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Electroretinogram Analysis Using a Short-Time Fourier Transform and Machine Learning Techniques

Faisal B. Albasu, Mikhail Kulyabin, Aleksei Zhdanov, Anton Dolganov, Mikhail Ronkin, Василий Борисов, Leonid G. Dorosinsky, Paul A. Constable, Mohammed A. Al‐masni, Andreas Maier

2024Bioengineering12 citationsDOIOpen Access PDF

Abstract

Electroretinography (ERG) is a non-invasive method of assessing retinal function by recording the retina's response to a brief flash of light. This study focused on optimizing the ERG waveform signal classification by utilizing Short-Time Fourier Transform (STFT) spectrogram preprocessing with a machine learning (ML) decision system. Several window functions of different sizes and window overlaps were compared to enhance feature extraction concerning specific ML algorithms. The obtained spectrograms were employed to train deep learning models alongside manual feature extraction for more classical ML models. Our findings demonstrated the superiority of utilizing the Visual Transformer architecture with a Hamming window function, showcasing its advantage in ERG signal classification. Also, as a result, we recommend the RF algorithm for scenarios necessitating manual feature extraction, particularly with the Boxcar (rectangular) or Bartlett window functions. By elucidating the optimal methodologies for feature extraction and classification, this study contributes to advancing the diagnostic capabilities of ERG analysis in clinical settings.

Topics & Concepts

Fourier transformComputer scienceShort-time Fourier transformArtificial intelligenceFourier analysisMathematicsMathematical analysisRetinal Development and DisordersRetinal Imaging and AnalysisSpectroscopy Techniques in Biomedical and Chemical Research
Electroretinogram Analysis Using a Short-Time Fourier Transform and Machine Learning Techniques | Litcius