论文标题
深度学习可自动化在术前和术后胶质母细胞瘤患者中MRI的二维和体积肿瘤负担测量
Deep learning automates bidimensional and volumetric tumor burden measurement from MRI in pre- and post-operative glioblastoma patients
论文作者
论文摘要
通过磁共振成像(MRI)评估肿瘤负担对胶质母细胞瘤的治疗反应评估至关重要。由于疾病的高异质性和复杂性,该评估的性能很复杂,并且与高变异性相关。在这项工作中,我们解决了这个问题,并提出了一条深度学习管道,用于对胶质母细胞瘤患者进行全自动的端到端分析。我们的方法同时确定了肿瘤的子区域,包括在第一步中的肿瘤,周围的水肿和手术腔,然后计算遵循当前神经符号(RANO)标准的当前响应评估的体积和双度测量值。另外,我们引入了严格的手动注释过程,其随后是人类专家描述肿瘤子区域的,并捕获其分割的信心,后来在训练深度学习模型时被使用。我们广泛的实验研究的结果超过了760个术前和504例术后成年患者的胶质瘤,从公共数据库中获得(在2021 - 2020年的19年获得了19个地点),并从临床治疗试验中获得了47和69个地点(47和69个地点(用于术前/后/施加量),并揭示了彻底的量化量,并具有彻底的量化性,并具有彻底的量化性,并具有彻底的量化性,并具有合格的量化性,并进行了统计的,有合法的量 segmentation of pre- and post-operative MRIs in a fraction of the manual delineation time (up to 20 times faster than humans).二维和体积测量与专家放射科医生非常吻合,我们表明RANO测量并不总是足以量化肿瘤负担。
Tumor burden assessment by magnetic resonance imaging (MRI) is central to the evaluation of treatment response for glioblastoma. This assessment is complex to perform and associated with high variability due to the high heterogeneity and complexity of the disease. In this work, we tackle this issue and propose a deep learning pipeline for the fully automated end-to-end analysis of glioblastoma patients. Our approach simultaneously identifies tumor sub-regions, including the enhancing tumor, peritumoral edema and surgical cavity in the first step, and then calculates the volumetric and bidimensional measurements that follow the current Response Assessment in Neuro-Oncology (RANO) criteria. Also, we introduce a rigorous manual annotation process which was followed to delineate the tumor sub-regions by the human experts, and to capture their segmentation confidences that are later used while training the deep learning models. The results of our extensive experimental study performed over 760 pre-operative and 504 post-operative adult patients with glioma obtained from the public database (acquired at 19 sites in years 2021-2020) and from a clinical treatment trial (47 and 69 sites for pre-/post-operative patients, 2009-2011) and backed up with thorough quantitative, qualitative and statistical analysis revealed that our pipeline performs accurate segmentation of pre- and post-operative MRIs in a fraction of the manual delineation time (up to 20 times faster than humans). The bidimensional and volumetric measurements were in strong agreement with expert radiologists, and we showed that RANO measurements are not always sufficient to quantify tumor burden.