# Enhancing Public Health Surveillance: Outbreak Detection Algorithms Deployed for Syndromic Surveillance During Arbaeenia Mass Gatherings in Iraq

**Authors:** Mustafa Suraifi, Ali Delpisheh, Manoochehr Karami, Yadollah Mehrabi, Katayoun Jahangiri, Faris Lami

PMC · DOI: 10.7759/cureus.60134 · 2024-05-12

## TL;DR

This study tested outbreak detection algorithms during a large religious gathering in Iraq to improve public health surveillance and disease response.

## Contribution

The study applied and compared outbreak detection algorithms using real-time syndromic data during mass gatherings in Iraq.

## Key findings

- 12,202 pilgrims visited health clinics, with influenza-like illness being the most common syndrome reported.
- The CUSUM algorithm outperformed EWMA and MA in detecting small health shifts during the event.
- Most pilgrims were aged 20–59, with over half being foreigners.

## Abstract

Background: Large gatherings often involve extended and intimate contact among individuals, creating environments conducive to the spread of infectious diseases. Despite this, there is limited research utilizing outbreak detection algorithms to analyze real syndrome data from such events. This study sought to address this gap by examining the implementation and efficacy of outbreak detection algorithms for syndromic surveillance during mass gatherings in Iraq.

Methods: For the study, 10 data collectors conducted field data collection over 10 days from August 25, 2023, to September 3, 2023. Data were gathered from 10 healthcare clinics situated along Ya Hussein Road, a major route from Najaf to Karbala in Iraq. Various outbreak detection algorithms, such as moving average, cumulative sum, and exponentially weighted moving average, were applied to analyze the reported syndromes.

Results: During the 10 days from August 25, 2023, to September 3, 2023, 12202 pilgrims visited 10 health clinics along a route in Iraq. Most pilgrims were between 20 and 59 years old (77.4%, n=9444), with more than half being foreigners (58.1%, n=7092). Among the pilgrims, 40.5% (n=4938) exhibited syndromes, with influenza-like illness (ILI) being the most common (48.8%, n=2411). Other prevalent syndromes included food poisoning (21.2%, n=1048), heatstroke (17.7%, n=875), febrile rash (9.0%, n=446), and gastroenteritis (3.2%, n=158). The cumulative sum (CUSUM) algorithm was more effective than exponentially weighted moving average (EWMA) and moving average (MA) algorithms for detecting small shifts.

Conclusion: Effective public health surveillance systems are crucial during mass gatherings to swiftly identify and address emerging health risks. Utilizing advanced algorithms and real-time data analysis can empower authorities to improve their readiness and response capacity, thereby ensuring the protection of public health during these gatherings.

## Linked entities

- **Diseases:** gastroenteritis (MONDO:0002269)

## Full-text entities

- **Diseases:** ILI (MESH:D007251), infectious diseases (MESH:D003141), heatstroke (MESH:D018883), gastroenteritis (MESH:D005759), food poisoning (MESH:D005517), febrile rash (MESH:D005076)

## Figures

6 figures with captions in the complete paper: https://tomesphere.com/paper/PMC11088799/full.md

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Source: https://tomesphere.com/paper/PMC11088799