论文标题

手动分割与半自动分割,用于量化MRI的前庭造型量

Manual segmentation versus semi-automated segmentation for quantifying vestibular schwannoma volume on MRI

论文作者

McGrath, Hari, Li, Peichao, Dorent, Reuben, Bradford, Robert, Saeed, Shakeel, Bisdas, Sotirios, Ourselin, Sebastien, Shapey, Jonathan, Vercauteren, Tom

论文摘要

前庭造型瘤(VS)的管理是基于肿瘤大小,如对对比剂注射的T1 MRI扫描所观察到的。当前的临床实践是在其最大维度中测量肿瘤的直径。已经表明,作为衡量与大小的量度,体积测量更准确,更可靠。实现此类体积的参考方法是手动分割肿瘤,这是一项耗时的任务。我们建议半自动化的分割可能是解决此问题的临床解决方案,并且可以取代线性测量作为临床标准。使用可用于学术目的的高质量软件,我们对5位临床医生和科学家在MRI上进行了手册与半自动分割的比较研究。我们收集了定量和定性数据,以比较两种方法。包括细分时间,分割工作和分割精度。我们发现,所选的半自动分割方法的明显更快(167s对479s,p <0.001),时间较低和身体要求较低,并且与手动分割相比,性能差不多,精度有所提高。有一些局限性,包括算法的不可预测性和错误,与手动分割相比,这会产生更多的挫败感和心理努力。我们建议可以在临床上应用半自动分割以在MRI上进行体积测量。将来,通用​​软件可以专门用于VS细分,从而提高了准确性。

Management of vestibular schwannoma (VS) is based on tumour size as observed on T1 MRI scans with contrast agent injection. Current clinical practice is to measure the diameter of the tumour in its largest dimension. It has been shown that volumetric measurement is more accurate and more reliable as a measure of VS size. The reference approach to achieve such volumetry is to manually segment the tumour, which is a time intensive task. We suggest that semi-automated segmentation may be a clinically applicable solution to this problem and that it could replace linear measurements as the clinical standard. Using high-quality software available for academic purposes, we ran a comparative study of manual versus semi-automated segmentation of VS on MRI with 5 clinicians and scientists. We gathered both quantitative and qualitative data to compare the two approaches; including segmentation time, segmentation effort and segmentation accuracy. We found that the selected semi-automated segmentation approach is significantly faster (167s versus 479s, p<0.001), less temporally and physically demanding and has approximately equal performance when compared with manual segmentation, with some improvements in accuracy. There were some limitations, including algorithmic unpredictability and error, which produced more frustration and increased mental effort in comparison to manual segmentation. We suggest that semi-automated segmentation could be applied clinically for volumetric measurement of VS on MRI. In future, the generic software could be refined for use specifically for VS segmentation, thereby improving accuracy.

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