通过多粒度和多注意力特征编码评估骨龄。

IF 2.9 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Quantitative Imaging in Medicine and Surgery Pub Date : 2024-08-01 Epub Date: 2024-02-19 DOI:10.21037/qims-23-806
Bowen Liu, Yulin Huang, Shaowei Li, Jinshui He, Dongxu Zhang
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引用次数: 0

摘要

背景:骨龄评估(BAA)对于诊断生长障碍和优化治疗至关重要。然而,不同观察者的经验和重复评估的低一致性所造成的随机误差损害了此类评估的质量。因此,我们需要自动评估方法:以往的研究试图以强监督或弱监督的方式设计定位模块,以汇总部分区域,从而更好地识别细微差别。与此相反,我们试图在多粒度区域之间有效传递信息,以进行精细特征学习,并直接建立远距离关系模型,以实现全局理解。我们提出的方法被命名为 "多粒度和多注意力网络(2M-Net)"。具体来说,我们首先应用拼图法生成强调不同粒度区域的相关任务,然后利用分层共享机制在这些任务上训练模型。实际上,来自额外任务的训练信号产生了归纳偏差,使 2M-Net 无需注释即可发现任务相关性。接下来,自我关注机制作为一个即插即用模块,有效增强了特征表示能力。最后,多尺度特征被应用于预测:2M-Net 的开发和验证使用了北美放射学会(RSNA)提供的 14,236 张手放射照片的公共数据集。在公开基准测试中,模型和审查员的骨龄估计值之间的平均绝对误差(MAE)为 3.98 个月(男性为 3.89 个月,女性为 4.07 个月):通过使用拼图法构建多任务学习策略,并插入自我关注模块进行高效的全局建模,我们建立了 2M-Net 模型,其性能可与之前的最佳方法相媲美。
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Bone age assessment by multi-granularity and multi-attention feature encoding.

Background: Bone age assessment (BAA) is crucial for the diagnosis of growth disorders and the optimization of treatments. However, the random error caused by different observers' experiences and the low consistency of repeated assessments harms the quality of such assessments. Thus, automated assessment methods are needed.

Methods: Previous research has sought to design localization modules in a strongly or weakly supervised fashion to aggregate part regions to better recognize subtle differences. Conversely, we sought to efficiently deliver information between multi-granularity regions for fine-grained feature learning and to directly model long-distance relationships for global understanding. The proposed method has been named the "Multi-Granularity and Multi-Attention Net (2M-Net)". Specifically, we first applied the jigsaw method to generate related tasks emphasizing regions with different granularities, and we then trained the model on these tasks using a hierarchical sharing mechanism. In effect, the training signals from the extra tasks created as an inductive bias, enabling 2M-Net to discover task relatedness without the need for annotations. Next, the self-attention mechanism acted as a plug-and-play module to effectively enhance the feature representation capabilities. Finally, multi-scale features were applied for prediction.

Results: A public data set of 14,236 hand radiographs, provided by the Radiological Society of North America (RSNA), was used to develop and validate 2M-Net. In the public benchmark testing, the mean absolute error (MAE) between the bone age estimates of the model and of the reviewer was 3.98 months (3.89 months for males and 4.07 months for females).

Conclusions: By using the jigsaw method to construct a multi-task learning strategy and inserting the self-attention module for efficient global modeling, we established 2M-Net, which is comparable to the previous best method in terms of performance.

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来源期刊
Quantitative Imaging in Medicine and Surgery
Quantitative Imaging in Medicine and Surgery Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.20
自引率
17.90%
发文量
252
期刊介绍: Information not localized
期刊最新文献
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