Data integration and knowledge discovery in biomedical databases. Reliable information from unreliable sources

To better understand information about human health from databases we analyzed three datasets collected for different purposes in Canada: a biomedical database of older adults, a large population survey across all adult ages, and vital statistics. Redundancy in the variables was established, and thi...

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Bibliographic Details
Main Authors: A Mitnitski, A Mogilner, C MacKnight, K Rockwood
Format: Article
Language:English
Published: Ubiquity Press 2003-01-01
Series:Data Science Journal
Subjects:
Online Access:http://datascience.codata.org/articles/197
Description
Summary:To better understand information about human health from databases we analyzed three datasets collected for different purposes in Canada: a biomedical database of older adults, a large population survey across all adult ages, and vital statistics. Redundancy in the variables was established, and this led us to derive a generalized (macroscopic state) variable, being a fitness/frailty index that reflects both individual and group health status. Evaluation of the relationship between fitness/frailty and the mortality rate revealed that the latter could be expressed in terms of variables generally available from any cross-sectional database. In practical terms, this means that the risk of mortality might readily be assessed from standard biomedical appraisals collected for other purposes.
ISSN:1683-1470