Literature DB >> 32315267

Deep Learning Measurement of Leg Length Discrepancy in Children Based on Radiographs.

Qiang Zheng1, Sphoorti Shellikeri1, Hao Huang1, Misun Hwang1, Raymond W Sze1.   

Abstract

Background Radiographic measurement of leg length discrepancy (LLD) is time consuming yet cognitively simple for pediatric radiologists. Purpose To compare deep learning (DL) measurements of LLD in pediatric patients to measurements performed by radiologists. Materials and Methods For this HIPAA-compliant retrospective study, radiographs obtained to evaluate LLD in children between January and August 2018 were identified. LLD was automatically measured by means of image segmentation followed by leg length calculation. On training data, a DL model was trained to segment femurs and tibias on radiographs. The validation set was used to select the optimized model. On testing data, leg lengths were calculated from segmentation masks and compared with measurements from the radiology report. Statistical analysis was performed by using a paired Wilcoxon signed-rank test to compare DL calculations and radiology reports. In addition, the measurement time was manually assessed by a pediatric radiologist and automatically assessed by the DL model on a randomly chosen group of 26 cases; the values were compared with the paired Wilcoxon signed-rank test. Results Radiographs obtained to evaluate LLD in 179 children (mean age ± standard deviation, 12 years ± 3; age range, 5-19 years; 89 boys and 90 girls) were evaluated. Radiographs were randomly divided into training, validation, and testing sets and consisted of studies from 70, 32, and 77 patients, respectively. In the training and validation sets, the DL model showed a high spatial overlap between manual and automatic segmentation masks of pediatric legs (Dice similarity coefficient, 0.94). For the testing set, the correlation between radiology reports and DL-calculated lengths of separated femurs and tibias (r = 0.99; mean absolute error [MAE], 0.45 cm), full pediatric leg lengths (r = 0.99; MAE, 0.45 cm), and full LLD (r = 0.92; MAE, 0.51 cm) was high (P < .001 for all correlations). Calculation time for the DL method per radiograph was faster than the mean time for radiologist manual calculation (1 second vs 96 seconds ± 7, respectively; P < .001). Conclusion A deep learning algorithm measured pediatric leg lengths with high spatial overlap compared with manual measurement at a rate 96 times faster than that of subspecialty-trained pediatric radiologists. © RSNA, 2020 See also the editorial by van Rijn and De Luca in this issue.

Entities:  

Year:  2020        PMID: 32315267     DOI: 10.1148/radiol.2020192003

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  10 in total

1.  A deep-learning model for identifying fresh vertebral compression fractures on digital radiography.

Authors:  Weijuan Chen; Xi Liu; Kunhua Li; Yin Luo; Shanwei Bai; Jiangfen Wu; Weidao Chen; Mengxing Dong; Dajing Guo
Journal:  Eur Radiol       Date:  2021-09-22       Impact factor: 7.034

Review 2.  Artificial intelligence in paediatric radiology: Future opportunities.

Authors:  Natasha Davendralingam; Neil J Sebire; Owen J Arthurs; Susan C Shelmerdine
Journal:  Br J Radiol       Date:  2020-09-17       Impact factor: 3.039

3.  Automated Analysis of Alignment in Long-Leg Radiographs by Using a Fully Automated Support System Based on Artificial Intelligence.

Authors:  Justus Schock; Daniel Truhn; Daniel B Abrar; Dorit Merhof; Stefan Conrad; Manuel Post; Felix Mittelstrass; Christiane Kuhl; Sven Nebelung
Journal:  Radiol Artif Intell       Date:  2020-12-23

Review 4.  Artificial intelligence development in pediatric body magnetic resonance imaging: best ideas to adapt from adults.

Authors:  Michael M Moore; Ramesh S Iyer; Nabeel I Sarwani; Raymond W Sze
Journal:  Pediatr Radiol       Date:  2021-04-13

5.  Artificial Intelligence System for Automatic Quantitative Analysis and Radiology Reporting of Leg Length Radiographs.

Authors:  Nathan Larson; Chantal Nguyen; Bao Do; Aryan Kaul; Anna Larson; Shannon Wang; Erin Wang; Eric Bultman; Kate Stevens; Jason Pai; Audrey Ha; Robert Boutin; Michael Fredericson; Long Do; Charles Fang
Journal:  J Digit Imaging       Date:  2022-07-06       Impact factor: 4.903

6.  Deep learning-based tool affects reproducibility of pes planus radiographic assessment.

Authors:  Jalim Koo; Sangchul Hwang; Seung Hwan Han; Junho Lee; Hye Sun Lee; Goeun Park; Hyeongmin Kim; Jiae Choi; Sungjun Kim
Journal:  Sci Rep       Date:  2022-07-28       Impact factor: 4.996

7.  Fully automated measurement on coronal alignment of lower limbs using deep convolutional neural networks on radiographic images.

Authors:  Xianghong Meng; Zhi Wang; Xinlong Ma; Xiaoming Liu; Hong Ji; Jie-Zhi Cheng; Pei Dong
Journal:  BMC Musculoskelet Disord       Date:  2022-09-17       Impact factor: 2.562

Review 8.  The augmented radiologist: artificial intelligence in the practice of radiology.

Authors:  Erich Sorantin; Michael G Grasser; Ariane Hemmelmayr; Sebastian Tschauner; Franko Hrzic; Veronika Weiss; Jana Lacekova; Andreas Holzinger
Journal:  Pediatr Radiol       Date:  2021-10-19

9.  Segmenting the Semi-Conductive Shielding Layer of Cable Slice Images Using the Convolutional Neural Network.

Authors:  Wen Zhu; Fei Dong; Beiping Hou; Wesley Kenniard Takudzwa Gwatidzo; Le Zhou; Gang Li
Journal:  Polymers (Basel)       Date:  2020-09-14       Impact factor: 4.329

Review 10.  Current and emerging artificial intelligence applications for pediatric musculoskeletal radiology.

Authors:  Amaka C Offiah
Journal:  Pediatr Radiol       Date:  2021-07-16
  10 in total

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