作者
James K Ruffle, Adam D Farmer, Qasim Aziz
发表日期
2019/3/1
来源
Official journal of the American College of Gastroenterology| ACG
卷号
114
期号
3
页码范围
422-428
出版商
LWW
简介
Technological advances in artificial intelligence (AI) represent an enticing opportunity to benefit gastroenterological practice. Moreover, AI, through machine or deep learning, permits the ability to develop predictive models from large datasets. Possibilities of predictive model development in machine learning are numerous dependent on the clinical question. For example, binary classifiers aim to stratify allocation to a categorical outcome, such as the presence or absence of a gastrointestinal disease. In addition, continuous variable fitting techniques can be used to predict quantity of a therapeutic response, thus offering a tool to predict which therapeutic intervention may be most beneficial to the given patient. Namely, this permits an important opportunity for personalization of medicine, including a movement from guideline-specific treatment algorithms to patient-specific ones, providing both clinician and patient the …
引用总数
20192020202120222023202441943283218
学术搜索中的文章
JK Ruffle, AD Farmer, Q Aziz - Official journal of the American College of …, 2019