Innovation to Impact is a podcast on decision-grade drug development in regulated environments.
We examine how high-stakes go/no-go calls are made inside pharma and biotech, and what evidence is required for new tools to change those decisions without creating hidden risk.
Each episode focuses on predictivity, translational risk, decision rights, and accountability (what breaks, who owns it, and what triggers a stop).
This is not a podcast about technology trends. It is about disciplined innovation that can survive audit, scale, and real-world biology.
Hi, everybody.
I'm here for another session of Innovation
to Impact with my good buddies,
Nick and Shepon,
where we get together and go to bounce
around ideas and talk about issues that
we've experienced and seen in the
challenges related to adopting and
adapting innovation and technology to the
challenges of drug development.
So if you've watched one of these before,
you know that we have
some interesting conversations and we all
come at it from a bit of a
different perspective.
And so it's kind of an interesting
opportunity for us.
Certainly entertaining for us and
hopefully entertaining for you all as
well.
Before we launch into this particular
session,
I'm interested in what's happening in your
world, Jess.
Well, so, I mean,
I can jump in first.
Today, for me,
this is going to be an easy one.
I just started a new gig at NSTEM
as a chief scientific officer.
So that's certainly pretty exciting for
me.
Looking forward to that role and working
with everybody there and also other
partners and collaborators.
On the other side also,
the weather for us, you know,
going from like,
forty degrees all the way to AD, snow,
no snow the next day.
It's been a lot of fun as well.
So how about you, Nick?
No, I mean,
as you guys were pointing out, I mean,
what's new in my world is my first
week off crutches after a bit of a
sports mishap in my Achilles some while
back.
And, you know,
what's relevant today is it really makes
you think about, you know,
what does health mean?
What does carrying, you know,
extending your quality of life into later
years mean?
And
what can it look like if you don't
because you know certainly you know it's a
whole new level of empathy for people that
have challenges kind of you know getting
around it um or any disabilities of any
sort right so you know how much more
effort it took to get through a day
daily routine um you know and also with
you know just in time to make it
to Paris for a conference more on a
investor startup sort of sort of Summit um
you know the interesting themes there one
you know, it's a lot around, you know,
cloud code and how, you know,
the barriers to software, you know,
engineering and writing are coming down
and what is that gonna mean for,
you know, drug discovery and development,
and also how easily are, you know,
all of us going to be automated away
by, you know,
like software engineering may or may not
be.
And, you know, some of the consensus is,
you know,
know like some of the more resilient areas
will be highly complex innovative places
like biomedical research but you know
you'll have to be able to adopt and
leverage these tools and then you know it
kind of fits into the theme of some
of what we were talking about this month
in terms of you know how to you
know increase let's say the uh
effectiveness efficiency de-risk um
getting new medicines to market.
So I think from that point of view,
the world fits together in a lot of
ways.
Yeah,
the common theme there is the world's not
getting any simpler, is it?
And it's an interesting amalgamation of
challenges and opportunity.
And for me personally,
like a lot of us,
I'm spending a lot of time engaging our
healthcare system because I have an aged
parent
who is increasingly needing care.
And so it's an interesting exposure to the
clinical end of where I've spent most of
my career on the preclinical side.
And so even though I'm sort of an
aficionado of the translation from
preclinical to clinical,
just getting those kinds of insights into
the way clinical medicine works and how it
engages patients is an eye opener.
not only for how it affects my mom
in this particular case,
but thinking about my long-term trajectory
from a health perspective and thinking
about,
I need to do a better job of
trying to make sure that I have to
rely on the healthcare system as little as
possible.
That said, I have, as you all have,
had a lot of satisfaction out of
working in a field that is primarily
focused on trying to do things that help
patients.
In particular for us,
trying to link all these opportunities
that we increasingly have to do those
great things for patients.
So with that,
just kind of evolving into the
conversation that we wanted to have today.
And it's kind of reflecting on what we
recently wrote in a common theme.
And that common theme is the
quantitativeness of the work that we do,
particularly on the preclinical side and
even extending into clinical medicine and
how the numbers relate to patients and
those kinds of things.
And as a pathologist who's worked in
preclinical safety much of my career,
you know,
I've always been kind of
intrigued,
interested in the math problem that is
drug development.
And that is the fact that we identify
novel drug targets and develop novel
molecules that we think will do great
things for patients at some level of
exposure.
And as we go through development,
you find out that you actually need more
of it on board than you thought you
needed to get the benefit.
But at the same time,
the safety challenges are sort of nibbling
away at that at that margin,
that that opportunity for benefit.
And so, you know,
the end result of getting a marketable
drug has everything to do with whether you
can maintain a margin of safety versus
benefit that, you know,
allows the patient to to get the good
bits without having to suffer from the bad
stuff.
And again, as a pathologist,
I realize that with the computational
capabilities that we've got,
the AI opportunities that we have,
that a lot of the data that I've
generated has been much more,
it's morphologic and it's qualitative.
I give the changes that I see in
the tissues that we examine big fancy
words and make some qualitative assessment
about how bad they are.
that kind of data doesn't always fit into
the kinds of models and technologies that
we have.
And so I think a lot about, well,
how do we make what I do more
quantitative so it's more integratable
with other parts of our business and
actually we can take better advantage of
the kinds of technology opportunities that
are coming along.
So that's the kind of stuff that rattles
around in my head.
So
Yeah,
you started this conversation some weeks
back, Brian,
and I remember one of the ways you
phrased it is looking at drug development
as a math problem.
And so I thought, well,
maybe can I come up with something that's
more of looking at drug development as a
data problem and trying to figure out,
okay, what exactly do I mean?
Right.
And so I spent parts of my career
trying to pull magic signals out of omics
data,
trying to be as certain as we could
or bring as much data as we could.
But then it was interesting.
I, you know, I flipped,
started being involved more in the later
stages and thinking, you know,
there it was less, you know,
hypothesis generation from omics data sets
to kind of probabilities of success.
And you started,
so I got exposed to this style of
thinking realized how big the problem was.
And, you know, one of the things,
you know,
I'm just looking at some notes here then,
right, that, you know,
how this number of did it gets thrown
around at ninety percent of clinical
programs fail and
That all,
it depends on how you do the accounting,
but there are ways to do the accounting
where that number is very real, you know,
yeah.
Eighty to nineteen.
Right.
Yeah.
Um, what were, so first off, you know,
forty half of its laugh of efficacy,
a third was about safety toxicity,
and then you had, you know, the,
the rest maybe operational strategic
commercial.
Um,
and then I was digging in just a,
a little bit more and.
trying to look at some of these later
stages where a lot of the money is
being spent.
And it was like something like over,
you know,
twenty five percent of phase three's
failed due to commercial reasons.
And like, well,
that doesn't have a lot necessarily to do
with some of what you were trying to
dig in at.
Right.
So let's keep that in mind.
you know,
fifty to twenty percent still due to
safety issues, but, you know,
arising kind of as you go to a
larger population.
So how generalizable and how well do you
understand that efficacy still remained on
the top spots?
But I think
one of my experiences then at the time
was we we ran a data science challenge
i collaborated with mit professor low
there who was in a healthcare finance
curriculum um and we were modeling the
trial probability of success and looking
at what was most predictive for you know
of whether trial succeeds or not and of
course like having a biomarker was
important it kind of doubled your
or brought you from ten percent success to
twenty percent success baseline chance by
just having a biomarker.
And I think that's important.
Because in my mind, it's not just like,
oh,
we got to go out and find a
biomarker.
I mean, if you can, great.
But if you're doing your drug discovery in
such a way that a biomarker is coming
along,
inherent to the way that you're doing
things, because you're looking at,
you know,
patient populations along with omics,
and you know, you,
your identification of that target was,
you know,
as a result of some prediction predictive
features that were becoming that biomarker
so I think maybe that's where I think
it is is the mostly useful to think
about and then when we did this
probability success challenge it was
really about like clinicaltrials.gov you
know structured data and that's okay but
if you want to start thinking about this
you know,
maybe more in a Bayesian way or,
you know,
simply in an integrated evidence way,
could you start to extend that?
And that's one of the things we were
hoping to come out of that.
I mean, as you were talking about,
you know,
drug development discovery by nature is
heavily siloed.
You know,
one team has one accountability
responsibility, do the best you can,
throw that out the other side.
And now another team picks it up and
tries, works on it there,
putting out something high quality at the
other side.
But you could extend this.
What is the probability that we have a
translatable successful registration and
bring this all the way back to your
target ID in some senses?
And maybe that's how an AI would tend
to look at this problem.
And so the Bayesian way would be a
little bit
more along the lines of this.
If this is a good target,
what would we expect to see?
What would we need to see?
What would be the risks and what
observations would let us think that,
you know,
these risks have been mitigated already?
Right.
So it doesn't have to be Bayesian,
but just, you know, think of genomics.
It's common these days, you know,
especially with all of the populational,
you know,
Population level kind of genomics
databases out there, you know,
to try and triangulate and see some
genomics evidence, you know,
to so you can see function rather than
just sort of correlations or function in a
real world population.
Through an alien randomization, or,
you know,
whatever sort of signal you want to think
about, you know, and, you know,
just thinking from the.
clinical development teams modeling
probability of success for decision
making.
Can you start going backwards,
taking into account in a math problem like
ways, some of the preclinical data,
the admit data, the sensitivity data,
just propagating this farther and farther
backwards.
And if you could do this,
it could probably help you optimize what
data you were generating,
how you were spending your time,
but also help you optimize all of the
decisions along the way.
I think, you know, that's what your,
you know, thoughts, you know,
that seed triggered in my head as well.
And I mean, for me, you know,
there's a couple of things,
things that came up, right?
Is that, you know,
even when you took out the percentages of
failure, right?
Is it efficacy, safety, right?
And obviously we need to put them in
those buckets.
But I think we still continue to do
that work preclinically in those buckets,
right?
We talk about the siloing,
but it's still so siloed, right?
So at the beginning, the decision,
when you get closer to your packages
submissions,
the decision is really not looking at is
there an effect,
but looking really at what exposure and
after what duration the system stops
coping.
And then so I think if we kept
integrating,
like thinking about digital measures,
right?
And Brian,
we spoke about that a little bit earlier.
You mentioned that integrating some of the
behavioral aspects and physiological
aspects to it, right?
So you can actually do both at the
same time.
And then so there is a lot of
benefit to that, right?
You can use less animals,
you can make decisions faster.
And then so to your point, then, Nick,
that you mentioned about the biomarkers,
right, that leads to the higher success.
And but very often preclinically, right,
we use different biomarkers and endpoints,
right, that we do in a clinic.
And that disconnect is huge.
And so there's that opportunity, right?
I mean,
if there's such a huge success rate,
we should focus more on a preclinical side
to identify biomarkers that we can track
also in a clinic.
And I think one area is, again,
the digital measures, right?
I mean,
we have so many different endpoints now
that we use in a clinic,
but we still refuse to use them
pre-clinically.
Even the technologies here,
technology is being utilized.
And even for like safety,
I get pushed back all the time when
you talk about the non-invasive digital
measures.
uh because we have telemetry right and
then we you know come in and monitor
the dog every hour right to see if
they're vomiting you know how they're
behaving etc and we have technology right
for even safety assessment that you can do
that right the behavior and physiological
um which would give us this continuous
what we do in the patient so um
again it kind of just triggered those
those those two things to me um
Yeah, and Brian, jump in when you want.
There's a couple of thoughts before I lose
them.
One, we're getting at a couple of things.
One and two things.
One, translatability,
and I'll come back to that.
The first was that there's an interlinking
of efficacy and safety, right?
Because even though we tend to talk about
them as two different things,
and I think we might have mentioned this
before, they're one and the same, right?
It's all about dosing.
And I think there's a connection to
something that we were talking about in
one of the prior months.
Targeted therapies are one of the hot
topics right now,
whether they're bifunctional molecules or
lipid nanoparticles or very disease tissue
specific targets.
And so what that does is if you
can localize
you know,
all of your drug around a specific type
of tissue,
you need to need a much lower dose.
And that lower dose comes with, you know,
much less safety risk, right?
Or alternatively, you know,
you can get the optimal effect for a
given, you know, with a lower dose,
you know, lowering your risk of toxicity.
So that's, you know, not only one, but,
you know,
helps probably deliver those to the
exposure.
And that was the other one, right?
The risk is, you know,
safety is one risk.
The other thing is just the exposure to
the diseased tissue,
as we were talking about these types of
things, right?
So, Brian,
we were talking the other day about how
a lot of these things are measured
in blood and that's very well established
and you know the pkpd and these types
of things but you know it's a bit
more complicated once you start trying to
get into the the tissue or even the
exact cells or even the compartment in the
cell that it might need might need to
get to so what the what do data
sets look like you know that can help
us better understand and predict you know
what uh you know what can help boost
this exposure and then you know as you
guys were talking about um
not only is this target going to translate
into humans,
but also how many humans and how much
variability is there.
And even if it does,
is it going to solve the unmet medical
need versus just perturb some blood values
and what actually matters at the end?
Back to your comments about digital
measures and these types of things as
well.
You know,
you guys have introduced so many
interesting concepts and threads.
We could be here for easily the rest
of the day because I got all these
ideas rattling around in my head.
But there's two that I want to follow
up on because I think they're sort of
fundamental.
One is, as you both talked about,
not only
the how we structure data,
what the kind of data we're actually
collecting,
and then ultimately how you apply it in
both a prospective and I don't think we
do enough of retrospective application
actually learning from our experiences
because we're just so intent on,
turning the crank and getting the next
lucky molecule out.
I think that's something that pharma needs
to take more responsibility for,
which is to find ways of integrating data
and learning from it much better.
That gets into the siloing that Nick
mentioned.
a something that that's actually outside
of pharma that relates to our our approach
to health care.
And I tell you,
I don't mean it's just a United States
thing.
I think it's a global thing that actually
puts pharma at a huge disadvantage.
And again, in sort of trying to
work with my mom here,
I'm seeing it in spades.
And that is at the time point at
which we engage disease.
Because the way our healthcare system is
designed, our horses, our disease horses,
are way outside the barn before we start
to engage them.
And so you've eliminated a lot of your
opportunity to actually mitigate the
progression of that disease process in a
lot of ways.
Because a lot of what we're trying to
do is manage chronic progressive diseases
that are already very,
very well developed.
So I'm saying that to say that even
though it's entertaining for me to beat up
on pharma because I've seen firsthand the
things that I don't think we do very
well,
to some degree pharma has taken on a
challenge with debt pretty much stacked
against it.
And so I'm actually amazed that we do
as well as we do in the context
in which we're trying to do it.
And again, thinking about,
given our interests,
How you maximally leverage technology to
be able to address some of these
fundamental challenges, I think,
is the thing that we need to think
more about.
And some part of that is, again,
circling back to what you said in the
front end, Nick,
is breaking down some of the silos.
And so it's.
We live in a world where we've been
able to dive into incredibly deep
expertise,
but the disadvantage to that is that we've
got a lot of really,
really deep expertise that doesn't
integrate very well across those
disciplines and that expertise.
And we need to figure out ways of
dealing with that.
And so that makes me kind of think
about, again,
just trigger over the last couple of
years, right?
The two reports that I was part of,
from NIH and the National Academy of
Sciences,
one on non-human primates used in
biomedical research and the other one on
alternatives.
And so in both of those reports, right,
we're talking about combinatorial
technologies, right?
That, you know,
if you combine in silico and in vitro
and in silico and in vitro and in
vivo technologies like digital measures,
you know,
microphysiological systems and in silico
predictions, right?
You're going to have a bigger impact,
right?
And better understanding
of what's happening versus individually,
right?
So they're silent.
And I think the same thing here, right,
is taking this combinatorial approach,
right,
as we're looking at combinatorial from the
perspective, hey,
we can monitor for safety and efficacy.
And I know there's areas where, you know,
we have tried to do that, you know,
for decades, I guess now,
different areas that come in,
especially from the safety side.
But it's not a typical thing that we
do, right?
And this, again,
the combinatorial of using digital
measures from the clinical side, right,
reversed into the preclinical side.
And then so,
I'm sorry because I'm getting distracted
by Nick typing, but...
I was going to lose my thought otherwise.
I had to get it down.
That's why God made pencils.
Yeah,
I think I'm going to have to send
that to you, Nick.
But anyway, so I think, yeah, again,
these combinatorial and de-siloing aspects
that we already touched on.
And then that's going to, you know, Brian,
like you said, the math problem.
But then it also becomes more challenging,
right?
Because then you have all this data,
right?
So how do you analyze it?
What do you do with it?
Is it useful or not?
And it's a significant investment.
And very often, again,
when that comes around,
we end up kind of pushing back, well,
you know, there's so much, right?
So we're not sure what to do with
it.
And potentially could have a negative
impact on us to move something forward.
So let's just not do it, right?
I mean,
microphysiological systems were a really
good example of that.
Yeah,
we leave a lot of value on the
table because we don't have good ways of
being able to mine it from all those
experiences.
I'm going to rewind a little bit to
something Brian was saying.
He was almost alluding towards kind of
you know, prevention,
his disease horses being outside the barn,
right?
So I'm going to go back to the
disease horses here.
And there were two examples that came to
mind.
And I think both of them can be
funneled back, as you say,
in this kind of learning culture back to,
you know, how you do drug discovery,
you know,
ideally, you know,
the ideal of pharma therapy is something
that can halt progression or even reverse
it, not just, you know,
but sometimes it's non-reversible.
You can only halt it,
but not just treat the symptoms, right?
So like, okay,
you at least halt progression.
But we had one and I won't mention
the indication, but, you know,
the target ID was done by looking at
kind of late stage patients when the
damage, phenotypic damage had been done.
And it was, you know,
the team felt it was like a real
preventative therapy but in order again to
de-risk the trials you know you would need
you know there's not going to be much
of effect if there's been a huge amount
of damage done but if you could catch
somebody before that you know while the
horses are in the barn there's going to
be a bigger signal that you could get
except the problem was you know like there
was yes a late stage disease label and
then there was like everybody else so like
we almost and when i say we needed
to invent an intermediate like it's
you know,
it's not really inventing a new clinical
parameter,
but you had to understand and be able
to predict who was at risk of being
a progresser.
And so, you know, that was the task.
And, you know, imaging was, you know,
asked of kind of the data science and
A.I.
team in this particular case.
And so that was a fun project.
But, you know,
I think even from being able to do
that one is like, well,
you enable, you know,
you de-risk the trial,
but you also make that therapy a lot
more valuable.
But I think there's learnings you can
probably take back from that too.
But even just being able to diagnose
people earlier or something.
The other example I wanted to say is,
you know,
talking to a friend at a health system,
you know, or just clinicians,
you realize like to take an indication
like depression,
once you become clinical and gone in to
seek help,
I am told,
it seems to be accepted that it's much
harder to climb out of that depressive
hole than if you could have been prevented
from going into it.
And so the thought was,
can we use some digital measures actually
to help flag or interact or monitor
patients?
You might be at risk.
But then my thought there was,
if you can create that data set and
you know this progression patients go
through,
that can be an effective diagnostic
screening tool.
then you could look at what types of
patients and, you know,
can that be fed back into drug discovery
or at least in a clinical design program
as well,
if you've actually captured that data.
You know, clinical management of pain,
I think,
is one of those areas where we've done
a really good job in being much more
proactive.
And you hear that a lot, particularly,
you know,
if you're a patient in the hospital,
even engaging a PCB is that you need
to engage pain early and often.
and not let it get out of control
because it's a whole lot harder to
backtrack it.
When I was in my early career,
I used to study chronic progressive renal
disease,
and we had this concept called final
common pathways.
And so you mentioned fibrosis.
Fibrosis is a common final pathway for a
lot of chronic progressive parenchymal
kinds of diseases.
And a lot of our drug development focus,
particularly for fibrotic diseases like
IPF and chronic renal disease,
has been on those kinds of mediators.
Well,
you're never going to turn those back.
That is the common final pathway.
You really need to understand the front
end.
But the rub of that is,
is that we don't oftentimes understand
some of those primary etiologic events
that actually drive you to that place.
And so I'm saying that to say that
we need to put more emphasis in studying
clinical disease.
But that's only helpful if you can detect
patients early in that clinical disease.
So you get a better understanding of the
early stages so we can start.
engaging it earlier.
And I guess, so for me,
that kind of triggered, Brian, I mean,
there's a right, because you said,
you know, managing that pain, right?
They were doing, you know, starting to do,
you know, a better job at it, right?
And just the only thing that flashed in
front of me.
Right.
It's the smiling and a frown face.
Right.
Do you go to the hospital?
Right.
And hey, tell me from zero to ten.
I mean,
it drove my mom crazy when she was
undergoing chemotherapy.
Right.
I mean, it was ridiculous.
And and well, it's even, you know, really,
to be honest, just pissed me off is,
you know,
we were at this meeting yesterday.
I won't say which one, right?
But so we're talking about digital
measured technologies, right?
And we're trying to, you know,
talking about for activity level,
for the sleep, right?
So I asked like, you know,
why is nobody looking for assessing pain,
right?
And the response from everybody was it's
too difficult, right?
And, but I mean,
it's such a huge impact, right?
I mean, pretty much almost every disease,
right, that you have.
I mean, we're looking at fatigue, right?
But a lot of times that's because of
pain, right?
I mean,
pain has impact on so many different
things.
And it was pretty much, you know,
it wasn't like even people thought about
like, oh,
maybe we should think about doing that.
It's just it's just too challenging.
We're not even touching it.
And so that's kind of really,
really frustrating.
And that even then also switches to me.
Like when we talk about behavioral digital
measures that we collect now, again,
even non-invasive one, right,
for behavioral studies.
But when you try to talk to people
like in a cardiac, right,
if you're doing a cardiac surgery,
You should assess those, right?
Because you have behavior changes,
fatigue.
I mean,
that's what we're doing to patients now,
right?
It's like, well, no, we're cardiac, right?
We need telemetry and that's it, right?
I mean,
I just still don't grasp the concept,
right?
We're trying to, you know,
and regulators are pushing, right?
And even insurance, the payers, right?
We want a holistic picture of the patient,
right?
and pre-clinically we're like no we're
doing cardiac so let's do cardiac we're
doing respiratory let's do respiratory um
and even there sorry that another trigger
right in respiratory studies we're
monitoring body weight i mean what that
that really um where we can monitor
respiratory rate you know continuously um
so yeah it just had a couple triggers
there you know it's a good point because
we settle on biomarkers that are easily
accessible rather than
um particularly relevant right to the
point you just made you know and then
that preclinical to clinical um
translation you know we have the benefit
of doing a lot of morphologic you know
uh
post-necropsy kind of assessments.
And I tell students this all the time.
I said, you know,
histopathology is a biomarker strategy,
but patients don't like it very much when
you start cutting out pieces of their
organs.
That's not a good clinical biomarker
strategy.
So you need to come up with things
that are much more clinically
translational.
It's high resolution.
It's very informative,
but it's not very translational.
Now, and so the other one also, Natruga,
is right.
So preclinically, right,
the way we assess, you know,
it's cortisol.
I mean,
you have to pick up the animal if
it's in pain.
You're grabbing the animal, right,
collecting the blood, right,
which is an invasive procedure, right?
And then you're going to tell me where
the animal is, I mean, like, you know,
stressed or, you know, and et cetera,
right?
we don't use it because it's all over
the map because for the reasons you just
mentioned yeah yeah there's a ton of
papers right utilizing that right as an
assessment um of it of stress right and
and and discomfort yeah anyway it's yeah
chime in with something here too and maybe
it's a good food for thought for one
of the upcoming uh months um you know
you talked about you know why don't people
factor pain into account and you know your
mom there and it made me thinking i've
been you know i talk a lot about
precision medicine lately less about
personalized from a pharma setting maybe a
lot about personalized from a digital
health setting but you know i was trying
to think in that case what would a
personalized
because we were talking about what does
that even mean uh solution mean even
earlier what does personalized medicine
even mean anymore um you know versus
precise you know would it have been
something on the molecule maybe not you
know would it have been something in the
dosing of the dosing guidelines or does it
start to be more of a feedback and
kind of a decision tree on you know
how to get the dose right for somebody
to mitigate the pain of what they can
talk like all of these types of things
it's like well
The care, the administration, like the,
you know, from adherence to dosing to,
you know,
around the pill support coaching,
I don't know,
but these are all things that can be
easily,
the implementation of that drug can be
easily personalized, I think,
in today's world with all the data
feedback loops that we have.
And, you know, on the molecule side,
I don't know.
But it's like, well,
what does personalized mean in molecules?
Maybe it's less about reacting to an
individual,
but understanding the genetic makeup and
lifestyle.
Like, I don't know, right?
There's certainly,
you can have personalized treatment
decisions.
Is personalized in molecules just having
so many different
varieties that you know like you said in
fibrosis you can you know distill down and
get beneath the phenotype to more root
moas and maybe some that even you know
oncology is all kinds of you know hair
too and you know biomarkers that you can
get enough therapies to choose from to get
the one that's best i mean if we're
to do that rest of us probably have
to improve this ninety percent number we
said and get like you know a lot
more things faster more efficiently
through that pipeline um and
you know,
commercial viability matters too, right?
So, you know,
or is there more of a process?
It would be great to have one,
you know, think of mRNA vaccine style,
or CAR T, you know, and like,
things which by default might be
personalized to you if they're, you know,
if it's coming a little bit, you know,
it's a process that takes
you know,
some bit of tissue or a cell from
you and trains an immune attack to say
like,
then it is like hyper personalized by
default, but like, you know,
can you cascade back from there a little
bit?
in terms of processes that are easy to
either train, expand cells,
print slightly different sequences,
optimize.
I don't know.
We've talked about personalized medicine
for decades.
What do we even mean anymore?
And if we step back and think big
picture,
what is this actually you know maybe we
achieve personalized medicine and it looks
nothing like all of us had imagined in
our heads i guess that was what i
was starting to to think now with some
of your comments i don't know what your
your two thoughts on this are but
I mean, one of the things, right, that,
you know, it's the terminology also,
right?
We very often fight about that, right?
So you're talking personalized, right?
I heard, you know,
some speakers talk about, you know,
I never use personalized,
it's individualized, right?
Which again, like to me, it's like,
you know, again,
I don't care which one you use, right?
But let's talk about, you know,
how do we help patients, right?
And so now you're talking about NAMs,
right?
I mean, you know, it's the same thing,
right?
We spend all this time trying to define
NAMs and we're wasting time, right?
Instead of trying to help patients.
So to me that again, I mean,
I guess to today through our sessions,
right,
there's a lot of triggers that come in
that.
Yeah.
And so maybe even it's, you know,
there's two ways, you know,
one is
decisions or input strategies that involve
a person's genetic background and medical
history in terms of selecting a therapy.
And then another is our ways to adapt
based on feedback loops from digital
sensors, imaging,
other things in today's world that can
adapt a treatment course.
So maybe there's two different ways of
looking at it.
You know,
to sort of bring this back to the
original theme of drug development as a
math problem or thinking more
quantitatively,
I think a lot of the things that
we're talking about all relate to this
idea that we really do need to have
a more
cradle to grave, as it were,
thought process around how we're going to
engage disease,
and then ultimately try to figure out how
to use technology to create a better
integration that allows us to not only
prospectively make more
better, more predictive decisions,
but actually allows us to go back and
learn from those experiences as most of
them aren't successful.
And so you're completely losing the value
of that lack of success if you can't
go back and mine that better.
So I think that's a common theme in
all the kinds of things that we just
talked about.
It is basically trying to think about how
to make what we do more quantitative so
that the technologies we have available to
us have maximal impact.
And right now we have a system that
is probably still too siloed,
even though we've had that discussion for
the decades that I've been involved in the
business.
We've recognized it.
We've talked about it.
And we just struggle to get past it.
so that sounds like a good i don't
know how many minutes we're supposed to
take on our little chats here but that
sounds like a pretty good weaving together
of all the different kind of points we're
making so yeah i think that well i
hope one i hope that folks have found
this interesting as we've we'll do more
scoping of problems and solving them right
that's kind of what we do but we
look for that that interesting
intersection
But I expect that some of the threads
that we've raised today will end up being
the focus of some of the stuff we
write in our future essays.
And I'm looking forward.
I'm so jazzed.
I've got the paper and pencil right here.
At least it's good.
It's good that Nick finally stopped
typing.
Thank you.
Well, with that, I said, yeah,
we're going to say goodbye to you guys.
Well, to you, Nick and Brian,
and also to folks who are listening to
us and looking forward to seeing you guys
at our next episode of Innovation to
Impact.
Cheers.