Close Menu

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    What's Hot

    Ukraine drone barrage targets Moscow as Zelenskyy demands accountability for Putin

    June 8, 2025

    Multi-account support for Amazon SageMaker HyperPod task governance

    June 8, 2025

    Ukraine drone barrage targets Moscow as Zelenskyy demands accountability for Putin

    June 8, 2025
    Facebook X (Twitter) Instagram
    • Demos
    • Buy Now
    Facebook X (Twitter) Instagram YouTube
    14 Trends14 Trends
    Demo
    • Home
    • Features
      • View All On Demos
    • Buy Now
    14 Trends14 Trends
    Home » Clario enhances the quality of the clinical trial documentation process with Amazon Bedrock
    AI AWS

    Clario enhances the quality of the clinical trial documentation process with Amazon Bedrock

    adminBy adminApril 15, 2025No Comments8 Mins Read0 Views
    Facebook Twitter Pinterest LinkedIn Telegram Tumblr Email
    Share
    Facebook Twitter LinkedIn Pinterest Email


    This post is co-written with Kim Nguyen and Shyam Banuprakash from Clario.

    Clario is a leading provider of endpoint data solutions to the clinical trials industry, generating high-quality clinical evidence for life sciences companies seeking to bring new therapies to patients. Since Clario’s founding more than 50 years ago, the company’s endpoint data solutions have supported clinical trials more than 26,000 times with over 700 regulatory approvals across more than 100 countries. One of the critical challenges Clario faces when supporting its clients is the time-consuming process of generating documentation for clinical trials, which can take weeks.

    The business challenge

    When medical imaging analysis is part of a clinical trial it is supporting, Clario prepares a medical imaging charter process document that outlines the format and requirements of the central review of clinical trial images (the Charter). Based on the Charter, Clario’s imaging team creates several subsequent documents (as shown in the following figure), including the business requirement specification (BRS), training slides, and ancillary documents. The content of these documents is largely derived from the Charter, with significant reformatting and rephrasing required. This process is time-consuming, can be subject to inadvertent manual error, and carries the risk of inconsistent or redundant information, which can delay or otherwise negatively impact the clinical trial.

    Document Flow

    Clario’s imaging team recognized the need to modernize the document generation process and streamline the processes used to create end-to-end document workflows. Clario engaged with their AWS account team and AWS Generative AI Innovation Center to explore how generative AI could help streamline the process.

    The solution

    The AWS team worked closely with Clario to develop a prototype solution that uses AWS AI services to automate the BRS generation process. The solution involves the following key services:

    • Amazon Simple Storage Service (Amazon S3): A scalable object storage service used to store the charter-derived and generated BRS documents.
    • Amazon OpenSearch Serverless: An on-demand serverless configuration for Amazon OpenSearch Service used as a vector store.
    • Amazon Bedrock: Amazon Bedrock is a fully managed service that offers a choice of high-performing foundation models (FMs) from leading AI companies through a single API, along with a broad set of capabilities you need to build generative AI applications with security, privacy, and responsible AI. Using Amazon Bedrock, you can experiment with and evaluate top FMs for your use case, privately customize them with your data using techniques such as fine-tuning and Retrieval Augmented Generation (RAG) and build agents that execute tasks using your enterprise systems and data sources.

    The solution is shown in the following figure:

    Solution Overview

    Architecture walkthrough

    1. Charter-derived documents are processed in an on-premises script in preparation for uploading.
    2. Files are sent to AWS using AWS Direct Connect.
    3. The script chunks the documents and calls an embedding model to produce the document embeddings. It then stores the embeddings in an OpenSearch vector database for retrieval by our application. Clario uses an Amazon Titan Text Embeddings model offered by Amazon Bedrock. Each chunk is called to produce an embedding.
    4. Amazon OpenSearch Serverlessis used as the durable vector store. Document chunk embeddings are stored in an OpenSearch vector index, which enables the application to search for the most semantically relevant documents. Clario also stores attributes for the source document and associated trial to allow for a richer search experience.
    5. A custom build user interface is the primary access point for users to access the system, initiate generation jobs, and interact with a chat UI. The UI is integrated with the workflow engine that manages the orchestration process.
    6. The workflow engine calls the Amazon Bedrock API and orchestrates the business requirement specification document generation process. The engine:
      • Uses a global specification that stores the prompts to be used as input when calling the large language model.
      • Queries OpenSearch for the relevant Imaging charter.
      • Loops through every business requirement.
      • Calls the Claude 3.7 Sonnet large language model from Amazon Bedrock to generate responses.
    7. Outputs the business requirement specification document to the user interface, where a business requirement writer can review the answers to produce a final document. Clario uses Claude 3.7 Sonnet from Amazon Bedrock for the question-answering and the conversational AI application.
    8. The final documents are written to Amazon S3 to be consumed and published by additional document workflows that will be built in the future.
    9. An as-needed AI chat agent to allow document-based discovery and enable users to converse with one or more documents.

    Benefits and results

    By using AWS AI services, Clario has streamlined the complicated BRS generation process significantly. The prototype solution demonstrated the following benefits:

    • Improved accuracy: The use of generative AI models minimized the risk of translation errors and inconsistencies, reducing the need for rework and study delays.
    • Scalability and flexibility: The serverless architecture provided by AWS services allows the solution to scale seamlessly as demand increases, while the modular design enables straightforward integration with other Clario systems.
    • Security: Clario’s data security strategy revolves around confining all its information within the secure AWS ecosystem using the security features of Amazon Bedrock. By keeping data isolated within the AWS infrastructure, Clario helps ensure protection against external threats and unauthorized access. This approach enables Clario to meet compliance requirements and provide clients with confidence in the confidentiality and integrity of their sensitive data.

    Lessons learned

    The successful implementation of this prototype solution reinforced the value of using generative AI models for domain-specific applications like those prevalent in the life sciences industry. It also highlighted the importance of involving business stakeholders early in the process and having a clear understanding of the business value to be realized. Following the success of this project, Clario is working to productionize the solution in their Medical Imaging business during 2025 to continue offering state-of-the-art services to its customers for best quality data and successful clinical trials.

    Conclusion

    The collaboration between Clario and AWS demonstrated the potential of AWS AI and machine learning (AI/ML) services and generative AI models, such as Anthropic’s Claude, to streamline document generation processes in the life sciences industry and, specifically, for complicated clinical trial processes. By using these technologies, Clario was able to enhance and streamline the BRS generation process significantly, improving accuracy and scalability. As Clario continues to adopt AI/ML across its operations, the company is well-positioned to drive innovation and deliver better outcomes for its partners and patients.


    About the Authors

    Kim Nguyen serves as the Sr Director of Data Science at Clario, where he leads a team of data scientists in developing innovative AI/ML solutions for the healthcare and clinical trials industry. With over a decade of experience in clinical data management and analytics, Kim has established himself as an expert in transforming complex life sciences data into actionable insights that drive business outcomes. His career journey includes leadership roles at Clario and Gilead Sciences, where he consistently pioneered data automation and standardization initiatives across multiple functional teams. Kim holds a Master’s degree in Data Science and Engineering from UC San Diego and a Bachelor’s degree from the University of California, Berkeley, providing him with the technical foundation to excel in developing predictive models and data-driven strategies. Based in San Diego, California, he leverages his expertise to drive forward-thinking approaches to data science in the clinical research space.

    Shyam Banuprakash serves as the Senior Vice President of Data Science and Delivery at Clario, where he leads complex analytics programs and develops innovative data solutions for the medical imaging sector. With nearly 12 years of progressive experience at Clario, he has demonstrated exceptional leadership in data-driven decision making and business process improvement. His expertise extends beyond his primary role, as he contributes his knowledge as an Advisory Board Member for both Modal and UC Irvine’s Customer Experience Program. Shyam holds a Master of Advanced Study in Data Science and Engineering from UC San Diego, complemented by specialized training from MIT in data science and big data analytics. His career exemplifies the powerful intersection of healthcare, technology, and data science, positioning him as a thought leader in leveraging analytics to transform clinical research and medical imaging.

    John O’Donnell is a Principal Solutions Architect at Amazon Web Services (AWS) where he provides CIO-level engagement and design for complex cloud-based solutions in the healthcare and life sciences (HCLS) industry. With over 20 years of hands-on experience, he has a proven track record of delivering value and innovation to HCLS customers across the globe. As a trusted technical leader, he has partnered with AWS teams to dive deep into customer challenges, propose outcomes, and ensure high-value, predictable, and successful cloud transformations. John is passionate about helping HCLS customers achieve their goals and accelerate their cloud native modernization efforts.

    Praveen Haranahalli is a Senior Solutions Architect at Amazon Web Services (AWS) where he provides expert guidance and architects secure, scalable cloud solutions for diverse enterprise customers. With nearly two decades of IT experience, including over ten years specializing in Cloud Computing, he has a proven track record of delivering transformative cloud implementations across multiple industries. As a trusted technical advisor, Praveen has successfully partnered with customers to implement robust DevSecOps pipelines, establish comprehensive security guardrails, and develop innovative AI/ML solutions. Praveen is passionate about solving complex business challenges through cutting-edge cloud architectures and helping organizations achieve successful digital transformations powered by artificial intelligence and machine learning technologies.



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    admin
    • Website

    Related Posts

    Multi-account support for Amazon SageMaker HyperPod task governance

    June 8, 2025

    Implement semantic video search using open source large vision models on Amazon SageMaker and Amazon OpenSearch Serverless

    June 7, 2025

    Build a serverless audio summarization solution with Amazon Bedrock and Whisper

    June 7, 2025

    Modernize and migrate on-premises fraud detection machine learning workflows to Amazon SageMaker

    June 6, 2025

    How climate tech startups are building foundation models with Amazon SageMaker HyperPod

    June 5, 2025

    Impel enhances automotive dealership customer experience with fine-tuned LLMs on Amazon SageMaker

    June 4, 2025
    Leave A Reply Cancel Reply

    Demo
    Top Posts

    ChatGPT’s viral Studio Ghibli-style images highlight AI copyright concerns

    March 28, 20254 Views

    Best Cyber Forensics Software in 2025: Top Tools for Windows Forensics and Beyond

    February 28, 20253 Views

    An ex-politician faces at least 20 years in prison in killing of Las Vegas reporter

    October 16, 20243 Views

    Laws, norms, and ethics for AI in health

    May 1, 20252 Views
    Don't Miss

    Ukraine drone barrage targets Moscow as Zelenskyy demands accountability for Putin

    June 8, 2025

    LONDON — At least 10 Ukrainian drones were shot down on their approach to Moscow…

    Multi-account support for Amazon SageMaker HyperPod task governance

    June 8, 2025

    Ukraine drone barrage targets Moscow as Zelenskyy demands accountability for Putin

    June 8, 2025

    Canada’s first astronaut and former Foreign Minister Marc Garneau dies at 76

    June 8, 2025
    Stay In Touch
    • Facebook
    • Twitter
    • Pinterest
    • Instagram
    • YouTube
    • Vimeo

    Subscribe to Updates

    Get the latest creative news from SmartMag about art & design.

    Demo
    Top Posts

    ChatGPT’s viral Studio Ghibli-style images highlight AI copyright concerns

    March 28, 20254 Views

    Best Cyber Forensics Software in 2025: Top Tools for Windows Forensics and Beyond

    February 28, 20253 Views

    An ex-politician faces at least 20 years in prison in killing of Las Vegas reporter

    October 16, 20243 Views
    Stay In Touch
    • Facebook
    • YouTube
    • TikTok
    • WhatsApp
    • Twitter
    • Instagram
    Latest Reviews
    Demo
    About Us
    About Us

    Your source for the lifestyle news. This demo is crafted specifically to exhibit the use of the theme as a lifestyle site. Visit our main page for more demos.

    We're accepting new partnerships right now.

    Email Us: info@example.com
    Contact: +1-320-0123-451

    Facebook X (Twitter) Pinterest YouTube WhatsApp
    Our Picks

    Ukraine drone barrage targets Moscow as Zelenskyy demands accountability for Putin

    June 8, 2025

    Multi-account support for Amazon SageMaker HyperPod task governance

    June 8, 2025

    Ukraine drone barrage targets Moscow as Zelenskyy demands accountability for Putin

    June 8, 2025
    Most Popular

    ChatGPT’s viral Studio Ghibli-style images highlight AI copyright concerns

    March 28, 20254 Views

    Best Cyber Forensics Software in 2025: Top Tools for Windows Forensics and Beyond

    February 28, 20253 Views

    An ex-politician faces at least 20 years in prison in killing of Las Vegas reporter

    October 16, 20243 Views

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    14 Trends
    Facebook X (Twitter) Instagram Pinterest YouTube Dribbble
    • Home
    • Buy Now
    © 2025 ThemeSphere. Designed by ThemeSphere.

    Type above and press Enter to search. Press Esc to cancel.