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基于 3D 变分自动编码器的无监督深度学习在 CT 图像内耳异常检测中的应用。

Utility of unsupervised deep learning using a 3D variational autoencoder in detecting inner ear abnormalities on CT images.

机构信息

Department of Radiology, Nagoya City University Graduate School of Medical Sciences, Japan.

Department of Radiology, Nagoya City University Graduate School of Medical Sciences, Japan.

出版信息

Comput Biol Med. 2022 Aug;147:105683. doi: 10.1016/j.compbiomed.2022.105683. Epub 2022 Jun 1.

Abstract

BACKGROUND AND PURPOSE

To examine the diagnostic performance of unsupervised deep learning using a 3D variational autoencoder (VAE) for detecting and localizing inner ear abnormalities on CT images.

METHOD

Temporal bone CT images of 6663 normal inner ears and 113 malformations were analyzed. For unsupervised learning, 113 images from both the malformation and normal cases were used as test data. Other normal images were used for training. A colored difference map representing differences between input and output images of 3D-VAE and the ratio of colored to total pixel numbers were calculated. Supervised learning was also investigated using a 3D deep residual network and all data were classified as normal or malformation using 10-fold cross-validation.

RESULTS

For unsupervised learning, a significant difference in the colored pixel ratio was seen between normal (0.00021 ± 0.00022) and malformation (0.00148 ± 0.00087) cases with an area under the curve of 0.99 (specificity = 92.0%, sensitivity = 99.1%). Upon evaluation of the difference map, abnormal regions were partially and not highlighted in 7% and 0% of the malformations, respectively. For supervised learning, which achieved 99.8% specificity and 90.3% sensitivity, a part of and no abnormal regions were highlighted on interpretation maps in 34% and 8% of the malformations, respectively. Abnormal regions were not highlighted in 4 malformation cases diagnosed as malformations and were highlighted in 6 cases misdiagnosed as normal.

CONCLUSIONS

Unsupervised deep learning of 3D-VAE precisely detected inner ear malformations and localized abnormal regions. Supervised learning did not identify whole abnormal regions frequently and basis for diagnosis was sometimes unclear.

摘要

背景与目的

利用三维变分自动编码器(VAE)检测和定位 CT 图像内耳异常,研究无监督深度学习的诊断性能。

方法

分析 6663 例正常内耳和 113 例畸形的颞骨 CT 图像。对于无监督学习,将畸形和正常病例的 113 例图像作为测试数据。其他正常图像用于训练。计算 3D-VAE 输入和输出图像之间的彩色差异图以及彩色与总像素数的比值。还使用 3D 深度残差网络进行监督学习,并使用 10 倍交叉验证将所有数据分类为正常或畸形。

结果

对于无监督学习,正常组(0.00021±0.00022)和畸形组(0.00148±0.00087)的彩色像素比值存在显著差异,曲线下面积为 0.99(特异性=92.0%,敏感性=99.1%)。评估差异图后,7%和 0%的畸形分别部分和未突出异常区域。对于特异性为 99.8%、敏感性为 90.3%的监督学习,34%和 8%的畸形分别在解释图上突出显示部分和无异常区域。4 例畸形被误诊为正常,未突出异常区域;6 例误诊为正常,却突出显示异常区域。

结论

3D-VAE 的无监督深度学习能准确检测内耳畸形并定位异常区域。监督学习不能经常识别整个异常区域,诊断依据有时不明确。

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