Distribution of quality adjusted life expectancy: A systems approach

John William Loewy, The University of Texas School of Public Health

Abstract

Statistical methods are developed which assess survival data for two attributes; (1) prolongation of life, (2) quality of life. Health state transition probabilities correspond to prolongation of life and are modeled as a discrete-time semi-Markov process. Imbedded within the sojourn time of a particular health state are the quality of life transitions. They reflect events which differentiate perceptions of pain and suffering over a fixed time period. Quality of life transition probabilities are derived from the assumptions of a simple Markov process. These probabilities depend on the health state currently occupied and the next health state to which a transition is made. Utilizing the two forms of attributes the model has the capability to estimate the distribution of expected quality adjusted life years (in addition to the distribution of expected survival times). The expected quality of life can also be estimated within the health state sojourn time making more flexible the assessment of utility preferences. The methods are demonstrated on a subset of follow-up data from the Beta Blocker Heart Attack Trial (BHAT). This model contains the structure necessary to make inferences when assessing a general survival problem with a two dimensional outcome.

Subject Area

Biostatistics

Recommended Citation

Loewy, John William, "Distribution of quality adjusted life expectancy: A systems approach" (1988). Texas Medical Center Dissertations (via ProQuest). AAI8914299.
https://digitalcommons.library.tmc.edu/dissertations/AAI8914299

Share

COinS