Good morning, everyone. Welcome to today's webcast where we will review the preclinical data from our CDC-seven program that was presented on Saturday at the virtual AACR Annual Meeting. We'll also provide an overview of 2 other internal programs, MALT-one and V1, as well as highlight the role of our computational platform in accelerating the discovery of our novel molecules. Please note that portions of today's discussion, including our responses to questions, may include forward looking statements about our future expectations and plans, including the speed and capacity of our platform, the clinical potential of our internal programs, the favorable properties of the inhibitors we have identified, our clinical development plans and our operational plans and strategies. Our actual results may differ materially from what we describe today due to a number of important factors, including the considerations described in the Risk Factors section of our Form 10 ks and in other filings that Schrodinger makes with the SEC from time to time.
These forward looking statements represent our views only as of today and we caution you that we may not update them in the future whether as a result of new information, future events, or otherwise. Before we begin our discussion, I'd like to point out the Q and A box on the bottom of the website platform. You have the opportunity to type in questions in this box at any time throughout our discussion and we'll do our best to answer everyone's questions. If we don't have time to get to your question, we'll try to follow-up with you after the program has ended. Additionally, there will be a full recording of today's webcast archived in the Investors and Media section of the Schrodinger's website for the next week.
And now, I'll turn the program over to our CEO, Ramy Fareed.
Thank you, Jaron, and thanks everyone for joining us on today's webcast. Let me start by giving you a high level overview of Schrodinger. We've developed a computational platform that is transforming the way therapeutics and materials are discovered. The platform is enabling our customers and our internal drug discovery team to discover high quality molecules for drug development and materials applications faster and at lower cost with a higher success probability compared to traditional methods. So we have a software business where we license our platform to pharmaceutical companies, biotech companies, Materials companies, universities and government labs worldwide.
And we're also leveraging our platform and a number of drug discovery programs in collaboration with pharma companies and biotech companies, some of which we've actually co founded. And we also have an internal drug discovery pipeline, as Jared mentioned, that we'll be telling you much more about shortly. So the computational platform that we've developed is having a significant impact on drug discovery programs as you can see in this slide. So in traditional in traditionally run drug discovery, It's typical for about 5,000 molecules to be synthesized and when successful, it can take 4 to 6 years to get to a development candidate and it's still off of the case that those development candidates have issues. So by leveraging our platform at Scale, and that's a very important point, and you'll see that shortly.
We and our partners are able to explore billions of molecules computationally, synthesizing far few, only about 1,000 molecules, and it takes about half the time to get to a development candidate and this is key with high quality molecules. So we're continuing to invest heavily in advancing the science underlying our computational platform with the aim of approaching the ultimate goal of computing with high accuracy, and again, that's very important, you'll see that shortly, all relevant molecular properties on as much of chemical space as possible. And so the point here is that the more molecules you can floor. And the more properties we can compute with high accuracy, the more likely it will be that we can rapidly discover high quality drug candidates. So to give you a sense of what the next decade might look like, it's useful to See how we got to where we are now.
So as you all know, of course, computer performance has been increasing exponentially for a long time. That we're all very well aware of. But what may be less well known is that, for example, the number of proteins in the human genome for which we know the three-dimensional structure has also been increasing exponentially. The number of compounds we can explore computationally has also been increasing exponentially, wet around $100,000,000,000 or so. And again, Robert's going to cover that in more detail shortly.
As has the number of properties that we can compute with near experimental accuracy. Again, we'll cover this in more detail shortly. So what does all this mean? What it means is that we can reasonably predict that within the next decade or so, Computers will be potentially more than a 100 times faster than they are today, which is kind of incredible. High resolution protein structures.
And that point is very important. High resolution protein structures of approximately 50% of the human genome will be available. There'll be approximately 10 or so molecular properties that we can compute with experimental accuracy. And this may all lead in the next decade to us being able to reliably discover extremely high quality development candidates potentially within a year from program launch. So it's Clearly a really exciting time for computationally driven drug discovery and in general molecular design.
So we'll continue to advance our computational platform to realize the vision for the future that I just described on the previous slide. We'll continue to license our computational platform to pharma and biotech companies. We'll continue to advance our collaborative drug discovery programs and initiate new ones. We'll continue to license our platform to material science companies. We'll continue to advance our internal drug discovery programs and initiate new ones.
Can you hear about that shortly? And we expect in the future to initiate material science collaborations as we did about 15 years ago with drug discovery collaborations. So I'd now like to hand it over to Karanakhinsanya, our Chief Biomedical Scientist and Robert Abel, our Chief computational scientist who will tell you more about our platform and our collaborative and internal drug discovery programs.
Thank you, Rami. As described, our computational platform supports and underpins All the activities Rami was describing, we have here depicted how we use our computational platform to accelerate drug discovery. On the far left of this slide you can see how our technology support HIT identification using combined methods that leverage both physics based methods and machine learning capabilities. Once we find those hits, the first order of business is typically to determine binding modes For those hits that can be done either by way of working with partners to experimentally determine structures or to use the physics based methods themselves to determine the binding modes of the molecules. Once we have the binding modes of the hits in the context of the protein target, we can then use the full power of the platform to perform large scale ideation where we can enumerate all the various synthetic derivative molecules that a project team might want to consider to further optimize those hits into molecules that might be advanced into in vivo studies or clinic with confidence.
Once we've Ideated those molecules we can use to combine the physics based and machine learning methods to do multi parameter optimization where we are finding those few molecules that will have the right potency selectivity and other property balance such that they can be advanced forward into synthesis This is an assay with confidence. This cycle is iterated as the project team obtains more experimental data regarding constellation of properties that are necessary to have those molecules that can be advanced in the clinic. We iterate around the cycle doing new large scale ideations and new multi parameter optimizations to triangulate those molecules that will be most exciting to advance the discovery project. Key capability that allows us to progress these projects is to combine the accuracy of physics based methods with the speed of machine learning. We have here depicted an example of how we combine these methods.
So for example, if we want to evaluate A space, a chemical space of a 1,000,000,000 molecules advancing a 1,000,000,000 molecules into full physics based Computational methods, full free energy calculations is not computationally feasible, but we can easily evaluate a representative sampling of A 1,000 such molecules in a day once we have the sampling of the full space of interest we can build machine learning models, approximate machine learning models which then can advance an improved subset of that full chemical space into full free energy calculations in this instance 5,000 molecules. And then based on retrospective profiling of the accuracy of these methods of those 5,000 that are advanced into fall free energy calculations, We would easily find 10 that look very very promising and then based on the accuracy of the physics based methods typically about 8 out of those 10 would be optimized along the property dimensions most interesting the drug discovery project and would materially advance that discovery project targets endpoints. And now I'd like to hand this discussion over to Karen Akinsanya who will describe how we use these methods to advance or active discovery projects.
Thank you, Robert. So as Ramy alluded to in his comments, we have been deploying this platform for a number of years. In fact, over the last 15 years, We've engaged in collaborative drug discovery with a number of companies. And on this slide, you can see the large number of Programs that we've been working on in those collaborations. And I think just to point out a few things, as Ramy described, These projects have an average life cycle from initiation to development candidate declaration of about 2 to 3 years.
You can also see that we've worked with small biotechs as well as large pharma who in many cases have access to the software themselves but using it at the scale we do is how these collaborations have been conducted. And I think the other thing to point out before I move on is that the targets that are the subject of these drug discovery projects, cover a wide range of different target classes, protein classes, some of these are, GTCRs, kinases, integrins, it's a very large array of different targets. So, I'm going to move on from this slide just to describe as Rami also indicated that we have our own internal drug discovery programs. We do obviously still collaborate but we have initiated an internal pipeline and today we will be describing 3 of our advanced programs CDC7, V1 and MALT1. In addition, since we kicked off our internal program efforts Under 3 years ago, we had also worked on a number of other projects, several of which actually were subject to a collaboration that we announced last year with Bristol Myers Squibb.
So I'm going to move on now to describe our CDC 7 program. This was the subject of an AACR presentation this weekend. CDC-seven inhibition, we view as an interesting mechanism that allows one to exploit replication stress. CDC-seven itself is a kinase that is important in the initiation of DNA replication and we view as an attractive target for cancer therapy. Overexpression has been noted in a number of solid tumor types including ovarian lung and triple negative breast cancers and there are a number of studies that have been conducted with CDC7 both in CDX, PDX and in Phase 1b studies.
CDC7 is interesting because if you inhibit this kinase It prolongs the S phase progression which actually allows you to sort of influence the fate of cancer cells. Cancer cells are particularly vulnerable because they have a lot of DNA damage repair and when you inhibit CDC7 this can drive them towards mitotic abnormalities and ultimately apoptosis. It's important to note that CDC-seven Has been of interest for quite some time. Actually if you look back to the 2000s, there are descriptions in the patent literature of CDC-seven inhibitors. Interestingly these were not as potent and indeed had a challenge in terms of PK and selectivity.
The last generation of CDC-seven inhibitors discovered were definitely more potent, but in addition still had some challenges with regard to PK and or poor selectivity. So the goal of our program has been to identify PKMOLA inhibitors with improved drug like properties. And I'm going to hand back to Robert now who will describe of how we arrived at our lead molecules.
So to meet the challenge outlined by Karen to identify these very tight binding CDC7 Inhibitors, we used our computational platform to ideate and triage over, 74,000,000 derivative molecules So the initial hits we had used our platform to discover versus this target, those 74,000,000,000 subsets, almost 6 1,000 were progressed to very sophisticated physics based modeling techniques, which were utilized not just to optimize potency, But to simultaneously optimize the balance of the potency, the selectivity and the permeability of these molecules, Leveraging the accuracy of those physics based methods only 226 compounds had to be advanced to synthesis and assay in order to identify DC quality matter. And in fact, those compounds include what is to our knowledge the most potent and ligand efficient inhibitor ever discovered for CDC-seven. And now I'll hand things back to Karen to I have in detail some of the experimental profiling of these compounds.
Thanks Robert. So over the next few slides I'll describe the characteristics of the compounds that we're advancing. First of all, you can see in this slide that we have very potent inhibitors that are piquimolar in nature. So this is a survey of several compounds that we have characterized where you can see that both by biochemical assay in terms of The ADP glow we've seen a very nice potency but in addition we've characterized the biophysics that shows that if you look at binding of CDC7, Dbf4, again you can see by SPR very nice 10 picomolar KD. It's also worth noting the T halves where we see a variety of different residence times for these inhibitors.
Further, we have characterized the effects of these inhibitors in terms of MCM2 phosphorylation. You can see here that we are in COLO-two zero five cells, which is a colon cancer cell line, where you can see we have for a variety of our different compounds here and nanomolar IC50 in terms of the MCM2. And in the western blot you can see dose responsive effect on MCM2 as well. And we have compared our compounds with a reference standard TAC 931 and again here you can see, fold potency difference between our compound and TAC 931. Further we've looked at the impact of CDC7 inhibitors in terms of Anti tumor cell growth activity, here you can see again a range of compounds and their effects on tumor cell growth, compound 1 through compound 3 showing a difference in terms of potency and compared again here to TAK-nine thirty one in terms of potency.
So we're very pleased to see a very active compounds in our lead molecules. We've also characterized the activity in a large range of cell lines so here you can see an example with compound 3 where we've looked at several 100 cell lines actually and you can see there's a variety of response across those cell lines. Of particular note is the AML cell lines which do appear to be more sensitive to CDC-seven inhibition here on the lower right relative to solid tumor cell lines. We've also been very interested in the somewhat selective nature of CDC7 inhibition on cells and so here you're looking at the induction of apoptosis again in COLO205 the colon cancer cell lines versus normal fibroblast WI38. What you can see here is that 24 hours after treatment with our CDC 7 inhibitor you're seeing an impact on COLO-two zero five but nothing on the normal fibroblast.
That's in contrast to staurosporin which is a non selective kinase inhibitor and what you can see here is that you're getting effects on both the cancer cells and the normal fibroblast and we view this as important in terms of therapeutic index. Further we've looked at the cell cycle dynamics and we've studied again in COLO205 cells by flow cytometry the impact of these inhibitors on cell cycle dynamics and what you can see is that at lower concentrations and earlier time points We see an increase in cells in the S phase and later this transitions into an increase in G2M cell population and robust induction of apoptosis. We feel this is represented by the sub G1 phase cell population which you can see here in yellow. We did not observe this in normal human bone marrow mononuclear cells which we think is again an important distinction when it comes to the selective nature of CDC-seven inhibition on cancer cells. Moving on, just to describe some combination work that we've been doing, we think CDC-seven inhibitors could be potentially utilized in combination with both approved and investigational drug candidates and here we can see that in combination with venetoclax in terms of BCL2 inhibition, olaparib, PARK inhibitor, an ATR inhibitor as well as B1 inhibition, You see very nice synergistic effects on inhibition of cancer cell viability.
Finally, we've taken our inhibitors in vivo and we've been able to now show strong anti tumor activity in colon cancer xenograft models at very low doses in fact, these are very potent compounds as we described and therefore you can see that at 2 to 10 milligram per kilogram BID you're seeing very nice anti tumor activity and it's pretty clear from the PK of these studies that we are well above the IC50 required to drive these effects even at these very low doses. We also see very nice target engagement in terms of phosphorylated MCN2 in tumor tissue 6 12 hours after dosing on day 14. We've also and investigated this in AML xenograft models so here you can see in the MV411 tumors A similar story in terms of anti tumour activity, here you can see at 12.55 with different dosing schedules, a very nice anti tumor effects with very robust tumor inhibition where you can see with the dosing holiday actually we are able to maintain efficacy as well as you can see here Very well tolerated in terms of the animal body weight and the effects on MCM-two are as we would have expected.
So in summary, I'd like to share that we are very pleased with our CDC-seven inhibitor leads. We have potent selective compounds that shows robust anti tumor activity. We believe these are the most potent CDC7 inhibitors reported to date And importantly as I pointed out in the earlier slide they have excellent PK and drug like properties. We have shown Nice target engagement through MCM2 both in vitro but more importantly in vivo and the potential for combination of CDC7 inhibitors with a number of other agents. Our in vivo data we think give us great support for moving forward with this mechanism.
I'm next going to move on to MALT1 which was presented at ASH in December. So MALT-one is another of our advanced programs where this is in the BTK and NF kappa B pathways. MALT1 is one of the key regulators in the BCL10 MALT1 CBM complex signal zone. In fact, 30% to 40 DLBCL patients currently experience progression or relapse following standard of care R CHOP and We believe that MORT1 is going to be a very interesting mechanism with regard to suppression of NF kappa B signaling in such patients. Mutations in MORT1 have been shown to trigger constituent activity in combination with these fusions where you see a really very robust drive through NF kappa B.
Our data suggests that MORT1 may be an interesting mechanism for patients who suffer with B cell lymphoma in particular ABCDLBCL. So I'm going to hand over to Robert to describe the discovery of our MORT1 inhibitors.
Thank you, Karen. To support the progress This drug discovery project, we've been able to use our computational platform to identify and advance multiple novel and promising series. This involved computational exploration of billions of compounds, which allowed the team the license to be highly efficient with regard to their execution of the project chemistry and really only go after synthesis of those molecules, most likely to further advance the discovery project. Key piece of this was utilizing the technologies to Or multi parameter optimization that matters so that we could achieve very high potency while also having good drug like properties, And by leveraging our platform in this way, we're now on track to initiate IND enabling studies in the first half of twenty twenty one. I would want to highlight that the full breadth of capabilities of the platform were utilized to support this work, including supporting the hit finding activities of the projects, doing iterative optimization of those hits Once they've been identified and doing multi parameter optimization using our most sophisticated computational analysis techniques to ensure that these Molecules are evolving along property dimensions that would support them being advanced into in vivo studies.
The deployment of the technology in this way allowed us to ideate and triage an idea space of 8,200,000,000 compounds, about 12,000 of those were advanced into atomistic physics based modeling. And then from that computational data through synthesis of only 78 compounds, we were able to arrive at DC quality matter within 10 months. Further, within the 1st 2 months of the project, we were able to identify matter that could be advanced into in vivo studies to establish Good PK of the compounds we were synthesizing. And with that, I'll hand things back to Karen to discuss more detailed experimental characterization of
Thank you, Robert. So I'm going to give you a sample of the data. The Ash presentation went into a lot more detail, but I will just share a few slides. So one of the key Characteristics as we described was, the suppression of NF kappa B transcriptional activity, that's the goal for the MORT1 inhibitor program and you can See here in the western blot that we have been able to characterize the cleavage of a number of substrates for all the and for BP1 in terms of our inhibitors, 7,055 is shown on this slide where we've been able to see a dose responsive effect. And then further in NF kappa B reporter assays in Jerkett cells, We've been able to demonstrate a very nice dose dependent inhibition of NF kappa B activity.
And in terms of IL-two secondretion, we have a number of markers that we're tracking in this program. But you can see here again very nice inhibition of IL-two secondretion in GER cat cells. So in vivo, we've been able to characterize Several of our leads and again referencing the ASH presentation where we showed anti tumor activity in the OCI LY10 CDX models, where we've been able to characterize the, characteristics the anti tumor activity of 7,055 administered BID, you can see a nice dose response of a dose responsive reduction in tumor volume. We use uncleaves BCL10 to track the biomarker of MOLT1 inhibition and you can see again a very nice dose response increase in un cleaved BCL10. In keeping with my comments about interleukin-two, here we're tracking IL-ten as another bio and you can see very nice dose responsive inhibition of IL-ten in vivo.
We've also looked at a combination opportunities for MALT1 and here you can see 2 graphs on the lower panels describing combination of our compounds with Ibrutinib in one case where you see additive effects for MALT-one and Ibrutinib. And on the last panel there, a combination of MORT1 inhibitor in our hands with venetoclax also showing a very nice additivity. So we're going to move on now to the V1 program. I'll start by describing V1. This is sort of in keeping with our interest in DNA damage repair and replication stress.
So V1 is a very important kinase involved in G2M and S phase checkpoint activity. It's actually a gatekeeper of the G2M cell cycle checkpoint. In normal cells, DDR or DNA damage repair is mediated by checkpoints, which either activate DNA and in the case of our V1 program, we're looking to discover very selective Inhibitors of V1 as we described for CDC7, we believe that if you are able to inhibit V1, This will make cancer cells a lot more vulnerable because of the buildup of replication stress. I mean it's important that one does that in the context of very selective inhibitors so that you don't get a lot of off targets or toxicity. So I'm going to just briefly describe some of the data that's in the public domain for V1.
This is obviously now A clinical asset and other companies hand, so this is a Phase 2 study from AZD1775 in nutrient serous carcinoma. This was presented in fact last year at ASCO where there's very nice data demonstrating monotherapy efficacy, with an ORR of 30%. There have been a number of studies with AZD1775 and a number of different tumor types including lung, ovarian and some recent data in pancreatic. So we think this is a very interesting mechanism, we do think that the optimal V1 inhibitor profile will be one that supports dosing flexibility and combination opportunities and as such as I alluded to We think minimizing kinase off targets is going to be key and also avoiding any ADME or PK challenges, including the potential for inhibition of CYP3A4 which has an impact on elimination of the drug or potential for accumulation and also may make it challenging to combine with other agents like PARF inhibitors. So those are the goals of this program really coming up with a very selective inhibitor with excellent drug like properties.
And so with that I'm going to pass this over to Robert who will describe how we use our technology to arrive at some very interesting leads.
Thanks, Karen. So as highlighted, selectivity was a major challenge and goal for this project. And we're able to adapt our computational platform to identify those residues that maximally differentiated this particular target from the rest of the gene family and then further use our computational platform Optimize the molecules such that they would maximally engage the intended target while minimally binding to the rest of the kinome. And we have here examples where we had initially quite, promiscuous binding molecules where through only a handful of rounds of Chemistry, we're able to take those molecules from being promiscuous binders to be exquisitely selective for the target of interest. We were able to leverage this capability for V1 to identify a matter that really binds with very high selectivity toward the intended target.
And in fact, we were able to do this for multiple different lead series such that we could find those molecules that would both manifest the binding selectivity we were after as well as the constellation of other properties we were seeking to optimize to have as high quality matter as possible to advance into follow on experimental studies. And with that, I'll hand things back to Karen to sort of summarize some of this progress.
Yes, so as Robert said, with a breakthrough really provided by the technology we have been able to identify of V1 inhibitors that have no PLK1 activity in fact as well as Exquisite selectivity against a number of other kinase hits that have been seen in prior series of we want to have it as all generations I should say. And so that allows us now to move these molecules that are potent on we want with very limited activity against any other kinases into in vivo studies. We have now generated very nice data in vivo which we will be sharing at a later time point but we've been able to show of very favorable ADME and PK properties as well as importantly very robust Anti tumor activity and relevant CDX models. And so, in summary, for the internal pipeline, We've been able to deploy our physics based methods really to a number of programs that we shared with you today, Of course both the collaborative portfolio but we focus today on the internal programs and each the technology had a profound impact on The discovery of unique molecule, we've been able to now build the capabilities to support The clinical execution of our programs, that's an ongoing process, and we plan on moving forward with IND enabling studies for our internal programs.
We expect to submit up to 3 INDs next year with our first IND submission expected in the first half and we'll also be expanding into additional disease areas and initiating new programs this year. And so with that, I will hand the platform back to Rami to close.
Thanks a lot, Karen. So in closing and before we open the call up then to the Q and A session. I'll just leave you with this slide that I showed you earlier, which again provides an overview of our business and how we intend to continue to grow by not only investing in all of these areas, but also by leveraging the extraordinary synergies between all these areas of our business. So thank you, everybody, and we'll now open the call up to Q and A.
Thank you. Our first question comes from Michael Yee with Jefferies. Your line is open.
Hey guys, good morning and thanks for hosting this. I had two questions on CDC-seven, I guess, which was of course the highlight of the ACR for you. Can you kind of compare and contrast the potencies and the differentiation versus Takeda because I think you showed Takeda in many of those as a control. So maybe just talk about the potencies there and how to think about differentiation. And then secondly, on MALT-one, I think there's a lot of interest here, of course, because everybody knows the BTK market.
Do you expect to see strong response rates as a single agent post BTK? And do we expect that J and J would
be a good read through
First of all on CDC-seven, you are correct that TAK-nine thirty one has been shown to also have a very Potency and we believe that our compounds perhaps are the most potent inhibitors and we've shown of this both by biophysics data as well as binding data and as you move across from biophysics into cell based assays and then in vivo. I think what we're seeing is that we're able to dose at a very low Milligram per kilogram dose to be able to achieve a very robust anti tumor activity. So we do believe that the Potency we see really does translate through to in vivo activity. I'll also say that from a selectivity standpoint, So activity is obviously important and we do think TAC and our compounds are sort of on par with regard to selectivity. But really it's this low dose that we think is going to offer us the opportunity for, a decent therapeutic index.
And also I would say that the dosing schedule that we've been working on I think also offers up some very interesting opportunities for the mechanism. And then with regard to your question on MALT-one, you are correct that Janssen is in the clinic studying this not just as monotherapy it seems from recent trial submissions in clinicaltrials dot gov. They are also looking at this in combination settings perhaps with the rutinib I believe was the compound named. We do believe actually that based on our data at least in preclinical CDX and PDX models that you will see some monotherapy activity from MALT1. And really I think the question is what does the combination do in terms of the ability to really push cancer cells into regression and that's what we're doing right now.
We are looking forward to seeing obviously more disclosures around MALT1 at other meeting ACR ASH to get a sense of how this is all translating into the clinic. But we do think that you will see monotherapy efficacy with MALT-one.
Great. Thank you. Appreciate it.
Thank you. Our next question comes from David Lebowitz with Morgan Stanley. Your line is open.
Thank you very much for taking my question. When you look at other CDC-seven, What characteristics do you think have what those molecules have, I guess, given them weaknesses that you think
Yes. So A little hard to hear you. I think I captured it, the weaknesses in other molecules. What I'll just say is that, you know, when you look across The patent publication literature for CDC-seven, as I was alluding to in one of the early slides, Being able to get really potent inhibitors that also have great PK as well as limited ADME liabilities has been a challenge. So some of the very first CDC 7 inhibitors that went into the clinic Essentially we're not able to progress through Phase 1 because of limited PK.
So the real goal here was to be able to get the Copency, the selectivity and the ADNI properties that will include things like solubility Also limited or no implications in terms of CYP3A4 or other DDIs. And so We believe that our molecules have that sort of balanced set of properties as well as this potency that allows us at 1 and 2 milligrams per kilogram to see really robust anti tumor activity and when we've compared with reference molecules we do believe that this She has led us to be able to go in with human dose predictions that will be quite low in terms of a milligram per kilogram basis.
David, were you also asking about the role of technology might have had in getting to that profile? It was hard to hear you. Was that also part of your question?
I was really more focused on the actual target themselves and specifically On the molecule, less on the technology.
Got it. Okay.
If we flip over to V1, There has been some new clinical data this weekend on with a new molecule beyond AstraZeneca is out there putting out some data. And I'm wondering how you view the new molecule visavis AstraZeneca And as far as how your molecule might fit versus this new one?
So David, what I'll say there is that, we've been really focused on this question of selectivity from the outset of the program. We believed that therapeutic index because clearly there were signals of efficacy early on Actually for the earliest V1 inhibitors in the clinic, we believe that having a very selective compound was going to be able to open up the therapeutic index and so that was really the goal of our program but obviously as our Compounds have moved forward and we've been able to solve that challenge. One of the other things we've been really focused on is the PKPD relationship and Really what that leads to in sort of in vivo. And so we have benchmarked our molecule against AZD1775 at this point and believe that we have a PKPD relationship established that gives us a lot of confidence in moving forward with the set of novel V1 inhibitors into the clinic. With regard to more recent entrance, We don't know the structure of those and so it's more challenging to benchmark them, but we are very pleased with the validation that we're seeing for this mechanism through others work in the clinic and we believe that this is a really a strong mechanism and one that we're excited to take forward.
Thank you for taking my questions.
Our next question comes from Do Kim with BMO Capital. Your line is open.
Hi, this This is Jameson on for Do. Thanks for taking the questions and congrats on the data in progress. First one on the CDC-seven program, to clarify on the dosing, Does the preclinical data support the potential for once daily dosing versus the twice daily used in the xenograft model? Takeda's CDC-seven inhibitor had a once daily dosing profile in its Phase 1. Any additional color on how your compounds profile will compare when you do eventually take it into the clinic?
And then I have a follow-up.
Yeah, thanks for the question. So, I think it's worth noting that in vivo in animal models, A number of compounds not just CDC7 inhibitors show more rapid clearance and I think we fully expect based on the human dose predictions that we're working on that this compound will not necessarily need to be dosed BID. We think actually we're going to have a very nice half life in humans. So they're sort of common to see BID dosing in mouse models to maintain exposures. But as you saw in the studies we showed, we're expecting to be well above IC50 with a number of different dosing schedule options.
And so if we're right about the predictions of our human PK, that should open up some very interesting opportunities in the clinical setting.
Great. Thanks for the clarification. One more on CDC-seven. In the sensitivity analysis evaluating the different cancer cell lines, Is there any underlying reason why bowel would be more sensitive to CDC-seven inhibition compared to solid tumors? And does that broadly apply to other hematological malignancies?
Thanks.
So, Doug, that's something that is Under investigation of our research team, we believe that tumors that have a high degree of replication stress are potentially more sensitive to CDC-seven inhibition but that's something that we're working through right now to be able to compare and contrast the responses that you see not just between solid tumors and liquid tumors but also also between different solid tumor types. So that's the subject of ongoing research by our team.
Got it. Thanks again for taking the questions and congrats on the data.
Thank you.
Our next question comes from Michael Ryskin with Bank of America. Your line is open.
Hi, this is Wolf Chanoff on for Mike Ryskin. Thanks for taking my question. So starting off with CDC-seven, placing the deck, we noticed You provided data for a number of different compounds, some places CPD-one, some places CPD-two. So just wondering if you're seeing kind of similar effects across The compounds whenever you aren't listing those assets. And then I have a few follow ups.
Yes. It's a great question, Michael. One of the things about the approach that we take to drug discovery is that we are able to rapidly identify a number of different series of molecules and We were very fortunate actually in a number of these programs to have really great characteristics of these molecules early on in the programs. We have been fortunate and I think Robert touched on this in one of his slides that early on in the programs within months So initiation, we were able to take a number of these different compounds into in vivo settings or into these cell line screens. As you can imagine, we are looking across our different molecules and deciding which of those has The best balance of properties to move it into IND enabling studies, but we do have a number of options across our series to consider.
And so just to sort of round out, for a number of these lead series, We have seen very nice in vivo data. So there's no sort of different sort of compound onethree. We're seeing nice data across them all.
Okay. And that leads directly to my next question. That sounds like you guys have not selected a lead compound yet, but still down the line?
It is in progress.
In progress.
All right. I appreciate that. And then just for one more general follow-up. Could you provide a little color on the status of the IND enabling studies? Are there any steps that you guys need to take for those 3 programs before the studies kick off?
And if so, where can we when can we expect that?
So, as we've discussed Previously, obviously, one of the key things was booking slots and so that's work that we completed, booking slots for our programs. Everything else is moving along quite nicely of course API and CMC is something that's critical at this stage and that's something that's also making very nice progress. I think as we've shared previously, we are kicking off R and D enabling studies in the first half of this year and the number of programs that we're fortunate to be looking at here, we expect to be doing that over the course of the next month into 2021. And so as we've shared again, we expect to be through IND enabling studies with our first IND opening in the first half of next year.
Okay. Thank you. I really appreciate all the
content. Thanks.
Thank you. And I'm showing no further questions at this time.
Thank you. I also have no further questions on the webcast. So I'll turn it back over to Rami to wrap up.
Thanks. Thanks everyone very much for joining us today. I just wanted to just say a few words just to sort of close things out. So while we Focused today on just 3 of our internal programs, I think you saw that we have quite a diverse portfolio, both collaborative and internal program. And it's really been extremely gratifying to realize the power of our computational platform as we advance our own pipeline.
So we're really looking forward to updating you on our R and D activities throughout the year. And thanks again very much everyone for your time.