Cargando…

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

Leg length discrepancies are common orthopedic problems with the potential for poor functional outcomes. These are frequently assessed using bilateral leg length radiographs. The objective was to determine whether an artificial intelligence (AI)-based image analysis system can accurately interpret l...

Descripción completa

Detalles Bibliográficos
Autores principales: Larson, Nathan, Nguyen, Chantal, Do, Bao, Kaul, Aryan, Larson, Anna, Wang, Shannon, Wang, Erin, Bultman, Eric, Stevens, Kate, Pai, Jason, Ha, Audrey, Boutin, Robert, Fredericson, Michael, Do, Long, Fang, Charles
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9261153/
https://www.ncbi.nlm.nih.gov/pubmed/35794502
http://dx.doi.org/10.1007/s10278-022-00671-2
_version_ 1784742209767079936
author Larson, Nathan
Nguyen, Chantal
Do, Bao
Kaul, Aryan
Larson, Anna
Wang, Shannon
Wang, Erin
Bultman, Eric
Stevens, Kate
Pai, Jason
Ha, Audrey
Boutin, Robert
Fredericson, Michael
Do, Long
Fang, Charles
author_facet Larson, Nathan
Nguyen, Chantal
Do, Bao
Kaul, Aryan
Larson, Anna
Wang, Shannon
Wang, Erin
Bultman, Eric
Stevens, Kate
Pai, Jason
Ha, Audrey
Boutin, Robert
Fredericson, Michael
Do, Long
Fang, Charles
author_sort Larson, Nathan
collection PubMed
description Leg length discrepancies are common orthopedic problems with the potential for poor functional outcomes. These are frequently assessed using bilateral leg length radiographs. The objective was to determine whether an artificial intelligence (AI)-based image analysis system can accurately interpret long leg length radiographic images. We built an end-to-end system to analyze leg length radiographs and generate reports like radiologists, which involves measurement of lengths (femur, tibia, entire leg) and angles (mechanical axis and pelvic tilt), describes presence and location of orthopedic hardware, and reports laterality discrepancies. After IRB approval, a dataset of 1,726 extremities (863 images) from consecutive examinations at a tertiary referral center was retrospectively acquired and partitioned into train/validation and test sets. The training set was annotated and used to train a fasterRCNN-ResNet101 object detection convolutional neural network. A second-stage classifier using a EfficientNet-D0 model was trained to recognize the presence or absence of hardware within extracted joint image patches. The system was deployed in a custom web application that generated a preliminary radiology report. Performance of the system was evaluated using a holdout 220 image test set, annotated by 3 musculoskeletal fellowship trained radiologists. At the object detection level, the system demonstrated a recall of 0.98 and precision of 0.96 in detecting anatomic landmarks. Correlation coefficients between radiologist and AI-generated measurements for femur, tibia, and whole-leg lengths were > 0.99, with mean error of < 1%. Correlation coefficients for mechanical axis angle and pelvic tilt were 0.98 and 0.86, respectively, with mean absolute error of < 1°. AI hardware detection demonstrated an accuracy of 99.8%. Automatic quantitative and qualitative analysis of leg length radiographs using deep learning is feasible and holds potential in improving radiologist workflow.
format Online
Article
Text
id pubmed-9261153
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Springer International Publishing
record_format MEDLINE/PubMed
spelling pubmed-92611532022-07-07 Artificial Intelligence System for Automatic Quantitative Analysis and Radiology Reporting of Leg Length Radiographs Larson, Nathan Nguyen, Chantal Do, Bao Kaul, Aryan Larson, Anna Wang, Shannon Wang, Erin Bultman, Eric Stevens, Kate Pai, Jason Ha, Audrey Boutin, Robert Fredericson, Michael Do, Long Fang, Charles J Digit Imaging Article Leg length discrepancies are common orthopedic problems with the potential for poor functional outcomes. These are frequently assessed using bilateral leg length radiographs. The objective was to determine whether an artificial intelligence (AI)-based image analysis system can accurately interpret long leg length radiographic images. We built an end-to-end system to analyze leg length radiographs and generate reports like radiologists, which involves measurement of lengths (femur, tibia, entire leg) and angles (mechanical axis and pelvic tilt), describes presence and location of orthopedic hardware, and reports laterality discrepancies. After IRB approval, a dataset of 1,726 extremities (863 images) from consecutive examinations at a tertiary referral center was retrospectively acquired and partitioned into train/validation and test sets. The training set was annotated and used to train a fasterRCNN-ResNet101 object detection convolutional neural network. A second-stage classifier using a EfficientNet-D0 model was trained to recognize the presence or absence of hardware within extracted joint image patches. The system was deployed in a custom web application that generated a preliminary radiology report. Performance of the system was evaluated using a holdout 220 image test set, annotated by 3 musculoskeletal fellowship trained radiologists. At the object detection level, the system demonstrated a recall of 0.98 and precision of 0.96 in detecting anatomic landmarks. Correlation coefficients between radiologist and AI-generated measurements for femur, tibia, and whole-leg lengths were > 0.99, with mean error of < 1%. Correlation coefficients for mechanical axis angle and pelvic tilt were 0.98 and 0.86, respectively, with mean absolute error of < 1°. AI hardware detection demonstrated an accuracy of 99.8%. Automatic quantitative and qualitative analysis of leg length radiographs using deep learning is feasible and holds potential in improving radiologist workflow. Springer International Publishing 2022-07-06 2022-12 /pmc/articles/PMC9261153/ /pubmed/35794502 http://dx.doi.org/10.1007/s10278-022-00671-2 Text en © This is a U.S. Government work and not under copyright protection in the US; foreign copyright protection may apply 2022
spellingShingle Article
Larson, Nathan
Nguyen, Chantal
Do, Bao
Kaul, Aryan
Larson, Anna
Wang, Shannon
Wang, Erin
Bultman, Eric
Stevens, Kate
Pai, Jason
Ha, Audrey
Boutin, Robert
Fredericson, Michael
Do, Long
Fang, Charles
Artificial Intelligence System for Automatic Quantitative Analysis and Radiology Reporting of Leg Length Radiographs
title Artificial Intelligence System for Automatic Quantitative Analysis and Radiology Reporting of Leg Length Radiographs
title_full Artificial Intelligence System for Automatic Quantitative Analysis and Radiology Reporting of Leg Length Radiographs
title_fullStr Artificial Intelligence System for Automatic Quantitative Analysis and Radiology Reporting of Leg Length Radiographs
title_full_unstemmed Artificial Intelligence System for Automatic Quantitative Analysis and Radiology Reporting of Leg Length Radiographs
title_short Artificial Intelligence System for Automatic Quantitative Analysis and Radiology Reporting of Leg Length Radiographs
title_sort artificial intelligence system for automatic quantitative analysis and radiology reporting of leg length radiographs
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9261153/
https://www.ncbi.nlm.nih.gov/pubmed/35794502
http://dx.doi.org/10.1007/s10278-022-00671-2
work_keys_str_mv AT larsonnathan artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT nguyenchantal artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT dobao artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT kaularyan artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT larsonanna artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT wangshannon artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT wangerin artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT bultmaneric artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT stevenskate artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT paijason artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT haaudrey artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT boutinrobert artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT fredericsonmichael artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT dolong artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs
AT fangcharles artificialintelligencesystemforautomaticquantitativeanalysisandradiologyreportingofleglengthradiographs