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A novel image-based machine learning model with superior accuracy and predictability for knee arthroplasty loosening detection and clinical decision making

BACKGROUND: Loosening is the leading cause of total knee arthroplasty (TKA) revision. This is a heavy burden toward the healthcare system owing to the difficulty in diagnosis and complications occurring from the delay management. Based on automatic analytical model building, machine learning, may po...

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Autores principales: Lau, Lawrence Chun Man, Chui, Elvis Chun Sing, Man, Gene Chi Wai, Xin, Ye, Ho, Kevin Ki Wai, Mak, Kyle Ka Kwan, Ong, Michael Tim Yun, Law, Sheung Wai, Cheung, Wing Hoi, Yung, Patrick Shu Hang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Chinese Speaking Orthopaedic Society 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9562957/
https://www.ncbi.nlm.nih.gov/pubmed/36263380
http://dx.doi.org/10.1016/j.jot.2022.07.004
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author Lau, Lawrence Chun Man
Chui, Elvis Chun Sing
Man, Gene Chi Wai
Xin, Ye
Ho, Kevin Ki Wai
Mak, Kyle Ka Kwan
Ong, Michael Tim Yun
Law, Sheung Wai
Cheung, Wing Hoi
Yung, Patrick Shu Hang
author_facet Lau, Lawrence Chun Man
Chui, Elvis Chun Sing
Man, Gene Chi Wai
Xin, Ye
Ho, Kevin Ki Wai
Mak, Kyle Ka Kwan
Ong, Michael Tim Yun
Law, Sheung Wai
Cheung, Wing Hoi
Yung, Patrick Shu Hang
author_sort Lau, Lawrence Chun Man
collection PubMed
description BACKGROUND: Loosening is the leading cause of total knee arthroplasty (TKA) revision. This is a heavy burden toward the healthcare system owing to the difficulty in diagnosis and complications occurring from the delay management. Based on automatic analytical model building, machine learning, may potentially help to automatically recognize the risk of loosening based on radiographs alone. The aim of this study was to build an image-based machine-learning model for detecting TKA loosening. METHODS: Image-based machine-learning model was developed based on ImageNet, Xception model and a TKA patient X-ray image dataset. Based on a dataset with TKA patient clinical parameters, another system was then created for developing the clinical-information-based machine learning model with random forest classifier. In addition, the Xception Model was pre-trained on the ImageNet database with python and TensorFlow deep learning library for the prediction of loosening. Class activation maps were also used to interpret the prediction decision made by model. Two senior orthopaedic specialists were invited to assess loosening from X-ray images for 3 attempts in setting up comparison benchmark. RESULT: In the image-based machine learning loosening model, the precision rate and recall rate were 0.92 and 0.96, respectively. While for the accuracy rate, 96.3% for visualization classification was observed. However, the addition of clinical-information-based model, with precision rate of 0.71 and recall rate of 0.20, did not further showed improvement on the accuracy. Moreover, as class activation maps showed corresponding signals over bone-implant interface that is loosened radiographically, this confirms that the current model utilized a similar image recognition pattern as that of inspection by clinical specialists. CONCLUSION: The image-based machine learning model developed demonstrated high accuracy and predictability of knee arthroplasty loosening. And the class activation heatmap matched well with the radiographic features used clinically to detect loosening, which highlighting its potential role in assisting clinicians in their daily practice. However, addition of clinical-information-based machine-learning model did not offer further improvement in detection. As far as we know, this is the first report of pure image-based machine learning model with high detection accuracy. Importantly, this is also the first model to show relevant class activation heatmap corresponding to loosening location. TRANSLATIONAL POTENTIAL: The finding in this study indicated image-based machine learning model can detect knee arthroplasty loosening with high accuracy and predictability, which the class activation heatmap can potentially assist surgeons to identify the sites of loosening.
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spelling pubmed-95629572022-10-18 A novel image-based machine learning model with superior accuracy and predictability for knee arthroplasty loosening detection and clinical decision making Lau, Lawrence Chun Man Chui, Elvis Chun Sing Man, Gene Chi Wai Xin, Ye Ho, Kevin Ki Wai Mak, Kyle Ka Kwan Ong, Michael Tim Yun Law, Sheung Wai Cheung, Wing Hoi Yung, Patrick Shu Hang J Orthop Translat Original Article BACKGROUND: Loosening is the leading cause of total knee arthroplasty (TKA) revision. This is a heavy burden toward the healthcare system owing to the difficulty in diagnosis and complications occurring from the delay management. Based on automatic analytical model building, machine learning, may potentially help to automatically recognize the risk of loosening based on radiographs alone. The aim of this study was to build an image-based machine-learning model for detecting TKA loosening. METHODS: Image-based machine-learning model was developed based on ImageNet, Xception model and a TKA patient X-ray image dataset. Based on a dataset with TKA patient clinical parameters, another system was then created for developing the clinical-information-based machine learning model with random forest classifier. In addition, the Xception Model was pre-trained on the ImageNet database with python and TensorFlow deep learning library for the prediction of loosening. Class activation maps were also used to interpret the prediction decision made by model. Two senior orthopaedic specialists were invited to assess loosening from X-ray images for 3 attempts in setting up comparison benchmark. RESULT: In the image-based machine learning loosening model, the precision rate and recall rate were 0.92 and 0.96, respectively. While for the accuracy rate, 96.3% for visualization classification was observed. However, the addition of clinical-information-based model, with precision rate of 0.71 and recall rate of 0.20, did not further showed improvement on the accuracy. Moreover, as class activation maps showed corresponding signals over bone-implant interface that is loosened radiographically, this confirms that the current model utilized a similar image recognition pattern as that of inspection by clinical specialists. CONCLUSION: The image-based machine learning model developed demonstrated high accuracy and predictability of knee arthroplasty loosening. And the class activation heatmap matched well with the radiographic features used clinically to detect loosening, which highlighting its potential role in assisting clinicians in their daily practice. However, addition of clinical-information-based machine-learning model did not offer further improvement in detection. As far as we know, this is the first report of pure image-based machine learning model with high detection accuracy. Importantly, this is also the first model to show relevant class activation heatmap corresponding to loosening location. TRANSLATIONAL POTENTIAL: The finding in this study indicated image-based machine learning model can detect knee arthroplasty loosening with high accuracy and predictability, which the class activation heatmap can potentially assist surgeons to identify the sites of loosening. Chinese Speaking Orthopaedic Society 2022-10-06 /pmc/articles/PMC9562957/ /pubmed/36263380 http://dx.doi.org/10.1016/j.jot.2022.07.004 Text en © 2022 The Chinese University of Hong Kong https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Article
Lau, Lawrence Chun Man
Chui, Elvis Chun Sing
Man, Gene Chi Wai
Xin, Ye
Ho, Kevin Ki Wai
Mak, Kyle Ka Kwan
Ong, Michael Tim Yun
Law, Sheung Wai
Cheung, Wing Hoi
Yung, Patrick Shu Hang
A novel image-based machine learning model with superior accuracy and predictability for knee arthroplasty loosening detection and clinical decision making
title A novel image-based machine learning model with superior accuracy and predictability for knee arthroplasty loosening detection and clinical decision making
title_full A novel image-based machine learning model with superior accuracy and predictability for knee arthroplasty loosening detection and clinical decision making
title_fullStr A novel image-based machine learning model with superior accuracy and predictability for knee arthroplasty loosening detection and clinical decision making
title_full_unstemmed A novel image-based machine learning model with superior accuracy and predictability for knee arthroplasty loosening detection and clinical decision making
title_short A novel image-based machine learning model with superior accuracy and predictability for knee arthroplasty loosening detection and clinical decision making
title_sort novel image-based machine learning model with superior accuracy and predictability for knee arthroplasty loosening detection and clinical decision making
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9562957/
https://www.ncbi.nlm.nih.gov/pubmed/36263380
http://dx.doi.org/10.1016/j.jot.2022.07.004
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