Active learning for systematic review screening promises to reduce the human effort required to identify relevant documents for a systematic review. Machines and humans work together, with humans providing training data, and the machine optimising the documents that the humans screen. This enables the identification of all relevant documents after viewing only a fraction of the total documents. However, current approaches lack robust stopping criteria, so that reviewers do not know when they have seen all or a certain proportion of relevant documents. This means that such systems are hard to implement in live reviews. This paper introduces a workflow with flexible statistical stopping criteria, which offer real work reductions on the basis ...
Abstract Background Machine learning tools can expedite systematic review (SR) processes by semi-aut...
New approaches to evidence synthesis, which use human effort and machine automation in mutually rein...
To help researchers conduct a systematic review or meta-analysis as efficiently and transparently as...
Background Here, we outline a method of applying existing machine learning (ML) approaches to aid ci...
BACKGROUND: Here, we outline a method of applying existing machine learning (ML) approaches to aid c...
Background Conducting a systematic review requires great screening effort. Various tools have been p...
Background Conducting a systematic review requires great screening effort. Various tools have been p...
Abstract With the accelerating growth of the academic corpus, doubling every 9 years, ...
Technologies and methods to speed up the production of systematic reviews by reducing the manual lab...
Published online 11 September 2017New approaches to evidence synthesis, which use human effort and m...
Technologies and methods to speed up the production of systematic reviews by reducing the manual lab...
This EAHIL workshop focussed on three applications of text mining to assist with screening citations...
Abstract Background Systematic reviews address a specific clinical question by unbiasedly assessing ...
Abstract Background Here, we outline a method of applying existing machine learning (ML) approaches ...
Systematic reviews aim to produce repeatable, unbiased, and comprehensive answers to clinical questi...
Abstract Background Machine learning tools can expedite systematic review (SR) processes by semi-aut...
New approaches to evidence synthesis, which use human effort and machine automation in mutually rein...
To help researchers conduct a systematic review or meta-analysis as efficiently and transparently as...
Background Here, we outline a method of applying existing machine learning (ML) approaches to aid ci...
BACKGROUND: Here, we outline a method of applying existing machine learning (ML) approaches to aid c...
Background Conducting a systematic review requires great screening effort. Various tools have been p...
Background Conducting a systematic review requires great screening effort. Various tools have been p...
Abstract With the accelerating growth of the academic corpus, doubling every 9 years, ...
Technologies and methods to speed up the production of systematic reviews by reducing the manual lab...
Published online 11 September 2017New approaches to evidence synthesis, which use human effort and m...
Technologies and methods to speed up the production of systematic reviews by reducing the manual lab...
This EAHIL workshop focussed on three applications of text mining to assist with screening citations...
Abstract Background Systematic reviews address a specific clinical question by unbiasedly assessing ...
Abstract Background Here, we outline a method of applying existing machine learning (ML) approaches ...
Systematic reviews aim to produce repeatable, unbiased, and comprehensive answers to clinical questi...
Abstract Background Machine learning tools can expedite systematic review (SR) processes by semi-aut...
New approaches to evidence synthesis, which use human effort and machine automation in mutually rein...
To help researchers conduct a systematic review or meta-analysis as efficiently and transparently as...