脑肿瘤术中超声波分割的挑战。

IF 1.9 3区 医学 Q3 CLINICAL NEUROLOGY
Alistair Weld, Luke Dixon, Giulio Anichini, Neekhil Patel, Amr Nimer, Michael Dyck, Kevin O'Neill, Adrian Lim, Stamatia Giannarou, Sophie Camp
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引用次数: 0

摘要

目标 - 解决术中超声波识别和划分脑肿瘤所面临的挑战。我们的目标是定性和定量评估经验丰富的神经肿瘤术中超声用户(神经外科医生和神经放射科医生)在超声检测和分割脑肿瘤时观察者之间的差异。然后,我们提出,由于这项任务本身具有挑战性,通过用边界框定位整个肿瘤块来进行标注,可作为临床培训中分割的辅助解决方案,包括边缘不确定性和大型数据集的整理。方法--30 位患者的 30 幅脑部病变超声图像由 4 位标注者(1 位神经放射科医生和 3 位神经外科医生)进行标注。首先测量 3 位神经外科医生的注释差异,然后将每位神经外科医生的注释分别与神经放射科医生的注释进行比较,神经放射科医生的注释作为参考标准,他们的分割通过与术前核磁共振成像(MRI)的交叉参考进一步完善。使用了以下统计指标:交集大于联合(IoU)、索伦森-骰子相似系数(DSC)和豪斯多夫距离(HD)。然后将这些注释转换成边界框,进行同样的评估。结果 - 神经外科医生之间存在中等程度的观察者间差异[I o U : 0.789 , D S C : 0.876 , H D : 103.227],而与神经放射科医生的 MRI 信息参考标准注释相比,不同注释者之间的平均差异更大[I o U : 0.723 , D S C : 0.813 , H D : 115.675]。将节段转换为边界框后,所有指标都有所改善,最明显的是四分位数间距下降了 [ I o U : 37 % , D S C : 41 % , H D : 54 % ] 。结论--本研究强调了目前在神经肿瘤术中脑超声中检测和定义肿瘤边界所面临的挑战。然后我们表明,出于临床和技术原因,边界框注释可作为一种有用的补充方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Challenges with segmenting intraoperative ultrasound for brain tumours.

Challenges with segmenting intraoperative ultrasound for brain tumours.

Objective - Addressing the challenges that come with identifying and delineating brain tumours in intraoperative ultrasound. Our goal is to both qualitatively and quantitatively assess the interobserver variation, amongst experienced neuro-oncological intraoperative ultrasound users (neurosurgeons and neuroradiologists), in detecting and segmenting brain tumours on ultrasound. We then propose that, due to the inherent challenges of this task, annotation by localisation of the entire tumour mass with a bounding box could serve as an ancillary solution to segmentation for clinical training, encompassing margin uncertainty and the curation of large datasets. Methods - 30 ultrasound images of brain lesions in 30 patients were annotated by 4 annotators - 1 neuroradiologist and 3 neurosurgeons. The annotation variation of the 3 neurosurgeons was first measured, and then the annotations of each neurosurgeon were individually compared to the neuroradiologist's, which served as a reference standard as their segmentations were further refined by cross-reference to the preoperative magnetic resonance imaging (MRI). The following statistical metrics were used: Intersection Over Union (IoU), Sørensen-Dice Similarity Coefficient (DSC) and Hausdorff Distance (HD). These annotations were then converted into bounding boxes for the same evaluation. Results - There was a moderate level of interobserver variance between the neurosurgeons [ I o U : 0.789 , D S C : 0.876 , H D : 103.227 ] and a larger level of variance when compared against the MRI-informed reference standard annotations by the neuroradiologist, mean across annotators [ I o U : 0.723 , D S C : 0.813 , H D : 115.675 ] . After converting the segments to bounding boxes, all metrics improve, most significantly, the interquartile range drops by [ I o U : 37 % , D S C : 41 % , H D : 54 % ] . Conclusion - This study highlights the current challenges with detecting and defining tumour boundaries in neuro-oncological intraoperative brain ultrasound. We then show that bounding box annotation could serve as a useful complementary approach for both clinical and technical reasons.

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来源期刊
Acta Neurochirurgica
Acta Neurochirurgica 医学-临床神经学
CiteScore
4.40
自引率
4.20%
发文量
342
审稿时长
1 months
期刊介绍: The journal "Acta Neurochirurgica" publishes only original papers useful both to research and clinical work. Papers should deal with clinical neurosurgery - diagnosis and diagnostic techniques, operative surgery and results, postoperative treatment - or with research work in neuroscience if the underlying questions or the results are of neurosurgical interest. Reports on congresses are given in brief accounts. As official organ of the European Association of Neurosurgical Societies the journal publishes all announcements of the E.A.N.S. and reports on the activities of its member societies. Only contributions written in English will be accepted.
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