Making the Most of Big Data in Plastic Surgery: Improving Outcomes, Protecting Patients, Informing Service Providers.

Annals of plastic surgery 2021 Vol.86(3) p. 351-358

Gibson JAG, Dobbs TD, Kouzaris L, Lacey A, Thompson S, Akbari A, Hutchings HA, Lineaweaver WC, Lyons RA, Whitaker IS

관련 도메인

Abstract

In medicine, "big data" refers to the interdisciplinary analysis of high-volume, diverse clinical and lifestyle information on large patient populations. Recent advancements in data storage and electronic record keeping have enabled the expansion of research in this field. In the United Kingdom, Big data has been highlighted as one of the government's "8 Great Technologies," and the Medical Research Council has invested more than £100 million since 2012 in developing the Health Data Research UK infrastructure. The recent Royal College of Surgeons Commission of the Future of Surgery concluded that analysis of big data is one of the 4 most likely avenues to bring some of the most innovative changes to surgical practice in the 21st century.In this article, we provide an overview of the nascent field of big data analytics in plastic and highlight how it has the potential to improve outcomes, increase safety, and aid service planning.We outline the current resources available, the emerging role of big data within the subspecialties of burns, microsurgery, skin and breast cancer, and how these data can be used. We critically review the limitations and considerations raised with big data, offer suggestions regarding database optimization, and suggest future directions for research in this exciting field.

추출된 의학 개체 (NER)

유형영어 표현한국어 / 풀이UMLS CUI출처등장
시술 microsurgery 미세수술 dict 1
해부 breast 유방 dict 1
해부 skin scispacy 1
질환 burns C0006434
Burn injury
scispacy 1
질환 breast cancer C0006142
Malignant neoplasm of breast
scispacy 1
기타 Patients scispacy 1
기타 patient scispacy 1

MeSH Terms

Big Data; Humans; Microsurgery; Plastic Surgery Procedures; Surgery, Plastic; United Kingdom

🔗 함께 등장하는 도메인

이 논문이 속한 카테고리와 같은 논문에서 자주 함께 다뤄지는 카테고리들

관련 논문