What does artificial intelligence mean in rheumatology?

Arch Rheumatol

Department of Clinical Immunology and Rheumatology, Sanjay Gandhi Postgraduate Institute of Medical Sciences (SGPGIMS), Lucknow, India.

Published: March 2024

AI Article Synopsis

  • Intelligence refers to human learning from experience, while artificial intelligence (AI) aims to replicate this capability in computers, with machine learning focusing on data comprehension and deep learning extending it to images and videos through neural networks.* -
  • In the field of Rheumatology, AI has the potential to significantly enhance healthcare, aiding in clinical diagnoses, analyzing medical images, predicting disease flares, and identifying novel disease markers through extensive patient data analysis.* -
  • Despite the promising advancements, the integration of AI into medical practices raises ethical concerns regarding misuse, but its eventual widespread adoption in Rheumatology seems inevitable and holds great promise.*

Article Abstract

Intelligence is the ability of humans to learn from experiences to ascribe conscious weights and unconscious biases to modulate their outputs from given inputs. Transferring this ability to computers is artificial intelligence (AI). The ability of computers to understand data in an intelligent manner is machine learning. When such learning is with images and videos, which involves deeper layers of artificial neural networks, it is described as deep learning. Large language models are the latest development in AI which incorporate self-learning into deep learning through transformers. AI in Rheumatology has immense potential to revolutionize healthcare and research. Machine learning could aid clinical diagnosis and decision-making, and deep learning could extend this to analyze images of radiology or positron emission tomography scans or histopathology images to aid a clinician's diagnosis. Analysis of routinely obtained patient data or continuously collected information from wearables could predict disease flares. Analysis of high-volume genomics, transcriptomics, proteomics, or metabolomics data from patients could help identify novel markers of disease prognosis. AI might identify newer therapeutic targets based on in-silico modelling of omics data. AI could help automate medical administrative work such as inputting information into electronic health records or transcribing clinic notes. AI could help automate patient education and counselling. Beyond the clinic, AI has the potential to aid medical education. The ever-expanding capabilities of AI models bring along with them considerable ethical challenges, particularly related to risks of misuse. Nevertheless, the widespread use of AI in Rheumatology is inevitable and a progress with great potential.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11104749PMC
http://dx.doi.org/10.46497/ArchRheumatol.2024.10664DOI Listing

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