Healthcare data holds the key to improving patient outcomes, but only when it's clean, accurate, and properly analyzed. Poor data quality affects 86% of healthcare practitioners and contributes to preventable medical errors that cost hospitals millions annually.

Transform Healthcare Data: Cleanse and Evaluate

Transform Healthcare Data: Cleanse and Evaluate
This course is part of Basics of Healthcare Data Analytics: Boost Patient Outcomes Specialization

Instructor: Hurix Digital
Access provided by Xavier School of Management, XLRI
Recommended experience
What you'll learn
Data quality assessment underpins healthcare analytics, as understanding missing data prevents bias in patient care decisions.
Standardized text cleaning ensures consistent healthcare records, supporting accurate patient matching and analysis.
Outlier handling must balance statistics and clinical meaning, since removing extremes can change results significantly.
Healthcare data preparation affects patient outcomes, making careful documentation and validation essential.
Skills you'll gain
- Clinical Data Management
- Data Validation
- Text Mining
- Data Preprocessing
- Data-Driven Decision-Making
- Data Transformation
- Anomaly Detection
- Patient Safety
- Health Informatics
- Data Quality
- Descriptive Statistics
- Exploratory Data Analysis
- Data Visualization
- Data Cleansing
- Statistical Analysis
- Microsoft Excel
- Skills section collapsed. Showing 10 of 16 skills.
Details to know

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February 2026
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There are 3 modules in this course
Learners will identify and analyze missing data patterns in healthcare datasets using visualization and statistical methods to prevent biased conclusions that could affect patient care decisions.
What's included
3 videos1 reading1 assignment
Learners will implement systematic text cleaning procedures using standardized functions to normalize healthcare data for consistent analysis and accurate patient matching.
What's included
3 videos1 reading2 assignments
Learners will assess the statistical and clinical significance of outliers in healthcare data, applying systematic evaluation methods to determine when outlier removal is appropriate while documenting impact on key descriptive statistics.
What's included
3 videos1 reading2 assignments1 ungraded lab
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University of California, Davis
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