Automatic AI-based contouring of prostate MRI for online adaptive radiotherapy

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Marcel Nachbar , Monica lo Russo , Cihan Gani , Simon Boeke , Daniel Wegener , Frank Paulsen , Daniel Zips , Thais Roque , Nikos Paragios , Daniela Thorwarth
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引用次数: 0

Abstract

Background and purpose

MR-guided radiotherapy (MRgRT) online plan adaptation accounts for tumor volume changes, interfraction motion and thus allows daily sparing of relevant organs at risk. Due to the high interfraction variability of bladder and rectum, patients with tumors in the pelvic region may strongly benefit from adaptive MRgRT. Currently, fast automatic annotation of anatomical structures is not available within the online MRgRT workflow. Therefore, the aim of this study was to train and validate a fast, accurate deep learning model for automatic MRI segmentation at the MR-Linac for future implementation in a clinical MRgRT workflow.

Materials and methods

For a total of 47 patients, T2w MRI data were acquired on a 1.5 T MR-Linac (Unity, Elekta) on five different days. Prostate, seminal vesicles, rectum, anal canal, bladder, penile bulb, body and bony structures were manually annotated. These training data consisting of 232 data sets in total was used for the generation of a deep learning based autocontouring model and validated on 20 unseen T2w-MRIs. For quantitative evaluation the validation set was contoured by a radiation oncologist as gold standard contours (GSC) and compared in MATLAB to the automatic contours (AIC). For the evaluation, dice similarity coefficients (DSC), and 95% Hausdorff distances (95% HD), added path length (APL) and surface DSC (sDSC) were calculated in a caudal-cranial window of ± 4 cm with respect to the prostate ends. For qualitative evaluation, five radiation oncologists scored the AIC on the possible usage within an online adaptive workflow as follows: (1) no modifications needed, (2) minor adjustments needed, (3) major adjustments/ multiple minor adjustments needed, (4) not usable.

Results

The quantitative evaluation revealed a maximum median 95% HD of 6.9 mm for the rectum and minimum median 95% HD of 2.7 mm for the bladder. Maximal and minimal median DSC were detected for bladder with 0.97 and for penile bulb with 0.73, respectively. Using a tolerance level of 3 mm, the highest and lowest sDSC were determined for rectum (0.94) and anal canal (0.68), respectively.

Qualitative evaluation resulted in a mean score of 1.2 for AICs over all organs and patients across all expert ratings. For the different autocontoured structures, the highest mean score of 1.0 was observed for anal canal, sacrum, femur left and right, and pelvis left, whereas for prostate the lowest mean score of 2.0 was detected. In total, 80% of the contours were rated be clinically acceptable, 16% to require minor and 4% major adjustments for online adaptive MRgRT.

Conclusion

In this study, an AI-based autocontouring was successfully trained for online adaptive MR-guided radiotherapy on the 1.5 T MR-Linac system. The developed model can automatically generate contours accepted by physicians (80%) or only with the need of minor corrections (16%) for the irradiation of primary prostate on the clinically employed sequences.

基于人工智能的前列腺 MRI 自动轮廓分析,用于在线自适应放疗
背景和目的MR引导放射治疗(MRgRT)的在线计划适应性考虑了肿瘤体积的变化和折射运动,因此可以每天对有风险的相关器官进行放疗。由于膀胱和直肠的折射运动变化较大,盆腔肿瘤患者可从自适应 MRgRT 中获益匪浅。目前,在线 MRgRT 工作流程还不能快速自动标注解剖结构。因此,本研究的目的是训练和验证一个快速、准确的深度学习模型,用于在 MR-Linac 上进行自动 MRI 分割,以便将来在临床 MRgRT 工作流程中实施。材料和方法在五个不同的日子里,在 1.5 T MR-Linac (Unity,Elekta)上共采集了 47 名患者的 T2w MRI 数据。人工标注了前列腺、精囊、直肠、肛管、膀胱、阴茎球部、身体和骨骼结构。这些训练数据总共包括 232 个数据集,用于生成基于深度学习的自动构图模型,并在 20 个未见过的 T2w-MRI 上进行了验证。为了进行定量评估,验证集由放射肿瘤学家绘制黄金标准轮廓(GSC),并在 MATLAB 中与自动轮廓(AIC)进行比较。为了进行评估,在前列腺两端± 4 厘米的尾颅窗(caudal-cranial window)内计算了骰子相似系数(DSC)、95% Hausdorff 距离(95% HD)、附加路径长度(APL)和表面 DSC(sDSC)。为了进行定性评估,五位放射肿瘤专家对在线自适应工作流程中可能使用的 AIC 进行了如下评分:(结果定量评估显示,直肠最大 95% HD 中值为 6.9 毫米,膀胱最小 95% HD 中值为 2.7 毫米。膀胱和阴茎球的最大和最小中位 DSC 分别为 0.97 和 0.73。以 3 毫米为容差水平,直肠(0.94)和肛管(0.68)的 sDSC 分别最高和最低。在不同的自动描绘结构中,肛管、骶骨、左右股骨和左骨盆的平均得分最高,为 1.0 分,而前列腺的平均得分最低,为 2.0 分。总之,80% 的轮廓被评为临床可接受,16% 的轮廓需要微调,4% 的轮廓需要对在线自适应 MRgRT 进行重大调整。所开发的模型可自动生成医生认可的轮廓(80%),或只需进行小幅修正(16%),即可用于临床使用序列的原发性前列腺照射。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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