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Evaluation of methods for assigning causes of death from verbal autopsies in India

Authors :
Sudhir K. Benara
Saurabh Sharma
Atul Juneja
Saritha Nair
B. K. Gulati
Kh. Jitenkumar Singh
Lucky Singh
Ved Prakash Yadav
Chalapati Rao
M. Vishnu Vardhana Rao
Source :
Frontiers in Big Data, Vol 6 (2023)
Publication Year :
2023
Publisher :
Frontiers Media S.A., 2023.

Abstract

BackgroundPhysician-coded verbal autopsy (PCVA) is the most widely used method to determine causes of death (COD) in countries where medical certification of death is low. Computer-coded verbal autopsy (CCVA), an alternative method to PCVA for assigning the COD is considered to be efficient and cost-effective. However, the performance of CCVA as compared to PCVA is yet to be established in the Indian context.MethodsWe evaluated the performance of PCVA and three CCVA methods i.e., InterVA 5, InSilico, and Tariff 2.0 on verbal autopsies done using the WHO 2016 VA tool on 2,120 reference standard cases developed from five tertiary care hospitals of Delhi. PCVA methodology involved dual independent review with adjudication, where required. Metrics to assess performance were Cause Specific Mortality Fraction (CSMF), sensitivity, positive predictive value (PPV), CSMF Accuracy, and Kappa statistic.ResultsIn terms of the measures of the overall performance of COD assignment methods, for CSMF Accuracy, the PCVA method achieved the highest score of 0.79, followed by 0.67 for Tariff_2.0, 0.66 for Inter-VA and 0.62 for InSilicoVA. The PCVA method also achieved the highest agreement (57%) and Kappa scores (0.54). The PCVA method showed the highest sensitivity for 15 out of 20 causes of death.ConclusionOur study found that the PCVA method had the best performance out of all the four COD assignment methods that were tested in our study sample. In order to improve the performance of CCVA methods, multicentric studies with larger sample sizes need to be conducted using the WHO VA tool.

Details

Language :
English
ISSN :
2624909X
Volume :
6
Database :
Directory of Open Access Journals
Journal :
Frontiers in Big Data
Publication Type :
Academic Journal
Accession number :
edsdoj.b7965b862ca46f1b23ccb557bb002cc
Document Type :
article
Full Text :
https://doi.org/10.3389/fdata.2023.1197471