评估胶质母细胞瘤反应评估的自动化纵向肿瘤测量。

Frontiers in radiology Pub Date : 2023-09-07 eCollection Date: 2023-01-01 DOI:10.3389/fradi.2023.1211859
Yannick Suter, Michelle Notter, Raphael Meier, Tina Loosli, Philippe Schucht, Roland Wiest, Mauricio Reyes, Urspeter Knecht
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摘要

胶质母细胞瘤的自动肿瘤分割工具显示出良好的性能。要将这些工具应用于自动反应评估、纵向分割和肿瘤测量,一致性至关重要。本研究旨在确定BraTumIA和HD-GLIO是否适合这项任务。我们在单中心回顾性LUMIERE数据集上评估了两种关于自动反应评估的分割工具,该数据集包含80名患者和总共502个术后时间点。根据神经肿瘤反应评估(RANO)指南,将容量测定和自动二维测量与专家测量进行比较。评估了专家和方法之间的纵向趋势一致性,并根据专家得出的进展时间(TTP)测试了RANO进展阈值。TTP与总生存期(OS)的相关性用于检查进展阈值。我们评估了不可测量病变的自动检测和影响。分割体积和专家二维测量之间计算出的肿瘤体积趋势一致性很高(HD-GLIO:81.1%,BraTumIA:79.7%)。BraTumIA使用推荐的RANO进展阈值实现了与专家TTP最接近的匹配。HD GLIO衍生的肿瘤体积在TTP和OS之间达到了最高的相关性(0.55)。两种工具都无法在一段时间内准确计数病变。手动去除假阳性并限制在最大数量的可测量病变范围内没有任何有益效果。在应用经过测试的自动分割工具进行自动反应评估时,专家监督和手动更正仍然是必要的。当前分割工具的纵向一致性需要进一步改进。需要通过多中心研究验证体积和二维进展阈值,以实现基于体积的反应评估。
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Evaluating automated longitudinal tumor measurements for glioblastoma response assessment.

Automated tumor segmentation tools for glioblastoma show promising performance. To apply these tools for automated response assessment, longitudinal segmentation, and tumor measurement, consistency is critical. This study aimed to determine whether BraTumIA and HD-GLIO are suited for this task. We evaluated two segmentation tools with respect to automated response assessment on the single-center retrospective LUMIERE dataset with 80 patients and a total of 502 post-operative time points. Volumetry and automated bi-dimensional measurements were compared with expert measurements following the Response Assessment in Neuro-Oncology (RANO) guidelines. The longitudinal trend agreement between the expert and methods was evaluated, and the RANO progression thresholds were tested against the expert-derived time-to-progression (TTP). The TTP and overall survival (OS) correlation was used to check the progression thresholds. We evaluated the automated detection and influence of non-measurable lesions. The tumor volume trend agreement calculated between segmentation volumes and the expert bi-dimensional measurements was high (HD-GLIO: 81.1%, BraTumIA: 79.7%). BraTumIA achieved the closest match to the expert TTP using the recommended RANO progression threshold. HD-GLIO-derived tumor volumes reached the highest correlation between TTP and OS (0.55). Both tools failed at an accurate lesion count across time. Manual false-positive removal and restricting to a maximum number of measurable lesions had no beneficial effect. Expert supervision and manual corrections are still necessary when applying the tested automated segmentation tools for automated response assessment. The longitudinal consistency of current segmentation tools needs further improvement. Validation of volumetric and bi-dimensional progression thresholds with multi-center studies is required to move toward volumetry-based response assessment.

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