Machine Learning Solutions for Osteoporosis-A Review.

Details

Serval ID
serval:BIB_9E8118118CDD
Type
Article: article from journal or magazin.
Publication sub-type
Review (review): journal as complete as possible of one specific subject, written based on exhaustive analyses from published work.
Collection
Publications
Institution
Title
Machine Learning Solutions for Osteoporosis-A Review.
Journal
Journal of bone and mineral research
Author(s)
Smets J., Shevroja E., Hügle T., Leslie W.D., Hans D.
ISSN
1523-4681 (Electronic)
ISSN-L
0884-0431
Publication state
Published
Issued date
05/2021
Peer-reviewed
Oui
Volume
36
Number
5
Pages
833-851
Language
english
Notes
Publication types: Journal Article ; Research Support, Non-U.S. Gov't ; Review
Publication Status: ppublish
Abstract
Osteoporosis and its clinical consequence, bone fracture, is a multifactorial disease that has been the object of extensive research. Recent advances in machine learning (ML) have enabled the field of artificial intelligence (AI) to make impressive breakthroughs in complex data environments where human capacity to identify high-dimensional relationships is limited. The field of osteoporosis is one such domain, notwithstanding technical and clinical concerns regarding the application of ML methods. This qualitative review is intended to outline some of these concerns and to inform stakeholders interested in applying AI for improved management of osteoporosis. A systemic search in PubMed and Web of Science resulted in 89 studies for inclusion in the review. These covered one or more of four main areas in osteoporosis management: bone properties assessment (n = 13), osteoporosis classification (n = 34), fracture detection (n = 32), and risk prediction (n = 14). Reporting and methodological quality was determined by means of a 12-point checklist. In general, the studies were of moderate quality with a wide range (mode score 6, range 2 to 11). Major limitations were identified in a significant number of studies. Incomplete reporting, especially over model selection, inadequate splitting of data, and the low proportion of studies with external validation were among the most frequent problems. However, the use of images for opportunistic osteoporosis diagnosis or fracture detection emerged as a promising approach and one of the main contributions that ML could bring to the osteoporosis field. Efforts to develop ML-based models for identifying novel fracture risk factors and improving fracture prediction are additional promising lines of research. Some studies also offered insights into the potential for model-based decision-making. Finally, to avoid some of the common pitfalls, the use of standardized checklists in developing and sharing the results of ML models should be encouraged. © 2021 American Society for Bone and Mineral Research (ASBMR).
Keywords
Artificial Intelligence, Fractures, Bone, Humans, Machine Learning, Osteoporosis/diagnosis, Osteoporosis/therapy, Risk Factors, ARTIFICIAL INTELLIGENCE, FRACTURE PREDICTION, MACHINE LEARNING, OSTEOPOROSIS, RISK ASSESSMENT
Pubmed
Web of science
Create date
30/03/2021 10:47
Last modification date
23/10/2021 5:38
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