Package 'drugDemand'
Title: |
Drug Demand Forecasting |
Description: |
Performs drug demand forecasting by modeling drug
dispensing data while taking into account predicted enrollment
and treatment discontinuation dates. The gap time between
randomization and the first drug dispensing visit is modeled
using interval-censored exponential, Weibull, log-logistic, or
log-normal distributions (Anderson-Bergman (2017)
<doi:10.18637/jss.v081.i12>). The number of skipped visits is
modeled using Poisson, zero-inflated Poisson, or negative
binomial distributions (Zeileis, Kleiber & Jackman (2008)
<doi:10.18637/jss.v027.i08>). The gap time between two
consecutive drug dispensing visits given the number of skipped
visits is modeled using linear regression based on least
squares or least absolute deviations (Birkes & Dodge (1993,
ISBN:0-471-56881-3)). The number of dispensed doses is modeled
using linear or linear mixed-effects models (McCulloch & Searle
(2001, ISBN:0-471-19364-X)). |
Authors: |
Kaifeng Lu [aut, cre]  |
Maintainer: |
Kaifeng Lu <[email protected]> |
License: |
GPL (>= 2) |
Version: |
0.1.3 |
Built: |
2025-02-21 04:45:54 UTC |
Source: |
https://github.com/kaifenglu/drugdemand |
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