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评估低分辨率脑成像的效用:婴儿脑积水的治疗。

Assessing the utility of low resolution brain imaging: treatment of infant hydrocephalus.

机构信息

Center for Neural Engineering, Department of Engineering Science and Mechanics, The Pennsylvania State University, University Park, PA, USA.

School of Electrical Engineering and Computer Science, The Pennsylvania State University, University Park, PA, USA.

出版信息

Neuroimage Clin. 2021;32:102896. doi: 10.1016/j.nicl.2021.102896. Epub 2021 Nov 23.

Abstract

As low-field MRI technology is being disseminated into clinical settings around the world, it is important to assess the image quality required to properly diagnose and treat a given disease and evaluate the role of machine learning algorithms, such as deep learning, in the enhancement of lower quality images. In this post hoc analysis of an ongoing randomized clinical trial, we assessed the diagnostic utility of reduced-quality and deep learning enhanced images for hydrocephalus treatment planning. CT images of post-infectious infant hydrocephalus were degraded in terms of spatial resolution, noise, and contrast between brain and CSF and enhanced using deep learning algorithms. Both degraded and enhanced images were presented to three experienced pediatric neurosurgeons accustomed to working in low- to middle-income countries (LMIC) for assessment of clinical utility in treatment planning for hydrocephalus. In addition, enhanced images were presented alongside their ground-truth CT counterparts in order to assess whether reconstruction errors caused by the deep learning enhancement routine were acceptable to the evaluators. Results indicate that image resolution and contrast-to-noise ratio between brain and CSF predict the likelihood of an image being characterized as useful for hydrocephalus treatment planning. Deep learning enhancement substantially increases contrast-to-noise ratio improving the apparent likelihood of the image being useful; however, deep learning enhancement introduces structural errors which create a substantial risk of misleading clinical interpretation. We find that images with lower quality than is customarily acceptable can be useful for hydrocephalus treatment planning. Moreover, low quality images may be preferable to images enhanced with deep learning, since they do not introduce the risk of misleading information which could misguide treatment decisions. These findings advocate for new standards in assessing acceptable image quality for clinical use.

摘要

随着低场 MRI 技术在全球范围内普及到临床环境中,评估正确诊断和治疗特定疾病所需的图像质量以及评估机器学习算法(如深度学习)在增强低质量图像方面的作用变得非常重要。在这项正在进行的随机临床试验的事后分析中,我们评估了低质量和深度学习增强图像在脑积水治疗计划中的诊断效用。通过降低空间分辨率、噪声和脑与 CSF 之间的对比度对感染后婴儿脑积水的 CT 图像进行降级,并使用深度学习算法对其进行增强。将降级和增强后的图像提供给三位熟悉在中低收入国家(LMIC)工作的经验丰富的儿科神经外科医生,以评估它们在脑积水治疗计划中的临床实用性。此外,还将增强后的图像与它们的真实 CT 图像一起呈现,以评估深度学习增强常规引起的重建错误是否可以被评估者接受。结果表明,图像分辨率和脑与 CSF 之间的对比度噪声比预测图像是否有助于脑积水治疗计划。深度学习增强极大地提高了对比度噪声比,从而提高了图像有用的可能性;然而,深度学习增强会引入结构错误,从而极大地增加误导临床解释的风险。我们发现,图像质量低于通常可接受的标准也可以用于脑积水治疗计划。此外,低质量的图像可能比深度学习增强的图像更可取,因为它们不会引入误导信息的风险,而误导信息可能会误导治疗决策。这些发现提倡为临床应用评估可接受的图像质量制定新标准。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bca1/8646178/40c3b26a3c0c/gr1.jpg

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