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A Graph-Based Method for Optimal Active Electrode Selection in Cochlear Implants

机译:基于图的耳蜗植入中最佳有源电极选择的方法

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The cochlear implant (CI) is a neural prosthetic that is the standard-of-care treatment for severe-to-profound hearing loss. CIs consist of an electrode array inserted into the cochlea that electrically stimulates auditory nerve fibers to induce the sensation of hearing. Competing stimuli occur when multiple electrodes stimulate the same neural pathways. This is known to negatively impact hearing outcomes. Previous research has shown that image-processing techniques can be used to analyze the CI position in CT scans to estimate the degree of competition between electrodes based on the CI user's unique anatomy and electrode placement. The resulting data permits an algorithm or expert to select a subset of electrodes to keep active to alleviate competition. Expert selection of electrodes using this data has been shown in clinical studies to lead to significantly improved hearing outcomes for CI users. Currently, we aim to translate these techniques to a system designed for worldwide clinical use, which mandates that the selection of active electrodes be automated by robust algorithms. Previously proposed techniques produce optimal plans with only 48% success rate. In this work, we propose a new graph-based approach. We design a graph with nodes that represent electrodes and edge weights that encode competition between electrode pairs. We then find an optimal path through this graph to determine the active electrode set. Our method produces results judged by an expert to be optimal in over 95% of cases. This technique could facilitate widespread clinical translation of image-guided cochlear implant programming methods.
机译:耳蜗植入物(CI)是一种神经假肢,是针对严重致力于深入的听力损失的护理标准治疗方法。 CIS由插入耳蜗中的电极阵列组成,其电刺激听觉神经纤维以诱导听觉的感觉。当多个电极刺激相同的神经途径时,会发生竞争刺激。众所周知,这会对听力结果产生负面影响。以前的研究表明,图像处理技术可用于分析CT扫描中的CI位置,以估计基于CI用户的独特解剖和电极放置的电极之间的竞争程度。得到的数据允许算法或专家选择电极的子集以保持活跃以缓解竞争。临床研究中显示了使用该数据的专家选择电极,以导致CI用户的听力结果显着改善。目前,我们的目标是将这些技术转化为为全球临床使用而设计的系统,该系统要求通过强大的算法自动化有源电极。以前提出的技术产生的最佳计划,只有48%的成功率。在这项工作中,我们提出了一种新的基于图形的方法。我们设计具有表示电极和边缘权重的节点的图表,该节点代表在电极对之间编码竞争的电极和边缘权重。然后,我们通过该图找到最佳路径以确定有源电极集。我们的方法产生了一位专家判断的结果,以超过95%的病例最佳。该技术可以促进应用程序引导耳蜗植入式编程方法的广泛临床翻译。

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