Abstract

BackgroundVerbal autopsies provide valuable information for studying mortality patterns in populations that lack reliable vital registration data. Methods for transforming verbal autopsy results into meaningful information for health workers and policymakers, however, are often costly or complicated to use. We present a simple additive algorithm, the Tariff Method (termed Tariff), which can be used for assigning individual cause of death and for determining cause-specific mortality fractions (CSMFs) from verbal autopsy data.MethodsTariff calculates a score, or "tariff," for each cause, for each sign/symptom, across a pool of validated verbal autopsy data. The tariffs are summed for a given response pattern in a verbal autopsy, and this sum (score) provides the basis for predicting the cause of death in a dataset. We implemented this algorithm and evaluated the method's predictive ability, both in terms of chance-corrected concordance at the individual cause assignment level and in terms of CSMF accuracy at the population level. The analysis was conducted separately for adult, child, and neonatal verbal autopsies across 500 pairs of train-test validation verbal autopsy data.ResultsTariff is capable of outperforming physician-certified verbal autopsy in most cases. In terms of chance-corrected concordance, the method achieves 44.5% in adults, 39% in children, and 23.9% in neonates. CSMF accuracy was 0.745 in adults, 0.709 in children, and 0.679 in neonates.ConclusionsVerbal autopsies can be an efficient means of obtaining cause of death data, and Tariff provides an intuitive, reliable method for generating individual cause assignment and CSMFs. The method is transparent and flexible and can be readily implemented by users without training in statistics or computer science.

Highlights

  • Verbal autopsies provide valuable information for studying mortality patterns in populations that lack reliable vital registration data

  • We propose a simple additive approach using transparent, intuitive computations based on responses to a verbal autopsy (VA) instrument

  • Logic of the method The premise behind the Tariff Method is to identify signs or symptoms collected in a VA instrument that are highly indicative of a particular cause of death

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Summary

Introduction

Verbal autopsies provide valuable information for studying mortality patterns in populations that lack reliable vital registration data. Physician-certified verbal autopsy (PCVA) is the primary method used to assign cause once VA data are collected. Several alternative expert-based algorithms [4,5,6], statistical methods [7,8,9], and computational algorithms [7] have been developed These methods hold promise, but their comparative performance needs to be evaluated. Largescale validation studies, such as the Population Health Metrics Research Consortium (PHMRC) [10], provide objective information on the performance of these different approaches. Lozano et al [12]

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