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Automatic Detection of the Inner Ears in Head CT Images Using Deep Convolutional Neural Networks

机译:使用深度卷积神经网络自动检测头部CT图像中的内耳

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Cochlear implants (CIs) use electrode arrays that are surgically inserted into the cochlea to stimulate nerve endings to replace the natural electro-mechanical transduction mechanism and restore hearing for patients with profound hearing loss. Post-operatively, the CI needs to be programmed. Traditionally, this is done by an audiologist who is blind to the positions of the electrodes relative to the cochlea and relies on the patient's subjective response to stimuli. This is a trial-and-error process that can be frustratingly long (dozens of programming sessions are not unusual). To assist audiologists, we have proposed what we call IGCIP for image-guided cochlear implant programming. In IGC1P, we use image processing algorithms to segment the intra-cochlear anatomy in pre-operative CT images and to localize the electrode arrays in post-operative CTs. We have shown that programming strategies informed by image-derived information significantly improve hearing outcomes for both adults and pediatric populations. We are now aiming at deploying these techniques clinically, which requires full automation. One challenge we face is the lack of standard image acquisition protocols. The content of the image volumes we need to process thus varies greatly and visual inspection and labelling is currently required to initialize processing pipelines. In this work we propose a deep learning-based approach to automatically detect if a head CT volume contains two ears, one ear, or no ear. Our approach has been tested on a data set that contains over 2,000 CT volumes from 153 patients and we achieve an overall 95.97% classification accuracy.
机译:人工耳蜗(CI)使用电极阵列,通过外科手术将其插入耳蜗以刺激神经末梢,以取代自然的机电转换机制,并为患有严重听力损失的患者恢复听力。术后,需要对CI进行编程。传统上,这是由听觉医师完成的,他不知道电极相对于耳蜗的位置,并依赖于患者对刺激的主观反应。这是一个反复试验的过程,可能会令人沮丧地漫长(数十次编程会话并不罕见)。为了帮助听力学家,我们提出了IGCIP(用于图像引导的人工耳蜗编程)。在IGC1P中,我们使用图像处理算法在术前CT图像中分割耳蜗内解剖结构,并在术后CT中定位电极阵列。我们已经表明,由图像来源的信息提供信息的编程策略可显着改善成人和儿童人群的听力结果。我们现在的目标是临床上部署这些技术,这需要完全自动化。我们面临的挑战之一是缺乏标准的图像采集协议。因此,我们需要处理的图像量的内容变化很大,并且当前需要目视检查和标记以初始化处理管道。在这项工作中,我们提出了一种基于深度学习的方法,以自动检测头部CT体积是包含两只耳朵,一只耳朵还是没有一只耳朵。我们的方法已在包含153例患者的2,000多个CT量的数据集上进行了测试,整体分类准确率达到95.97%。

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