Frontiers in Public Health (Aug 2023)

Protocol for establishing a model for integrated influenza surveillance in Tamil Nadu, India

  • Rizwan S. Abdulkader,
  • Varsha Potdar,
  • Gulam Mohd,
  • Joshua Chadwick,
  • Mohan Kumar Raju,
  • S. Devika,
  • Sumit Dutt Bharadwaj,
  • Neeraj Aggarwal,
  • Neetu Vijay,
  • C. Sugumari,
  • T. Sundararajan,
  • V. Vasuki,
  • N. Bharathi Santhose,
  • C. A. Mohammed Razik,
  • Vinoth Madhavan,
  • N. C. Krupa,
  • Nandhini Prabakaran,
  • Manoj V. Murhekar,
  • Nivedita Gupta

DOI
https://doi.org/10.3389/fpubh.2023.1236690
Journal volume & issue
Vol. 11

Abstract

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The potential for influenza viruses to cause public health emergencies is great. The World Health Organisation (WHO) in 2005 concluded that the world was unprepared to respond to an influenza pandemic. Available surveillance guidelines for pandemic influenza lack the specificity that would enable many countries to establish operational surveillance plans. A well-designed epidemiological and virological surveillance is required to strengthen a country’s capacity for seasonal, novel, and pandemic influenza detection and prevention. Here, we describe the protocol to establish a novel mechanism for influenza and SARS-CoV-2 surveillance in the four identified districts of Tamil Nadu, India. This project will be carried out as an implementation research. Each district will identify one medical college and two primary health centres (PHCs) as sentinel sites for collecting severe acute respiratory infections (SARI) and influenza like illness (ILI) related information, respectively. For virological testing, 15 ILI and 10 SARI cases will be sampled and tested for influenza A, influenza B, and SARS-CoV-2 every week. Situation analysis using the WHO situation analysis tool will be done to identify the gaps and needs in the existing surveillance systems. Training for staff involved in disease surveillance will be given periodically. To enhance the reporting of ILI/SARI for sentinel surveillance, trained project staff will collect information from all ILI/SARI patients attending the sentinel sites using pre-tested tools. Using time, place, and person analysis, alerts for abnormal increases in cases will be generated and communicated to health authorities to initiate response activities. Advanced epidemiological analysis will be used to model influenza trends over time. Integrating virological and epidemiological surveillance data with advanced analysis and timely communication can enhance local preparedness for public health emergencies. Good quality surveillance data will facilitate an understanding outbreak severity and disease seasonality. Real-time data will help provide early warning signals for prevention and control of influenza and COVID-19 outbreaks. The implementation strategies found to be effective in this project can be scaled up to other parts of the country for replication and integration.

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