AI has now the attention of CEO!
Pascal BOUQUET
Digital Health Transformation and Technology Leader | Health & Life Science | Tech Platforms | Software Engineering
I had the opportunity to explore the canyons in the American West over the past two weeks and reflect on the concept of time, the grandeur of nature, and the steps that humanity has taken and has yet to take. Against this backdrop, the news from the last two weeks may seem insignificant in the grand scheme of things, but every contribution plays a part in shaping the future advancements of healthcare technology. The last two weeks have been quite intense for the Tech Healthcare industry with many conferences ( in Paris, Global Annual meeting in Boston, in Vegas) and many articles in the press. In an effort to summarize all the recent developments, I have done my best to capture the key points below.
Artificial Intelligence
AI has now the attention of CEO
While Sanofi Goes All-In On AI, The CEO of pharma giant Eli Lilly shares 3 ways AI could transform his industry and the recent traction of ChatGPT, Bard and other generative AI technologies has caught the CEO's attention. Many articles detail the use cases for AI in healthcare, and as an example the WEF Report Addresses the Role Of AI In Healthcare and Pharmaforum publishes on AI in healthcare. As mentioned by John Nebergall in Health data management, “We’re at the beginning of the hype cycle for AI in healthcare, and the push to adopt the latest offering — namely, ChatGPT — is strong. But determining the right use cases for large-language models in healthcare is, at best, a work in progress.” And, for those interested to go deeper into Generative AI, Andrew Ng has just released a new course on created with : Generative AI with Large Language Models. This course goes deep into the technical foundations of LLMs and how to use them. If you are interetsed, you can sign up here. For the one looking for a book for this summer, you can follow Vas Narasimhan recommendation " The AI Revolution in Medicine: GPT-4 and Beyond" by Peter Lee, Carey Goldberg, and Isaac Kohane.?
Causal AI
Causal AI, also known as Causal Inference or Causal Machine Learning, is a field of artificial intelligence that aims to understand cause-and-effect relationships within data. It goes beyond correlation and attempts to identify the underlying causal factors driving observed outcomes. In the context of healthcare, causal AI has significant implications. It can help researchers and healthcare professionals gain insights into the effectiveness of treatments, interventions, and policies by determining the causal impact of specific factors on patient outcomes. It goes beyond identifying associations and aims to establish causal relationships between variables. One of the leader, Aitia ( was rebranded as beginning 2023), will present at the upcoming Alzheimer’s Association International Conference (AAIC) being held from July 16-20 in Amsterdam, Netherlands "Alzheimer’s Disease Mechanistic Pathways Discovered through Aitia’s Digital Twins and in silico Experiments in Causal AI to be Presented at AAIC 2023". The global causal AI market is projected to grow from USD 8.01 million in 2023 to USD 119.5 million by 2030, with a CAGR of 47.1% during the forecast period. The Global Causal AI Market Report 2023 has been released and the healthcare and life sciences sector is expected to be the largest market, driven by the adoption of causal AI in drug discovery, patient diagnosis, personalized medicine, and more, while on-premises deployment and training, support, and maintenance services are anticipated to contribute significantly to market growth.
AI assisting healthcare personnel
AI-assisted healthcare offers numerous benefits such as improved diagnosis accuracy, personalized treatment plans, and increased efficiency. However, it also comes with risks including privacy concerns, algorithmic bias, and overreliance on technology. The use cases for AI in healthcare are expanding rapidly, but cautious implementation is necessary to ensure ethical considerations and human oversight, maximizing the benefits while mitigating potential risks. A number of announcements have been done in the last two weeks:
Responsible AI
All this is good, but Zac Amos writes about Who Is Responsible If Healthcare AI Fails? Depending on the situation, it could be the AI developer, a healthcare professional or even the patient. Liability is an increasingly complex and serious concern as AI becomes more common in healthcare. Who is responsible for AI gone wrong and how can accidents be prevented?
On the same length, Diagnostic Robotics, a provider of AI solutions for healthcare, has filed a public comment in response to the U.S. Department of Commerce's request for expert feedback on developing an AI accountability ecosystem. The company highlights concerns about bias in AI systems and the need to differentiate between fake and real data, emphasizing the importance of ethics guidelines and accountability measures to promote trustworthy AI in healthcare and other critical domains
Data
Tokenization and data linkage
Data linkage with tokens, as done by companies like DataVant and HealthVerity, is a method used to connect and correlate data from multiple sources while preserving privacy. It involves the use of tokenization techniques generated using attributes such as first name, last name and date of birth. The tokenization process ensures that the same individual or entity is consistently represented by the same token across different datasets.This is a useful technique for Pharma to enrich trial analysis with get long-term follow-up on efficacy and safety data, or perform retrospective cohort analysis. Datavant made several announcement: a partnership with Atropos Health, the leader in generating personalized real-world evidence at the point and pace of care, that will extend access to the Atropos Evidence Platform to members of the ecosystem. Another collaboration with OMNY Health has been announced?to Accelerate Delivery of Real-World Data between Healthcare Stakeholders to Enhance Clinical Research and Drug Development
Zero trust and confidential computing
Zero-trust and confidential computing capabilities are crucial in healthcare to protect patient data and ensure privacy. emphasizes continuous authentication and access controls, treating all users and devices as untrusted. Confidential computing secures data while it is being processed, allowing for secure collaborations and data sharing. By implementing these approaches, healthcare organizations can strengthen their security posture, enable secure data processing, and protect patient privacy in an increasingly connected healthcare landscape.
#BeekeeperAI has raised $12.1 million in Series A funding to accelerate the development of AI on privacy-protected healthcare data. The company's EscrowAI platform, which integrates Azure confidential computing capabilities, enables secure collaboration workflows between AI developers and privacy stewards, addressing challenges related to data sovereignty, security, and intellectual property protection. The funding will be used to expand the features of EscrowAI and support the growing demand for zero-trust computing environments in healthcare and regulated data industries.
Data Sharing
Databricks Announces New Partners to Accelerate Data Sharing: has announced new partnerships with Cloudflare, Dell, Oracle, and Twilio to expand its Delta Sharing ecosystem, allowing for secure and open data sharing across platforms. Delta Sharing enables organizations to share and consume live data sets without dependencies on specific services, facilitating collaboration and accelerating data-driven insights.
The National Institutes of Health (NIH) has released a new data-management and data-sharing policy to address challenges with public health data interoperability. The policy aims to increase accessibility and improve data interoperability across the diverse IT systems within NIH and its network of partners in the public health community. Implementation of the policy will depend on effective collaboration, community engagement, and the ability to adapt as the policy evolves. Note this interesting NIH publishing on understanding the value of secondary research data
Data Privacy and security
Platform
Clinical Trial Platform
Integrating more AI into clinical trial platforms holds significant potential benefits, particularly in automating clinical data review and management processes. By leveraging AI technologies, such as natural language processing, generative AI and machine learning, clinical trial platforms can streamline and expedite the review of large volumes of clinical data, enhance data quality and accuracy, and improve overall efficiency in managing clinical trial information. This can ultimately lead to faster and more effective decision-making, reduced administrative burden, and enhanced patient safety in the drug development process. Several companies are making progress on this front:
Engineering
Technology and engineering play a pivotal role in healthcare and AI, which is why I have decided to introduce a dedicated section in this newsletter to highlight some the latest news and advancements in this field. `
Calibo
Calibo offers an exceptional self-service platform that enables seamless orchestration and automation of any tech stack, resulting in over 50% reduction in time-to-market for data and digital applications. Having personally tested this solution last year, I can confidently say that it is an excellent platform for managing the lifecycle of digital products, automating deployments, and monitoring solutions. Moreover, the highly skilled and customer-focused Calibo team ensures a smooth experience. If you are seeking to streamline your end to end digital product lifecycle, to deliver faster, to manage the complexity of the technology stacks while deploying, and to have everything in one place (From design to deployment), is definitely worth exploring. Following snowflake Vegas 2023, more on Calibo here
OpenAI Wants to Be an App-Dev Platform
New York — Attendees of QCon in New York got a preview of where the exciting world of Large Language Model-based AI may be going.
OpenAI showcased a new feature called Functions for ChatGPT, allowing developers to connect the language model with external services and perform actions on behalf of users. By expanding the capabilities of ChatGPT through Functions, OpenAI is addressing a previous limitation of the model's knowledge, extending its usefulness beyond its pre-2022 knowledge base. Indeed, by integrating with third-party services like Yelp, ChatGPT can retrieve real-time data and provide formatted results, indicating OpenAI's intention to position itself as an app development platform for developers. More on using ChatGPT functions here and a code snippet below:
Science CDO - Head of AI/ML for Drug R&D ??- Bridging Science ??, Data ??, and Technology (AI) ?? to Help Life Sciences Companies Bring Better Products ?? to Market Faster - Linkedin Pharma Top 1%
1 年Great article Pascal BOUQUET! and very good summary of where we are at 8 months post ChatGPT launch. Not that AI didn't exist before, but it has definitely raised the interest by a few notch, and helped to get it as item #1 on every CEOs priority list.
Cc Ingrid Dufour, MBA
CxO, CDAO, Entrepreneur, Board member
1 年Awesome article. This space is moving very fast and there is so much to learn to give confidence to patient, professionals and regulators. It is like the cloud 10 years ago, we will all adopt overtime. Embrace the change and work to provide answers to people fesrs.
Linkedin Top Voice ? Marketing & AI Executive ? Ex-Google, YouTube, P&G ? Global Keynote Speaker & Trainer
1 年Great resource Pascal BOUQUET - keep it coming. We need to discuss AI in healthcare - and this wave of change cannot be ignored. It needs to be discussed. It needs to be seized. And it needs to be used to move the industry forward.
VP // Lead Life Sciences incubator at global Invent, specialized in data, AI, and R&D transformation
1 年Thanks Pascal BOUQUET for sharing this summary. Thorsten Alexander Rall Charlotte Pierron-Perlès Damien Vossion Sébastien Tourlet, PhD Ivana Knyght