Multi-Transfer Learning Techniques for Detecting Auditory Brainstem Response
Fatih Ozyurt, Jafar Majidpour, Tarik A. Rashid, Amir Majidpour, Canan, Koc

TL;DR
This paper explores transfer learning with deep CNN models to automate and improve the accuracy of auditory brainstem response (ABR) analysis for hearing loss diagnosis, achieving up to 95% accuracy.
Contribution
It introduces a novel application of multiple pre-trained CNNs with transfer learning to classify ABR images for hearing loss detection, enhancing automation and accuracy.
Findings
ShuffleNet and ResNet50 achieved 95% accuracy.
Transfer learning models effectively extracted features from ABR images.
The approach reduces human error in ABR assessment.
Abstract
The assessment of the well-being of the peripheral auditory nerve system in individuals experiencing hearing impairment is conducted through auditory brainstem response (ABR) testing. Audiologists assess and document the results of the ABR test. They interpret the findings and assign labels to them using reference-based markers like peak latency, waveform morphology, amplitude, and other relevant factors. Inaccurate assessment of ABR tests may lead to incorrect judgments regarding the integrity of the auditory nerve system; therefore, proper Hearing Loss (HL) diagnosis and analysis are essential. To identify and assess ABR automation while decreasing the possibility of human error, machine learning methods, notably deep learning, may be an appropriate option. To address these issues, this study proposed deep-learning models using the transfer-learning (TL) approach to extract features…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Pointwise Convolution · Depthwise Separable Convolution · Grouped Convolution · Depthwise Convolution · Groupwise Point Convolution · Concatenated Skip Connection · Channel Shuffle · Inverted Residual Block · Softmax
