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Antimicrobial resistance is a rapidly escalating global health threat, impacting treatment outcomes, healthcare costs, and outbreak control. Public health systems rely on surveillance to detect emerging resistance patterns, monitor antibiotic usage, and guide interventions such as stewardship programs and infection control measures. However, AMR surveillance produces complex datasets spanning microbiology labs, hospitals, community testing, and national reporting systems—making data analytics essential for timely interpretation.
This workshop provides a practical framework for AMR surveillance and analytics, covering data sources (hospital labs, national AMR networks, WGS/NGS outputs), surveillance indicators, and methods for analyzing resistance trends and hotspots. Participants will learn to clean and structure AMR datasets, perform trend analysis, stratify resistance by region/pathogen/drug, detect anomalies, and communicate findings via visualizations and reports. The approach is dry-lab and analytics-focused, suitable for research, public health, and healthcare settings.
This workshop aims to train participants in AMR surveillance concepts and data analytics workflows used in public health decision-making. It covers how AMR data is collected, standardized, analyzed, and interpreted to track resistance trends across populations, hospitals, and communities. Participants will learn to work with real-world AMR datasets to generate actionable insights, dashboards, and risk indicators. The program bridges microbiology, epidemiology, and data science for evidence-based AMR control.
Day 1 — AMR Surveillance Frameworks and Data Sources
Global AMR surveillance frameworks — GLASS, NARMS, and One Health initiatives.
Demo: Accessing and understanding WHO GLASS & NCBI Pathogen Detection dashboards.
Hands-on: Data retrieval and format harmonization (CSV/JSON/API).
Activity: Introduction to metadata integration — pathogen, geography, and resistance class.
Day 2 — Data Analytics and Visualization
Lecture: Fundamentals of AMR data analysis — trends, prevalence, and co-resistance.
Hands-on:
R track: dplyr, ggplot2 for trend and heatmap visualization.
Python track: pandas, matplotlib, seaborn for AMR pattern analytics.
Tableau track: Dashboard creation for hospital-level surveillance.
Case Exercise: Visualizing ESBL-producing E. coli and Klebsiella trends in healthcare data.
Day 3 — Advanced Epidemiological Insights and Reporting
Lecture: AMR data modeling — trend forecasting and spatial mapping.
Hands-on: AMR hotspot identification using R (sf, leaflet) or Python (plotly, geopandas).
Workshop: Building interactive dashboards for surveillance reporting.
Discussion: Translating data insights into public health strategies and policy recommendations.
02/05/2026
IST 07:00 PM
02/05/2026 – 02/07/2026
IST 08:00 PM
Participants will be able to:
Working as Reviewer of Springer Nature and Elsevier Journals. International tutor on Teacherson.com. Brand Ambassador of Bentham Science, UAE. Editor in chief of Omniscriptum Publishing, US. Recognized Reviewer of 5 Indian Journals. Awarded with 47 International and National awards for outstanding . . .
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PhD in Computational Mechanics from MIT with 15+ years of experience in Industrial AI. Former Lead Data Scientist at Tesla and current advisor to Fortune 500 manufacturing firms.
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