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首页> 外文期刊>Neurosurgery >An automated algorithm to improve the precision of basilar artery diameter measurements before and after subarachnoid hemorrhage-induced vasospasm in an animal model.
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An automated algorithm to improve the precision of basilar artery diameter measurements before and after subarachnoid hemorrhage-induced vasospasm in an animal model.

机译:一种自动化算法,提高动物模型中蛛网膜下腔出血诱导血管痉挛前后基底动脉直径测量的精度。

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OBJECTIVE: Quantifying vasospasm has traditionally been performed manually, a method prone to imprecision and user bias. An alternative approach is to use computerized image analysis techniques to define and quantify the diameter of a vessel. The goal of this article is to demonstrate a novel automated vessel measurement algorithm specific to the needs of vasospasm studies and to compare it with traditional manual measurements in an animal model of vasospasm. METHODS: A total of 576 arterial diameter measurements were collected by 4 independent, blinded examiners from 24 angiograms in a rabbit subarachnoid hemorrhage (SAH) model. Measurements were taken from 3 segments of the basilar artery in anteroposterior and lateral projections, both before SAH and after SAH-induced vasospasm. Means and standard deviations of 288 manual measurements were compared with 288 automated measurements. RESULTS: The precision of automated measurements was significantly improved compared with standardized manual measurements (85.7% decrease in variation; P < .001). When using automated measurements, the precision was not affected by vessel size, but when using manual measurements, smaller arteries were less precise (P = .04). There was no significant difference in precision between 2 different contrast concentrations (P = .32). CONCLUSION: Automated measurements of basilar artery diameters are more precise than manual measurements, both before and after SAH-induced vasospasm. The variability in the manual group worsens when the artery is smaller secondary to vasospasm, indicating a need for the use of this segmentation method.
机译:目的:传统上,量化血管痉挛是手动进行的,一种易于不精确和用户偏置的方法。另一种方法是使用计算机化的图像分析技术来限定和量化血管的直径。本文的目标是展示一种新的自动化船舶测量算法,具体满足血管痉挛研究的需要,并在血管痉挛的动物模型中与传统的手动测量进行比较。方法:通过4个独立的,盲化检查员从兔蛛网膜下腔(SAH)模型中的24型血管造影中,共收集576个动脉直径测量。在SAH和SAH诱导的血管痉挛之后,从前胸癌和横向投影中的基底动脉的3个部分取出测量。将288手动测量的手段和标准偏差与288个自动测量进行比较。结果:与标准化手动测量相比,自动测量的精度显着改善(变化减少85.7%; P <.001)。当使用自动测量时,精度不受血管尺寸的影响,但是当使用手动测量时,较小的动脉少精确(P = .04)。 2种不同的对比度浓度之间的精度没有显着差异(p = .32)。结论:基底动脉直径的自动测量比SAH诱导血管痉挛之前和之后的手动测量更精确。当动脉缩小到血管痉挛时,手册组的可变性恶化,表明需要使用这种分段方法。

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