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Statistical Analysis and Data Modeling in Healthcare

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Statistical Analysis and Data Modeling in Healthcare

Ramesh Sannareddy
SkillUp

Instructors: Ramesh Sannareddy

Included with Coursera Plus

Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

8 hours to complete
Flexible schedule
Learn at your own pace
Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

8 hours to complete
Flexible schedule
Learn at your own pace

What you'll learn

  • Apply core statistical concepts, including descriptive and inferential statistics, to analyze and interpret healthcare data effectively.

  • Apply mathematical techniques to perform hypothesis testing, correlation analysis, and regression modeling in clinical and operational contexts.

  • Design and implement data models that support clinical decision-making, population health analysis, and healthcare operations.

  • Evaluate and validate statistical models using appropriate metrics to ensure accuracy, reliability, and ethical use of healthcare data.

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Assessments

13 assignments¹

AI Graded see disclaimer
Taught in English

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There are 4 modules in this course

This module introduces you to the foundational concepts of descriptive statistics and their role in understanding healthcare data. You will explore how measures of central tendency, variability, and distribution shape provide meaningful summaries of patient populations, clinical characteristics, and health outcomes. Through guided examples drawn from real-world healthcare settings, you will see how descriptive statistics inform clinical decision-making, support quality improvement efforts, and highlight trends relevant to population health. By the end of the module, you will be able to compute, interpret, and clearly communicate key descriptive statistics, enabling you to identify important patterns, compare clinical groups, and generate insights from healthcare datasets with confidence.

What's included

6 videos5 readings4 assignments1 discussion prompt4 plugins

This module introduces learners to the foundations of hypothesis testing in a clinical analytics context. They will learn how to formulate statistical hypotheses, interpret p-values and confidence intervals, and understand the role of error rates and statistical power. Building on these fundamentals, the module explores widely used hypothesis tests for comparing clinical groups, including t-tests, ANOVA, and common nonparametric alternatives. Learners also study association tests for categorical data and correlation analysis for continuous variables. Through practical clinical examples such as treatment comparisons, disease prevalence analysis, and variable relationships, this module equips learners with the statistical tools needed to assess whether observed differences or patterns in healthcare data are meaningful and reliable.

What's included

6 videos3 readings4 assignments1 discussion prompt5 plugins

This module introduces learners to foundational regression and predictive modeling techniques widely used in healthcare analytics. Learners will begin with linear regression to analyze continuous clinical outcomes such as hospital length of stay, lab values, and healthcare costs. They then learn logistic regression to model binary clinical events and interpret key evaluation metrics such as odds ratios and ROC curves. Building on these fundamentals, the module explores core principles of machine learning and supervised modeling, including decision trees, ensemble methods, and performance validation. Learners also examine issues of model fairness, overfitting, and deployment challenges unique to healthcare. By the end of the module, they will be able to build, evaluate, and interpret predictive models that support clinical and operational decision-making.

What's included

5 videos3 readings4 assignments1 discussion prompt3 plugins

In this capstone module, learners apply the full set of skills developed throughout the course to conduct an end-to-end analysis of a healthcare dataset. Students will clean and prepare data, compute descriptive statistics, perform hypothesis testing, and build regression and machine learning models to generate actionable clinical insights. The final project emphasizes not only technical accuracy but also clinical interpretation, communication, and ethical considerations. By completing this module, learners demonstrate their ability to independently analyze real-world healthcare data and produce evidence-based recommendations.

What's included

1 video2 readings1 assignment1 peer review1 discussion prompt2 plugins

Instructors

Ramesh Sannareddy
19 Courses478,232 learners

Offered by

SkillUp

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¹ Some assignments in this course are AI-graded. For these assignments, your data will be used in accordance with Coursera's Privacy Notice.