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A universal AutoScore framework to develop interpretable scoring systems for predicting common types of clinical outcomes
Feng Xie
, Yilin Ning
, Mingxuan Liu
, Siqi Li
, Seyed Ehsan Saffari
, Han Yuan
, Victor Volovici
, Daniel Shu Wei Ting
, Benjamin Alan Goldstein
, Marcus Eng Hock Ong
, Roger Vaughan
, Bibhas Chakraborty
, Nan Liu
Research output
:
Contribution to journal
›
Article
›
peer-review
18
Scopus citations
Overview
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Keyphrases
Automatically Generate
33%
AutoScore
100%
Binary Outcome
33%
Clinical Application
33%
Clinical Knowledge
33%
Clinical Outcomes
100%
Clinical Score
33%
Clinical Scoring System
33%
Detailed Data
33%
Online Tutorials
33%
Ordinal Outcome
33%
Score Generation
33%
Scoring System
100%
Selection Score
33%
Survival Outcomes
33%
Variable Ranking
33%
Computer Science
Clinical Application
33%
Clinical Outcome
100%
Data Processing
33%
Feature Selection
33%
Installation Package
33%
Online Tutorial
33%
Open Source
33%
Scoring System
100%
Mathematics
Clinical Knowledge
33%
Score Selection
33%
Scoring System
100%