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Published in: BMC Medicine 1/2019

Open Access 01-12-2019 | Autopsy | Research article

Automated versus physician assignment of cause of death for verbal autopsies: randomized trial of 9374 deaths in 117 villages in India

Authors: Prabhat Jha, Dinesh Kumar, Rajesh Dikshit, Atul Budukh, Rehana Begum, Prabha Sati, Patrycja Kolpak, Richard Wen, Shyamsundar J. Raithatha, Utkarsh Shah, Zehang Richard Li, Lukasz Aleksandrowicz, Prakash Shah, Kapila Piyasena, Tyler H. McCormick, Hellen Gelband, Samuel J. Clark

Published in: BMC Medicine | Issue 1/2019

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Abstract

Background

Verbal autopsies with physician assignment of cause of death (COD) are commonly used in settings where medical certification of deaths is uncommon. It remains unanswered if automated algorithms can replace physician assignment.

Methods

We randomized verbal autopsy interviews for deaths in 117 villages in rural India to either physician or automated COD assignment. Twenty-four trained lay (non-medical) surveyors applied the allocated method using a laptop-based electronic system. Two of 25 physicians were allocated randomly to independently code the deaths in the physician assignment arm. Six algorithms (Naïve Bayes Classifier (NBC), King-Lu, InSilicoVA, InSilicoVA-NT, InterVA-4, and SmartVA) coded each death in the automated arm. The primary outcome was concordance with the COD distribution in the standard physician-assigned arm. Four thousand six hundred fifty-one (4651) deaths were allocated to physician (standard), and 4723 to automated arms.

Results

The two arms were nearly identical in demographics and key symptom patterns. The average concordances of automated algorithms with the standard were 62%, 56%, and 59% for adult, child, and neonatal deaths, respectively. Automated algorithms showed inconsistent results, even for causes that are relatively easy to identify such as road traffic injuries. Automated algorithms underestimated the number of cancer and suicide deaths in adults and overestimated other injuries in adults and children. Across all ages, average weighted concordance with the standard was 62% (range 79–45%) with the best to worst ranking automated algorithms being InterVA-4, InSilicoVA-NT, InSilicoVA, SmartVA, NBC, and King-Lu. Individual-level sensitivity for causes of adult deaths in the automated arm was low between the algorithms but high between two independent physicians in the physician arm.

Conclusions

While desirable, automated algorithms require further development and rigorous evaluation. Lay reporting of deaths paired with physician COD assignment of verbal autopsies, despite some limitations, remains a practicable method to document the patterns of mortality reliably for unattended deaths.

Trial registration

ClinicalTrials.​gov, NCT02810366. Submitted on 11 April 2016.
Appendix
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Metadata
Title
Automated versus physician assignment of cause of death for verbal autopsies: randomized trial of 9374 deaths in 117 villages in India
Authors
Prabhat Jha
Dinesh Kumar
Rajesh Dikshit
Atul Budukh
Rehana Begum
Prabha Sati
Patrycja Kolpak
Richard Wen
Shyamsundar J. Raithatha
Utkarsh Shah
Zehang Richard Li
Lukasz Aleksandrowicz
Prakash Shah
Kapila Piyasena
Tyler H. McCormick
Hellen Gelband
Samuel J. Clark
Publication date
01-12-2019
Publisher
BioMed Central
Keyword
Autopsy
Published in
BMC Medicine / Issue 1/2019
Electronic ISSN: 1741-7015
DOI
https://doi.org/10.1186/s12916-019-1353-2

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