Application of GUHA data mining method in cohort data to explore paths associated with premature death: a 29-year follow-up study
Nosraty, Lily; Turunen, Esko; Kyrönlahti, Saila; Nygård, Clas-Håkan; Kc, Prakash; Neupane, Subas (2025)
Nosraty, Lily
Turunen, Esko
Kyrönlahti, Saila
Nygård, Clas-Håkan
Kc, Prakash
Neupane, Subas
2025
BMC Medical Research Methodology
20
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi:tuni-202502132163
https://urn.fi/URN:NBN:fi:tuni-202502132163
Kuvaus
Peer reviewed
Tiivistelmä
This study set out to identify the factors and combinations of factors associated with the individual’s premature death, using data from the Finnish Longitudinal Study on Ageing Municipal Employees (FLAME) which involved 6,257 participants over a 29-year follow-up period. Exact dates of death were obtained from the Finnish population register. Premature death was defined as a death occurring earlier than the age- and sex-specific actuarial life expectancy indicated by life tables for 1981, as the baseline, with the threshold period of nine months. Explanatory variables encompassed sociodemographic characteristics, health and functioning, health behaviors, subjective experiences, working conditions, and work abilities. Data were mined using the General Unary Hypothesis Automaton (GUHA) method, implemented with LISp-Miner software. GUHA involves an active dialogue between the user and the LISp-Miner software, with parameters tailored to the data and user interests. The parameters used are not absolute but depend on the data to be mined and the user’s interests.
Kokoelmat
- TUNICRIS-julkaisut [24210]