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使用目标检测网络自动定位锁骨内侧骺软骨:迈向基于深度学习的法医年龄评估。

Automated localization of the medial clavicular epiphyseal cartilages using an object detection network: a step towards deep learning-based forensic age assessment.

机构信息

Department of Radiology, University Hospital, LMU Munich, Marchioninistraße 15, 81377, Munich, Germany.

Comprehensive Pneumology Center (CPC-M), Member of the German Center for Lung Research (DZL), Max-Lebsche-Platz 31, 81377, Munich, Germany.

出版信息

Int J Legal Med. 2023 May;137(3):733-742. doi: 10.1007/s00414-023-02958-7. Epub 2023 Feb 2.

Abstract

BACKGROUND

Deep learning is a promising technique to improve radiological age assessment. However, expensive manual annotation by experts poses a bottleneck for creating large datasets to appropriately train deep neural networks. We propose an object detection approach to automatically annotate the medial clavicular epiphyseal cartilages in computed tomography (CT) scans.

METHODS

The sternoclavicular joints were selected as structure-of-interest (SOI) in chest CT scans and served as an easy-to-identify proxy for the actual medial clavicular epiphyseal cartilages. CT slices containing the SOI were manually annotated with bounding boxes around the SOI. All slices in the training set were used to train the object detection network RetinaNet. Afterwards, the network was applied individually to all slices of the test scans for SOI detection. Bounding box and slice position of the detection with the highest classification score were used as the location estimate for the medial clavicular epiphyseal cartilages inside the CT scan.

RESULTS

From 100 CT scans of 82 patients, 29,656 slices were used for training and 30,846 slices from 110 CT scans of 110 different patients for testing the object detection network. The location estimate from the deep learning approach for the SOI was in a correct slice in 97/110 (88%), misplaced by one slice in 5/110 (5%), and missing in 8/110 (7%) test scans. No estimate was misplaced by more than one slice.

CONCLUSIONS

We demonstrated a robust automated approach for annotating the medial clavicular epiphyseal cartilages. This enables training and testing of deep neural networks for age assessment.

摘要

背景

深度学习是一种很有前途的技术,可以提高放射学年龄评估的准确性。然而,昂贵的专家手动标注成为创建大型数据集以适当训练深度神经网络的瓶颈。我们提出了一种对象检测方法,以自动标注 CT 扫描中的锁骨内侧骺软骨。

方法

胸 CT 扫描中选择胸锁关节作为感兴趣的结构(SOI),作为实际锁骨内侧骺软骨的易于识别的代理。包含 SOI 的 CT 切片使用围绕 SOI 的边界框进行手动标注。训练集中的所有切片都用于训练对象检测网络 RetinaNet。之后,将该网络单独应用于测试扫描的所有切片,以进行 SOI 检测。具有最高分类得分的检测的边界框和切片位置用于 CT 扫描中锁骨内侧骺软骨的位置估计。

结果

从 82 名患者的 100 份 CT 扫描中,使用了 29656 个切片进行训练,从 110 名不同患者的 110 份 CT 扫描中使用了 30846 个切片用于测试对象检测网络。深度学习方法对 SOI 的位置估计在 110 次测试中的 97 次(88%)正确切片中,5 次(5%)错一片,8 次(7%)缺失。没有估计值错位超过一片。

结论

我们展示了一种可靠的自动标注锁骨内侧骺软骨的方法。这使得年龄评估的深度神经网络的训练和测试成为可能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2408/10085900/ce12c0d746c1/414_2023_2958_Fig1_HTML.jpg

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