工作流程
计算机科学
代码库
概化理论
协议(科学)
机器学习
人工智能
深度学习
患者安全
电子健康档案
临床决策支持系统
医疗保健
数据科学
健康档案
数据挖掘
医学
决策支持系统
软件
数据库
程序设计语言
经济
病理
数学
统计
替代医学
经济增长
作者
Nenad Tomašev,Natalie Harris,Sebastien Baur,Anne Mottram,Xavier Glorot,Jack W. Rae,Michał Zieliński,Harry Askham,André Saraiva,Valerio Magliulo,Clemens Meyer,Suman Ravuri,Ivan Protsyuk,Alistair Connell,Cían Hughes,Alan Karthikesalingam,Julien Cornebise,Hugh Montgomery,Geraint Rees,Chris Laing
出处
期刊:Nature Protocols
[Nature Portfolio]
日期:2021-05-05
卷期号:16 (6): 2765-2787
被引量:106
标识
DOI:10.1038/s41596-021-00513-5
摘要
Early prediction of patient outcomes is important for targeting preventive care. This protocol describes a practical workflow for developing deep-learning risk models that can predict various clinical and operational outcomes from structured electronic health record (EHR) data. The protocol comprises five main stages: formal problem definition, data pre-processing, architecture selection, calibration and uncertainty, and generalizability evaluation. We have applied the workflow to four endpoints (acute kidney injury, mortality, length of stay and 30-day hospital readmission). The workflow can enable continuous (e.g., triggered every 6 h) and static (e.g., triggered at 24 h after admission) predictions. We also provide an open-source codebase that illustrates some key principles in EHR modeling. This protocol can be used by interdisciplinary teams with programming and clinical expertise to build deep-learning prediction models with alternate data sources and prediction tasks.
科研通智能强力驱动
Strongly Powered by AbleSci AI