on a commercial inverse treatment planning system. For evaluation purpose, four typical clinical cases were tested and the results from both plans achieved by automated and manual methods were compared. METHODS AND MATERIALS: The procedure of parameter adjustment mainly consists of three major loops. Each loop is in charge of modifying parameters of one category, which is carried out by a specially customized fuzzy inference system. A physician prescribed multiple constraints for a selected volume were adopted to account for the tradeoff between prescription dose to the PTV and dose-volume constraints for critical organs. The searching process for an optimal parameter combination began with the first constraint, and proceeds to the next until a plan with acceptable dose was achieved. The initial setup of the plan parameters was the same for each case and was adjusted independently by bothmanual and automated methods. After the parameters of one category were updated, the intensity maps of all fields were re-optimized and the plan dose was subsequently re-calculated. When final plan arrived, the dose statistics were calculated from both plans and compared. RESULTS: For planned target volume (PTV), the dose for 95% volume is up to 10% higher in plans using the automated method than those using the manual method. For critical organs, an average decrease of the plan dose was achieved. However, the automated method cannot improve the plan dose for some critical organs due to limitations of the inference rules currently employed. For normal tissue, there was no significant difference between plan doses achieved by either automated or manual method. CONCLUSION: With the application of AI-guided method, the basic parameter adjustment task can be accomplished automatically and a comparable plan dose was achieved in comparison with that achieved by the manual method. Future improvements to incorporate case-specific inference rules are essential to fully automate the inverse planning process.
机译:目的:在商业逆向治疗计划系统上实施了一种人工智能(AI)指导的逆向计划参数调整方法。为了进行评估,对四个典型的临床病例进行了测试,并对通过自动和手动方法获得的两个计划的结果进行了比较。方法和材料:参数调整的过程主要由三个主要循环组成。每个循环负责修改一类参数,这是通过专门定制的模糊推理系统执行的。采用医师为选定的体积规定了多个约束条件,以解决PTV的处方剂量与关键器官的剂量体积约束条件之间的权衡问题。最佳参数组合的搜索过程从第一个约束开始,然后进行到下一个约束,直到获得具有可接受剂量的计划。每种情况下,计划参数的初始设置都是相同的,并且分别通过手动和自动方法进行了调整。在更新一类参数后,重新优化所有区域的强度图,然后重新计算计划剂量。当最终计划到达时,从两个计划中计算剂量统计数据并进行比较。结果:对于计划目标体积(PTV),使用自动方法的计划中95%体积的剂量比使用手动方法的剂量高出10%。对于关键器官,计划剂量平均减少。但是,由于当前采用的推理规则的限制,自动方法无法提高某些关键器官的计划剂量。对于正常组织,通过自动或手动方法获得的计划剂量之间没有显着差异。结论:通过AI指导方法的应用,基本参数调整任务可以自动完成,并且与手动方法相比具有可比的计划剂量。未来需要结合特定案例的推理规则进行改进,这对于逆向计划流程的完全自动化至关重要。

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