| Literature DB >> 25897179 |
Yong Chen1, Yulun Liu1, Jing Ning2, Janice Cormier3, Haitao Chu4.
Abstract
Systematic reviews of diagnostic tests often involve a mixture of case-control and cohort studies. The standard methods for evaluating diagnostic accuracy only focus on sensitivity and specificity and ignore the information on disease prevalence contained in cohort studies. Consequently, such methods cannot provide estimates of measures related to disease prevalence, such as population averaged or overall positive and negative predictive values, which reflect the clinical utility of a diagnostic test. In this paper, we propose a hybrid approach that jointly models the disease prevalence along with the diagnostic test sensitivity and specificity in cohort studies, and the sensitivity and specificity in case-control studies. In order to overcome the potential computational difficulties in the standard full likelihood inference of the proposed hybrid model, we propose an alternative inference procedure based on the composite likelihood. Such composite likelihood based inference does not suffer computational problems and maintains high relative efficiency. In addition, it is more robust to model mis-specifications compared to the standard full likelihood inference. We apply our approach to a review of the performance of contemporary diagnostic imaging modalities for detecting metastases in patients with melanoma.Entities:
Keywords: Composite likelihood; Diagnostic accuracy study; Independence likelihood; Meta-analysis; Pseudolikelihood; Systematic review
Year: 2015 PMID: 25897179 PMCID: PMC4401477 DOI: 10.1111/rssc.12087
Source DB: PubMed Journal: J R Stat Soc Ser C Appl Stat ISSN: 0035-9254 Impact factor: 1.864