Literature DB >> 32013791

Development and Validation of a Multitask Deep Learning Model for Severity Grading of Hip Osteoarthritis Features on Radiographs.

Claudio E von Schacky1, Jae Ho Sohn1, Felix Liu1, Eugene Ozhinsky1, Pia M Jungmann1, Lorenzo Nardo1, Magdalena Posadzy1, Sarah C Foreman1, Michael C Nevitt1, Thomas M Link1, Valentina Pedoia1.   

Abstract

Background A multitask deep learning model might be useful in large epidemiologic studies wherein detailed structural assessment of osteoarthritis still relies on expert radiologists' readings. The potential of such a model in clinical routine should be investigated. Purpose To develop a multitask deep learning model for grading radiographic hip osteoarthritis features on radiographs and compare its performance to that of attending-level radiologists. Materials and Methods This retrospective study analyzed hip joints seen on weight-bearing anterior-posterior pelvic radiographs from participants in the Osteoarthritis Initiative (OAI). Participants were recruited from February 2004 to May 2006 for baseline measurements, and follow-up was performed 48 months later. Femoral osteophytes (FOs), acetabular osteophytes (AOs), and joint-space narrowing (JSN) were graded as absent, mild, moderate, or severe according to the Osteoarthritis Research Society International atlas. Subchondral sclerosis and subchondral cysts were graded as present or absent. The participants were split at 80% (n = 3494), 10% (n = 437), and 10% (n = 437) by using split-sample validation into training, validation, and testing sets, respectively. The multitask neural network was based on DenseNet-161, a shared convolutional features extractor trained with multitask loss function. Model performance was evaluated in the internal test set from the OAI and in an external test set by using temporal and geographic validation consisting of routine clinical radiographs. Results A total of 4368 participants (mean age, 61.0 years ± 9.2 [standard deviation]; 2538 women) were evaluated (15 364 hip joints on 7738 weight-bearing anterior-posterior pelvic radiographs). The accuracy of the model for assessing these five features was 86.7% (1333 of 1538) for FOs, 69.9% (1075 of 1538) for AOs, 81.7% (1257 of 1538) for JSN, 95.8% (1473 of 1538) for subchondral sclerosis, and 97.6% (1501 of 1538) for subchondral cysts in the internal test set, and 82.7% (86 of 104) for FOS, 65.4% (68 of 104) for AOs, 80.8% (84 of 104) for JSN, 88.5% (92 of 104) for subchondral sclerosis, and 91.3% (95 of 104) for subchondral cysts in the external test set. Conclusion A multitask deep learning model is a feasible approach to reliably assess radiographic features of hip osteoarthritis. © RSNA, 2020 Online supplemental material is available for this article.

Entities:  

Mesh:

Year:  2020        PMID: 32013791      PMCID: PMC7104703          DOI: 10.1148/radiol.2020190925

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


  16 in total

1.  Radiological assessment of osteo-arthrosis.

Authors:  J H KELLGREN; J S LAWRENCE
Journal:  Ann Rheum Dis       Date:  1957-12       Impact factor: 19.103

Review 2.  Recent advances in research imaging of osteoarthritis with focus on MRI, ultrasound and hybrid imaging.

Authors:  Daichi Hayashi; Frank W Roemer; Ali Guermazi
Journal:  Clin Exp Rheumatol       Date:  2018-10-01       Impact factor: 4.473

3.  Deep Learning Approach for Evaluating Knee MR Images: Achieving High Diagnostic Performance for Cartilage Lesion Detection.

Authors:  Fang Liu; Zhaoye Zhou; Alexey Samsonov; Donna Blankenbaker; Will Larison; Andrew Kanarek; Kevin Lian; Shivkumar Kambhampati; Richard Kijowski
Journal:  Radiology       Date:  2018-07-31       Impact factor: 11.105

4.  Incidence and risk factors for clinically diagnosed knee, hip and hand osteoarthritis: influences of age, gender and osteoarthritis affecting other joints.

Authors:  Daniel Prieto-Alhambra; Andrew Judge; M Kassim Javaid; Cyrus Cooper; Adolfo Diez-Perez; Nigel K Arden
Journal:  Ann Rheum Dis       Date:  2013-06-06       Impact factor: 19.103

5.  Atlas of individual radiographic features in osteoarthritis, revised.

Authors:  R D Altman; G E Gold
Journal:  Osteoarthritis Cartilage       Date:  2007       Impact factor: 6.576

6.  The American College of Rheumatology criteria for the classification and reporting of osteoarthritis of the hip.

Authors:  R Altman; G Alarcón; D Appelrouth; D Bloch; D Borenstein; K Brandt; C Brown; T D Cooke; W Daniel; D Feldman
Journal:  Arthritis Rheum       Date:  1991-05

7.  Do persons with asymmetric hip pain or radiographic hip OA have worse pain and structure outcomes in the knee opposite the more affected hip? Data from the Osteoarthritis Initiative.

Authors:  G B Joseph; J F Hilton; P M Jungmann; J A Lynch; N E Lane; F Liu; C E McCulloch; I Tolstykh; T M Link; M C Nevitt
Journal:  Osteoarthritis Cartilage       Date:  2015-10-20       Impact factor: 6.576

8.  Global, regional, and national incidence, prevalence, and years lived with disability for 310 diseases and injuries, 1990-2015: a systematic analysis for the Global Burden of Disease Study 2015.

Authors: 
Journal:  Lancet       Date:  2016-10-08       Impact factor: 79.321

9.  A preliminary examination of the diagnostic value of deep learning in hip osteoarthritis.

Authors:  Yanping Xue; Rongguo Zhang; Yufeng Deng; Kuan Chen; Tao Jiang
Journal:  PLoS One       Date:  2017-06-02       Impact factor: 3.240

10.  Deep-learning-assisted diagnosis for knee magnetic resonance imaging: Development and retrospective validation of MRNet.

Authors:  Nicholas Bien; Pranav Rajpurkar; Robyn L Ball; Jeremy Irvin; Allison Park; Erik Jones; Michael Bereket; Bhavik N Patel; Kristen W Yeom; Katie Shpanskaya; Safwan Halabi; Evan Zucker; Gary Fanton; Derek F Amanatullah; Christopher F Beaulieu; Geoffrey M Riley; Russell J Stewart; Francis G Blankenberg; David B Larson; Ricky H Jones; Curtis P Langlotz; Andrew Y Ng; Matthew P Lungren
Journal:  PLoS Med       Date:  2018-11-27       Impact factor: 11.069

View more
  8 in total

1.  External Validation of Deep Learning Algorithms for Radiologic Diagnosis: A Systematic Review.

Authors:  Alice C Yu; Bahram Mohajer; John Eng
Journal:  Radiol Artif Intell       Date:  2022-05-04

2.  Imaging Manifestations and Evaluation of Postoperative Complications of Bone and Joint Infections under Deep Learning.

Authors:  Wei Mao; Xiantao Chen; Fengyuan Man
Journal:  J Healthc Eng       Date:  2021-12-20       Impact factor: 2.682

3.  Use of machine learning in osteoarthritis research: a systematic literature review.

Authors:  Encarnita Mariotti-Ferrandiz; Jérémie Sellam; Marie Binvignat; Valentina Pedoia; Atul J Butte; Karine Louati; David Klatzmann; Francis Berenbaum
Journal:  RMD Open       Date:  2022-03

4.  Deep Learning to Detect Triangular Fibrocartilage Complex Injury in Wrist MRI: Retrospective Study with Internal and External Validation.

Authors:  Kun-Yi Lin; Yuan-Ta Li; Juin-Yi Han; Chia-Chun Wu; Chi-Min Chu; Shao-Yu Peng; Tsu-Te Yeh
Journal:  J Pers Med       Date:  2022-06-23

5.  Lung nodule detection in chest X-rays using synthetic ground-truth data comparing CNN-based diagnosis to human performance.

Authors:  Manuel Schultheiss; Philipp Schmette; Jannis Bodden; Juliane Aichele; Christina Müller-Leisse; Felix G Gassert; Florian T Gassert; Joshua F Gawlitza; Felix C Hofmann; Daniel Sasse; Claudio E von Schacky; Sebastian Ziegelmayer; Fabio De Marco; Bernhard Renger; Marcus R Makowski; Franz Pfeiffer; Daniela Pfeiffer
Journal:  Sci Rep       Date:  2021-08-04       Impact factor: 4.379

6.  Associations Between Baseline and Longitudinal Semiautomated Quantitative Joint Space Width at the Hip and Incident Hip Osteoarthritis: Data From a Community-Based Cohort.

Authors:  Amanda E Nelson; Jacquelyn A Smith; Carolina Alvarez; Liubov Arbeeva; Jordan B Renner; Louise B Murphy; Joanne M Jordan; Yvonne M Golightly; Jeffrey Duryea
Journal:  Arthritis Care Res (Hoboken)       Date:  2021-07-05       Impact factor: 5.178

7.  Automatic Detection of Medial and Lateral Compartments from Histological Sections of Mouse Knee Joints Using the Single-Shot Multibox Detector Algorithm.

Authors:  Yoshifumi Mori; Takeshi Oichi; Motomi Enomoto-Iwamoto; Taku Saito
Journal:  Cartilage       Date:  2022 Jan-Mar       Impact factor: 3.117

8.  Deep learning for accurately recognizing common causes of shoulder pain on radiographs.

Authors:  Nils F Grauhan; Stefan M Niehues; Robert A Gaudin; Sarah Keller; Janis L Vahldiek; Lisa C Adams; Keno K Bressem
Journal:  Skeletal Radiol       Date:  2021-02-20       Impact factor: 2.199

  8 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.