Predicting cochlear implant performance: Impact of demographic, audiologic, surgical factors, and cochlear health

Craig A Buchman
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Abstract

Amit Walia, Matt Shew and Craig A. Buchman from Washington University School of Medicine, explain the challenges of understanding variables or factors informing CI performance and how this can be addressed. Cochlear implants (CIs) are highly effective for restoring hearing in individuals with moderate-to-profound hearing loss who do not gain sufficient benefit from hearing aids. Despite being one of modern medicine’s most successful advancements, there is wide inter-individual variability in speech perception outcomes (Figure 1). The drivers of this variability are not well understood, making it difficult to set realistic expectations for patients before surgery and to evaluate potential interventions that may enhance performance post-operatively. Accurate prediction of speech perception performance after surgery could significantly impact how we assess candidates, plan postoperative aural rehabilitation, choose surgical techniques, design and fit electrodes, and segment the patient population in future CI clinical trials.
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预测人工耳蜗的性能:人口统计学、听力学、手术因素和人工耳蜗健康的影响
来自华盛顿大学医学院的 Amit Walia、Matt Shew 和 Craig A. Buchman 解释了了解影响人工耳蜗性能的变量或因素所面临的挑战以及如何解决这一问题。人工耳蜗(CI)对中度至重度听力损失、助听器效果不佳的患者恢复听力非常有效。尽管人工耳蜗是现代医学最成功的进步之一,但言语感知结果的个体差异很大(图 1)。造成这种差异的原因尚不十分清楚,因此很难在手术前为患者设定切合实际的期望值,也很难对可能提高术后效果的潜在干预措施进行评估。术后言语感知能力的准确预测将极大地影响我们在未来的 CI 临床试验中如何评估候选者、规划术后听力康复、选择手术技术、设计和装配电极以及细分患者人群。
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