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Published in: World Journal of Surgery 8/2018

01-08-2018 | Original Scientific Report

How Much Data are Good Enough? Using Simulation to Determine the Reliability of Estimating POMR for Resource-Constrained Settings

Authors: Isobel H. Marks, Zhi Ven Fong, Sahael M. Stapleton, Ya-Ching Hung, Yanik J. Bababekov, David C. Chang

Published in: World Journal of Surgery | Issue 8/2018

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Abstract

Introduction

Perioperative mortality rate (POMR) is a suggested indicator for surgical quality worldwide. Currently, POMR is often sampled by convenience; a data-driven approach for calculating sample size has not previously been attempted. We proposed a novel application of a bootstrapping sampling technique to estimate how much data are needed to be collected to reasonably estimate POMR in low-resource countries where 100% data capture is not possible.

Material and methods

Six common procedures in low- and middle-income countries were analysed by using population database in New York and California. Relative margin of error by dividing the absolute margin of error by the true population rate was calculated. Target margin of error was ±50%, because this level of precision would allow us to detect a moderate-to-large effect size.

Results and discussion

Target margin of error was achieved at 0.3% sampling size for abdominal surgery, 7% for fracture, 10% for craniotomy, 16% for pneumonectomy, 26% for hysterectomy and 60% for C-section. POMR may be estimated with fairly good reliability with small data sampling. This method demonstrates that it is possible to use a data-driven approach to determine the necessary sampling size to accurately collect POMR worldwide.
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Metadata
Title
How Much Data are Good Enough? Using Simulation to Determine the Reliability of Estimating POMR for Resource-Constrained Settings
Authors
Isobel H. Marks
Zhi Ven Fong
Sahael M. Stapleton
Ya-Ching Hung
Yanik J. Bababekov
David C. Chang
Publication date
01-08-2018
Publisher
Springer International Publishing
Published in
World Journal of Surgery / Issue 8/2018
Print ISSN: 0364-2313
Electronic ISSN: 1432-2323
DOI
https://doi.org/10.1007/s00268-018-4529-6

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