Understanding New Machine Learning Architectures: Practical Generative Artificial Intelligence for Anesthesiologists

Anesthesiology. 2024 Mar 1;140(3):599-609. doi: 10.1097/ALN.0000000000004841.

Abstract

Recent advances in neural networks have given rise to generative artificial intelligence, systems able to produce fluent responses to natural questions or attractive and even photorealistic images from text prompts. These systems were developed through new network architectures that permit massive computational resources to be applied efficiently to enormous data sets. First, this review examines autoencoder architecture and its derivatives the variational autoencoder and the U-Net in annotating and manipulating images and extracting salience. This architecture will be important for applications like automated x-ray interpretation or real-time highlighting of anatomy in ultrasound images. Second, this article examines the transformer architecture in the interpretation and generation of natural language, as it will be useful in producing automated summarization of medical records or performing initial patient screening. The author also applies the GPT-3.5 algorithm to example questions from the American Board of Anesthesiologists Basic Examination and find that, under surprisingly reasonable conditions, it correctly answers more than half the questions.

Publication types

  • Review

MeSH terms

  • Algorithms
  • Anesthesiologists*
  • Artificial Intelligence*
  • Humans
  • Machine Learning
  • Neural Networks, Computer