医生模拟器:Delta-Age-Sex-AdaIn 通过 AdaIn 风格转移加强骨龄评估。

IF 2.1 3区 医学 Q2 PEDIATRICS
Pediatric Radiology Pub Date : 2024-09-01 Epub Date: 2024-07-27 DOI:10.1007/s00247-024-06000-9
Liping Wang, Xingpeng Zhang, Ping Chen, Dehao Zhou
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引用次数: 0

摘要

背景:骨龄评估有助于医生评估儿童的生长发育情况。然而,目前用于骨龄评估的深度学习方法并未纳入通过与其他骨图谱比较而获得的差异特征:为了提出一种更准确的骨龄评估方法--Delta-Age-Sex-AdaIn(DASA-net),本文通过自适应实例归一化(AdaIN)和风格转移将年龄和性别分布结合起来,模拟将手部图像与标准骨图集进行视觉比较以确定骨龄的过程:拟议的 Delta-Age-Sex-AdaIn (DASA-net) 由四个模块组成:骨编码器、二进制代码分配、Delta-Age-Sex-AdaIn 和年龄解码器。在北美放射学会(RSNA)公开的儿科骨龄预测数据集(14236 张 1 至 228 个月的手部 X 射线照片)和自贡市第四人民医院的私人骨龄预测数据集(474 张 12 至 218 个月的手部 X 射线照片,268 名男性)上,它与最先进的方法进行了比较。为了证明纳入年龄分布和性别分布的必要性,设计了消融实验:在 RSNA 数据集上,DASA-net 模型的平均绝对偏差(MAD)较低,为 3.52 个月,优于 BoneXpert、Deeplasia、BoNet 等其他基于深度学习的方法。在私人数据集上,DASA-net 模型的 MAD 为 3.82 个月,也优于其他方法:结论:所提出的 DASA-net 模型通过将年龄和性别分布整合到风格转移中,有助于模型学习不同年龄和性别手骨的独特特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Doctor simulator: Delta-Age-Sex-AdaIn enhancing bone age assessment through AdaIn style transfer.

Doctor simulator: Delta-Age-Sex-AdaIn enhancing bone age assessment through AdaIn style transfer.

Background: Bone age assessment assists physicians in evaluating the growth and development of children. However, deep learning methods for bone age estimation do not currently incorporate differential features obtained through comparisons with other bone atlases.

Objective: To propose a more accurate method, Delta-Age-Sex-AdaIn (DASA-net), for bone age assessment, this paper combines age and sex distribution through adaptive instance normalization (AdaIN) and style transfer, simulating the process of visually comparing hand images with a standard bone atlas to determine bone age.

Materials and methods: The proposed Delta-Age-Sex-AdaIn (DASA-net) consists of four modules: BoneEncoder, Binary code distribution, Delta-Age-Sex-AdaIn, and AgeDecoder. It is compared with state-of-the-art methods on both a public Radiological Society of North America (RSNA) pediatric bone age prediction dataset (14,236 hand radiographs, ranging from 1 to 228 months) and a private bone age prediction dataset from Zigong Fourth People's Hospital (474 hand radiographs, ranging from 12 to 218 months, 268 male). Ablation experiments were designed to demonstrate the necessity of incorporating age distribution and sex distribution.

Results: The DASA-net model achieved a lower mean absolute deviation (MAD) of 3.52 months on the RSNA dataset, outperforming other methods such as BoneXpert, Deeplasia, BoNet, and other deep learning based methods. On the private dataset, the DASA-net model obtained a MAD of 3.82 months, which is also superior to other methods.

Conclusion: The proposed DASA-net model aided the model's learning of the distinctive characteristics of hand bones of various ages and both sexes by integrating age and sex distribution into style transfer.

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来源期刊
Pediatric Radiology
Pediatric Radiology 医学-核医学
CiteScore
4.40
自引率
17.40%
发文量
300
审稿时长
3-6 weeks
期刊介绍: Official Journal of the European Society of Pediatric Radiology, the Society for Pediatric Radiology and the Asian and Oceanic Society for Pediatric Radiology Pediatric Radiology informs its readers of new findings and progress in all areas of pediatric imaging and in related fields. This is achieved by a blend of original papers, complemented by reviews that set out the present state of knowledge in a particular area of the specialty or summarize specific topics in which discussion has led to clear conclusions. Advances in technology, methodology, apparatus and auxiliary equipment are presented, and modifications of standard techniques are described. Manuscripts submitted for publication must contain a statement to the effect that all human studies have been reviewed by the appropriate ethics committee and have therefore been performed in accordance with the ethical standards laid down in an appropriate version of the 1964 Declaration of Helsinki. It should also be stated clearly in the text that all persons gave their informed consent prior to their inclusion in the study. Details that might disclose the identity of the subjects under study should be omitted.
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