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McKinsey & Company
mckinsey.com › industries › healthcare › our-insights › generative-ai-in-healthcare-adoption-trends-and-whats-next
Generative AI in healthcare: Adoption trends and what’s next
July 25, 2024 - In our Q1 2024 survey, more than 70 percent of respondents from healthcare organizations—including payers, providers, and healthcare services and technology (HST) groups—say that they are pursuing or have already implemented gen AI capabilities ...
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McKinsey & Company
mckinsey.com › industries › healthcare › our-insights › generative-ai-in-healthcare-current-trends-and-future-outlook
Generative AI in healthcare: Current trends and future outlook | McKinsey
March 26, 2025 - To better understand how US healthcare leaders are thinking about gen AI use cases, McKinsey launched a research effort to gather insights from leaders in payer organizations, health systems, and healthcare services and technology (HST) groups. We surveyed stakeholders about their plans for generative AI solutions, including their level of implementation, their plans for adoption, the anticipated benefits, and ROI expectations.
People also ask

What healthcare companies are using generative AI?
Examples on the page include John Snow Labs itself (provider of healthcare-specific LLMs), the U.S. Department of Veterans Affairs, which partnered with John Snow Labs to mine clinical notes, and Atomwise, whose generative models predict drug–target interactions. More broadly, the article notes that hospitals, physician groups, and health-insurance firms are rolling Gen AI into daily operations to boost efficiency and outcomes.​
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johnsnowlabs.com
johnsnowlabs.com › home › generative ai in healthcare: use cases, benefits, and challenges
Generative AI in Healthcare: Use Cases, Benefits, Challenges of ...
What does “generative AI in healthcare” actually mean?
This is a type of AI with advanced algorithms that analyzes and synthesizes medical data from summarizing clinical histories to drafting treatment recommendations to deliver personalized and efficient patient care.
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johnsnowlabs.com
johnsnowlabs.com › home › generative ai in healthcare: use cases, benefits, and challenges
Generative AI in Healthcare: Use Cases, Benefits, Challenges of ...
What is generative AI for healthcare payers?
For insurers and health plans, generative AI is the engine that reads unstructured clinical documentation, auto-codes it, and drafts prior-auth or denial letters in seconds, turning a paper-heavy process into a near-instant, audit-ready digital flow. The same models surface potential fraud, verify benefits in real time, and cut administrative costs while keeping pace with tightening CMS e-prior-authorization mandates.
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johnsnowlabs.com
johnsnowlabs.com › home › generative ai in healthcare: use cases, benefits, and challenges
Generative AI in Healthcare: Use Cases, Benefits, Challenges of ...
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PubMed Central
pmc.ncbi.nlm.nih.gov › articles › PMC11739231
Generative Artificial Intelligence Use in Healthcare: Opportunities for Clinical Excellence and Administrative Efficiency - PMC
The generation of synthetic data opens new avenues for model training for diseases and simulation, enhancing research capabilities and improving predictive accuracy. In non-clinical contexts, Gen AI improves medical education, public relations, revenue cycle management, healthcare marketing etc.
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Springer
link.springer.com › home › implementation science › article
Generative AI in healthcare: an implementation science informed translational path on application, integration and governance | Implementation Science
March 15, 2024 - Another unique capability is that they can be used to perform unsupervised learning, which means that they can learn from data without explicit labels [8]. This can be useful in situations where labelled data is scarce or expensive to obtain. Furthermore, generative AI models can generate synthetic data by learning the underlying data distributions from real data and then generating new data that is statistically similar to the real data.
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Imaginovation
imaginovation.net › blog › use-cases-examples-generative-ai-healthcare
10 Real-World Use Cases of Generative AI in Healthcare
According to statistics, the cost of new drug development, including failed drugs, averages between 1 billion and 2 billion USD, and Gen AI can help the pharmaceutical industry save billions annually.
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Deloitte
deloitte.com › us › en › Industries › life-sciences-health-care › articles › generative-ai-in-healthcare.html
Generative AI to Reshape the Future of Health Care | Deloitte US
In recent years, natural language processing and machine learning have found applications in various health care use cases, but new Generative AI models are taking health care technology to new heights. These models demonstrate unprecedented capabilities in natural language generation, summarization, translation, insight retrieval, reasoning, and managing unstructured, unlabeled data.
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John Snow Labs
johnsnowlabs.com › home › generative ai in healthcare: use cases, benefits, and challenges
Generative AI in Healthcare: Use Cases, Benefits, Challenges of GenAI and Trends 2025
3 weeks ago - Generative AI has shown its ... According to McKinsey, GenAI can summarize large amounts of data from patient histories, freeing up healthcare professionals to focus on more complex patient needs....
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MDPI
mdpi.com › 2673-7426 › 5 › 3 › 37
Generative Artificial Intelligence in Healthcare: Applications, Implementation Challenges, and Future Directions
July 7, 2025 - Generative models can augment training datasets for diagnostic algorithms without risking patient confidentiality by generating realistic synthetic data that retains the statistical properties of real patient data.
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PubMed Central
pmc.ncbi.nlm.nih.gov › articles › PMC10960211
Generative AI in Medical Practice: In-Depth Exploration of Privacy and Security Challenges - PMC
Other advanced statistical and machine learning techniques attempt to balance data utility and privacy. Each method has its strengths and limitations, and the choice depends on the specific requirements of the health care application and the sensitivity of the data involved. The applications and challenges of generative AI in health care, including privacy issues and AI-human collaboration, are explored by Fui-Hoon et al [48]. They discuss several privacy issues related to generative AI, such as the potential disclosure of sensitive or private information by generative AI systems, the widening of the digital divide, and the collection of personal and organizational data by these systems, which raises concerns about security and confidentiality.
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Biomed Central
implementationscience.biomedcentral.com › counter › pdf › 10.1186 › s13012-024-01357-9.pdf pdf
Generative AI in healthcare
Generative AI models like generative adversarial networks (GANs) and large language models · (LLMs) are used to generate various data modalities including text and image data, which are then used for various scenarios including drug · discovery, medical diagnosis, clinical documentation, patient education, personalized medicine, healthcare administration and medical education
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Amazon Web Services
aws.amazon.com › industry › healthcare & life sciences
Generative AI in Healthcare & Life Sciences
2 weeks ago - Learn how to use Amazon Nova and the newly released RAG evaluation feature for Amazon Bedrock Knowledge Bases, to assess how well healthcare RAG applications retrieve and use medical information to generate accurate, contextually appropriate responses. Read the blog » · Learn how modern approaches, notably using Generative AI technology and modern data services can help us explore Real World Data (RWD) such as electronic health records or health insurance claims to simplify RWE generation.
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ITRex
itrexgroup.com › blog › top-generative-ai-in-healthcare-use-cases
Generative AI in Healthcare: Top Use Cases — ITRex
September 29, 2025 - According to research, generative AI shows big promise in healthcare; 40% of all healthcare working hours are consumed by natural language tasks—documentation, charting, and reporting—that large language models (LLMs) can transform.
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GenHealth
genhealth.ai
GenHealth.ai - Generative Healthcare AI
Chat with a 50 million patient population dataset to get instant insights, generate reports, and visualize trends with AI-powered analytics. ... GenHealth.ai is building AI for healthcare from the ground up.
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Brookings
brookings.edu › home › generative ai in health care: opportunities, challenges, and policy
Generative AI in health care: Opportunities, challenges, and policy | Brookings
January 31, 2024 - This content creation capability, coupled with the ease of use and accessibility provided through user-friendly interfaces, has led to a surge in its adoption and use by many professionals, including health care providers. The overreliance on digital information sources traditionally stemmed from patients seeking to better understand their conditions. Now, with generative AI, health care providers might also lean heavily on AI-assisted decision-making.
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BCG
bcg.com › publications › 2023 › how-generative-ai-is-transforming-health-care-sooner-than-expected
How Generative AI is Transforming Healthcare | BCG
May 30, 2024 - Biased Outputs. Generative AI results can reflect inherent biases in the underlying data. In response, generative AI companies need to assign experts to review the data and results and correct for bias through oversampling and other statistical techniques.
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BMJ Quality & Safety
qualitysafety.bmj.com › content › 33 › 11 › 748
Generative artificial intelligence, patient safety and healthcare quality: a review | BMJ Quality & Safety
November 1, 2024 - It is also clear these capabilities have direct applicability to healthcare and to improving quality and patient safety, even as they introduce new complexities and risks. Previously, AI focused on one task at a time: for example, telling whether a picture was of a cat or a dog, or whether a retinal photograph showed diabetic retinopathy or not. Foundation models (and their close relatives, generative AI and large language models) represent an important change: they are able to handle many different kinds of problems without additional datasets or training.
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AIMultiple
research.aimultiple.com › home › aimultiple research › genai applications
Generative AI Healthcare: 15 Use Cases with Examples
Medical training & education: AI-generated images can be used to train healthcare professionals by creating diverse datasets of rare diseases, anomalies, or normal variants that may not always be present in real-world cases.
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Nature
nature.com › npj digital medicine › brief communications › article
Generative AI costs in large healthcare systems, an example in revenue cycle | npj Digital Medicine
September 30, 2025 - Application of large language models in healthcare continues to expand, specifically for medical free-text classification tasks. While foundation models like those from ChatGPT show potential, alternative models demonstrate superior accuracy and lower costs. This study underscores significant ...
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Keragon
keragon.com › blog › ai-in-healthcare-statistics
AI in healthcare statistics: 62 findings from 18 research reports
June 12, 2025 - Let’s dive into the data to reveal the evolving landscape of artificial intelligence in healthcare market. ... The majority of data paints a picture of cautious yet growing overall adoption of generative AI in healthcare.
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U.S. GAO
gao.gov › products › gao-24-107634
Science & Tech Spotlight: Generative AI in Health Care | U.S. GAO
Clinical documentation. Generative AI can address a range of needs related to clinical documentation. Today, models can draft clinical notes in specified formats using a transcription of doctor-patient interactions. Researchers are also developing models that could compile and verify information in electronic health records to obtain insurance preauthorization.