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Machine learning models for abstract screening task - A systematic literature review application for health economics and outcome research

2024·4 Zitationen·BMC Medical Research MethodologyOpen Access
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4

Zitationen

10

Autoren

2024

Jahr

Abstract

The HPV corpus contained 1697 entries, with 538 relevant and 1159 irrelevant articles. The PAPD corpus included 2865 entries, with 711 relevant and 2154 irrelevant articles. Adding additional features beyond title and abstract improved the performance (measured in Accuracy) of machine learning models by 3% for HPV corpus and 2% for PAPD corpus. Transformer-based deep learning models that consistently outperformed conventional machine learning algorithms, highlighting the strength of domain-specific pre-trained language models for SLR abstract screening. This study provides a foundation for the development of more intelligent SLR systems.

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