A statistical dynamics approach to the study of human health data: resolving population scale diurnal variation in laboratory data

Phys Lett A. 2010 Feb 15;374(9):1159-1164. doi: 10.1016/j.physleta.2009.12.067.

Abstract

Statistical physics and information theory is applied to the clinical chemistry measurements present in a patient database containing 2.5 million patients' data over a 20-year period. Despite the seemingly naive approach of aggregating all patients over all times (with respect to particular clinical chemistry measurements), both a diurnal signal in the decay of the time-delayed mutual information and the presence of two sub-populations with differing health are detected. This provides a proof in principle that the highly fragmented data in electronic health records has potential for being useful in defining disease and human phenotypes.