Esmaelpoor Jamal, Peng Tommy, Jelfs Beth, Mao Darren, Shader Maureen J, McKay Colette M
Department of Medical Bionics, University of Melbourne, Melbourne, Australia.
The Bionics Institute of Australia, Melbourne, Australia.
Ear Hear. 2025;46(1):128-138. doi: 10.1097/AUD.0000000000001564. Epub 2024 Jul 16.
Cochlear implants (CIs) have revolutionized hearing restoration for individuals with severe or profound hearing loss. However, a substantial and unexplained variability persists in CI outcomes, even when considering subject-specific factors such as age and the duration of deafness. In a pioneering study, we use resting-state functional near-infrared spectroscopy to predict speech-understanding outcomes before and after CI implantation. Our hypothesis centers on resting-state functional connectivity (FC) reflecting brain plasticity post-hearing loss and implantation, specifically targeting the average clustering coefficient in resting FC networks to capture variation among CI users.
Twenty-three CI candidates participated in this study. Resting-state functional near-infrared spectroscopy data were collected preimplantation and at 1 month, 3 months, and 1 year postimplantation. Speech understanding performance was assessed using consonant-nucleus-consonant words in quiet and Bamford-Kowal-Bench sentences in noise 1-year postimplantation. Resting-state FC networks were constructed using regularized partial correlation, and the average clustering coefficient was measured in the signed weighted networks as a predictive measure for implantation outcomes.
Our findings demonstrate a significant correlation between the average clustering coefficient in resting-state functional networks and speech understanding outcomes, both pre- and postimplantation.
This approach uses an easily deployable resting-state functional brain imaging metric to predict speech-understanding outcomes in implant recipients. The results indicate that the average clustering coefficient, both pre- and postimplantation, correlates with speech understanding outcomes.
人工耳蜗(CI)彻底改变了重度或极重度听力损失患者的听力恢复情况。然而,即使考虑到年龄和耳聋持续时间等个体特定因素,人工耳蜗的效果仍存在显著且无法解释的差异。在一项开创性研究中,我们使用静息态功能近红外光谱技术来预测人工耳蜗植入前后的言语理解效果。我们的假设集中在静息态功能连接(FC)反映听力损失和植入后的大脑可塑性,特别针对静息FC网络中的平均聚类系数来捕捉人工耳蜗使用者之间的差异。
23名人工耳蜗候选者参与了本研究。在植入前以及植入后1个月、3个月和1年收集静息态功能近红外光谱数据。在植入后1年,使用安静环境中的辅音 - 元音 - 辅音单词以及噪声环境中的班福德 - 科瓦尔 - 本奇句子评估言语理解能力。使用正则化偏相关构建静息态FC网络,并在有符号加权网络中测量平均聚类系数作为植入效果的预测指标。
我们的研究结果表明,静息态功能网络中的平均聚类系数与植入前后的言语理解效果之间存在显著相关性。
这种方法使用一种易于部署的静息态功能性脑成像指标来预测植入受者的言语理解效果。结果表明,植入前后的平均聚类系数均与言语理解效果相关。