TY - JOUR PY - 2022// TI - Advancing safety analytics: a diagnostic framework for assessing system readiness within occupational safety and health JO - Safety science A1 - Ezerins, Maira E. A1 - Ludwig, Timothy D. A1 - O'Neil, Tara A1 - Foreman, Anne M. A1 - Açıkgöz, Yalçın SP - e105569 EP - e105569 VL - 146 IS - N2 - Big data and analytics have shown promise in predicting safety incidents and identifying preventative measures directed towards specific risk variables. However, the safety industry is lagging in big data utilization due to various obstacles, which may include lack of data readiness (e.g., disparate databases, missing data, low validity) and personnel competencies. This paper provides a primer on the application of big data to safety. We then describe a safety analytics readiness assessment framework that highlights system requirements and the challenges that safety professionals may encounter in meeting these requirements. The proposed framework suggests that safety analytics readiness depends on (a) the quality of the data available, (b) organizational norms around data collection, scaling, and nomenclature, (c) foundational infrastructure, including technological platforms and skills required for data collection, storage, and analysis of health and safety metrics, and (d) measurement culture, or the emergent social patterns between employees, data acquisition, and analytic processes. A safety-analytics readiness assessment can assist organizations with understanding current capabilities so measurement systems can be matured to accommodate more advanced analytics for the ultimate purpose of improving decisions that mitigate injury and incidents.
Language: en
LA - en SN - 0925-7535 UR - http://dx.doi.org/10.1016/j.ssci.2021.105569 ID - ref1 ER -