Clinical trial platform


Build vs buy: A guide on adopting AI agents for life sciences
“Big corporations can’t rely on their internal speed to match the transformation that is happening in the world. As soon as I know a competitor has decided to build something itself, I know it has lost.”
These candid sentences from Sanofi CEO, showcase one of the most common questions that’s at the forefront of every pharmaceutical company’s mind; whether to build or buy your way into the agentic and generative AI revolutions.
In life sciences, many teams start with the same instinct. They see a capable large language model, stand up a proof of concept, and feel close to a breakthrough. For most of us, AI prototypes can look magical. A chatbot summarizes visit reports, drafts emails, or answers protocol questions in minutes. The experience is so strong that teams assume production is a short step away.
Unfortunately, the gap is much bigger than it looks.
According to a recent MIT study, 95% of AI pilots will fail, as they note that “Only 5% of custom GenAI tools survive the pilot-to-production cliff, while generic chatbots hit 83% adoption for trivial tasks but stall the moment workflows demand context and customization.”
Like MIT’s example shows, moving from prototype to production in clinical research means building something validated, compliant, scalable, and integrated into real workflows. That takes far more than clever prompts. It requires domain grounding, continuous monitoring, retraining loops, robust tool orchestration, and evidence that the system is safe and auditable under regulations like GxP, HIPAA, and 21 CFR Part 11.
Many organizations only discover the hidden costs after they have committed. Internal teams often invest for two years, spend millions in sunk cost, and still never reach a dependable clinical grade system. The illusion comes from how easy it is to get an early demo working, and how hard it is to make that demo survive contact with trial reality.


Rapid evolution: How DCT’s DNA became standard in modern clinical trials
It’s impossible to deny how different clinical trials look almost four years after the pandemic revolutionized clinical research. Today, the digital and decentralized tools and technologies that enabled clinical trials to carry on through the COVID-19 pandemic are present (in some form) in nearly all clinical trials, a far cry from the dynamics of 2019.

Medable platform speeds diabetes study startup by 50%
A top 10 pharmaceutical company approached Medable seeking support for their Phase III diabetes study in the highly competitive weight loss market. Their primary goal was toreduce the client’s average study build timelines from 16-20 weeks, down to just 8 weeks,a reduction of more than 50%.
See how Medable was able to meet the customer's goal with this case study.


Unlocking scalability in pharma with AI
What is the path to addressing the remaining 10,000 human diseases?
Almost two years ago, Medable CEO Michelle Longmire asked this question in a blog titled “Accelerating the path from possibility to proof in the development of new medicines.” Back then, she wrote that leveraging the most meaningful tools we had at the time would drive new synergies at the intersection of safety, science, and speed and enable a new era of drug development.
Today, our industry stands at the precipice of a new era in clinical research, marked by rapid advancements in technologies that society widely refers to as artificial intelligence and machine learning (AI and ML). While each of these technologies has existed for some time, recent advancements in their capabilities have brought them to the forefront of our industry.
In the future, AI and ML may prove to be the most important technologies of our time, as they have the potential to enable true scalability in pharma, as well as other business sectors.


DCT Digital Week: Creating the Digital Foundation for Scale in Clinical Development
Learn how sponsors and CROs can improve their clinical trial conduct by developing new strategies that create sustainable, repeatable, and effective clinical conduct.
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