Rethinking Greulich and Pyle: A Deep Learning Approach to Pediatric Bone Age Assessment Using Pediatric Trauma Hand Radiographs

被引:23
|
作者
Pan, Ian [1 ]
Baird, Grayson L. [2 ]
Mutasa, Simukayi [3 ]
Merck, Derek [4 ]
Ruzal-Shapiro, Carrie [3 ]
Swenson, David W. [1 ]
Ayyala, Rama S. [1 ]
机构
[1] Brown Univ, Warren Alpert Med Sch, Hasbro Childrens Hosp, Dept Diagnost Imaging,Rhode Isl Hosp, 593 Eddy St, Providence, RI 02903 USA
[2] Rhode Isl Hosp, Dept Diagnost Imaging & Lifespan Biostat Core, Providence, RI USA
[3] Columbia Univ, Med Ctr, Dept Radiol, New York, NY USA
[4] Univ Florida, Shards Hosp, Dept Emergency Med, Gainesville, FL USA
关键词
D O I
10.1148/ryai.2020190198
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Purpose: To develop a deep learning approach to bone age assessment based on a training set of developmentally normal pediatric hand radiographs and to compare this approach with automated and manual bone age assessment methods based on Greulich and Pyle (GP). Methods: In this retrospective study, a convolutional neural network (trauma hand radiograph-trained deep learning bone age assessment method [TDL-BAAM]) was trained on 15 129 frontal view pediatric trauma hand radiographs obtained between December 14, 2009, and May 31, 2017, from Children's Hospital of New York, to predict chronological age. A total of 214 trauma hand radiographs from Hasbro Children's Hospital were used as an independent test set. The test set was rated by the TDL-BAAM model as well as a GP-based deep learning model (GPDL-BAAM) and two pediatric radiologists (radiologists 1 and 2) using the GP method. All ratings were compared with chronological age using mean absolute error (MAE), and standard concordance analyses were performed. Results: The MAE of the TDL-BAAM model was 11.1 months, compared with 12.9 months for GPDL-BAAM (P=.0005), 14.6 months for radiologist 1 (P<.0001), and 16.0 for radiologist 2 (P<.0001). For TDL-BAAM, 95.3% of predictions were within 24 months of chronological age compared with 91.6% for GPDL-BAAM (P=.096), 86.0% for radiologist 1 (P<.0001), and 84.6% for radiologist 2 (P<.0001). Concordance was high between all methods and chronological age (intraclass coefficient > 0.93). Deep learning models demonstrated a systematic bias with a tendency to overpredict age for younger children versus radiologists who showed a consistent mean bias. Conclusion: A deep learning model trained on pediatric trauma hand radiographs is on par with automated and manual GP-based methods for bone age assessment and provides a foundation for developing population-specific deep learning algorithms for bone age assessment in modern pediatric populations. (C) RSNA, 2020
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页码:1 / 9
页数:9
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