Delineation of tumors and organs-at-risk permits detecting and correcting changes in the patients' anatomy throughout the treatment, making it a core step of adaptive proton therapy (APT). Although AI-based auto-contouring technologies have sped up this process, the time needed to perform the quality assessment (QA) of the generated contours remains a bottleneck, taking clinicians between several minutes up to an hour to complete. This paper introduces a fast contouring workflow suitable for time-critical APT, enabling detection of anatomical changes in shorter time frames and with a lower demand of clinical resources. The proposed AI-infused workflow follows two principles uncovered after reviewing the APT literature and conducting several interviews and an observational study in two radiotherapy centers in the Netherlands. First, enable targeted inspection of the generated contours by leveraging AI uncertainty and clinically-relevant features such as the proximity of the organs-at-risk to the tumor. Second, minimize the number of interactions needed to edit faulty delineations with redundancy-aware editing tools that provide the user a sense of predictability and control. We use a proof of concept that we validated with clinicians to demonstrate how current and upcoming AI capabilities support the workflow and how it would fit into clinical practice.
翻译:肿瘤和高危器官的脱线允许在整个治疗过程中发现和纠正病人解剖过程的变化,使之成为适应质子疗法的核心步骤。 虽然AI型自动调试技术加快了这一过程,但对生成的轮廓进行质量评估所需的时间仍然是瓶颈,临床医师在几分钟到一个小时之间完成。本文引入了适合时间紧迫的APT的快速调试工作流程,从而能够探测出较短时间框架内的解剖变化,临床资源需求较低。拟议的AI型人工调试工作流程遵循了在荷兰两个放射治疗中心审查APT文献并进行若干次访谈和观察研究之后发现的两项原则。首先,通过利用AI型不确定性和临床相关特征,如器官与肿瘤的距离,能够对生成的轮廓进行有针对性的检查。第二,最大限度地减少编辑错误定义所需的互动次数,使用户能够对当前预测和控制有把握的编辑工具进行编辑。我们使用一个验证性能证明,将如何使用户对当前临床工作流程进行更新。我们使用一个验证,将如何将一个验证用于临床工作流程概念的校准。