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磁共振脑图像的自动容积测量有助于诊断决策。

Automatic volumetry on MR brain images can support diagnostic decision making.

作者信息

Heckemann Rolf A, Hammers Alexander, Rueckert Daniel, Aviv Richard I, Harvey Christopher J, Hajnal Joseph V

机构信息

Division of Neurosciences and Mental Health, Imperial College London, Hammersmith Campus, Du Cane Road, London, UK.

出版信息

BMC Med Imaging. 2008 May 23;8:9. doi: 10.1186/1471-2342-8-9.

Abstract

BACKGROUND

Diagnostic decisions in clinical imaging currently rely almost exclusively on visual image interpretation. This can lead to uncertainty, for example in dementia disease, where some of the changes resemble those of normal ageing. We hypothesized that extracting volumetric data from patients' MR brain images, relating them to reference data and presenting the results as a colour overlay on the grey scale data would aid diagnostic readers in classifying dementia disease versus normal ageing.

METHODS

A proof-of-concept forced-choice reader study was designed using MR brain images from 36 subjects. Images were segmented into 43 regions using an automatic atlas registration-based label propagation procedure. Seven subjects had clinically probable AD, the remaining 29 of a similar age range were used as controls. Seven of the control subject data sets were selected at random to be presented along with the seven AD datasets to two readers, who were blinded to all clinical and demographic information except age and gender. Readers were asked to review the grey scale MR images and to record their choice of diagnosis (AD or non-AD) along with their confidence in this decision. Afterwards, readers were given the option to switch on a false-colour overlay representing the relative size of the segmented structures. Colorization was based on the size rank of the test subject when compared with a reference group consisting of the 22 control subjects who were not used as review subjects. The readers were then asked to record whether and how the additional information had an impact on their diagnostic confidence.

RESULTS

The size rank colour overlays were useful in 18 of 28 diagnoses, as determined by their impact on readers' diagnostic confidence. A not useful result was found in 6 of 28 cases. The impact of the additional information on diagnostic confidence was significant (p < 0.02).

CONCLUSION

Volumetric anatomical information extracted from brain images using automatic segmentation and presented as colour overlays can support diagnostic decision making.

摘要

背景

目前临床影像诊断决策几乎完全依赖于视觉图像解读。这可能导致不确定性,例如在痴呆症中,其中一些变化类似于正常衰老的变化。我们假设从患者的脑部磁共振成像(MR)图像中提取体积数据,将其与参考数据相关联,并将结果以彩色叠加在灰度数据上,这将有助于诊断读者区分痴呆症与正常衰老。

方法

设计了一项概念验证强制选择读者研究,使用了36名受试者的脑部MR图像。使用基于自动图谱配准的标签传播程序将图像分割为43个区域。7名受试者患有临床可能的阿尔茨海默病(AD),其余29名年龄范围相似的受试者用作对照。随机选择7个对照受试者的数据集与7个AD数据集一起呈现给两名读者,这两名读者对除年龄和性别之外的所有临床和人口统计学信息均不知情。要求读者查看灰度MR图像,并记录他们的诊断选择(AD或非AD)以及他们对该决定的信心。之后,读者可以选择打开一个代表分割结构相对大小的假彩色叠加图。彩色化基于测试受试者与由22名未用作审查受试者的对照受试者组成的参考组相比的大小排名。然后要求读者记录额外信息是否以及如何影响他们的诊断信心。

结果

根据对读者诊断信心的影响,28例诊断中有18例大小排名彩色叠加图是有用的。28例中有6例结果无用。额外信息对诊断信心的影响具有统计学意义(p < 0.02)。

结论

使用自动分割从脑图像中提取的体积解剖信息并以彩色叠加图呈现,可以支持诊断决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fa40/2413211/866f5f1c1748/1471-2342-8-9-1.jpg

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