Your browser doesn't support javascript.
loading
Comparison of evaluation metrics of deep learning for imbalanced imaging data in osteoarthritis studies.
Liu, Shen; Roemer, Frank; Ge, Yong; Bedrick, Edward J; Li, Zong-Ming; Guermazi, Ali; Sharma, Leena; Eaton, Charles; Hochberg, Marc C; Hunter, David J; Nevitt, Michael C; Wirth, Wolfgang; Kent Kwoh, C; Sun, Xiaoxiao.
Affiliation
  • Liu S; Department of Epidemiology and Biostatistics, University of Arizona, 1295 N. Martin Ave., Tucson, AZ 85724, USA. Electronic address: shenliu@arizona.edu.
  • Roemer F; Department of Radiology, University of Erlangen - Nuremberg, Erlangen, Germany; Department of Radiology, Boston University School of Medicine, MA, USA. Electronic address: frank.roemer@uk-erlangen.de.
  • Ge Y; Department of Management Information Systems, University of Arizona, AZ, USA. Electronic address: yongge@arizona.edu.
  • Bedrick EJ; Department of Epidemiology and Biostatistics, University of Arizona, 1295 N. Martin Ave., Tucson, AZ 85724, USA. Electronic address: edwardjbedrick@arizona.edu.
  • Li ZM; University of Arizona Arthritis Center, University of Arizona College of Medicine, Tucson, AZ, USA. Electronic address: lizongming@ortho.arizona.edu.
  • Guermazi A; Department of Radiology, Boston University School of Medicine, MA, USA. Electronic address: guermazi@bu.edu.
  • Sharma L; Feinberh School of Medicine, Northwestern University, IL, USA. Electronic address: l-sharma@northwestern.edu.
  • Eaton C; Kent Memorial Hospital, and Department of Family Medicine, Warren Alpert Medical School, and Department of Epidemiology, School of Public Health, Brown University, RI, USA. Electronic address: Charles_Eaton@brown.edu.
  • Hochberg MC; School of Medicine, University of Maryland, and Medical Care Clinical Center, VA Maryland Health Care System, Baltimore, MD, USA. Electronic address: mhochber@som.umaryland.edu.
  • Hunter DJ; Sydney Musculoskeletal Health, Kolling Institute, Faculty of Medicine and Health, The University of Sydney, Sydney, 2065 NSW, Australia, and Rheumatology Department, Royal North Shore Hospital, St Leonards, NSW 2065 Australia. Electronic address: david.hunter@sydney.edu.au.
  • Nevitt MC; Department of Epidemiology and Biostatistics, University of California San Francisco, CA, USA. Electronic address: Michael.Nevitt@ucsf.edu.
  • Wirth W; Department of Imaging & Functional Musculoskeletal Research, Institute of Anatomy & Cell Biology, Paracelsus Medical University Salzburg & Nuremberg, Salzburg, Austria, and Ludwig Boltzmann Inst. for Arthritis and Rehabilitation, Paracelsus Medical University Salzburg & Nuremberg, Sa
  • Kent Kwoh C; University of Arizona Arthritis Center, University of Arizona College of Medicine, Tucson, AZ, USA. Electronic address: CKwoh@arthritis.arizona.edu.
  • Sun X; Department of Epidemiology and Biostatistics, University of Arizona, 1295 N. Martin Ave., Tucson, AZ 85724, USA. Electronic address: xiaosun@arizona.edu.
Osteoarthritis Cartilage ; 31(9): 1242-1248, 2023 09.
Article de En | MEDLINE | ID: mdl-37209993
ABSTRACT

PURPOSE:

To compare the evaluation metrics for deep learning methods that were developed using imbalanced imaging data in osteoarthritis studies. MATERIALS AND

METHODS:

This retrospective study utilized 2996 sagittal intermediate-weighted fat-suppressed knee MRIs with MRI Osteoarthritis Knee Score readings from 2467 participants in the Osteoarthritis Initiative study. We obtained probabilities of the presence of bone marrow lesions (BMLs) from MRIs in the testing dataset at the sub-region (15 sub-regions), compartment, and whole-knee levels based on the trained deep learning models. We compared different evaluation metrics (e.g., receiver operating characteristic (ROC) and precision-recall (PR) curves) in the testing dataset with various class ratios (presence of BMLs vs. absence of BMLs) at these three data levels to assess the model's performance.

RESULTS:

In a subregion with an extremely high imbalance ratio, the model achieved a ROC-AUC of 0.84, a PR-AUC of 0.10, a sensitivity of 0, and a specificity of 1.

CONCLUSION:

The commonly used ROC curve is not sufficiently informative, especially in the case of imbalanced data. We provide the following practical suggestions based on our data

analysis:

1) ROC-AUC is recommended for balanced data, 2) PR-AUC should be used for moderately imbalanced data (i.e., when the proportion of the minor class is above 5% and less than 50%), and 3) for severely imbalanced data (i.e., when the proportion of the minor class is below 5%), it is not practical to apply a deep learning model, even with the application of techniques addressing imbalanced data issues.
Sujet(s)
Mots clés

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Maladies du cartilage / Gonarthrose / Apprentissage profond Type d'étude: Observational_studies / Prognostic_studies Limites: Humans Langue: En Journal: Osteoarthritis Cartilage Sujet du journal: ORTOPEDIA / REUMATOLOGIA Année: 2023 Type de document: Article

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Maladies du cartilage / Gonarthrose / Apprentissage profond Type d'étude: Observational_studies / Prognostic_studies Limites: Humans Langue: En Journal: Osteoarthritis Cartilage Sujet du journal: ORTOPEDIA / REUMATOLOGIA Année: 2023 Type de document: Article
...