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  4. The Dresden in vivo OCT dataset for automatic middle ear segmentation
 
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2024
Journal Article
Title

The Dresden in vivo OCT dataset for automatic middle ear segmentation

Abstract
Endoscopic optical coherence tomography (OCT) offers a non-invasive approach to perform the morphological and functional assessment of the middle ear in vivo. However, interpreting such OCT images is challenging and time-consuming due to the shadowing of preceding structures. Deep neural networks have emerged as a promising tool to enhance this process in multiple aspects, including segmentation, classification, and registration. Nevertheless, the scarcity of annotated datasets of OCT middle ear images poses a significant hurdle to the performance of neural networks. We introduce the Dresden in vivo OCT Dataset of the Middle Ear (DIOME) featuring 43 OCT volumes from both healthy and pathological middle ears of 29 subjects. DIOME provides semantic segmentations of five crucial anatomical structures (tympanic membrane, malleus, incus, stapes and promontory), and sparse landmarks delineating the salient features of the structures. The availability of these data facilitates the training and evaluation of algorithms regarding various analysis tasks with middle ear OCT images, e.g. diagnostics.
Author(s)
Liu, Peng
Steuer, Svea
Golde, Jonas  orcid-logo
Fraunhofer-Institut für Werkstoff- und Strahltechnik IWS  
Morgenstern, Joseph
Hu, Yujia
Schieffer, Catherina
Ossmann, Steffen
Kirsten, Lars
Bodenstedt, Sebastian
Pfeiffer, Micha
Speidel, Stefanie
Koch, Edmund
Neudert, Marcus
Journal
Scientific data  
Open Access
DOI
10.1038/s41597-024-03000-0
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