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通过半监督学习在标记数据有限的CT扫描中进行颅颌面标志点检测。

Craniomaxillofacial landmarks detection in CT scans with limited labeled data via semi-supervised learning.

作者信息

Tao Leran, Zhang Xu, Yang Yang, Cheng Mengjia, Zhang Rongbin, Qian Hongjun, Wen Yaofeng, Yu Hongbo

机构信息

Department of Oral and Cranio-Maxillofacial Surgery, Shanghai Ninth People's Hospital, College of Stomatology, Shanghai Jiao Tong University School of Medicine, Shanghai, 200011, China.

National Center for Stomatology & National Clinical Research Center for Oral Diseases, Shanghai, 200011, China.

出版信息

Heliyon. 2024 Jul 16;10(14):e34583. doi: 10.1016/j.heliyon.2024.e34583. eCollection 2024 Jul 30.

Abstract

BACKGROUND

Three-dimensional cephalometric analysis is crucial in craniomaxillofacial assessment, with landmarks detection in craniomaxillofacial (CMF) CT scans being a key component. However, creating robust deep learning models for this task typically requires extensive CMF CT datasets annotated by experienced medical professionals, a process that is time-consuming and labor-intensive. Conversely, acquiring large volume of unlabeled CMF CT data is relatively straightforward. Thus, semi-supervised learning (SSL), leveraging limited labeled data supplemented by sufficient unlabeled dataset, could be a viable solution to this challenge.

METHOD

We developed an SSL model, named CephaloMatch, based on a strong-weak perturbation consistency framework. The proposed SSL model incorporates a head position rectification technique through coarse detection to enhance consistency between labeled and unlabeled datasets and a multilayers perturbation method which is employed to expand the perturbation space. The proposed SSL model was assessed using 362 CMF CT scans, divided into a training set (60 scans), a validation set (14 scans), and an unlabeled set (288 scans).

RESULT

The proposed SSL model attained a detection error of 1.60 ± 0.87 mm, significantly surpassing the performance of conventional fully supervised learning model (1.94 ± 1.12 mm). Notably, the proposed SSL model achieved equivalent detection accuracy (1.91 ± 1.00 mm) with only half the labeled dataset, compared to the fully supervised learning model.

CONCLUSIONS

The proposed SSL model demonstrated exceptional performance in landmarks detection using a limited labeled CMF CT dataset, significantly reducing the workload of medical professionals and enhances the accuracy of 3D cephalometric analysis.

摘要

背景

三维头影测量分析在颅颌面评估中至关重要,在颅颌面(CMF)CT扫描中检测标志点是关键组成部分。然而,为这项任务创建强大的深度学习模型通常需要由经验丰富的医学专业人员标注大量的CMF CT数据集,这一过程既耗时又费力。相反,获取大量未标注的CMF CT数据相对简单。因此,利用有限的标注数据辅以足够的未标注数据集的半监督学习(SSL)可能是应对这一挑战的可行解决方案。

方法

我们基于强弱扰动一致性框架开发了一个名为CephaloMatch的SSL模型。所提出的SSL模型通过粗检测纳入了头部位置校正技术,以增强标注数据集和未标注数据集之间的一致性,并采用了多层扰动方法来扩展扰动空间。使用362例CMF CT扫描对所提出的SSL模型进行评估,这些扫描被分为训练集(60例扫描)、验证集(14例扫描)和未标注集(288例扫描)。

结果

所提出的SSL模型检测误差为1.60±0.87毫米,显著超过传统全监督学习模型的性能(误差为1.94±1.12毫米)。值得注意的是,与全监督学习模型相比,所提出的SSL模型仅使用一半的标注数据集就实现了相当的检测精度(误差为1.91±1.00毫米)。

结论

所提出的SSL模型在使用有限标注的CMF CT数据集进行标志点检测方面表现出卓越性能,显著减少了医学专业人员的工作量,并提高了三维头影测量分析的准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c2c2/11315087/6fb02354b05c/gr1.jpg

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