AI Article Synopsis

  • Artificial intelligence, particularly deep learning, has influenced everyday life and is now being explored in fields like rheumatology for diagnostics and patient monitoring.* -
  • Deep learning excels at processing images, outperforming traditional imaging techniques, but its effectiveness may not translate to simpler numerical data analysis.* -
  • Rheumatologists and radiologists must understand deep learning's techniques and limitations to incorporate it effectively into their practices, ensuring they leverage its benefits while avoiding potential pitfalls.*

Article Abstract

Artificial intelligence techniques, specifically deep learning, have already affected daily life in a wide range of areas. Likewise, initial applications have been explored in rheumatology. Deep learning might not easily surpass the accuracy of classic techniques when performing classification or regression on low-dimensional numerical data. With images as input, however, deep learning has become so successful that it has already outperformed the majority of conventional image-processing techniques developed during the past 50 years. As with any new imaging technology, rheumatologists and radiologists need to consider adapting their arsenal of diagnostic, prognostic and monitoring tools, and even their clinical role and collaborations. This adaptation requires a basic understanding of the technical background of deep learning, to efficiently utilize its benefits but also to recognize its drawbacks and pitfalls, as blindly relying on deep learning might be at odds with its capabilities. To facilitate such an understanding, it is necessary to provide an overview of deep-learning techniques for automatic image analysis in detecting, quantifying, predicting and monitoring rheumatic diseases, and of currently published deep-learning applications in radiological imaging for rheumatology, with critical assessment of possible limitations, errors and confounders, and conceivable consequences for rheumatologists and radiologists in clinical practice.

Download full-text PDF

Source
http://dx.doi.org/10.1038/s41584-023-01074-5DOI Listing

Publication Analysis

Top Keywords

deep learning
24
rheumatologists radiologists
8
deep
6
learning
5
learning rheumatological
4
rheumatological image
4
image interpretation
4
interpretation artificial
4
artificial intelligence
4
techniques
4

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!