New York University School of Medicine, New York, NY, USA.
New York University School of Medicine, New York, NY, USA.
Hear Res. 2018 Dec;370:316-328. doi: 10.1016/j.heares.2018.10.014. Epub 2018 Oct 19.
A potential bottleneck to improving speech perception performance in cochlear implant (CI) users is that some of their electrodes may poorly encode speech information. Several studies have examined the effect of deactivating poorly encoding electrodes on speech perception with mixed results. Many of these studies focused on identifying poorly encoding electrodes by some measure (e.g. electrode discrimination, pitch ordering, threshold, CT-guided, masked modulation detection), but provide inconsistent criteria about which electrodes, and how many, should be deactivated, and without considering how speech information becomes distributed across the electrode array. The present simulation study addresses this issue using computational approaches. Previously validated models were used to generate predictions of speech scores as a function of all possible combinations of active electrodes in a 22-electrode array in three groups of hypothetical subjects representative of relatively better, moderate, and poorer performing CI users. Using high-performance computing, over 500 million predictions were generated. Although deactivation of the poorest encoding electrodes sometimes resulted in predicted benefit, this benefit was significantly less relative to predictions resulting from model-optimized deactivations. This trend persisted when using novel stimuli (i.e. other than those used for optimization) and when using different processing strategies. Optimum electrode deactivation patterns produced an average predicted increase in word scores of 10% with some scores increasing by more than 20%. Optimum electrode deactivation patterns typically included 11 to 19 (out of 22) active electrodes, depending on the performance group. Optimal active electrode combinations were those that maximized discrimination of speech cues, maintaining 80%-100% of the physical span of the array. The present study demonstrates the potential for further improving CI users' speech scores with appropriate selection of active electrodes.
提高人工耳蜗(CI)使用者言语感知性能的一个潜在瓶颈是,他们的一些电极可能无法很好地编码言语信息。一些研究已经研究了去激活编码效果不佳的电极对言语感知的影响,结果喜忧参半。这些研究中的许多研究都通过某种措施(例如电极辨别、音高排序、阈值、CT 引导、掩蔽调制检测)来检查电极编码效果不佳的影响,但在确定应去激活哪些电极以及去激活多少个电极方面提供了不一致的标准,而且没有考虑言语信息如何在电极阵列中分布。本仿真研究使用计算方法解决了这个问题。使用经过验证的模型来生成在三组假设的受试者(分别代表相对较好、中等和较差的 CI 用户)的 22 电极阵列中所有可能的组合的活性电极的言语分数预测,作为函数。使用高性能计算,生成了超过 5 亿个预测。尽管去激活编码效果最差的电极有时会产生预测的益处,但与从模型优化去激活产生的预测相比,这种益处显著较小。当使用新刺激(即优化时未使用的刺激)和不同的处理策略时,这种趋势仍然存在。最佳电极去激活模式平均预测单词得分增加 10%,有些得分增加超过 20%。最佳电极去激活模式通常包括 11 到 19 个(22 个中的)活性电极,具体取决于性能组。最佳的活性电极组合是那些最大限度地提高语音线索辨别能力的组合,同时保持阵列物理跨度的 80%-100%。本研究表明,通过适当选择活性电极,有可能进一步提高 CI 用户的言语分数。