Najat Khan
Management
Good morning, everyone, and thank you for joining us. Since stepping into this role, I've been focused on a singular question: how do we harness the full power of AI to consistently and with urgency create better medicines for patients? That requires bold ambition and a lot of focus and discipline to create value for patients and shareholders. And therefore, our approach has been deliberate. First, we're focusing on signal over noise, generating proof and proof points across our both wholly owned programs and our partner programs with the goal to showcase where AI can truly make a difference in creating value. Second, we are continuing to evolve our platform into a repeatable, AI-driven product engine, not tech for the sake of tech, but tech that creates products of value. And third, underpinning it all is a strong commitment to financial discipline and thoughtful capital allocation, ensuring we're constantly being data-driven to prioritize and invest in our highest conviction opportunities to deliver durable value. Today, I'm excited to share some of our updates. We're making meaningful progress across all these fronts, which I, along with Vicki and Ben, will share more with you today. With that, let's dive in. But before we do, please note that today we'll be making forward-looking statements on this call, and therefore, please refer to our SEC filings for more information. To put the progress in context, I think it's worth briefly stepping back to how we built the foundation to enable it. Look, Recursion has been on an intentional and, in many ways, a pioneering journey. Early on, Recursion recognized both the immense potential of AI in drug discovery as well as the reality that, unlike many other domains, the underlying foundation, whether it's data, compute, in biology, and broadly in science, is still being built. The map is still not complete, and that fundamentally changed how you think about applying AI. So we made a deliberate choice to invest ahead of the curve, to generate and curate proprietary data, which we'll talk about more today; to build a scaled compute infrastructure; to integrate automation; and very importantly, to develop models that are purposeful and in a true closed-loop, lab-in-a-loop system, a phrase that has become much more in vogue now, designed not just to predict, but to test, validate, and continuously learn. That has led to a differentiated foundation, which we continue to expand and refine today. But in parallel, what's critically important is our focus now on translating that foundation into tangible proof, advancing programs, high-quality candidates, and overall demonstrating repeatability as we evolve toward a truly product-focused AI engine. But let's make this all much more concrete. As a result, where are we today? What are some of the facts? So first, we have established our clinical proof of concept, our first clinical proof of concept, with our REC-4881 allosteric MEK1/2 inhibitor focused on FAP. We showed significant reduction in the precancerous polyps that are a huge driver of the progressive nature of the disease, as well as showing durability, something that's quite unique in the data we've shared to date. And why is this important? These are patients that have no therapeutic solutions to date and require life-altering surgeries and have near-inevitable CRC risk. This is a great example of how we can translate AI-directed insights from our platform into true outcomes. More on the latest there shortly. But look, this is not just a single asset story at Recursion. We now have 5 wholly-owned programs, each with clear inflection points over the next 12 to 18 months, creating not just a consistent cadence of catalysts, but then also a way for us to test, learn, and also be disciplined in our areas of programs that we invest in. And we'll share more data from one of these programs, REC-1245, our RBM39 degrader. But this momentum is not just in our wholly-owned pipeline. It also extends in our partnered portfolio. With over $500 million in inflows, and more importantly, I would say, 10 milestones delivered to date, I underscore that, it's one thing to announce partnerships, but we are really focused on delivering value from these partnerships, including many of which are first in industry. This underscores a track record of delivering tangible, differentiated outcomes, and we are deeply grateful to our partners for their close collaboration in everything that we do. Underpinning all of this is, of course, our platform, an end-to-end AI-native product engine across biology, chemistry, and clinical development, powered by proprietary data and a lab-in-the-loop system, and designed for repeatability. And I'll share some of the latest stats from our platform later in the presentation. And then importantly, look, we have to do this with focus and discipline, extending our runway into early 2028, while reducing our operating expenses by 30% year-over-year. This is how we are moving from promise to proof. So let me walk you through how it all comes together. How do we pull this together for the ultimate goal of delivering better medicines for patients? At the foundation is an AI-native product engine that combines proprietary multimodal data, integrated wet and dry labs, purpose-built models, and scale compute. Now we hear those words a lot, but what differentiates us is not one model, it's not one data set, it's not one program. It's the integration of our tools, technologies, and our teams. Look, our proprietary multimodal data has both proprietary data that we have generated in our labs, which we also integrate with public data. We sit in the sweet spot of leveraging both. Our automated wet labs in Salt Lake City and Milton Park, Oxford, for those that are not as familiar with Milton Park, are interconnected with purpose-built AI models, and we have in-house supercompute resources to rapidly build those algorithms and learn from them. And I have to say, and it's not just words, we truly mean it. Spanning all of this is our greatest resource, you've heard me say this over and over again, bilingual talent. AI researchers who appreciate the humility in making medicines and who bring a completely different take to how we can make medicines, and drug developers and drug hunters with reps under their belts that have seen what it really takes to make a drug from start to finish, and who are open-minded about unlocking the potential of AI. Make no mistake, the culture and the talent and the integration it takes is one of the hardest things to do in this space, and I'm excited that we've made so much great progress there. Now all these ingredients come together in a vertically integrated AI native platform, starting first, biology. So we can simulate and understand biology much more effectively. And we really want to move away from the stats that we only -- the industry only understands about 10% of biology. This is what allows us to identify novel targets. This is where we're pushing the boundaries to really understand the root cause of disease. The next click, this really came from the integration with Exscientia, applying generative chemistry and active learning and many other approaches to design precisionly created, differentiated molecules. This is what helps us create both first-in-class programs for those novel targets, as well as really high-value, best-in-class programs. For instance, optimizing therapeutic index for programs that have been around but haven't fully maximized their potential to date. And third, this is something we've built over the last year or so, applying our data and insights to also inform a smarter, more effective, and patient-centric path to all of clinical development. Look, all of this is great to have, but we take it together to build a broad and diversified portfolio, both internally and with our close partners, with the ultimate goal of developing differentiated medicines for patients with significant unmet need. We do it faster, and we want to do it better. But how do we do this? Our strategy remains unchanged from what you've heard the last time. We want to be clear, focused, disciplined, while being ambitious. First, translating proof to products. We are advancing our deep pipeline learnings, and the goal is to have revenue-generating medicines for patients. And we do it by applying a rigorous data-driven prioritization approach. so that we only invest behind the most highest confidence opportunities. Second, as you heard me say, scaling a differentiated AI-native product engine. Look, the platform is the heartbeat of so much that we do, where each prediction and experimentation allows us to compound our learning and advantage to drive repeatability in creating better products. And third is pairing that bold ambition with disciplined execution. Rigorous capital allocation is something we think about constantly, ensuring that there's operational focus and that our milestones are measurable to sustain that long-term value creation. You'll hear more about that shortly. So let's just dive in into one of our first pillars, which is our wholly-owned pipeline. Look, I'm proud to share how this strategy is beginning to translate into early signals of pipeline progress. What you see here is a broad and increasingly diverse set of programs built on 2 key areas: number one, clear rationale for differentiation, that's coming from a platform; and second, a defined path -- a rapid and defined path, I should say, to upcoming milestones and decision points. And the differentiation across these programs takes 2 forms: one, in some cases, it starts with a novel biological target or novel mechanistic insights. You'll see more of these coming from our discovery part of our platform; and then the other is driven by differentiated molecular design. And then the third, more recently, as we built up the clinical development AI platform, how we design, which patients do we pick, how do we design our protocols, and how do we execute in the clinic. Let me double-click some of the latest highlights from the last quarter on these slides, a period that is marked by strong and accelerating clinical momentum. So let's start with REC-4881. This is our allosteric MEK1/2 inhibitor. As you recall, this program is rooted in a novel mechanistic insight with the potential to become the first precision therapy for FAP. As I mentioned earlier, and I can't mention it enough, a serious and [ underserved ] condition where patients often face very limited treatment options and no medical or therapeutic options to date. We have generated compelling proof of concept, and we're continuing to advance the program with urgency and vigor, including we've already initiated FDA engagement to define a potential registrational path forward. We're very excited to share more update on this in the second half of this year. Next, turning to REC-1245. This is our platform-derived first-in-class target and degrader with the potential to address multiple solid tumors and lymphoma. We're excited to share today early clinical data around the safety, tolerability, and PK profile, as promised. To date, we have observed a well-tolerated profile with no dose-limiting toxicities to date. And we're continuing to advance the program with additional data expected later this year. In a few minutes, Dr. Vicki Goodman, our Chief Medical Officer, will walk through the details -- more in detail. And finally, REC-4539. This is our LSD1 inhibitor for the potential treatment in solid tumors, including small cell lung cancer and also in AML. What differentiates this program is the underlying molecule designed with our generative platform to overcome some of the treatment-limiting on-target toxicity seen to date in earlier LSD1 inhibitors. We've now initiated our Phase I clinical trial and dosed our first patient with additional updates coming second half of 2027. I'll talk more about the program, the biology, unmet need, as well as the platform insight shortly. All of the other programs remain on track. Now we're also continuing to see strong, consistent execution across our partner pipeline, where our platform is being applied in close partnership with our esteemed partners whose deep expertise, collaborations, and capabilities, we are deeply grateful for. And what's emerging, I want to highlight, is 2 potential unlocks. As an example with Sanofi, the unlock is use of AI on the chemistry design side, taking difficult and diverse protein targets in immunology and oncology, using our platform and AI in partnership with Sanofi to drug these challenging -- historically challenging targets. These programs are progressing towards key inflection points over the next 12 months, including a potential for development candidate, which is a big unlock in terms of potentially onboarding that asset to partners' portfolio. And with Roche and Genentech, the unlock is on the biology side. Roche and Genentech have been pioneers in really thinking about leveraging biology perturbation at scale to really take large-scale multimodal maps and translate them into actionable and validated programs. So the unlock here is you hear a lot around large-scale data sets being generated across the industry. Well, the unlock is how do we translate that using foundational models that we're building and robust experimental target validation into not only validated targets, but potential first-in-class programs, something the field has long aspired to do. So we have a potential first on track in the next 12 months or so. Look we've talked a lot about our wholly owned programs, our partnered programs, excited about the momentum we're building here, and about our platform that underscores it. But the secret sauce of any organization is talent. Talent is critical to everything we do, and continuing to build a strong, experienced, ambitious, and humble team is a key part of how we drive value. And with that, I'm really pleased to introduce newest member of our executive leadership team, Dr. Vicki Goodman, our new CMO. Vicki comes to us with an incredibly strong track record of delivering transformational medicines for patients across many parts of the industry, starting at the FDA, large pharma, and biotech. You can read about all her credentials on the slide, which I won't go through in detail. But simply put, Vicki is the right person with the right skill set to lead Recursion's clinical development in this next chapter of the journey, but more importantly, with the right heart and perseverance to go through the trials and tribulations that's drug discovery and development. With that, I'm going to turn it over to Vicki. Vicki, why don't you kick us off with a few words about joining Recursion and then more details about REC-1245.