# DNN-Based Noise Reduction Significantly Improves Bimodal Benefit in Background Noise for Cochlear Implant Users

**Authors:** Courtney Kolberg, Sarah O. Holbert, Jamie M. Bogle, Aniket A. Saoji

PMC · DOI: 10.3390/jcm14155302 · Journal of Clinical Medicine · 2025-07-27

## TL;DR

Deep neural network-based noise reduction in hearing aids significantly improves speech understanding in noisy environments for people who use a cochlear implant in one ear and a hearing aid in the other.

## Contribution

This study demonstrates that DNN-based noise reduction in hearing aids provides a significant bimodal benefit for cochlear implant users in noisy environments.

## Key findings

- DNN-based noise reduction improved bimodal sentence recognition scores by 19% in noise compared to a traditional program.
- The DNN program provided a 40% bimodal benefit in multi-talker babble, significantly higher than the 21% benefit from the traditional program.

## Abstract

Background/Objectives: Traditional hearing aid noise reduction algorithms offer no additional benefit in noisy situations for bimodal cochlear implant (CI) users with a CI in one ear and a hearing aid (HA) in the other. Recent breakthroughs in deep neural network (DNN)-based noise reduction have improved speech understanding for hearing aid users in noisy environments. These advancements could also boost speech perception in noise for bimodal CI users. This study investigated the effectiveness of DNN-based noise reduction in the HAs used by bimodal CI patients. Methods: Eleven bimodal CI patients, aged 71–89 years old, were fit with a Phonak Audéo Sphere Infinio 90 HA in their non-implanted ear and were provided with a Calm Situation program and Spheric Speech in Loud Noise program that uses DNN-based noise reduction. Sentence recognition scores were measured using AzBio sentences in quiet and in noise with the CI alone, hearing aid alone, and bimodally with both the Calm Situation and DNN HA programs. Results: The DNN program in the hearing aid significantly improved bimodal performance in noise, with sentence recognition scores reaching 79% compared to 60% with Calm Situation (a 19% average benefit, p < 0.001). When compared to the CI-alone condition in multi-talker babble, the DNN HA program offered a 40% bimodal benefit, significantly higher than the 21% score seen with the Calm Situation program. Conclusions: DNN-based noise reduction in HA significantly improves speech understanding in noise for bimodal CI users. Utilization of this technology is a promising option to address patients’ common complaint of speech understanding in noise.

## Full-text entities

- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## References

31 references — full list in the complete paper: https://tomesphere.com/paper/PMC12346913/full.md

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Source: https://tomesphere.com/paper/PMC12346913