Your browser doesn't support javascript.

Biblioteca Virtual en Salud

Hipertensión

Home > Búsqueda > ()
XML
Imprimir Exportar

Formato de exportación:

Exportar

Email
Adicionar mas contactos
| |

Misconceptions in the health technology industry that are delaying the translation of artificial intelligence technology into relevant clinical applications / Conceitos enviesados na indústria de tecnologia da saúde que retardam a tradução da inteligência artificial em ferramentas clínicas relevantes

Macruz, Fabíola.
Radiol. bras ; 54(4): 243-245, July-Aug. 2021.
Artículo en Inglés | LILACS-Express | ID: biblio-1287752
Abstract There is great optimism that artificial intelligence (AI), as it disrupts the medical world, will provide considerable improvements in all areas of health care, from diagnosis to treatment. In addition, there is considerable evidence that AI algorithms have surpassed human performance in various tasks, such as analyzing medical images, as well as correlating symptoms and biomarkers with the diagnosis and prognosis of diseases. However, the mismatch between the performance of AI-based software and its clinical usefulness is still a major obstacle to its widespread acceptance and use by the medical community. In this article, three fundamental concepts observed in the health technology industry are highlighted as possible causative factors for this gap and might serve as a starting point for further evaluation of the structure of AI companies and of the status quo.
Biblioteca responsable: BR1.1