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From Data to Action: Public Health Intelligence

Identify Public Health Risk Patterns to Support Preventive Care Planning

Analyse population health data to identify lifestyle risk factors, chronic disease prevalence, and age based health patterns to support preventive health strategy.

Healthcare Easy 45 min
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Why this work was commissioned

Arogya Insights Advisory Pvt. Ltd. supports public health departments with data driven planning. Senior health officials require clear evidence on how lifestyle factors, age, and chronic conditions influence overall health outcomes in order to prioritise preventive interventions and healthcare resource allocation.

Revolutionary Active Learning

  • You are expected to analyse health indicators such as BMI, smoking, alcohol consumption, diabetes, heart disease, sleep patterns, and age distribution.
  • The work must clearly identify high risk population segments and support policy level health recommendations.

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Skills that will help before starting:

  • Excel data analysis
  • Basic understanding of health metrics
  • Ability to interpret population data

Skills you will learn and practice:

Health Metric Aggregation Risk Factor Correlation Age Based Health Analysis Public Health Recommendation Framing
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Why This Simulation Works

Policy Relevant Metrics

  • All outputs align with real public health decision making.

Multi Factor Health View

  • Lifestyle, age, and disease factors analysed together.

Action Ready

  • Insights directly support awareness and prevention planning.

Simulation Breakdown

1 Excel Review Health Dataset
  • Understand health, lifestyle, and age fields
  • Validate disease and behaviour indicators
2 Excel Analyse Overall Health Metrics
  • Compute average BMI and sleep time
  • Calculate disease prevalence rates
3 Excel Evaluate Lifestyle Risk Factors
  • Compare smokers and non smokers
  • Analyse alcohol and physical health impact
4 Excel Assess Age Group Health Patterns
  • Identify high risk age clusters
  • Compare disease prevalence by age
5 Excel Prepare Public Health Advisory Outputs
  • Draft health risk analysis memo
  • Create executive presentation for health department leadership

Ready to Start?

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