Detection of the Relationship between the Multi-Dimensional Data Sets of Serially Measured Blood Pressure and the Future Risk of Death in Healthy Elderly Japanese Population.
Autor: | Nakayama M; Department of Medicine (Cardiology), Tokai University School of Medicine., Goto S; Department of Medicine (Cardiology), Tokai University School of Medicine., Sakano T; Allm, Inc., Goto S; Department of Medicine (Cardiology), Tokai University School of Medicine. |
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Jazyk: | angličtina |
Zdroj: | Journal of atherosclerosis and thrombosis [J Atheroscler Thromb] 2023 Aug 01; Vol. 30 (8), pp. 1002-1009. Date of Electronic Publication: 2022 Oct 21. |
DOI: | 10.5551/jat.63798 |
Abstrakt: | Aims: Whether the multi-dimensional data of serially measured blood pressure contains information for predicting the future risk of death in elderly individuals in nursing homes is unclear. Methods: Of the elderly individuals staying in a nursing home, 19,740 and 40,055 individuals with serially measured blood pressure from day 1 to 365 (for AI-long) and 1 to 90 (for AI-short) along with the death information at day 366 to 730 and 91-365 were included. The neural network-based artificial intelligence (AI) was applied to find the relationship between BP time-series and the future risks of death in both populations. Results: AI-long found a significant relationship between the serially measured BP from day 1 to day 365 days and the risk of death occurring 366-730 days with c-statistics of 0.57 (95% CI: 0.51-0.63). AI-short also found a significant relationship between the serially measured BP from day 1 to day 90 and the rate of death occurring 91-365 days with c-statistics of 0.58 (95%CI: 0.52-0.63). Conclusion: Our results suggest that neural network-based AI could find the hidden subtle relationship between multi-dimensional data of serially measured BP and the future risk of death in apparently healthy elderly Japanese individuals under nursing care. |
Databáze: | MEDLINE |
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