- Navigating potential vendors and desired features in the fast-evolving healthcare enterprise large language model (LLM) landscape is challenging. The market is saturated with vendors claiming to have AI features that will address healthcare challenges.
- You need insights about the features of enterprise LLM products that can drive value and minimize existing pain points.
- You also need guidance to evaluate the risks associated with these features.
Our Advice
Critical Insight
The healthcare Gen AI marketplace is full of the next-generation enterprise LLM solutions offering various AI-powered features to help address healthcare challenges. Being well informed about market trends and key vendor features is critical to navigate the vendor landscape effectively.
Impact and Result
- In this report we review the current context of the healthcare enterprise AI large language model market to address healthcare challenges and to guide you through your decision-making process:
- Market trends for generative AI enterprise large language model adoption.
- Outline use cases, challenges and value opportunities to determine what to expect from Generative AI enterprise large language model solutions.
- An evaluation of key vendors in the market and their features.
Explore Healthcare Enterprise Large Language Model Solutions
A buyers guide for ambient AI scribe and revenue cycle management solutions.
Analyst Perspective
Prioritize enterprise AI solutions that address your workflow challenges.
The advent of generative AI (Gen AI) solutions, driven by the recent surge in AI capabilities, has sparked considerable interest among healthcare organizations and vendors alike. The healthcare Gen AI field is rapidly advancing, with a plethora of vendors all claiming that their AI features can tackle healthcare challenges. However, this market saturation complicates the process of navigating potential vendors and determining desired features. There are limited insights about the features of enterprise large language model (LLM) products that can genuinely add value and alleviate existing problems. There is also a lack of guidance for assessing the risks associated with these features. As healthcare leaders scrutinize current market trends and investigate the Gen AI features offered by various vendors to address workflow challenges, they must assess the potential benefits, value, and quality of these features while also considering and mitigating any associated risks. This buyers guide aims to serve as a valuable resource, offering market and vendor insights to equip healthcare leaders with the knowledge they need to make informed decisions about adopting enterprise LLM solutions. Sharon Auma-Ebanyat |
Executive Summary
Your Challenge |
Common Obstacles |
Info-Tech’s Approach |
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Navigating potential vendors and desired features in the fast-evolving healthcare enterprise LLM landscape is challenging. The market is saturated with vendors, all claiming to have AI solutions that will address healthcare challenges. You need information about features of enterprise LLM products that can drive value and minimize existing pain points. You also need guidance to evaluate the risks associated with the Gen AI features offered by healthcare solutions. |
Common obstacles include:
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We review the current context of the healthcare enterprise LLM market to address healthcare challenges and to guide you through your decision-making process. This buyers guide contains:
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Info-Tech Insight
The healthcare Gen AI marketplace is full of the next-generation enterprise LLM solutions offering various AI-powered features to help address healthcare challenges. Being well informed about market trends and key vendor features is critical to navigate the vendor landscape effectively.
Enterprise LLMs are rapidly evolving in healthcare
Language models have been developed and retrained to solve specific tasks. For example:
1. Statistical language models (SLMs): Developed in the 1990s, they predict words based on recent context and have been used in information retrieval and natural language processing.
2. Neutral language models: Neural language models use networks to predict word sequences by learning from the context of
the words.
3. Pretrained language models: Language models such as ELMo and BERT learn to understand words in context, leading to a new approach called pretraining and fine-tuning. This approach has sparked research that has created diverse model structures and enhanced learning strategies.
4. Large language models: Scaling up pretrained language models (PLMs) led to the development of larger advanced models known as large language models, such as GPT-3/4. These LLMs can learn from a few examples and have become very good at conversations, as seen in ChatGPT.
The healthcare Gen AI LLM market is growing
Gen AI in healthcare will top $21 billion within ten years.
Global Generative AI in Healthcare Market Size |
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Market Size (2023-2032) |
US$1.45 billion to $21.74 billion |
CAGR (2023-2032) |
35.14% |
Largest Market |
North America |
Fastest-Growing Market |
Asia Pacific |
Growth Drivers
- Increasing availability of data: Healthcare organizations are generating high amounts of data, which is making it possible to train LLMs for improving patient care.
- Lower cost of computing power: The cost of computing power has been steadily declining over the years. This has made it more affordable to deploy large-scale LLMs.
- Increased demand for personalized treatments: With the increase in chronic diseases, patients are demanding tailored treatment plans. LLMs are being used to analyze patient data and generate personalized treatment plans and recommendations to improve patient outcomes.
- Potential to improve clinical efficiency and accuracy: With the increase in clinician burnout due to administrative work, LLMs can be used to automate various tasks, such as scheduling, clinical documentation, and reporting, as well as the accuracy of diagnoses and treatment. This can help free up time for clinicians to focus on patient care.
Info-Tech Insight
Given the hallucination risks involved with the output of generative AI in patient care, it is important to implement a “human in the loop” mechanism to mitigate risks.
Healthcare organizations are adopting LLMs across various stages and use cases
Clinicians are seeing the value of AI solutions to optimize patient visits
Gen AI skeptics are now seeing benefits.
68% of US physicians changed their views on generative AI and now think that it would benefit their healthcare practices.
Source: Wolters Kluwer, 2024; N=100
Physicians are ready to adopt Gen AI.
About 40% of US physicians are ready to adopt generative AI in their patient visits in 2024.
Source: Wolters Kluwer, 2024; N=100
“Physicians are open to using generative AI in a clinical setting provided that applications are useful and trustworthy. The source of content and transparency are key considerations.”
– Dr. Peter Bonis, Chief Medical Officer, Wolters Kluwer Health
Info-Tech Insight
Initially, clinicians had concerns about adopting AI. Healthcare organizations have demonstrated its value and engaged clinicians in the adoption of AI solutions. This has contributed to buy-in for the new solutions.
Healthcare CEOs are narrowly focused on data, missing other AI opportunities for value creation
CEOs are more focused on data and need to look at workforce and patient benefits. A Deloitte study found that an average of 70% of executives are more focused on data strategies for AI, while less than 60% are focused on AI integration into patient and workforce workflows.
Source: Deloitte Center for Health Solutions, 2024
A buyers guide for healthcare enterprise LLM solutions
- Understand key use cases that align with your business and with patient needs and the challenges of LLMs.
- Develop weighted evaluation criteria to use when evaluating vendors, aligned with your business needs and responsible AI criteria.
- Assess and review AI features and key vendor offerings.
Quality assessment considerations for ambient AI scribe and revenue cycle management (RCM) solutions:
- Accurate
- Thorough
- Useful
- Free from hallucinations
- Free from bias
- Internally consistent
- Synthesized
- Succinct
- Comprehensive
- Organized
There are limited customization capabilities when you buy an LLM application rather than building your own
LLM adoption must be driven by value
Sources of Value |
Medical transcription and EHR enhancement |
LLMs can convert spoken medical observations into written health records, a process that is traditionally time-consuming and prone to errors. LLMs can analyze and extract valuable insights from vast amounts of electronic health record (EHR) data, which is a source of value for cost savings, efficiency, and patient and clinician experience. |
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Medical coding and billing |
LLMs can help accelerate scientific discovery by formulating, refining, and answering research questions. This is a source of value for cost savings, revenue optimization, operational efficiency, and patient and clinician experience. |
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Clinical decision support |
LLMs can help healthcare professionals make informed decisions by providing accurate diagnoses and treatment plans. This is a source of value for cost savings, revenue optimization, operational efficiency, and patient and clinician experience. |
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Medical research assistance |
LLMs can help accelerate scientific discovery by formulating, refining, and answering research questions. This is a source of value for cost savings, operational efficiency, and clinician experience. |
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Personalized treatment plans and predictive outcomes |
LLMs can help create personalized treatment plans for patients and can predict health outcomes based on patient history and other relevant data. This is a source of value for cost savings, operational efficiency, and patient and clinician experience. |
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Advanced drug discovery |
LLMs can find potential drug treatments at a much quicker pace than traditional methods, with the ability to meticulously examine complex molecular formations, identify potential compounds with healing capabilities, and predict the effectiveness and safety characteristics of these prospects. This is a source of value for cost savings. |
Download Discover AI Use Cases in Healthcare
AI features can enhance healthcare capabilities to support key business outcomes
Business Capability Map Defined
In business architecture, the primary view of an organization is known as its business capability map.
A business capability defines what a business does to enable value creation, rather than how. Business capabilities:
- Represent stable business functions.
- Are unique and independent of each other.
- Typically have a defined business outcome.
A business capability map provides details that help a business architecture practitioner direct attention to a specific area of the business for further assessment.
Download Info-Tech’s Industry Reference Architecture for Healthcare
Consider the challenges of LLMs
HALLUCINATIONS |
LLMs can generate plausible but incorrect content. This can be harmful, especially in medical advice or clinical decision-making. As LLMs advance, these hallucinations can become more convincing, requiring healthcare professionals to verify the generated information due to the models’ lack of transparency. |
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DATA PRIVACY |
The data used for training LLMs can contain private personal information, posing a risk to patients’ privacy. LLMs deployed for biomedical applications can also present privacy risks, as they may have access to patients’ characteristics. |
ACCURACY & CREDIBILITY |
Language models are trained on extensive data, which can lead to the introduction of biases inherent in the data. If training data is biased or contains mistakes, a model might unintentionally propagate these biases or errors in its outputs. Carefully selecting training data and continuously detecting and mitigating bias are crucial steps. |
LEGAL & ETHICAL CONCERNS |
The use of AI in medicine raises legal and ethical concerns, necessitating a robust legal framework. The acknowledgment of ChatGPT as an author in biomedical research has been identified as an ethical concern, raising questions about accountability, copyright, and the disclosure of LLM usage. |
COMPREHENSIVE EVALUATION |
Comprehensive evaluation of LLMs is crucial but challenging. While some traditional NLP tasks have reliable automatic evaluation metrics, evaluating free-text LLM outputs is labor-intensive and not scalable. Therefore, it is important to arrive at a reporting consensus for evaluating biomedical LLMs and to design evaluation metrics that are both scalable and accurate. |
Selecting your business-aligned LLM doesn’t have to be complicated
Weighting (examples) |
Criteria |
Description |
Pass/Fail? |
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15% |
User Acceptance Testing (UAT) for Functional Modalities |
How well does the vendor align with your top-priority modality requirements? What is the vendor’s functional breadth and depth across modalities? Are the modalities unimodal or multimodal? Does the modality proficiency satisfy end-user testing? |
|
15% |
Affordability |
How affordable is the vendor? Consider a three-to-five-year total cost of ownership (TCO) that encompasses not just licensing and prompt costs, but also implementation, integration, training, and ongoing support costs. Do you need to bring in specialized labor to implement and maintain the solution (e.g. full-time equivalent/FTE developers or BI analysts)? |
|
15% |
Architectural Fit and Infrastructure |
How well does the vendor align with your direction from an enterprise architecture and security perspective? How interoperable is the solution with existing applications in your technology stack? Does the solution meet your deployment model preferences? To what extent do you need to ensure that your organization has quality data for fine-tuning the solution? |
|
15% |
Scalability |
How easy is it to expand the solution to support increased user, data, and/or customer volumes? Are there any capacity constraints in the solution? Do you need additional in-house resources to ensure optimal processing speeds during high-volume events? (For example, do you require additional GPUs?) How might this factor into affordability? |
|
15% |
Vendor Viability |
How viable is the vendor? Is the vendor an established player with a proven track record, or a new and untested entrant into the market? What is the financial health of the vendor? How committed is the vendor to its current product roadmap? Does this align with your expectations? |
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10% |
Vendor Vision |
Does the vendor have a cogent and realistic product roadmap? Is the vendor making sensible investments that align with your organization’s internal direction? |
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5% |
Emotional Footprint |
How well does the vendor’s organizational culture and team dynamics align with yours? |
|
10% |
Third-Party Assessments and/or References |
How well-received is the vendor by unbiased, third-party sources? For larger projects, how well does the vendor perform in reference checks (and how closely do those references mirror your own situation)? |
Download the Generative AI: Market Primer Research & Tools
Consider generative AI vendors for ambient AI scribe and RCM solutions
Your choice of Gen AI solutions will be influenced largely by your business needs. In this buyers guide, we will review some of the following companies below.
Ambient AI Scribe Solutions Ambient AI scribe solutions aim to document physician-patient conversations. They use AI to understand dialogue, extract information, and create accurate notes. The solutions also handle tasks such as retrieving EHRs, ordering tests, and scheduling appointments. This reduces the burden of documentation, improves workflow, and addresses challenges such as physician burnout. |
AI-Powered Revenue Cycle Management Solutions AI revenue cycle management solutions aim to streamline healthcare financial processes. They use AI to increase accuracy and efficiency in tasks such as claims processing and patient eligibility verification. RCM solutions also automate repetitive tasks, allowing staff to focus on higher-value tasks. Overall, they enhance revenue capture, reduce costs, and improve patient satisfaction. |
Analyst Note: The categorization presented here is not definitive and should only be used as a reference. Some solutions may operate in both categories due to their blended nature. Our categorizations are based on our understanding of the vendors and the types of healthcare organizations that use their products. It is essential to remember that there are risks involved in working with any provider, since market conditions can impact a company's financial situation.
Ambient AI Scribe Solutions
BUYERS GUIDE
DAX Copilot
Ambient AI scribe for automatic clinical documentation
Overview |
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AI Features
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Market Analysis
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Responsible AI
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Licensing & Pricing
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Quality Assessment Considerations
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Sources: Nuance, 2024; Dragon Medical One, 2024; Healthcare Dive, 2023
Analyst Summary
Strengths
- Reduced clinician burnout, saving 7 minutes per encounter and reducing documentation by 50%.
- Increased throughput and work relative value units (wRVUs).
- Improved patient experience, with 85% of patients reporting more personable and conversational patient visits.
- Increased return on investment (ROI) from additional capacity created for patients’ visits.
Drawbacks
- Costlier than some competitors
- Some transcription inaccuracies when capturing content, which take time to edit.
- Occasional connectivity issues and delays in finalizing and delivering clinical notes into the EHR.
DeepScribe
Ambient AI scribe for clinical documentation and revenue capture
Overview | ||
AI Features
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Market Analysis
| Responsible AI
| Licensing & Pricing
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Quality Assessment Considerations
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Sources: “DeepScribe Outperforms,” DeepScribe, 2024; “Clinical Documentation: Reimagined,” DeepScribe, 2024; AWS Marketplace, 2024; G2, 2024
Analyst Summary
Strengths
- Proven savings of 4 hours per day and removal of administrative bottlenecks.
- Maximized revenue and reimbursement with accurate coding suggestions to optimize billing.
- Clinical notes generated for each encounter, reducing documentation time by 75%.
- Ability to do chart closures in 1.6 minutes, which reduces clinician burnout.
- 32% more accurate than ChatGPT-4.
Drawbacks
- Inaccuracies in transcriptions, which take time to edit.
- Inconsistencies with the level of detail in clinical notes.
- Occasional AWS server connectivity issues.
Heidi Health
Ambient AI scribe for clinical documentation
Overview | ||
AI Features
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Market Analysis
| Responsible AI
| Licensing & Pricing
Contact vendor for updated and custom pricing. |
Quality Assessment Considerations
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Sources: “AI Scribe for Medical Doctors,” Heidi, 2024; “Heidi Free AI Medical Scribe,” Heidi, 2024; “Safety at Heidi,” Heidi, 2024; “Chartnote vs. Heidi Health,” Chartnote, 2024; TechCrunch, 2023
Analyst Summary
Strengths
- Clinical documentation streamlined with AI.
- Intuitive user interface.
- Seamless integration with EHR systems.
Drawbacks
- Basic voice recognition capabilities.
- Limited customization capabilities and options.
Regard
Ambient AI scribe to improve documentation and revenue capture
Overview | ||
AI Features
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Market Analysis
| Responsible AI
| Licensing & Pricing
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Quality Assessment Considerations
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Sources: “Become the Clinician of the Future Today,” Regard, 2024; “Top Takeaways from Regard’s Appearance on NerdsMDs,” Regard, 2024; Board of Innovation, 2023
Analyst Summary
Strengths
- Efficiency: optimized clinical practice, streamlined administrative tasks, and support for high-quality patient care.
- Time savings: 20% reduction in physicians’ documentation time and 56% reduction in burnout during a pilot project.
- ROI and revenue impact with 8% increase in case mix index.
- 14% improvement in CC/MCC capture.
- Reduction in patient safety events.
Drawbacks
- Some instances of chatbot hallucinations.