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Two-level Training of a 3d U-Net for Accurate Segmentation of the Intra-cochlear Anatomy in Head CTs with Limited Ground Truth Training Data

机译:用于3D U-Net的两级培训,用于准确分割头部CTS内部CTS内的触控式解剖学,具有有限的地面真理培训数据

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Cochlear implants (CIs) use electrode arrays that are surgically inserted into the cochlea to treat patients with hearing loss.For CI recipients, sound bypasses the natural transduction mechanism and directly stimulates the neural regions, thuscreating a sense of hearing. Post-operatively, CIs need to be programmed. Traditionally, this is done by an audiologist whois blind to the positions of the electrodes relative to the cochlea and only relies on the subjective response of the patient.Multiple programming sessions are usually needed, which can take a frustratingly long time. We have developed an imageguidedcochlear implant programming (IGCIP) system to facilitate the process. In IGCIP, we segment the intra-cochlearanatomy and localize the electrode arrays in the patient’s head CT image. By utilizing their spatial relationship, we cansuggest programming settings that can significantly improve hearing outcomes. To segment the intra-cochlear anatomy,we use an active shape model (ASM)-based method. Though it produces satisfactory results in most cases, sub-optimalsegmentation still happens. As an alternative, herein we explore using a deep learning method to perform the segmentationtask. Large image sets with accurate ground truth (in our case manual delineation) are typically needed to train a deeplearning model for segmentation but such a dataset does not exist for our application. To tackle this problem, we usesegmentations generated by the ASM-based method to pre-train the model and fine-tune it on a small image set for whichaccurate manual delineation is available. Using this method, we achieve better results than the ASM-based method.
机译:耳蜗植入物(CIS)使用手术插入耳蜗中的电极阵列来治疗听力损失的患者。对于CI接受者,声音绕过自然转导机制,直接刺激神经区域,从而创造听觉。可操作性地,需要编程CIS。传统上,这是由听力学家完成的对电极相对于耳蜗的位置视而不见,并且仅依赖于患者的主观响应。通常需要多个编程会话,这可能需要令人沮丧的时间。我们开发了一个摄影脚踏板植入编程(IGCIP)系统,以方便这种过程。在IGCIP中,我们将耳内划分解剖和定位患者头CT图像中的电极阵列。通过利用他们的空间关系,我们可以建议可以显着改善听力结果的编程设置。分段内部耳蜗内解剖学,我们使用了基于活动的形状模型(ASM)的方法。虽然在大多数情况下产生令人满意的结果,但次优细分仍然发生。作为替代方案,这里我们使用深度学习方法探索来执行分段任务。大型图像集,具有准确的地面真理(在我们的案例手册描绘中)通常需要培训深层用于分割的学习模型,但我们的应用程序不存在这样的数据集。要解决这个问题,我们使用基于ASM的方法生成的分割,以预先培训模型并在小型图像集上进行微调它准确的手动描绘可用。使用此方法,我们实现了比基于ASM的方法更好的结果。

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