ASReview LAB v.2: Open-source text screening with multiple agents and a crowd of experts

Publication date

2025-07-11

Authors

Bruin, Jonathan deORCID 0000-0002-4297-0502ISNI 000000051803672X
Lombaers, PeterISNI 0000000524129973
Kaandorp, Casper
Teijema, Jelle JasperISNI 0000000507449721
van der Kuil, TimoORCID 0009-0004-6930-9169
Yazan, BerkeORCID 0009-0003-2610-9354
Dong, Angie
Schoot, Rens van deORCID 0000-0001-7736-2091ISNI 0000000393562696

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

cc_by

Abstract

ASReview LAB v.2 introduces an advancement in AI-assisted systematic reviewing by enabling collaborative screening with multiple experts (“a crowd of oracles”) using a shared AI model. The platform supports multiple AI agents within the same project, allowing users to switch between fast general-purpose models and domain-specific, semantic, or multilingual transformer models. Leveraging the SYNERGY benchmark dataset, performance has improved significantly, showing a 24.1% reduction in loss compared to version 1 through model improvements and hyperparameter tuning. ASReview LAB v.2 follows user-centric design principles and offers reproducible, transparent workflows. It logs key configuration and annotation data while balancing full model traceability with efficient storage. Future developments include automated model switching based on performance metrics, noise-robust learning, and ensemble-based decision-making.

Keywords

active learning, crowdsourcing, data-driven screening, hyperparameter optimization, machine learning, multiagent systems, open-source software, reproducibility, systematic reviews, transparency, General Decision Sciences

Citation

de Bruin, J, Lombaers, P, Kaandorp, C, Teijema, J, van der Kuil, T, Yazan, B, Dong, A & van de Schoot, R 2025, 'ASReview LAB v.2 : Open-source text screening with multiple agents and a crowd of experts', Patterns, vol. 6, no. 7, 101318. https://doi.org/10.1016/j.patter.2025.101318