IF 1.4 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Samet Öztürk, Murat Yüce, Gül Gizem Pamuk, Candan Varlık, Ahmet Tan Cimilli, Musa Atay
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引用次数: 0

摘要

目的:现有的骨龄评估(BAA)方法,如 Greulich 和 Pyle 地图集,因人群差异和观察者差异而存在变异。虽然自动骨龄评估具有速度快、一致性高的特点,但利用深度学习对不同人群进行骨龄评估的研究还很有限。本研究在土耳其人群中研究了深度学习算法,通过了解人口统计学的影响因素来增强骨龄模型:我们以 "骨龄 "为关键词,分析了 2012 年 4 月至 2023 年 9 月期间来自 Bağcılar 医院健康信息管理系统的报告。患者图像由经验丰富的放射科医生重新评估并进行匿名处理。共收集了 2730 张来自 Bağcılar 医院(土耳其人口)、12572 张来自北美放射学会(RSNA)和 6185 张来自放射学手部姿势估计(RHPE)公共数据集的手部 X 光片,以及相应的骨龄和性别信息。最初随机抽取一组 546 张放射照片(273 张来自 Bağcılar,273 张来自公共数据集)作为内部测试集,并对骨龄进行分层;其余数据用于训练和验证。使用修改后的 InceptionV3 模型在 500 × 500 像素图像上生成 BAA,选择验证集上平均绝对误差(MAE)最小的模型:根据数据集的来源,对三种模型进行了训练和测试:结果:根据数据集来源训练和测试了三种模型:Bağcılar(土耳其)模型、公共模型(RSNA-RHPE)模型和组合模型。综合模型的内部测试集预测结果估计的骨龄分别小于 6 个月、12 个月、18 个月和 24 个月,预测率分别为 44%、73%、87% 和 94%。整体内部测试集的 MAE 为 9.2 个月,公共测试集为 7 个月,巴希拉内部测试数据为 11.5 个月。纯 Bağcılar 模型在 Bağcılar 内部测试数据上的 MAE 为 12.7 个月。尽管训练数据较少,但综合模型和 Bağcılar 模型在 Bağcılar 数据集上没有明显差异(P > 0.05)。公共模型在 Bağcılar 数据集上的 MAE 为 16.5 个月,明显低于其他模型(P < 0.05):我们开发了一个包括土耳其人口在内的自动 BAA 模型,这是使用深度学习进行的少数此类研究之一。尽管存在人群差异和数据异质性的挑战,但这些模型可以有效地应用于各种临床环境。随着时间的推移,模型的准确性会随着数据的累积而提高,公开可用的数据集可能会进一步完善模型。我们的方法可实现更准确、更高效的 BAA,在传统方法耗时且多变的情况下为医护人员提供支持:针对土耳其人群开发的自动 BAA 模型为传统方法提供了可靠、高效的替代方案。通过利用深度学习和来自 Bağcılar 医院及公开来源的各种数据集,该模型最大限度地缩短了评估时间并降低了可变性。这一进步增强了临床决策,支持标准化 BAA 实践,并改善了各种医疗环境中的患者护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic bone age assessment: a Turkish population study.

Purpose: Established methods for bone age assessment (BAA), such as the Greulich and Pyle atlas, suffer from variability due to population differences and observer discrepancies. Although automated BAA offers speed and consistency, limited research exists on its performance across different populations using deep learning. This study examines deep learning algorithms on the Turkish population to enhance bone age models by understanding demographic influences.

Methods: We analyzed reports from Bağcılar Hospital's Health Information Management System between April 2012 and September 2023 using "bone age" as a keyword. Patient images were re-evaluated by an experienced radiologist and anonymized. A total of 2,730 hand radiographs from Bağcılar Hospital (Turkish population), 12,572 from the Radiological Society of North America (RSNA), and 6,185 from the Radiological Hand Pose Estimation (RHPE) public datasets were collected, along with corresponding bone ages and gender information. A random set of 546 radiographs (273 from Bağcılar, 273 from public datasets) was initially randomly split for an internal test set with bone age stratification; the remaining data were used for training and validation. BAAs were generated using a modified InceptionV3 model on 500 × 500-pixel images, selecting the model with the lowest mean absolute error (MAE) on the validation set.

Results: Three models were trained and tested based on dataset origin: Bağcılar (Turkish), public (RSNA-RHPE), and a Combined model. Internal test set predictions of the Combined model estimated bone age within less than 6, 12, 18, and 24 months at rates of 44%, 73%, 87%, and 94%, respectively. The MAE was 9.2 months in the overall internal test set, 7 months on the public test set, and 11.5 months on the Bağcılar internal test data. The Bağcılar-only model had an MAE of 12.7 months on the Bağcılar internal test data. Despite less training data, there was no significant difference between the combined and Bağcılar models on the Bağcılar dataset (P > 0.05). The public model showed an MAE of 16.5 months on the Bağcılar dataset, significantly worse than the other models (P < 0.05).

Conclusion: We developed an automatic BAA model including the Turkish population, one of the few such studies using deep learning. Despite challenges from population differences and data heterogeneity, these models can be effectively used in various clinical settings. Model accuracy can improve over time with cumulative data, and publicly available datasets may further refine them. Our approach enables more accurate and efficient BAAs, supporting healthcare professionals where traditional methods are time-consuming and variable.

Clinical significance: The developed automated BAA model for the Turkish population offers a reliable and efficient alternative to traditional methods. By utilizing deep learning with diverse datasets from Bağcılar Hospital and publicly available sources, the model minimizes assessment time and reduces variability. This advancement enhances clinical decision-making, supports standardized BAA practices, and improves patient care in various healthcare settings.

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来源期刊
Diagnostic and interventional radiology
Diagnostic and interventional radiology Medicine-Radiology, Nuclear Medicine and Imaging
自引率
4.80%
发文量
0
期刊介绍: Diagnostic and Interventional Radiology (Diagn Interv Radiol) is the open access, online-only official publication of Turkish Society of Radiology. It is published bimonthly and the journal’s publication language is English. The journal is a medium for original articles, reviews, pictorial essays, technical notes related to all fields of diagnostic and interventional radiology.
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