@article {Nelson1191, author = {Amanda E. Nelson and Liubov Arbeeva}, title = {Narrative Review of Machine Learning in Rheumatic and Musculoskeletal Diseases for Clinicians and Researchers: Biases, Goals, and Future Directions}, volume = {49}, number = {11}, pages = {1191--1200}, year = {2022}, doi = {10.3899/jrheum.220326}, publisher = {The Journal of Rheumatology}, abstract = {There has been rapid growth in the use of artificial intelligence (AI) analytics in medicine in recent years, including in rheumatic and musculoskeletal diseases (RMDs). Such methods represent a challenge to clinicians, patients, and researchers, given the {\textquotedblleft}black box{\textquotedblright} nature of most algorithms, the unfamiliarity of the terms, and the lack of awareness of potential issues around these analyses. Therefore, this review aims to introduce this subject area in a way that is relevant and meaningful to clinicians and researchers. We hope to provide some insights into relevant strengths and limitations, reporting guidelines, as well as recent examples of such analyses in key areas, with a focus on lessons learned and future directions in diagnosis, phenotyping, prognosis, and precision medicine in RMDs.}, issn = {0315-162X}, URL = {https://www.jrheum.org/content/49/11/1191}, eprint = {https://www.jrheum.org/content/49/11/1191.full.pdf}, journal = {The Journal of Rheumatology} }