Doolan Paul J, Charalambous Stefanie, Roussakis Yiannis, Leczynski Agnes, Peratikou Mary, Benjamin Melka, Ferentinos Konstantinos, Strouthos Iosif, Zamboglou Constantinos, Karagiannis Efstratios
Department of Medical Physics, German Oncology Center, Limassol, Cyprus.
Department of Radiation Oncology, German Oncology Center, Limassol, Cyprus.
Front Oncol. 2023 Aug 4;13:1213068. doi: 10.3389/fonc.2023.1213068. eCollection 2023.
PURPOSE/OBJECTIVES: Auto-segmentation with artificial intelligence (AI) offers an opportunity to reduce inter- and intra-observer variability in contouring, to improve the quality of contours, as well as to reduce the time taken to conduct this manual task. In this work we benchmark the AI auto-segmentation contours produced by five commercial vendors against a common dataset.
The organ at risk (OAR) contours generated by five commercial AI auto-segmentation solutions (Mirada (Mir), MVision (MV), Radformation (Rad), RayStation (Ray) and TheraPanacea (Ther)) were compared to manually-drawn expert contours from 20 breast, 20 head and neck, 20 lung and 20 prostate patients. Comparisons were made using geometric similarity metrics including volumetric and surface Dice similarity coefficient (vDSC and sDSC), Hausdorff distance (HD) and Added Path Length (APL). To assess the time saved, the time taken to manually draw the expert contours, as well as the time to correct the AI contours, were recorded.
There are differences in the number of CT contours offered by each AI auto-segmentation solution at the time of the study (Mir 99; MV 143; Rad 83; Ray 67; Ther 86), with all offering contours of some lymph node levels as well as OARs. Averaged across all structures, the median vDSCs were good for all systems and compared favorably with existing literature: Mir 0.82; MV 0.88; Rad 0.86; Ray 0.87; Ther 0.88. All systems offer substantial time savings, ranging between: breast 14-20 mins; head and neck 74-93 mins; lung 20-26 mins; prostate 35-42 mins. The time saved, averaged across all structures, was similar for all systems: Mir 39.8 mins; MV 43.6 mins; Rad 36.6 min; Ray 43.2 mins; Ther 45.2 mins.
All five commercial AI auto-segmentation solutions evaluated in this work offer high quality contours in significantly reduced time compared to manual contouring, and could be used to render the radiotherapy workflow more efficient and standardized.
目的/目标:人工智能(AI)自动分割为减少轮廓勾画过程中观察者之间和观察者内部的变异性、提高轮廓质量以及减少进行这项手动任务所需的时间提供了契机。在本研究中,我们针对一个通用数据集对五家商业供应商生成的AI自动分割轮廓进行了基准测试。
将五种商业AI自动分割解决方案(Mirada(Mir)、MVision(MV)、Radformation(Rad)、RayStation(Ray)和TheraPanacea(Ther))生成的危及器官(OAR)轮廓与20例乳腺癌、20例头颈部癌、20例肺癌和20例前列腺癌患者的手动绘制专家轮廓进行比较。使用几何相似性指标进行比较,包括体积和表面骰子相似系数(vDSC和sDSC)、豪斯多夫距离(HD)和增加路径长度(APL)。为了评估节省的时间,记录了手动绘制专家轮廓的时间以及校正AI轮廓的时间。
在研究期间,每种AI自动分割解决方案提供的CT轮廓数量存在差异(Mir为99个;MV为143个;Rad为83个;Ray为67个;Ther为86个),所有方案都提供了一些淋巴结水平以及OAR的轮廓。在所有结构上进行平均,所有系统的vDSC中位数都较好,与现有文献相比具有优势:Mir为0.82;MV为0.88;Rad为0.86;Ray为0.87;Ther为0.88。所有系统都节省了大量时间,范围如下:乳腺癌为14 - 20分钟;头颈部癌为74 - 93分钟;肺癌为20 - 26分钟;前列腺癌为35 - 42分钟。在所有结构上进行平均,所有系统节省的时间相似:Mir为39.8分钟;MV为43.6分钟;Rad为36.6分钟;Ray为43.2分钟;Ther为45.2分钟。
本研究评估的所有五种商业AI自动分割解决方案与手动轮廓勾画相比,能在显著减少的时间内提供高质量轮廓,可用于使放射治疗工作流程更高效、标准化。