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Evaluating longitudinal markers under two-phase study designs

Maziarz, Marlena LU ; Cai, Tianxi ; Qi, Li ; Lok, Anna S. and Zheng, Yingye (2019) In Biostatistics (Oxford, England) 20(3). p.485-498
Abstract

Little attention has been given to the design of efficient studies to evaluate longitudinal biomarkers. Measuring longitudinal markers on an entire cohort is cost prohibitive and, especially for rare outcomes such as cancer, may be infeasible. Thus, methods for evaluation of longitudinal biomarkers using efficient and cost-effective study designs are needed. Case cohort (CCH) and nested case-control (NCC) studies allow investigators to evaluate biomarkers rigorously and at reduced cost, with only a small loss in precision. In this article, we develop estimators of several measures to evaluate the accuracy and discrimination of predicted risk under CCH and NCC study designs. We use double inverse probability weighting (DIPW) to account... (More)

Little attention has been given to the design of efficient studies to evaluate longitudinal biomarkers. Measuring longitudinal markers on an entire cohort is cost prohibitive and, especially for rare outcomes such as cancer, may be infeasible. Thus, methods for evaluation of longitudinal biomarkers using efficient and cost-effective study designs are needed. Case cohort (CCH) and nested case-control (NCC) studies allow investigators to evaluate biomarkers rigorously and at reduced cost, with only a small loss in precision. In this article, we develop estimators of several measures to evaluate the accuracy and discrimination of predicted risk under CCH and NCC study designs. We use double inverse probability weighting (DIPW) to account for censoring and sampling bias in estimation and inference procedures. We study the asymptotic properties of the proposed estimators. To facilitate inference using two-phase longitudinal data, we develop valid resampling-based variance estimation procedures under CCH and NCC. We evaluate the performance of our estimators under CCH and NCC using simulation studies and illustrate them on a NCC study within the hepatitis C antiviral long-term treatment against cirrhosis (HALT-C) clinical trial. Our estimators and inference procedures perform well under CCH and NCC, provided that the sample size at the time of prediction (effective sample size) is reasonable. These methods are widely applicable, efficient, and cost-effective and can be easily adapted to other study designs used to evaluate prediction rules in a longitudinal setting.

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author
; ; ; and
publishing date
type
Contribution to journal
publication status
published
subject
keywords
Biomarker evaluation, Longitudinal and survival data, Two-phase designs
in
Biostatistics (Oxford, England)
volume
20
issue
3
pages
14 pages
publisher
Oxford University Press
external identifiers
  • scopus:85068491805
  • pmid:29912281
ISSN
1468-4357
DOI
10.1093/biostatistics/kxy013
language
English
LU publication?
no
id
6eb416b9-536f-4f0e-8fa4-b088464f80c2
date added to LUP
2019-08-05 11:45:59
date last changed
2024-03-19 18:32:14
@article{6eb416b9-536f-4f0e-8fa4-b088464f80c2,
  abstract     = {{<p>Little attention has been given to the design of efficient studies to evaluate longitudinal biomarkers. Measuring longitudinal markers on an entire cohort is cost prohibitive and, especially for rare outcomes such as cancer, may be infeasible. Thus, methods for evaluation of longitudinal biomarkers using efficient and cost-effective study designs are needed. Case cohort (CCH) and nested case-control (NCC) studies allow investigators to evaluate biomarkers rigorously and at reduced cost, with only a small loss in precision. In this article, we develop estimators of several measures to evaluate the accuracy and discrimination of predicted risk under CCH and NCC study designs. We use double inverse probability weighting (DIPW) to account for censoring and sampling bias in estimation and inference procedures. We study the asymptotic properties of the proposed estimators. To facilitate inference using two-phase longitudinal data, we develop valid resampling-based variance estimation procedures under CCH and NCC. We evaluate the performance of our estimators under CCH and NCC using simulation studies and illustrate them on a NCC study within the hepatitis C antiviral long-term treatment against cirrhosis (HALT-C) clinical trial. Our estimators and inference procedures perform well under CCH and NCC, provided that the sample size at the time of prediction (effective sample size) is reasonable. These methods are widely applicable, efficient, and cost-effective and can be easily adapted to other study designs used to evaluate prediction rules in a longitudinal setting.</p>}},
  author       = {{Maziarz, Marlena and Cai, Tianxi and Qi, Li and Lok, Anna S. and Zheng, Yingye}},
  issn         = {{1468-4357}},
  keywords     = {{Biomarker evaluation; Longitudinal and survival data; Two-phase designs}},
  language     = {{eng}},
  month        = {{07}},
  number       = {{3}},
  pages        = {{485--498}},
  publisher    = {{Oxford University Press}},
  series       = {{Biostatistics (Oxford, England)}},
  title        = {{Evaluating longitudinal markers under two-phase study designs}},
  url          = {{http://dx.doi.org/10.1093/biostatistics/kxy013}},
  doi          = {{10.1093/biostatistics/kxy013}},
  volume       = {{20}},
  year         = {{2019}},
}