Litcius/Paper detail

Evidence synthesis, digital scribes, and translational challenges for artificial intelligence in healthcare

Enrico Coiera, Sidong Liu

2022Cell Reports Medicine47 citationsDOIOpen Access PDF

Abstract

Healthcare has well-known challenges with safety, quality, and effectiveness, and many see artificial intelligence (AI) as essential to any solution. Emerging applications include the automated synthesis of best-practice research evidence including systematic reviews, which would ultimately see all clinical trial data published in a computational form for immediate synthesis. Digital scribes embed themselves in the process of care to detect, record, and summarize events and conversations for the electronic record. However, three persistent translational challenges must be addressed before AI is widely deployed. First, little effort is spent replicating AI trials, exposing patients to risks of methodological error and biases. Next, there is little reporting of patient harms from trials. Finally, AI built using machine learning may perform less effectively in different clinical settings.

Topics & Concepts

Computer scienceHealth careProcess (computing)Best practiceData scienceQuality (philosophy)Translational researchHealth recordsClinical trialArtificial intelligenceMedicineEpistemologyOperating systemEconomicsPathologyManagementPhilosophyEconomic growthArtificial Intelligence in Healthcare and EducationEthics in Clinical ResearchMeta-analysis and systematic reviews