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Preliminary results of classifying otosclerosis and disarticulation using a convolutional neural network trained with simulated wideband acoustic immittance data.
Lauxmann, Michael; Viehl, Felix; Priwitzer, Barbara; Sackmann, Benjamin.
Affiliation
  • Lauxmann M; Doctor of Engineering, Faculty of Engineering, Reutlingen University, Alteburgstr. 150, 72762, Reutlingen, Germany.
  • Viehl F; Master of Science, Reutlingen Research Institute, Reutlingen University, Alteburgstr. 150, 72762, Reutlingen, Germany.
  • Priwitzer B; Doctor of Natural Sciences, Faculty of Engineering, Reutlingen University, Alteburgstr. 150, 72762, Reutlingen, Germany.
  • Sackmann B; Master of Science, Reutlingen Research Institute, Reutlingen University, Alteburgstr. 150, 72762, Reutlingen, Germany.
Heliyon ; 10(12): e32733, 2024 Jun 30.
Article in En | MEDLINE | ID: mdl-38975150
ABSTRACT
Current noninvasive methods of clinical practice often do not identify the causes of conductive hearing loss due to pathologic changes in the middle ear with sufficient certainty. Wideband acoustic immittance (WAI) measurement is noninvasive, inexpensive and objective. It is very sensitive to pathologic changes in the middle ear and therefore promising for diagnosis. However, evaluation of the data is difficult because of large interindividual variations. Machine learning methods like Convolutional neural networks (CNN) which might be able to deal with this overlaying pattern require a large amount of labeled measurement data for training and validation. This is difficult to provide given the low prevalence of many middle-ear pathologies. Therefore, this study proposes an approach in which the WAI training data of the CNN are simulated with a finite-element ear model and the Monte-Carlo method. With this approach, virtual populations of normal, otosclerotic, and disarticulated ears were generated, consistent with the averaged data of measured populations and well representing the qualitative characteristics of individuals. The CNN trained with the virtual data achieved for otosclerosis an AUC of 91.1 %, a sensitivity of 85.7 %, and a specificity of 85.2 %. For disarticulation, an AUC of 99.5 %, sensitivity of 100 %, and specificity of 93.1 % was achieved. Furthermore, it was estimated that specificity could potentially be increased to about 99 % in both pathological cases if stapes reflex threshold measurements were used to confirm the diagnosis. Thus, the procedures' performance is comparable to classifiers from other studies trained with real measurement data, and therefore the procedure offers great potential for the diagnosis of rare pathologies or early-stages pathologies. The clinical potential of these preliminary results remains to be evaluated on more measurement data and additional pathologies.
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Full text: 1 Database: MEDLINE Language: En Journal: Heliyon Year: 2024 Type: Article Affiliation country: Germany

Full text: 1 Database: MEDLINE Language: En Journal: Heliyon Year: 2024 Type: Article Affiliation country: Germany