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Evaluation of CI electrode position from imaging: comparison of an automated technique with the established manual method.从影像学评估 CI 电极位置:自动技术与既定手动方法的比较。
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本文引用的文献

1
A multiscale imaging and modelling dataset of the human inner ear.人类内耳的多尺度成像和建模数据集。
Sci Data. 2017 Sep 19;4:170132. doi: 10.1038/sdata.2017.132.
2
Automatic Localization of Cochlear Implant Electrode Contacts in CT.CT 中人工耳蜗电极触点的自动定位。
Ear Hear. 2017 Nov/Dec;38(6):e376-e384. doi: 10.1097/AUD.0000000000000438.
3
Automatic selection of the active electrode set for image-guided cochlear implant programming.用于图像引导人工耳蜗编程的有源电极组自动选择
J Med Imaging (Bellingham). 2016 Jul;3(3):035001. doi: 10.1117/1.JMI.3.3.035001. Epub 2016 Sep 22.
4
Automatic graph-based localization of cochlear implant electrodes in CT.基于自动图形的人工耳蜗电极在CT中的定位
Med Image Comput Comput Assist Interv. 2015 Oct;9350:152-159. doi: 10.1007/978-3-319-24571-3_19. Epub 2015 Nov 20.
5
Initial Results With Image-guided Cochlear Implant Programming in Children.儿童影像引导下人工耳蜗编程的初步结果
Otol Neurotol. 2016 Feb;37(2):e63-9. doi: 10.1097/MAO.0000000000000909.
6
Clinical evaluation of an image-guided cochlear implant programming strategy.一种图像引导的人工耳蜗编程策略的临床评估
Audiol Neurootol. 2014;19(6):400-11. doi: 10.1159/000365273. Epub 2014 Nov 7.
7
Automatic localization of cochlear implant electrodes in CT.耳蜗植入电极在CT图像中的自动定位
Med Image Comput Comput Assist Interv. 2014;17(Pt 1):331-8. doi: 10.1007/978-3-319-10404-1_42.
8
An artifact-robust, shape library-based algorithm for automatic segmentation of inner ear anatomy in post-cochlear-implantation CT.一种基于形状库的抗伪影算法,用于人工耳蜗植入术后CT中内耳解剖结构的自动分割。
Proc SPIE Int Soc Opt Eng. 2014 Mar 21;9034:90342V. doi: 10.1117/12.2043260.
9
Impact of electrode design and surgical approach on scalar location and cochlear implant outcomes.电极设计与手术方式对标量位置及人工耳蜗植入效果的影响。
Laryngoscope. 2014 Nov;124 Suppl 6(0 6):S1-7. doi: 10.1002/lary.24728. Epub 2014 May 30.
10
Automatic segmentation of intra-cochlear anatomy in post-implantation CT of unilateral cochlear implant recipients.单侧人工耳蜗植入术后 CT 中内耳结构的自动分割。
Med Image Anal. 2014 Apr;18(3):605-15. doi: 10.1016/j.media.2014.02.001. Epub 2014 Feb 18.

使用……对人工耳蜗电极自动定位技术进行验证

Validation of automatic cochlear implant electrode localization techniques using .

作者信息

Zhao Yiyuan, Labadie Robert F, Dawant Benoit M, Noble Jack H

机构信息

Vanderbilt University, Department of Electrical Engineering and Computer Science, Nashville, Tennessee, United States.

Vanderbilt University Medical Center, Department of Otolaryngology-Head and Neck Surgery, Nashville, Tennessee, United States.

出版信息

J Med Imaging (Bellingham). 2018 Jul;5(3):035001. doi: 10.1117/1.JMI.5.3.035001. Epub 2018 Sep 24.

DOI:10.1117/1.JMI.5.3.035001
PMID:30840722
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6152538/
Abstract

Cochlear implants (CIs) are standard treatment for patients who experience sensorineural hearing loss. Although these devices have been remarkably successful at restoring hearing, it is rare that they permit to achieve natural fidelity and many patients experience poor outcomes. Our group has developed image-guided CI programming techniques (IGCIP), in which image analysis techniques are used to locate the intracochlear position of CI electrodes to determine patient-customized settings for the CI processor. Clinical studies have shown that IGCIP leads to significantly improved outcomes. A crucial step is the localization of the electrodes, and rigorously quantifying the accuracy of our algorithms requires dedicated datasets. We discuss the creation of a ground truth dataset for electrode position and its use to evaluate the accuracy of our electrode localization techniques. Our final ground truth dataset includes 30 temporal bone specimens that were each implanted with one of four different types of electrode array by an experienced CI surgeon. The arrays were localized in conventional CT images using our automatic methods and manually in high-resolution images to create the ground truth. The conventional and images were registered to facilitate comparison between automatic and ground truth electrode localization results. Our technique resulted in mean errors of 0.13 mm in localizing the electrodes across 30 cases. Our approach successfully permitted characterizing the accuracy of our methods, which is critical to understand their limitations for use in IGCIP.

摘要

人工耳蜗(CI)是感音神经性听力损失患者的标准治疗方法。尽管这些设备在恢复听力方面取得了显著成功,但它们很少能实现自然的保真度,许多患者的治疗效果不佳。我们团队开发了图像引导的人工耳蜗编程技术(IGCIP),其中图像分析技术用于定位人工耳蜗电极在耳蜗内的位置,以确定针对患者定制的人工耳蜗处理器设置。临床研究表明,IGCIP能显著改善治疗效果。关键步骤是电极定位,而要严格量化我们算法的准确性需要专用数据集。我们讨论了用于电极位置的地面真值数据集的创建及其用于评估我们电极定位技术准确性的方法。我们最终的地面真值数据集包括30个颞骨标本,每个标本由一位经验丰富的人工耳蜗外科医生植入四种不同类型电极阵列中的一种。使用我们的自动方法在传统CT图像中对电极阵列进行定位,并在高分辨率图像中手动定位以创建地面真值。对传统图像和高分辨率图像进行配准,以便于比较自动和地面真值电极定位结果。我们的技术在30例病例中定位电极的平均误差为0.13毫米。我们的方法成功地实现了对我们方法准确性的表征,这对于理解它们在IGCIP中的使用局限性至关重要。