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Conditional moving linear regression: modeling the recruitment process for ALLHAT.


ABSTRACT: Effective recruitment is a prerequisite for successful execution of a clinical trial. ALLHAT, a large hypertension treatment trial (N = 42, 418), provided an opportunity to evaluate adaptive modeling of recruitment processes using conditional moving linear regression. Our statistical modeling of recruitment, comparing Brownian and fractional Brownian motion, indicates that fractional Brownian motion combined with moving linear regression is better than classic Brownian motion in terms of higher conditional probability of achieving a global recruitment goal in four week ahead projections. Further research is needed to evaluate how recruitment modeling can assist clinical trialists in planning and executing clinical trials. Clinical Trial Registration: www.clinicaltrials.gov NCT00000542.

SUBMITTER: Lai D 

PROVIDER: S-EPMC6430572 | biostudies-literature | 2017

REPOSITORIES: biostudies-literature

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Conditional moving linear regression: modeling the recruitment process for ALLHAT.

Lai Dejian D   Zhang Qiang Q   Yamal Jose-Miguel JM   Einhorn Paula T PT   Davis Barry R BR  

Communications in statistics: theory and methods 20170519 18


Effective recruitment is a prerequisite for successful execution of a clinical trial. ALLHAT, a large hypertension treatment trial (N = 42, 418), provided an opportunity to evaluate adaptive modeling of recruitment processes using conditional moving linear regression. Our statistical modeling of recruitment, comparing Brownian and fractional Brownian motion, indicates that fractional Brownian motion combined with moving linear regression is better than classic Brownian motion in terms of higher  ...[more]

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