2022
DOI: 10.1007/978-3-031-16437-8_67
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Deep Reinforcement Learning for Detection of Inner Ear Abnormal Anatomy in Computed Tomography

Abstract: Detection of abnormalities within the inner ear is a challenging task that, if automated, could provide support for the diagnosis and clinical management of various otological disorders. Inner ear malformations are rare and present great anatomical variation, which challenges the design of deep learning frameworks to automate their detection. We propose a framework for inner ear abnormality detection, based on a deep reinforcement learning model for landmark detection trained in normative data only. We derive … Show more

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Cited by 4 publications
(2 citation statements)
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“…Post-operatively, Nautilus makes possible the exploration of anatomo-physiologically-tuned fitting [78,79] or the exploration of the relationship between electrode geometrical configuration within the cochlea and clinical outcomes, including perhaps residual hearing. For all its utility, Nautilus could in the future be extended with additional features to address a broader spectrum of investigations, such as these related to the prediction of insertion difficulties during surgical planning, including for abnormal anatomies [80,81]. The delineation of other structures, including the facial nerve, chorda tympani, or RW would then be required.…”
Section: Discussionmentioning
confidence: 99%
“…Post-operatively, Nautilus makes possible the exploration of anatomo-physiologically-tuned fitting [78,79] or the exploration of the relationship between electrode geometrical configuration within the cochlea and clinical outcomes, including perhaps residual hearing. For all its utility, Nautilus could in the future be extended with additional features to address a broader spectrum of investigations, such as these related to the prediction of insertion difficulties during surgical planning, including for abnormal anatomies [80,81]. The delineation of other structures, including the facial nerve, chorda tympani, or RW would then be required.…”
Section: Discussionmentioning
confidence: 99%
“…These methods are time-consuming and subject to clinician subjectivity. A suggested approach for the automated detection of inner ear malformation has relied on deep reinforcement learning trained for landmark location in normal anatomies based on an anomaly detection technique [9]. However, this method is only limited to the detection of a malformation but does not attempt to classify them.…”
Section: Introductionmentioning
confidence: 99%