A Deep Learning Algorithm to Identify Anatomical Landmarks on Computed Tomography of the Temporal Bone.

Zubair Hasan, Seraphina Key, Michael Lee, Fiona Chen, Layal Aweidah, Aaron Esmaili, Raymond Sacks, Narinder Singh
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Abstract

Background: Petrous temporal bone cone-beam computed tomography scans help aid diagnosis and accurate identification of key operative landmarks in temporal bone and mastoid surgery. Our primary objective was to determine the accuracy of using a deep learning convolutional neural network algorithm to augment identification of structures on petrous temporal bone cone-beam computed tomography. Our secondary objective was to compare the accuracy of convolutional neural network structure identification when trained by a senior versus junior clinician.

Methods: A total of 129 petrous temporal bone cone-beam computed tomography scans were obtained from an Australian public tertiary hospital. Key intraoperative landmarks were labeled in 68 scans using bounding boxes on axial and coronal slices at the level of the malleoincudal joint by an otolaryngology registrar and board-certified otolaryngologist. Automated structure identification was performed on axial and coronal slices of the remaining 61 scans using a convolutional neural network (Microsoft Custom Vision) trained using the labeled dataset. Convolutional neural network structure identification accuracy was manually verified by an otolaryngologist, and accuracy when trained by the registrar and otolaryngologist labeled datasets respectively was compared.

Results: The convolutional neural network was able to perform automated structure identification in petrous temporal bone cone-beam computed tomography scans with a high degree of accuracy in both axial (0.958) and coronal (0.924) slices (P < .001). Convolutional neural network accuracy was proportionate to the seniority of the training clinician in structures with features more difficult to distinguish on single slices such as the cochlea, vestibule, and carotid canal.

Conclusion: Convolutional neural networks can perform automated structure identification in petrous temporal bone cone-beam computed tomography scans with a high degree of accuracy, with the performance being proportionate to the seniority of the training clinician. Training of the convolutional neural network by the most senior clinician is desirable to maximize the accuracy of the results.

识别颞骨计算机断层扫描解剖标志的深度学习算法。
背景:颞骨锥束计算机断层扫描有助于诊断和准确识别颞骨和乳突手术中的关键手术标志。我们的主要目标是确定使用深度学习卷积神经网络算法增强岩颞骨锥形束计算机断层扫描结构识别的准确性。我们的第二个目标是比较由高级临床医生和初级临床医生训练时卷积神经网络结构识别的准确性。方法:在澳大利亚公立三级医院共进行了129次岩颞骨锥束计算机断层扫描。在68次扫描中,耳鼻喉科注册员和委员会认证的耳鼻喉学家在踝关节水平的轴向和冠状切片上使用边界框标记了关键的术中标志。使用使用标记数据集训练的卷积神经网络(Microsoft Custom Vision)对剩余61次扫描的轴向和冠状切片进行自动结构识别。卷积神经网络结构识别的准确性由耳鼻喉科医生手动验证,并比较分别由注册员和耳鼻喉科医生标记的数据集训练时的准确性。结果:卷积神经网络能够在岩颞骨锥形束计算机断层扫描中执行自动结构识别,在轴向(0.958)和冠状(0.924)切片中都具有高度的准确性(P<.001)。卷积神经网络的准确性与训练临床医生在更难识别的结构中的资历成正比在耳蜗、前庭和颈动脉管等单个切片上进行区分。结论:卷积神经网络可以在岩颞骨锥束计算机断层扫描中以高精度进行自动结构识别,其性能与培训临床医生的资历成正比。希望由最资深的临床医生对卷积神经网络进行训练,以最大限度地提高结果的准确性。
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