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Healthcare Data Visualization for Informed Decision Making

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    Posted in Healthcare

    Last Updated | May 7, 2024

    Data visualization in healthcare has become an indispensable part of the healthcare industry. It transforms complex data into intuitive, actionable insights, empowering medical professionals to take control of their decision-making. By converting extensive information into compelling charts, graphs, and dashboards, healthcare organizations can make informed decisions, enhancing patient outcomes and boosting operational efficiency.

    healthcare data visualization

    In this blog, we’ll explore the importance of data visualization in healthcare using impactful real-world examples and best practices. We’ll discuss how visual representations of medical data facilitate early disease detection, optimize resources, and inspire healthcare providers to deliver superior care and drive organizational success.

    Why Use Healthcare Data Visualization? 

    Healthcare generates more data than anyone can comprehend, making data management complex and overwhelming. It includes patient data, research, medication data, healthcare organization data, financials, etc. Data visualization in healthcare transforms complex data into graphs, charts, and reports to make more sense. 

    The advantages of data analytics and visualization in health care include:

    • A better understanding of healthcare data for patients, medical professionals, healthcare staff, and policymakers. Understanding trends and patterns from graphs and pie charts is more straightforward than in detailed spreadsheets.
    • Data visualization lets healthcare businesses make more informed decisions regarding treatment, resource allocation, and research by identifying essential patterns and trends. The result? More effective and efficient healthcare delivery. 
    • Data visualization in healthcare helps spot anomalies and outliers in patient data, allowing for better interventions and earlier diagnoses. Catching a problem before it spreads is essential for improving patient healthcare outcomes.
    • Data analytics and visualization in health care improves data transparency in healthcare. It allows patients and stakeholders to better understand treatments, resource allocation, and other aspects of healthcare. 

    In the following section, we expand on the benefits of healthcare data visualization and how it helps doctors treat patients better. We cover various aspects, so read to the end to take it all in. 

    What Are the Benefits of Healthcare Data Visualization?

    Healthcare data visualization is more than a fancy phrase; it has several benefits. This section covers the most important ones to better understand the importance of data visualization in healthcare. 

    Improved Decision-Making and Patient Outcomes

    Healthcare professionals can make better, more informed decisions based on trends and patterns in healthcare data. This helps develop better treatment plans and earlier diagnoses, significantly improving patient healthcare outcomes.

    Using real-time, real-world data leverages insights from reality instead of assumptions. This results in more precise and informed decisions regarding healthcare. Improved healthcare decision-making has short- and long-term benefits to patients and healthcare organizations. 

    Enhanced Operational Efficiency and Resource Allocation

    Using medical data visualization helps identify areas needing improvement regarding operational efficiency, resource utilization, and overall functionality. Knowing what works and what doesn’t helps healthcare organizations determine where resources can be better used and where they need to be cut back.

    Wasted resources hurt the environment and organizations, so reducing them as much as possible makes sense. The best interactive data visualization for healthcare helps organizations understand the outcomes of their decisions using proper, cold, hard facts. The result is cost savings and improved healthcare delivery. 

    Identifying Population Health Trends

    Public health officials can use population health trends to better understand general healthcare trends. Population health trends detail disease rates, demographics, and various health concerns. 

    Knowing the public health situation helps authorities identify at-risk demographics and develop targeted healthcare interventions. Predictive analytics in healthcare allows healthcare professionals to be proactive instead of reactive with healthcare decisions. 

    Engaging Stakeholders and Driving Collaboration

    Patients, healthcare providers, insurance companies, policymakers, pharmaceutical companies, medical device companies, and public health organizations are stakeholders in healthcare. 

    Data visualizations are the perfect way to share complex healthcare data with a broader audience. Using proper healthcare data visualization examples makes engaging with stakeholders on essential healthcare initiatives easier, further driving collaboration. 

    Enhancing Patient Education and Empowerment

    Healthcare data visualization helps patients understand their health so that they can make better healthcare decisions. Patients feel more empowered when they have data visualizations of their health. Having a detailed health report leads to greater patient empowerment and significantly improved overall health outcomes.

    Identifying Cost-Saving Opportunities

    The best interactive data visualization help healthcare organizations use data visualizations to identify areas where costs are higher than they should be. The findings help healthcare organizations develop cost-saving strategies to optimize spending and improve healthcare quality. 

    Several data sources are available for healthcare data visualization, so there is a lot of detail to work with. This next section covers all healthcare data sources to make more sense.

    Data Sources for Healthcare Visualization

    Medical data visualization isn’t possible without healthcare data. Luckily, there is an immense amount of healthcare data to work with. The primary sources for this data include:

    Electronic Health Records (EHR) and Electronic Medical Records (EMR) Solutions

    EHR and EMR are the two most essential healthcare data sources in modern healthcare. Electronic health records have patient history, diagnoses, allergies, medication, lab results, imaging studies, and immunizations. 

    EHR and EMR data can track and map patient healthcare trends over long periods. The findings can identify at-risk patients and measure treatment effectiveness, ensuring patients are treated as best as possible.

    Data Collection Forms

    These are the most standard data collection sources for information about specific conditions and procedures. Data collection forms track healthcare trends over time to single out anomalies and identify areas for improvement. 

    Clinical Trials

    These research studies test new drugs, healthcare devices, and treatments to determine their safety and efficacy. Research data collected from clinical trials creates visualizations to understand how well treatments work compared to existing measures. Additionally, automation in clinical trials can speed up data generation and collection – combining two modern tech trends for the best healthcare outcomes.  

    Wearable and Portable Devices

    Healthcare wearables collect large amounts of patient health data simply by being worn. The metrics include patient heart rate, sleep patterns, activity level, and blood oxygen. These wearables collect data at regular intervals that can be used to study metrics over long periods. 

    Insights from healthcare wearable data can be used to track potential health problems such as high blood pressure or irregular heart activity. The findings allow doctors to prescribe healthy lifestyle changes to patients, many of which are simple (regular exercise, nutritious diet, quitting smoking, etc.)

    Third-Party Platforms

    Several third-party platforms collect and aggregate health data from different sources. This data is perfect source material for data visualizations. The findings from said data analysis expand on population health trends, emerging health threats, and benchmarking healthcare provider performance.

    Advance healthcare with AI technology to enhance patient outcomes

    Tools for Healthcare Data Visualization

    The effectiveness of healthcare data visualization hinges on the data analysis tools. The most famous tools for healthcare data visualization examples include:

    Tableau

    Tableau is one of the most user-friendly and powerful data visualization healthcare tools used across all industries, including healthcare. Tableau lets users create different visualizations, including graphs, charts, and maps. 

    Furthermore, Tableau can easily integrate with different data sources, including clinical trial data, EHRs, and EMRs. It is also easy to use and requires little technical experience to learn and operate. Other benefits of Tableau include:

    • An intuitive, user-friendly interface.
    • Data exploration 
    • Data integration 
    • Spatial visualization
    • Geographic visualization 

    Domo

    Domo is a powerful end-to-end business intelligence platform with various data visualization properties. Owing to its comprehensive capability, healthcare organizations can use Domo as their primary data management solution. 

    Compared to Tableau, Domo is more complex and expensive. However, it has several advantages, making it an excellent choice for healthcare organizations. These include:

    • Data integration 
    • Mobile operations 
    • Social media integration
    • Ease of access
    • Cloud-native platform
    • Drag-and-drop ETL for data visualization

    Bold BI

    Bold is a cloud-based BI platform designed to embed analytics into third-party applications. Healthcare organizations that want interactive data visualization healthcare dashboards embedded into healthcare software and patient portals can use Bold BI. Using Bold BI is another great example of cloud computing in healthcare

    While Tableau lets you create complex visualizations, Bold BI is no slouch. The advantages of using Bold BI include:

    • Faster and more accurate financial reporting, analysis, and planning 
    • User-friendly interactive dashboards for a broader range of users
    • Data source is connected to EHRs, clinical research databases, wearable device data, etc.
    • It is cheaper compared to other business intelligence platforms. 

    Challenges in Healthcare Data Visualization

    For all the benefits of healthcare data visualization, it is not without challenges. Here is a list of prominent obstacles to keep in mind:

    Data Integration 

    We mentioned earlier that there is a lot of healthcare data, most of which is siloed, meaning it is scattered across various sources. Healthcare data comes from EHRs, clinical databases, and healthcare wearables, all in different languages and formats. 

    Before visualization, this data must be cleaned, compiled, and tagged so data analysts can properly extract insights. It needs to be converted into usable formats that can be complex and time-consuming. 

    Data Standardization 

    Data quality and consistency continue to plague healthcare data, including errors, missing entries, and inconsistencies. This affects healthcare data visualization results, rendering them incorrect or misleading. Having incorrect data means incorrect visualizations – ultimately defeating the point of healthcare data visualization. Using standardized data formats stresses on the importance of data quality in healthcare which directly impacts healthcare data visualizations.

    Data Privacy

    Healthcare data includes sensitive patient information that needs constant protection. Whichever healthcare data visualization tools you use must be HIPAA and GDPR compliant. These data privacy standards ensure patient data is safe and secure throughout the visualization process. 

    Data privacy is imperative and cannot be compromised at any cost. Healthcare data comes from many sources and is transmitted over the the internet. It needs to be kept safe when receiving it, working on it, and visualizing it. 

    Misinterpretation 

    Healthcare data is complex, containing several variables and metrics. It is important to pick the correct visualization format to present clear and accurate data. Effective data visualization for healthcare simplifies complex data without overwhelming the audience and prevent misinterpretation. 

    Healthcare data visualizations should follow the correct visual design principles to ensure each visualization is unbiased, clear, and uses effective language for the right audience. Even the best designed visualizations can be misinterpreted due to underlying cognitive biases. 

    Visualization Illiteracy 

    Building on the last point, not everyone fully understands medical data visualization. Stakeholders might have healthcare industry knowledge but charts, graphs, and diagrams could confuse them. This requires additional explanation and context. 

    You want your visualizations to focus on function then form. Ensure that the information presented makes sense with clear, concise labels and markings. Once information is explained clearly, then you can focus on colors and other cosmetic enhancements. You want to keep it simple and to the point.

    healthcare data visualization

    Conclusion

    The healthcare industry’s growing volume of data demands powerful data visualization tools. Healthcare organizations can enhance decision-making, improve patient outcomes, and boost operational efficiency by transforming complex data into engaging, easily interpretable visuals.

    Embracing data visualization enables medical professionals to navigate the evolving healthcare landscape with clarity and confidence. As healthcare data visualization tools and techniques continue to advance, they will play a vital role in shaping the future of healthcare, empowering providers to deliver superior care and drive significant change.

    Frequently Asked Questions

    What Is the Average Cost of a Healthcare Data Visualization Development Project?

    Depending on complexity, features, and team size, healthcare data visualization projects can cost between $50,000 – $100,000. 

    Is It Possible to Create Custom Data Visualizations for Hospitals and Pharma?

    Yes. Every instance of data visualization is custom due to the unique data being used. It can be tailored to meet the needs for hospitals, cliincs, and pharmaceutical companies.

    What Types of Data Visualization Are Most Used in Healthcare?

    Common healthcare data visualizations include:

    • Line graphs
    • Bar charts
    • Pie charts
    • Heatmaps 

    Each visualization does a great job of comparing data sets, presenting trends, and identifying patterns. 

    Why Is Data Visualization Important for Healthcare?

    Data visualization helps the healthcare industry make sense of complex healthcare data to make better decisions, identify at-risk patients, and share insights with healthcare stakeholders.

     

    About the Author

    Ahmed Sufyan Samee

    Ahmed Sufyan Samee is a seasoned digital marketer with 3+ years of experience. Specializing in SEO, he excels in optimizing online content and managing display campaigns. His expertise extends to YouTube SEO, enhancing brand visibility and engagement. Ahmed is known for his strategic approach, leveraging PPC and SEO to drive measurable results. Committed to staying ahead in the dynamic digital landscape.