Predicting electrode array impedance after one month from cochlear implantation surgery
Yousef A. Alohali, Yassin Abdelsamad, Tamer Mesallam, Fida Almuhawas,, Abdulrahman Hagr, Mahmoud S. Fayed

TL;DR
This study demonstrates that machine learning algorithms can predict electrode impedance one month after cochlear implantation with varying accuracy depending on the channel, aiding clinical decision-making.
Contribution
It introduces a machine learning approach to predict electrode impedance post-surgery, highlighting channel-specific best algorithms and accuracy levels.
Findings
Impedance can be predicted with 66-100% accuracy.
Best algorithm varies per electrode channel.
Prediction accuracy depends on error range accepted.
Abstract
Sensorineural hearing loss can be treated using Cochlear implantation. After this surgery using the electrode array impedance measurements, we can check the stability of the impedance value and the dynamic range. Deterioration of speech recognition scores could happen because of increased impedance values. Medicines used to do these measures many times during a year after the surgery. Predicting the electrode impedance could help in taking decisions to help the patient get better hearing. In this research we used a dataset of 80 patients of children who did cochlear implantation using MED-EL FLEX28 electrode array of 12 channels. We predicted the electrode impedance on each channel after 1 month from the surgery date. We used different machine learning algorithms like neural networks and decision trees. Our results indicates that the electrode impedance can be predicted, and the best…
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Taxonomy
TopicsHearing Loss and Rehabilitation · Blind Source Separation Techniques · Noise Effects and Management
