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出生相关婴儿锁骨骨折的深度学习:骨折日期判定的潜在虚拟顾问。

Deep learning of birth-related infant clavicle fractures: a potential virtual consultant for fracture dating.

作者信息

Tsai Andy, Grant P Ellen, Warfield Simon K, Ou Yangming, Kleinman Paul K

机构信息

Department of Radiology, Boston Children's Hospital, 300 Longwood Ave., Boston, MA, 02115, USA.

Fetal-Neonatal Neuroimaging & Developmental Science Center, Boston, MA, USA.

出版信息

Pediatr Radiol. 2022 Oct;52(11):2206-2214. doi: 10.1007/s00247-022-05380-0. Epub 2022 May 17.

Abstract

BACKGROUND

In infant abuse investigations, dating of skeletal injuries from radiographs is desirable to reach a clear timeline of traumatic events. Prior studies have used infant birth-related clavicle fractures as a surrogate to develop a framework for dating of abuse-related fractures.

OBJECTIVE

To develop and train a deep learning algorithm that can accurately date infant birth-related clavicle fractures.

MATERIALS AND METHODS

We modified a deep learning model initially designed for face-age estimation to date infant clavicle fractures. We conducted a computerized search of imaging reports and other medical records at a tertiary children's hospital to identify radiographs of birth-related clavicle fracture in infants ≤ 3 months old (July 2003 to March 2021). We used the resultant database for model training, validation and testing. We evaluated the performance of the deep learning model via a four-fold cross-validation procedure, and calculated accuracy metrics: mean absolute error (MAE), root mean square error (RMSE), intraclass correlation coefficient (ICC) and cumulative score.

RESULTS

The curated database consisted of 416 clavicle radiographs from 213 infants. Average chronological age (equivalent to fracture age) at time of imaging was 24 days. This model estimated the ages of the clavicle fractures with MAE of 4.2 days, RMSE of 6.3 days and ICC of 0.919. On average, 83.7% of the fracture age estimates were accurate to within 7 days of the ground truth.

CONCLUSION

Our deep learning study provides encouraging results for radiographic dating of infant clavicle fractures. With further development and validation, this model might serve as a virtual consultant to radiologists estimating fracture ages in cases of suspected infant abuse.

摘要

背景

在虐待婴儿的调查中,通过X光片确定骨骼损伤的时间,有助于梳理出清晰的创伤事件时间线。此前的研究利用与婴儿出生相关的锁骨骨折作为替代指标,来构建与虐待相关骨折的时间判定框架。

目的

开发并训练一种深度学习算法,以准确判定与婴儿出生相关的锁骨骨折时间。

材料与方法

我们对最初用于面部年龄估计的深度学习模型进行了修改,以判定婴儿锁骨骨折时间。我们在一家三级儿童医院对影像报告和其他病历进行了计算机检索,以识别年龄≤3个月(2003年7月至2021年3月)婴儿的与出生相关的锁骨骨折X光片。我们将所得数据库用于模型训练、验证和测试。我们通过四重交叉验证程序评估深度学习模型的性能,并计算准确性指标:平均绝对误差(MAE)、均方根误差(RMSE)、组内相关系数(ICC)和累积分数。

结果

精心整理的数据库包含来自213名婴儿的416张锁骨X光片。成像时的平均实际年龄(相当于骨折年龄)为24天。该模型估计锁骨骨折年龄的MAE为4.2天,RMSE为6.3天,ICC为0.919。平均而言,83.7%的骨折年龄估计值与实际情况的误差在7天以内。

结论

我们的深度学习研究为婴儿锁骨骨折的X光片时间判定提供了令人鼓舞的结果。经过进一步开发和验证,该模型可能会成为放射科医生在疑似虐待婴儿案件中估计骨折年龄的虚拟顾问。

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