How Digital Health Platforms Affect Healthcare Costs

AI Health Tech Med Tech

As healthcare costs continue to go up, digital health platforms are emerging as powerful cost-cutting tools. The global digital health market size was estimated at $240.9 billion in 2023 and is projected to grow at a compound annual growth (CAGR) of 21.9% from 2024 to 2030. 

These platforms are not just fancy apps or websites. From telehealth to AI-powered diagnostics, digital health applications are changing healthcare for the better. 

How do these platforms trim the fat from our bloated healthcare system? Let’s explore the ways digital health can make healthcare more affordable for everyone.

Contents

Telemedicine: Healthcare at Your Fingertips

Telemedicine brings healthcare right to your home, office, or wherever you are. It’s like having a doctor in your pocket! But how does this convenience translate to cost savings?

Woman in green sweater talking to doctor on Zoom

Virtual doctor visits reduce travel and waiting room costs

A study published in the Journal of Medical Internet Research found that telehealth visits saved patients an average of 100 minutes of travel time and $50 in travel costs per visit (Snoswell et al., 2020).

Think about the last time you went to the doctor. How much time did you spend traveling and sitting in the waiting room? With telehealth, those time and money costs disappear. 

Fewer ER visits

How often have you wondered if that late-night stomach ache was worth a trip to the ER? Telehealth tools like AI chatbots can help you make that decision without leaving home. 

Cost savings for both patients and healthcare providers

It’s not just patients who save money. Healthcare providers benefit too. Telehealth services have been found to reduce healthcare costs for providers and patients. Even better, many insurers now have an allowance to cover the cost of certain telehealth visits.

Preventive Care: Stopping Problems Before They Start

Have you ever heard the saying “an ounce of prevention is worth a pound of cure”? Digital health platforms are making this old adage more relevant than ever.

How digital platforms promote healthy habits

Fitness app in the gym

From step counters to diet trackers, digital health apps are helping us stay healthier. But do they really make a difference? A study by Ernsting et al. (2017) found that users of health and fitness apps were 34% more likely to meet physical activity guidelines compared to non-users.

Wearable devices and their impact on early detection

glucose monitor on arm with phone app showing glucose level

Smartwatches surpass the practical use of telling time–they’re becoming powerful health monitors. For example, Apple Watch’s ECG feature can detect atrial fibrillation with 98% accuracy, potentially preventing strokes and saving lives (Perez et al., 2019).

How AI and big data can predict health risks and reduce costs

Big Data Analytics in healthcare uses AI, machine learning and deep learning tools to help doctors find the best treatments for each patient, which can reduce waste. This lets doctors predict health problems  and start treatments early, which can save lives. This could change how common certain diseases are and save money on healthcare (Batko & Ślęzak, 202​​2).

Cost savings through prevention vs. treatment

Prevention isn’t just better for our health—it’s better for our wallets too. The Centers for Disease Control and Prevention estimates that chronic diseases that are avoidable through preventive care account for 75% of the nation’s healthcare spending.

Streamlined Administrative Processes

Paperwork is no one’s favorite part of healthcare. Digital platforms are making administrative tasks faster, easier, and more cost-effective.

Automated appointment scheduling and reminders

Have you ever forgotten a doctor’s appointment? Digital reminders can help. 

Smartwatch with phone and dumbbells

Ulloa-Pérez et al. (2022) found that sending an extra text reminder for high-risk appointments reduced no-shows in primary care and mental health offices, and same-day cancellations in primary care offices. 

Targeting reminders using risk prediction models (predictive analytics) can efficiently use healthcare resources, potentially preventing hundreds of missed visits monthly. This approach saves costs compared to messaging all patients, though implementing the risk model has some costs.

Digital health records reduce paperwork and administrative errors 

Nurse charting

Remember when doctors used to write prescriptions by hand? Digital health records make all kinds of admin work more efficient. A study in the Journal of the American Medical Informatics Association found that electronic health records with AI can reduce medication and billing errors.

Cost savings through improved workflow and resource allocation

Efficient workflows mean better care at lower costs. A study in the Journal of Medical Internet Research found that digital health platforms improved hospital workflow efficiency by 25%, leading to annual cost savings of $1.2 million for a mid-sized hospital (Luo et al., 2019).

Person looking at white overlay

Data-Driven Insights for Better Decision Making

In the age of big data, information is power. Healthcare is no exception. With all this digital information, doctors can make smarter choices about your health. 

How big data analytics improve treatment plans

A study in the Journal of Big Data found that big data analytics improved treatment efficacy by 30% and reduced treatment costs by 20% (Dash et al., 2019).

Cost savings from shorter and fewer hospital stays

Nurse standing in a recovery room

Have you ever wondered how hospitals decide how many beds they need? Predictive analytics is the answer. It can reduce hospital bed shortages and decrease operational costs.

Hospital stays are expensive, but RPM can help shorten them. RPM allows patients to be discharged an average of 2 days earlier, resulting in cost savings of $7,000 per patient.

Personalized medicine and its impact on cost reduction

One size doesn’t fit all in healthcare. Targeted treatments are more effective and cost-effective. 

  • Personalized treatment plans based on genetic data improve treatment efficacy and reduce adverse drug reactions (ADRs).
ECG monitor closeup on stomach

Remote Patient Monitoring: Reducing Hospital Stays

Sometimes, the best hospital care happens outside the hospital. 

Remote patient monitoring (RPM) allows health providers to keep an eye on patients without keeping them in the hospital. From smart pills to wearable sensors, remote monitoring technologies are diverse and growing. 

Impact on reducing hospital readmissions

Nobody likes going back to the hospital. Remote monitoring can help prevent that. A study in the New England Journal of Medicine found that remote monitoring reduced hospital readmissions for heart failure patients by 50% (Perez et al., 2019).

Management of chronic conditions from home

Gentleman taking his blood pressure in tan shirt

Chronic conditions are a major driver of healthcare costs. Remote monitoring can help manage these conditions more effectively. 

A 2024 study showed that telehealth reduces healthcare costs by cutting down on hospital visits, travel time, and missed work, especially for managing chronic conditions. This benefits both patients and healthcare systems financially (Prasad Vudathaneni et al., 2024).

Increasing Access to Specialized Care

Specialized care can be hard to access, especially in rural areas. Digital health isn’t just about general care – it’s also bringing expert help to more people.

Telehealth solutions for rural and underserved areas

Rural healthcare access is a major challenge. Telehealth can help bridge that gap. A study in Health Affairs found that telehealth increased access to specialty care in rural areas by 54%.

Telehealth also faces challenges like high setup costs and outdated payment models, especially in rural areas. Its success depends on cost distribution, clinical outcomes, and indirect savings. Hospitals need funding and strategies to reach underserved groups and ensure fair access to telehealth (Anawade et al., 2024).

Virtual second opinions and their impact on treatment decisions

Getting a second opinion can be life-changing. Virtual platforms make it easier than ever. Virtual second opinions can change the diagnosis or treatment plan in over one-third of cases, potentially avoiding unnecessary procedures and costs.

Conclusion

Digital health platforms are powerful allies to counteract rising healthcare costs. By leveraging technology for prevention, efficiency, and data-driven insights, these platforms are making healthcare more accessible and affordable. From applications like telehealth reducing unnecessary ER visits to catching illnesses early with AI-powered diagnostics, the potential for cost savings is huge. 

As patients, we can embrace these digital tools to take control of our health and potentially lower our healthcare expenses. For healthcare providers, adopting these platforms could lead to more efficient operations and better patient outcomes. 

What do you think about these digital health innovations? Have you used any of these technologies in your own healthcare journey? 

References

Anawade, P. A., Sharma, D., & Gahane, S. (2024). A Comprehensive Review on Exploring the Impact of Telemedicine on Healthcare Accessibility. Cureus, 16(3). doi.org/10.7759/cureus.55996

Batko, K., & Ślęzak, A. (2022). The use of Big Data Analytics in healthcare. Journal of Big Data, 9(1). doi.org/10.1186/s40537-021-00553-4

Centers for Disease Control and Prevention. (2021). Chronic diseases in America. Retrieved from https://www.cdc.gov/chronicdisease/resources/infographic/chronic-diseases.htm

Dash, S., Shakyawar, S. K., Sharma, M., & Kaushik, S. (2019). Big data in healthcare: Management, analysis and future prospects. Journal of Big Data, 6(1), 1-25. doi.org/10.1186/s40537-019-0217-0

Ernsting, C., Dombrowski, S. U., Oedekoven, M., & Kanzler, M. (2017). Using smartphones and health apps to change and manage health behaviors: A population-based survey. Journal of Medical Internet Research, 19(4), e101.

Grand View Research. (2024). Digital Health Market Size, Share & Trends Analysis Report By Technology (Healthcare Analytics, mHealth), By Component (Hardware, Software, Services), By Application, By End-use, By Region, And Segment Forecasts, 2024 – 2030. Retrieved from https://www.grandviewresearch.com/industry-analysis/digital-health-market

Luo, L., Li, J., Liang, X., Zhang, J., & Guo, Y. (2019). A cost-effectiveness analysis of a mobile-based care model for community-dwelling elderly individuals. Journal of Medical Internet Research, 21(5), e13563.

Perez, M. V., Mahaffey, K. W., Hedlin, H., Rumsfeld, J. S., Garcia, A., Ferris, T., Balasubramanian, V., Russo, A. M., Rajmane, A., Cheung, L., Hung, G., Lee, J., Kowey, P., Talati, N., Nag, D., Gummidipundi, S. E., Beatty, A., Hills, M. T., Desai, S., … Turakhia, M. P. (2019). Large-scale assessment of a smartwatch to identify atrial fibrillation. New England Journal of Medicine, 381(20), 1909-1917.

Personalized Medicine Coalition. (2020). The personalized medicine report: Opportunity, challenges, and the future. Retrieved from http://www.personalizedmedicinecoalition.org/Userfiles/PMC-Corporate/file/The-Personalized-Medicine-Report1.pdf

Prasad Vudathaneni, V. K., Lanke, R. B., Mudaliyar, M. C., Movva, K. V., Kalluri, L. M., & Boyapati, R. (2024). The Impact of Telemedicine and Remote Patient Monitoring on Healthcare Delivery: A Comprehensive Evaluation. Cureus, 16(3). doi.org/10.7759/cureus.55534

Snoswell, C. L., Taylor, M. L., Comans, T. A., Smith, A. C., Gray, L. C., & Caffery, L. J. (2020). Determining if telehealth can reduce health system costs: Scoping review. Journal of Medical Internet Research, 22(10), e17298.

Ulloa-Pérez, E., Blasi, P. R., Westbrook, E. O., Lozano, P. , Coleman, K. F., & Coley, R. Y.  (2022). Pragmatic Randomized Study of Targeted Text Message reminders to Reduce Missed Clinic Visits. The Permanente Journal, 26(1), doi/10.7812/TPP/21.078

Winstead, E. (2023). Telehealth Can Save People with Cancer Time, Travel, and Money. National Cancer Institute. Retrieved from https://www.cancer.gov/news-events/cancer-currents-blog/2023/telehealth-cancer-care-saves-time-money

AI-Enhanced EHR Systems: Electronic Health Records with Intelligent Technology

AI-Enhanced EHR Systems: Electronic Health Records with Intelligent Technology

AI Health Tech Med Tech

Electronic Health Records (EHRs) have become an integral part of modern healthcare. But what happens when we combine these digital records with the power of artificial intelligence (AI)? 

The result is AI-enhanced EHR systems, a game-changing technology that’s reshaping how we approach patient care, data management, and clinical decision-making. Let’s review AI-enhanced EHRs, their benefits, key features, challenges, and considerations for this exciting technology. 

Contents

What Are AI-Enhanced EHR Systems?

medical record showing on a tablet

AI-enhanced EHR systems are the next evolution of traditional electronic health records. These intelligent systems use advanced algorithms and machine learning techniques to analyze, interpret, and act on patient data in ways that were previously impossible.

But how exactly do they differ from standard EHRs? Here’s a quick comparison.

Standard EHRsAI-Enhanced EHRs
Store and organize patient dataAnalyze and interpret patient data
Require manual data entry and retrievalAutomate data entry and provide intelligent insights
Offer basic search functionality Use natural language processing (NLP) for advanced queries
Provide static informationOffer predictive analytics and personalized recommendations

AI integration transforms EHRs from passive data repositories into active, intelligent systems that can assist healthcare providers in making more informed decisions and improving patient care.

The healthcare AI market was estimated at $19.27 billion in 2023, and is projected to reach over $209 billion by 2030 (Grand View Research, 2024). The global market for electronic health records is expected to reach nearly $18 billion by 2026 (Yang, 2023).

The need to improve complex and inefficient EHR workflows and get valuable insights from historical patient data drives the demand for AI-powered EHRs (Davenport et al., 2018).

Benefits of AI in EHR Systems

periodic table showing on invisible screen with doctor pointing

The incorporation of AI into EHR systems brings a host of benefits to healthcare organizations, providers, and patients alike. Let’s look at some of the key advantages.

Improved Clinical Decision Support

AI-powered EHRs can analyze large amounts of patient data, medical literature, and clinical guidelines to provide evidence-based recommendations to healthcare providers. This can help clinicians make more accurate diagnoses and develop effective treatment plans. One study shows that AI-enhanced EHRs can provide diagnostic assistance at nearly 99% accuracy.

Enhanced Data Analytics and Insights

By leveraging machine learning algorithms, AI-enhanced EHRs use machine learning to find patterns in patient data that humans might miss. This can lead to early detection of diseases, identification of at-risk patients, and population health management improvements.

Streamlined Workflows and Reduced Administrative Burden

AI can automate many time-consuming tasks, such as data entry, coding, and billing. This allows healthcare professionals to spend more time focusing on patient care and less time on paperwork.

Better Patient Outcomes and Personalized Care

With AI’s ability to process and analyze large datasets, healthcare providers can develop more personalized treatment plans and medication planning based on a patient’s unique genetic makeup, lifestyle factors, and medical history.

Now that we’ve covered the benefits, let’s explore the specific features that make AI-enhanced EHRs so powerful.

Key Features of AI-Enhanced EHRs

Now that we’ve covered the benefits, let’s explore some of the key features that make AI-enhanced EHRs so powerful.

Natural Language Processing for Efficient Data Entry

Natural Language Processing (NLP) allows AI-enhanced EHRs to understand and interpret human language. This means clinicians can dictate notes or enter free-text information, which the system can automatically convert into structured data. This not only saves time but also improves the accuracy of patient records (Harris, 2023).

Predictive Analytics for Early Disease Detection

By analyzing patterns in patient data, AI algorithms can predict the likelihood of certain diseases or complications. This allows healthcare providers to intervene early and potentially prevent serious health issues before they occur.

However, using prediction models in healthcare settings is still challenging. A study found that most predictive models focused on blood clotting issues and sepsis. Common problems with these models include too many alerts, not enough training, and more work for healthcare teams  (Lee et al., 2020). 

Despite these challenges, most studies showed that using predictive models led to better patient outcomes. More research, especially using randomized controlled trials, is needed to make these findings more reliable and widely applicable (Lee et al., 2020).

Automated Coding and Billing

AI can automatically assign appropriate medical codes to diagnoses and procedures, reducing errors and speeding up the billing process. This not only improves efficiency but also helps ensure proper reimbursement for healthcare services.

Intelligent Scheduling and Resource Allocation

AI-enhanced EHRs can optimize appointment scheduling by considering factors such as patient needs, provider availability, and equipment requirements. This leads to better resource utilization and improved patient satisfaction.

The benefits of using AI with EHRs is clear. Now let’s discuss how healthcare organizations can implement this powerful tool in medical settings.

Implementing AI-powered EHR Systems in Healthcare

worker looking at 3 monitors on desk

Implementing AI-enhanced EHRs often requires significant changes to existing healthcare IT infrastructure and workflows, which is a complex but necessary process. However, It’s essential for ensuring seamless data flow, maintaining operational efficiency, and maximizing the benefits of AI in healthcare settings. Here are some key points to consider.

AI-powered EHR Costs

Building a custom EHR system with AI features typically costs around $400,000 to $450,000 (Madden & Bekker). The price depends on several factors, including:

  • How complex the AI functions are
  • The accuracy of the machine learning 
  • The amount of data handled
  • The number of other systems it needs to work with
  • How user-friendly and secure it is
  • Whether special approvals like FDA registration are required
  • Cloud services
  • Support and maintenance

All these elements affect the final price of creating an AI-enhanced EHR system.

AI-powered EHR Implementation Strategies

If you’re considering implementing an AI-enhanced EHR system in your healthcare organization, here are some strategies to keep in mind:

  1. Assess Organizational Readiness: Evaluate your current IT infrastructure, staff capabilities, and organizational culture to determine if you’re ready for an AI-enhanced EHR.
  1. Choose the Right Solution: Research different AI-EHR solutions and select one that aligns with your organization’s needs and goals.
  1. Develop a Phased Implementation Plan: Start with a pilot program and gradually roll out the system across your organization to minimize disruption.
  1. Focus on Training and Change Management: Invest in comprehensive training programs and change management strategies to ensure smooth adoption of the new system.

Methods of Integration with Existing Systems

nurse and doctor pointing at computer

Several methods can be employed to integrate AI-enhanced EHRs with existing healthcare IT infrastructure (Dhaduk, 2024):

  • Enterprise Service Bus (ESB): This method is ideal for integrating multiple applications and systems across the healthcare organization, enabling data exchange and orchestration of complex processes.
  • Point-to-Point Integration (P2P): Suitable for simple and straightforward integrations, such as connecting a medical device directly with an EHR system.
  • API Integration: This involves exposing and consuming APIs to enable data exchange between different systems and applications. It’s particularly useful for integrating modern, cloud-based systems.
  • Robotic Process Automation (RPA): RPA can be used to automate repetitive tasks and processes, particularly with legacy systems that have limited integration capabilities.
  • Integration Platform as a Service (IPaaS): A cloud-based solution that connects different healthcare systems quickly, without local servers.

Best Practices for Successful Integration

To ensure successful integration of AI-enhanced EHRs with existing healthcare IT infrastructure, consider the following best practices:

  1. Conduct a thorough assessment: Before integration, assess your current IT infrastructure, identifying potential compatibility issues and integration points.
  1. Develop a comprehensive integration plan: Create a detailed plan that outlines the integration process, including timelines, resources needed, and potential risks.
  1. Ensure data quality and standardization: Clean and standardize data across all systems to ensure accurate AI analysis and insights (Dhaduk, 2024).
  1. Prioritize security and privacy: Implement robust security measures to protect patient data during and after the integration process (Narayanan, 2023).
  1. Provide adequate training: Offer comprehensive training to healthcare staff on how to use the integrated AI-enhanced EHR system effectively (Narayanan, 2023).
  1. Start with a pilot program: Consider implementing the integration in phases, starting with a pilot program to identify and address any issues before full-scale deployment.
  1. Continuous monitoring and optimization: After integration, continuously monitor system performance and gather feedback from users to optimize the integrated system over time.

By carefully considering these aspects of integration, healthcare organizations can successfully implement AI-enhanced EHR systems that work harmoniously with their existing IT infrastructure, leading to improved patient care, increased operational efficiency, and better overall healthcare outcomes.

Key Concerns for AI-powered EHRs

EHR flatlay with iphone mouse keyboard

While AI-enhanced EHRs offer numerous benefits, they also come with their own set of challenges.

Data Privacy and Security Concerns

With the increased use of AI and data sharing, ensuring patient privacy and data security becomes even more critical.

Many AI technologies are developed by private companies, which means patient health information may be controlled by them. This can lead to problems if the companies don’t protect the data properly.

One big issue is that AI systems often need a lot of patient data to work well. Sometimes, this data might be moved to other countries, or used in ways patients didn’t agree to. There’s also a worry that even if data is made anonymous, new AI tools may figure out who the data belongs to (Murdoch, 2021).

To address these problems, we need strong rules about how companies can use patient data. These rules should make sure that patients have a say in how their information is used and that the data stays in the country where it came from. Companies should also use the latest methods to keep data safe and private.

Challenges of Integration with Existing Healthcare IT Systems

man doing medical coding

System Compatibility and Interoperability: One of the primary challenges is ensuring that the new AI-enhanced EHR system is compatible with existing legacy systems. Many healthcare organizations use a mix of old and new technologies, which can create compatibility issues. Achieving true interoperability between the AI-enhanced EHR and other healthcare IT systems is crucial for seamless data exchange and workflow optimization (Narayanan, 2023).

Data Standardization: Different systems often use varying data formats and standards. Integrating an AI-enhanced EHR requires standardizing data across all systems to ensure accurate analysis and interpretation (Dhaduk, 2024).

Security and Privacy Concerns: Integrating new AI systems with existing infrastructure raises questions about data security and patient privacy. Ensuring HIPAA compliance and protecting sensitive patient information is paramount (Narayanan, 2023).

Training Healthcare Professionals

Staff need to be trained not only on how to use the new systems but also on how to interpret and act on AI-generated insights. However, AI can be hard to understand, and clinicians might not trust it at first.

They’ll need to learn about data analysis and how AI makes decisions. Then they can explain AI-based decisions in a way patients can understand. Overall, medical education will need to change to include both AI skills and traditional medical knowledge (Giordano et.al., 2021).

Ethical Considerations and Bias in AI 

As AI plays a larger role in clinical decision-making, questions arise about accountability and the potential for bias in AI algorithms. This bias can come from the data used to train the models or from how the models work. For example, some datasets mostly include light-skinned people or older patients, which can lead to unfair results. It’s hard to spot these biases in complex AI models. 

Researchers are trying to make AI fairer, but some solutions might actually cause more problems for vulnerable groups. Until better solutions are found, clinicians must watch for situations where a model trained on general data might not work well for their patients (Giordana et al., 2021).

Anantomy scan with goggles stethoscope and notebook

The future of AI-enhanced EHRs is exciting, with several emerging trends on the horizon:

  • Advanced AI Algorithms for Personalized Treatment Plans: As AI technology improves, we can expect even more sophisticated algorithms that can develop highly personalized treatment plans based on a patient’s unique characteristics.
  • Blockchain Technology for Secure Health Data Exchange: Blockchain could provide a secure and transparent way to share health data across different healthcare providers and organizations.
  • AI-Powered Virtual Health Assistants: Virtual assistants powered by AI could help patients navigate their health records, schedule appointments, and even provide basic health advice.

Future EHRs should integrate telehealth technologies and home monitoring devices. These include tools like smart glucometers and even advanced wearables that measure various health metrics. The focus is on patient-centered care and self-management of diseases. Healthcare providers are likely to use a mix of vendor-produced AI capabilities and custom-developed solutions to improve patient care and make their work easier. 

While the shift to smarter EHRs is important, it’s expected to take many years to fully implement. Most healthcare networks can’t start from scratch, so they’ll need to gradually upgrade their existing systems.

It’s important to balance the benefits of AI in healthcare with protecting patient privacy. As AI keeps improving quickly, we need to make sure our laws and regulations keep up to protect people’s information.

Conclusion

It’s clear that AI-enhanced EHR systems will play an increasingly important role in healthcare delivery. By embracing this technology, healthcare organizations can improve patient care, streamline operations, and stay ahead in an ever-evolving healthcare landscape.

Are you ready to take your EHR system to the next level with AI? The future of healthcare is here, and it’s intelligent, personalized, and data-driven.

References

Davenport, T.H., Hongsermeier, T.M., & Alba Mc Cord, K. (2018). Using AI to Improve Electronic Health Records. Harvard Business Review. Retrieved from https://hbr.org/2018/12/using-ai-to-improve-electronic-health-records

Dhaduk, H. (2024). A Guide to Modernizing Legacy Systems in Healthcare. SIMFORM. Retrieved from https://www.simform.com/blog/modernizing-legacy-systems-in-healthcare/

Giordano, C., Brennan, M., Mohamed, B., Rashidi P., Modave, F., & Tighe, P. (2021). Accessing Artificial Intelligence for Clinical Decision-Making. Frontiers in Digital Health;3:645232. doi: 10.3389/fdgth.2021.645232. 

Grand View Research. (2024). AI in Healthcare Market Size & Trends. Retrieved from https://www.grandviewresearch.com/industry-analysis/artificial-intelligence-ai-healthcare-market 

Harris, J.E. (2023). An AI-Enhanced Electronic Health Record Could Boost Primary Care Productivity. JAMA. 2023;330(9):801–802. doi:10.1001/jama.2023.14525

Narayanan, B. (2023). Challenges and Opportunities for AI Integration in EHR Systems. iTech. Retrieved from https://itechindia.co/us/blog/challenges-and-opportunities-for-ai-integration-in-ehr-systems/

Lee, T. C., Shah, N.C., Haack, A. & Baxter, S.L.. (2020). Clinical Implementation of Predictive Models Embedded within Electronic Health Record Systems: A Systematic Review. Informatics; 7(3):25. https://doi.org/10.3390/informatics7030025 

Madden, A., & Bekker, A. (n.d.) Artificial Intelligence for EHR: Use Cases, Costs, Challenges. ScienceSoft. Retrieved from https://www.scnsoft.com/healthcare/ehr/artificial-intelligence

Murdoch, B. (2021). Privacy and artificial intelligence: challenges for protecting health information in a new era. BMC Medical Ethics 22, 122. https://doi.org/10.1186/s12910-021-00687-3

Lin, W., Chen, J.S., Chiang, M.F., & Hribar, M.R. (2020). Applications of Artificial Intelligence to Electronic Health Record Data in Ophthalmology. Translational Vision Science & Technology, 27;9(2):13. doi: 10.1167/tvst.9.2.13.

Yang, J. (2023). Market value of electronic health records & clinical workflow in Smart Hospitals, from 2018 to 2026. Statista. Retrieved from https://www.statista.com/statistics/1211885/smart-hospital-market-value-of-electronic-health-record-and-clinical-workflow-forecast/