Proteomics in Proximity

Proteomics in Proximity Trailer Bonus Episode 24 Season 1

A glimpse into product management and PMWC plans with Jenny Samskog

A glimpse into product management and PMWC plans with Jenny SamskogA glimpse into product management and PMWC plans with Jenny Samskog

00:00
Welcome to the Olink® Proteomics in Proximity podcast! 
 
Below are some useful resources mentioned in this episode: 
 
Olink® Reveal, accessible NGS-based proteomics for every lab: https://olink.com/products/olink-reveal

Olink tools and software
·       Olink® Explore 3072, the platform utilized by the UK Biobank to measure ~3000 proteins in plasma: https://olink.com/products-services/explore/
·       Olink® Explore HT, Olink’s most advanced solution for high-throughput biomarker discovery, measuring 5400+ proteins simultaneously with a streamlined workflow and industry-leading specificity: https://olink.com/products-services/exploreht/ 
 
UK Biobank Pharma Proteomics Project (UKB-PPP), one of the world’s largest scientific studies of blood protein biomarkers conducted to date, https://www.ukbiobank.ac.uk/learn-more-about-uk-biobank/news/uk-biobank-launches-one-of-the-largest-scientific-studies 
 
 
Subscribe to the podcast on your favorite player or app:
Apple Podcasts: https://apple.co/3T0YbSm 
 
Spotify Podcasts: https://open.spotify.com/show/2sZ2wxO... 
 
Google Podcasts: https://podcasts.google.com/feed/aHR0... 
 
Amazon Music: https://music.amazon.com/podcasts/d97... 
 
Podcast Addict: https://podcastaddict.com/podcast/409... 
 
Deezer: https://www.deezer.com/show/5178787 
 
Player FM: https://player.fm/series/series-3396598 
 
 
In case you were wondering, Proteomics in Proximity refers to the principle underlying Olink technology called the Proximity Extension Assay (PEA). More information about the assay and how it works can be found here: https://bit.ly/3Rt7YiY 
 
For any questions regarding information Olink Proteomics, please email us at info@olink.com or visit our website: https://www.olink.com/

Interested in a specific podcast topic or guest? Reach out to us at PIP@olink.com

WHAT IS PROTEOMICS IN PROXIMITY?
Proteomics in Proximity discusses the intersection of proteomics with genomics for drug target discovery, the application of proteomics to reveal disease biomarkers, and current trends in using proteomics to unlock biological mechanisms. Co-hosted by Olink's Cindy Lawley and Sarantis Chlamydas.
 

What is Proteomics in Proximity?

Proteomics in Proximity discusses the intersection of proteomics with genomics for drug target discovery, the application of proteomics to reveal disease biomarkers, and current trends in using proteomics to unlock biological mechanisms. Co-hosted by Olink's Dale Yuzuki, Cindy Lawley and Sarantis Chlamydas.

Welcome
to the Proteomics in Proximity podcast,

where your co-host Cindy Lawley
and Sarantis Chlamydas from Olink

Proteomics talk about the intersection of
proteomics with genomics for drug target

discovery, the application of proteomics
to reveal disease biomarkers,

and current trends in using proteomics
to unlock biological mechanisms.

Here we have your host,
Cindy and Sarantis.

Welcome, everybody.

I'm back from holidays
and it's my first episode for 2025.

Happy to see you all again.

Happy to see Cindy.

And I'm really excited to discuss
with Jenny and discuss about proteins and,

yeah,
looking forward to hear from you, Jenny.

Excellent.

So it's Cindy here,
also here with Sarantis and our vice

president of product management,
Jenny Samskog.

Jenny, there's a little bit of a question
about how to pronounce

your first name, so I'd love it
if first you told us about that.

Secondly,
if you could tell us about, your role,

what you've seen evolve in proteomics,
you've got a pretty prestigious title.

And today we want to talk a little bit
about what's coming up.

In the future, we have a this recent
launch that we'd love you to characterize.

And then we'll talk a little bit

about some of the meetings
where we'll be attending.

Please take it away.

Thank you so much for having me.

I'm really excited to be in this podcast
with you guys.

So my first name is Jenny.

So it's a soft J, that's Swedish.

And I

would just like to comment a bit on,
you know,

where I come from.

So you understand my history

and I would say my main common denominator

is really protein science
and product development.

So I did start my career in mass
spec proteomics as a researcher.

And after that I refocused to support,

by biopharmaceutical research
and manufacturing.

And my main function has so far
been within product management,

which in essence means
developing new products and ensuring

that the existing products that we have
are meeting our customer expectations.

And you're so good at leading a team
that listens to customers.

So I just want to acknowledge
and appreciate you for that.

It's such a pleasure to be here
and have a have a product management

function that really, really listens.

And I would say,
thank you, Cindy, but I would really say,

you know, I joined Olink, what can it be
like three years ago or something.

And their focus on innovation

and advancing proteomics
is very special and very unique.

It was

for me, it was a match made in heaven
because I could combine having

great products out in the market

that contributes to cutting edge science.

But the culture of innovation at Olink

has been there since start
and no credit to me there.

But it's really nice to be able
to continue that culture of innovation.

You picked us and we picked you.

It's a match made in heaven.

I absolutely love that.

What's your why? Why proteomics?

Why do you see such promise in this space?

Well, you know, I think it's been,

I just have to go back to where I started.

So I did my research a long time ago,

within proteomics
and, as CMS or mass spec.

And at the time, it was
a fascinating area, but it was early days.

So at that time, you know, identifying,

you could identify a handful of proteins.

And then I was happy, if I could say
like 30 proteins or something

out from the mass spec.

And not only that, but, you know,

the way we identified the proteins
could be based on one peptide.

And that peptide.

I had sequenced myself
in the mass spectrum.

So there were very limited
amount of digital tools to support that.

Not much like intelligence software
or anything like that.

So that's where I sort of started.

That's where I,

and then I left that for it
for quite some years, actually, to go

to this more biopharmaceutical, industry
and then came back to Olink.

And it was, you know, it's

groundbreaking
how much things have happened since then.

So, the fact that you can study
thousands of proteins,

the connection that we automatically
almost have to genomics.

It's definitely a new era.

So, I would say it's

a huge

thing that kind of happened in proteomics
since beginning of 2000 until now.

Yeah.

I'd, I'd say that, and as you know,
I've got a history in the genomic space

that we've been trying to get at
proteomics from the genomics side as well.

From our first RNA seq experiment. Right.

So those first sequencers
that Illumina made, the 1G,

they were going out the door for folks
that were doing digital gene expression

at the time, had been using gene arrays,
gene expression arrays

and were keen to to understand the links
to real time biology.

And now, as part of Thermo
Fisher Scientific, we have both the mass

spec size and some amazing innovations
in the astrol and the stellar there,

as well as as this,
proximity extension assay component.

But what do you

think it was there actually,
that breaking point

that makes a difference for proteomics
to be more democratic?

Is it the NGS itself?

Or the NGS plus other protocols
that would be integrated.

What is your feeling there?

Well, you know, if we're talking as well
about mass spec here now,

I mean it's not our a core area,
but it's definitely our college area.

And you know, within mass
within proteomics, mass spec is still a

gold standard but also here and remember,
this is not my area of expertise anymore.

But there's a huge amount of things
that have happened here.

And I would say mainly or a lot of things,

of course, on the technology side
to make sure that we actually can,

have a much greater proteome coverage,
obviously.

But also, the digital tools, I should say,

how do you understand the results,

how did you quality
assess the results, etc.?

And the supporting tools to do that.

I think that's been for me.

When you've been away for a few years
and you come back to see that

both in within Olink, obviously
who is really spearheading this market.

But also, what I have seen from

the outside has happened in the mass spec
area as well.

Yeah.

So just specifically around that Olink,

component within the Thermo Fisher

environment,
you know, the proximity extension assay,

first launched on the qPCR readout,

in 2020, launched on the NGS readout.

So that transition to be able to look
at more proteins across the proteome,

particularly in plasma CSF,
some of these liquid media were

mass spec may not be able to see those low
abundant proteins.

I think that that was game
changing for me,

and that attracted me to this team
and this technology.

Jenny, you just had an announcement from
your team about this new reveal products.

Can you tell us a little bit about where
that fits in to the democratization?

Yes. And so yeah, and thank you for

for highlighting the democratization
because that's one thing.

So proteomics has been you know, it's

not for
everyone or hasn't been for everyone yet.

One of our overarching goals,

within product development is to make sure

or to enable our customers
to utilize proteomics,

and make it accessible
to a broader research community.

And some of these accessibility

challenges that we're trying to address,

have been noted elsewhere
many, many times.

One of them being cost.

So, to be able to run large
proteomics studies or to be able to run

proteomics clinically,
the cost needs to go down.

There is also, apart from that,
a perceived complexity

within proteomics, right or wrong.

And there's also,
a need to better understand the data

and to get more support in understanding
and trusting the data.

So those are the three things that, you
know, at least we can talk about today.

And and

before I go into our new product,
I just want to mention

and we haven't really talked about that,
you know, we talked about,

what has happened within proteomics,

in the last years.

But I really want to mention something
that really made a big difference.

Is of course, the,

you can be first project,

where the data has been public
now for over a year.

And we have so many,

new publications
coming out from that project already.

So, and already now it's, you know,
and that is sort of a game changer

within proteomics
I really just want to highlight that.

Well, and those publications
are highlighting which diseases folks

can dig into.

So just for context, the UK
Biobank Pharma Proteomics project

a few years ago, 13 pharma partners
agreed to run Olink as the technology

of choice against almost 60,000 samples
in the UK Biobank.

Now, there has been

publications around,

the 54,000 samples

that have been part of the flagship paper
that came out in nature

in October of 2023,
and then there have been 200 publications

that I know about over 200,
but that's been cited.

That flagship
paper has been cited over 300 times.

And so that certainly builds,

more of a comfort
with the actual data themselves.

It doesn't allay people's fear.

And I'll say geneticists fear,
but just because I talked to a geneticist

around what we call pre
analytical variation, and

I think you allude to this
in your complexity comment.

Jenny, you mentioned right or wrong,

they're perceived as complex
and I certainly think that's true.

From the genetics point of view.

And I know
Sarantis has a history in this as well.

Actually that was also my question, I'm
guessing that the daily life

is not only happiness
in product management.

You have a lot of challenges
to go through.

And you mentioned the cost.

You mentioned,
the time that you spent on developing.

But any other challenge,
especially from the technical variation,

that you may be facing?

That'll be great to hear.

Yeah.

So I think that that is really one
important aspect,

especially as a supplier,
to really make sure that we can guide,

our customers in understanding their data.

So maybe we can go through that
a little bit because.

So when I talk about trusting the data,

that's

very critical but very often overlooked.

And proteins are different from genes.

They are a little bit more sensitive.

You have to really take care
when you do the sample collection

and how you handle the samples,

and really ensure that, you know, you have
you can assess the data quality

at each stage to build that confidence.

So one of the things that we're doing
is to develop tools to help our customers,

help our researchers understand
if they have pre analytical variation

and then guide them through, what
that could mean.

Are they going to discard the data.

Can they use them anyway.

So it's sort of a like an understanding,
like an intelligent support

of understanding your own
samples, your own results.

And so it's really critical,

within proteomics

to really take that into consideration.

It's a great point.

And I think at the end, our main goal
is the precision medicine right at the end

is like, having high quality data
where we can enable precision medicine.

I'm sure Cindy,
you have a lot to share, about this field

where you are really looking
closely recently on that even more,

you know, and happy
to hear your thoughts about

how do you see this precision medicine
being enabled by proteomics?

And where do you see
these going, proteomics in this respect.

Yeah, absolutely.

So I think we're better
characterizing disease risk

in individuals because we're capturing
real time information.

And so the comparisons of polygenic
risk score to protein risk scores

have been really helpful in that regard.

There's some papers out of Claudia
Langenberg's lab, as well as

Ben Sun, who's one of the one of the joint
steering

committee members in the UK
Biobank Pharma Proteomics project.

He's published with the team

at BioXcellerate and Optima Partners
around protein risk scores.

I think that's going to help us
in understanding

how to better recruit for clinical trials
so that we can have clinical trials

that are smaller
but powerful sufficiently powerful

to see success in candidates.

And of course the ability
to have more successful clinical trials.

What do we say the candidates,

you know, 90% of candidates fail
when they hit clinical trials.

If we can improve clinical trials
by just 10%, we'll be the best

drug makers in history.

And then I would say that
changes everything downstream,

because now we're really dialing
in the right treatment for the right

patient at the right time, which Chris
Whelan talks quite a bit about.

And he's in our just recent episode
of the podcast talking about just that

and how proteomics is enabling this
and so ultimately those are the pillars

I see being moved, the pillars
of ultimately precision medicine,

which interact with clinical trials
and risk stratification.

And then each of those interact
with each other.

And I see all of those moving

upon the foundation

of an understanding of how
genetics, proteomics and outcome data

are associated and linked.

Thanks.

Yeah, thanks for asking that.

And, you know,

there was there's been a lot of discussion

from our customers
and the research community regarding

how can we, understand
different technologies in this area.

How can we understand
how they complement each other

and can you help us?

Sort of guide us

how we trust the data
or how we analyze the data.

So I think that's going to be
and that's normal

because proteomics is maturing in itself.

So I think

that would lead us back
to a little bit on the mass

spec side where the complementarity
between, for example, our technology

in combination with mass spectrometry,

could help us to better proteome coverage.

It could help us assess platforms

through mass spec, while we would maybe
take more of the plasma side.

So I think those kind of things,
and then again,

as suppliers and enablers
to the research community here,

I think we have a role to play

to make sure that we really showcase that

these are, you know, what we show you,
what you see with our technology is

you can trust that and you can
and we will also guide you

in terms of understanding
how that performs

versus other technologies
and how they complement each other.

And I think that's going to be something
that, as we are maturing,

we're going

to see more
of and that's going to be a lot of them.

And well, investments in digital tools.

For that integration and for, for AI,
machine learning, we hear a lot.

Mike.

And also, I wanted to ask you Cindy,
for sure you have the overall

this trend of suddenly
a lot of people, due to the fact

that we have a lot of technologies
and other technologies.

Now we're talking about precision
medicine, right?

And there are a lot of events
happening around this, especially in ways

that they didn't used to have before.

What is your feeling
and what is your feedback on that?

Because you are more in the field and,

you know, in discussion
with a lot of people.

How do you see this moving forward?

So I think these two topics
are very intimately linked.

You know, your reference
to our activities in the field

and working with customers
and showing up at conferences

and our messaging Sarantis, and Jenny,
your comments about having

a responsibility in funneling data

that are as accurate as possible into,

the algorithms for machine
learning and artificial intelligence

that will change our understanding
of these large data sets, right?

We're not data rich.

Certainly not as data rich is, say,
the self-driving car industry,

as we hope to be in the future.

But we're getting there.

And as we get there,
we have this responsibility to only put

the most specific, well-characterized data
into, those algorithms.

And I think that's
where we on the side of caution.

I think that's why we have ostensibly
fewer proteins in our assay,

because we're very careful about
getting those assays into our, products.

And I think in many ways,
that's your team, maybe not your team

before you joined, but you certainly have
supported and resonated for that.

And I think customers appreciate that.

And just knowing that
if we're detecting something, especially

if it's a intracellular protein
or a membrane bound protein,

if we're detecting it in plasma,
where it shouldn't be,

that has the potential
to be an enormous opportunity

for discovery, by customers
that are seeing it there.

And so our detection
or our lack of detection

should reflect, I think, true biology.

And I think that's our messaging Sarantis
at meetings.

Yeah.

So JP Morgan, we just had JP Morgan
I think the messaging at JP Morgan

or the take homes that I heard there were,
essentially that these companies

are in many of the pharma
companies are presenting,

they're moving into a growth phase.

I think we've had two years of challenges
and funding and,

and pullback and contraction
and, and caution

and I think there's
this this bullish opportunity with Suisse,

some uncertainty
around the political climate

and the change in leadership
here in the US.

But some optimism.

And it just felt very buoyant there.

And then we have right around the corner
the Precision

Medicine World Conference,
which is founded by Tal Bahar.

And they're really building
on what that momentum,

felt like at

JPMorgan or around opportunity and Vision
in order to take action.

And so to really foster, an environment

of partnership,
in this precision medicine space.

So I think that's, that's very exciting.

And Jenny
will be talking a lot about reveal.

Can you just give us like a high level
overview is where does reveal fit

into our product portfolio
and where can people learn more about it.

Thank you, Cindy.

So again we talked about accessibility
being one of our main goals.

And as part of that, we are adding,

a new product to our, discovery portfolio.

So everything that is,

detected through and sequencing,

and that is Olink Reveal.

Olink
Reveal is the little sister of Explore HT.

It's an inflammation oriented panel,
so curated,

the assays are curated
based on cis-pQTL associations,

with a strong connection to UKB.

A very strong, inflammation focus.

As I said, it's a thousand plex panel.

So it's a good,

very good protein coverage,

of course, less depth than Explore HT.

But, you know, on the, accessibility side,

it's much more, what can I say.

It's more of a mass market product.

And the reason for that being,
so we focused a lot on reducing the cost

per sample.

So the cost is actually less than $100
per sample. Wow.

Which means that it would be much easier
to add this,

for other cohort studies,

where we have less funding, for example,
but still,

and I think, you know,
we should always, aim to add proteomics

as one tool in all the big population
health studies.

So that really enabled that,

but not only cost,
I would also say what is related to cost,

but I will also say something about the,
perceived complexity of proteomics.

So we have

focused a lot with Olink Reveal
to make it super simple.

So you should be able
to just go in the lab

if you have a NGS sequencer
and set it up and run it.

To get results really quickly.

So you can even run it manually
or with a simple automation solution.

So no big investments to start up,
but something that any genomics lab

already has.

So it's an easy, simple,

way of adding proteomics to your project.

Actually, as you say,
the democratizing protein actually

at the end, right, is like a nice example
of how we democratize protein.

So that's great.

Yes it is, it is.

We've been waiting for this.

This is very exciting. Congratulations.

I know it was a long trip for your team,
and a lot of other teams.

Congratulations.

It's a really great tool. Yes.

No, it's been, it's a project
that has been ongoing for quite some time

at R&D and we're super proud of this.

And really required a lot of data
analysis of the data that are out there

that are publicly available
where we're allowed to go in and play with

and see what are the ones that have
the highest disease associations,

what seem most promising
for having future disease associations,

where these cohorts just haven't been able
to afford to get into proteomics.

So I think this will offer
quick publications.

And I think tracking the publications
in review will be an exciting,

time to see labs

doing proteomics
that have never even ventured in and then,

of course, the opportunity to validate
orthogonally with mass spec

I think will be, also amazing.

That's a great point.

And I

think the choice of inflammation
is really crucial

because inflammation, as all of us
know, is connected to our disease almost.

And that offers a possibility
from different types of researchers

for different disease
areas to explore proteomics finally.

That's a great tool. Yeah.

I mean even in Alzheimer's disease, right.

Where there are clearly endotypes
and some of them are associated

with information and some of them are not.

Being able to stratify

those patients in advance
of clinical trials, for example, might be

some application.

I know that several pharma have reported
that, and Chris Whelan talked about this,

but they have been able to do post

clinical trial proteomics on Explore HT,
which does require automation.

So that's 5400 proteins

over 5400 proteins
using a next generation sequencer.

And folks are seeing stratification
of these,

of these disease areas
after the clinical trial.

And they're seeing that these different
endo types of this disease

are, are responding differently,
to the treatment.

And I think that

is laying some amazing groundwork.

I think it will help a lot for

biomarkers. It surrogates biomarkers.

That would be really a great tool
for following protein biomarkers

really closely.

And I have a question
actually for both of you.

I think we’re discussing about now.

We discuss about tools that we’re
developing now

with a perspective in the future
But how do you see the future?

What do you see the challenges

and the wins we may have
from the proteomics lab in the future?

I think Jenny first.

Know, yeah.
This would be a great wrap up question.

I love this this is wonderful.

Yeah.

No, I, I would say I mean for the future,
I think it's going to be

or it would have to be, a much more focus

on combining different data sets.

So again, coming back

to what we talked about with,
the focus on machine learning and so on.

So I think we we're going
to see much more,

support to combine proteomics,
genomics, transcriptomics data

with, disease genotyping, for example,
we're going to see much more regarding,

predictive power, on proteomics.

And obviously, how is that translated

into, clinical proteomics.

So it's going to be
I think we're going to see,

you know, also just on the first UKB
study, we've already seen that happening.

That you're identifying these

really nice protein signatures
with a very strong

predictive power early on to say,
you know,

if this patient will actually

get a certain disease
several years in advance.

So I think it's going to be like,
you know, from this discovery

to this more, clinical applications
that's going to happen quickly now.

We already had talked about
how much has happened in a few years time.

Right.

So and just looking forward
and then in five years,

I can't even imagine,
you know, what we're going to do.

but I think it's going to go like, you
know, it's going to be more multiomics.

It's going to be much more support
for clinical proteomics.

And of course, we as a supplier,
have a responsibility

to help that to happen.

Great, great.

Cindy, what do you think?

What is the future?

Well, I'll piggyback on something
Jenny said.

So the
the idea of being able to predict disease

many years in advance of getting disease.

I mean, that was really hot news
when Keren Papier

and Ruth Travis and Karl Smith-Byrne
and Josh Atkins, their paper came out.

There's, you know, seven plus years,
it was a median of 12 years, 12 years

in many cancers
of being able to predict disease.

And of course, those are those are many of
those predictive of genetic,

dispositions of folks that

are more likely to get disease,
not necessarily that they actually have

the disease on board,
although they also time

stratified to be able to get
at a little bit of the detail there.

And I just saw
they had a preprint on prostate

cancer that characterize
some of the pathways in the immune system

that are predictive of a likelihood
of getting prostate cancer.

So I can't wait for that
to come out in publication.

So that brings up, the recent

announcement
around us running the entire UK Biobank.

That's 600,000 samples.

That's 500,000 individual with 100,000
repeat samples at a 15 year mark.

Is my understanding,

being able to see that across

all of the diseases that are represented
within the UK Biobank.

And some of them longitudinal also, Cindy,
some of them

also longitudinal also followed, right?
If I’m not mistaken.

That's the longitudinal component,

is the one that over the 100,000
that are followed up at 15 years.

Yeah.
So and many of those have imaging data.

Right. That's great.

And outcome data. Right.

So being able to characterize that,

that set of samples which have around
8,000

African diaspora samples, have around
8,000 South Asian samples.

These are diverse, sets of samples
that, as Rory Collins

says, aren't enough diversity
for us to really characterize everything.

But across the entire UK
Biobank, we do, you know, effectively

have longitudinal representation,
because if you get enough samples, you get

folks
that are in different stages of disease.

So though it isn't longitudinal
in an individual, it can be, you know,

by being cross-sectional
and large enough in size can represent

some of the longitudinal aspects of

disease progression.

So that's
what I'm really looking forward to.

And I expect those data
to be published around 2027.

Which means that that the world
will have access to

that international resource,

which is some of the
and we talk about it as the UK Biobank,

but it is the internationally access to UK
Biobank.

So it's an exciting time.

And just to add to that
the statistical power of 600,000 samples,

would, you know, imagine
what that would mean for understanding

rare diseases, for example,
which hasn't been possible, really.

I mean, I know, we had that you could see
that also in the, in the sort of smaller

UKB, set from before,
but with very few samples.

So I think that is also something
that is extremely important.

Already with these, the first papers
that we have or the small sample size

that you mentioned, Jenny.

Yeah, it's a small one.

I mean it we were able to see
there are great papers

from Claudia Langenberg, that we had
improvement on diagnosis of disease.

Even better than clinical outcomes
sometimes.

And that was really impressive.

Well, it was really amazing
for the first time to see such a thing.

Right.

Imagine that was tenfold more sample size.

What's going to happen.
That more diseases, right.

More representation
of those diseases. Exactly.

And ability to

you know, propose these protein scores
that that

that will improve any over anything
a doctor has available to them today.

Yeah. This is yeah it's a beautiful time.

And of course we are biased by our protein

excitement.

But yeah, we're happy to be a part of it.

So with that, I will wrap up this episode
of, Proteomics in Proximity.

We will, as we all mentioned,
we will be at Precision

Medicine World Conference in Santa Clara.

That's February 5th through the 7th.

We will have a booth.

Our booth

will be near the stage for track three.

It'll be between track
three and track four in Hall C,

and very close
to a little networking station.

So reach out on LinkedIn, reach out to me.

Reach out to Sarantis

If you want to set up meetings

with our team, I will be there in person

and would be excited to talk to folks
that are there.

Would be great.
That would be a great event.

Really? Yeah. I wish you were here.

I wish I was there, but I’m
looking forward to hear your feedbacks.

I’m sure you have great feedback
from that.

Yeah, we could do an episode live.

Yeah,
that would be great idea. Great idea.

All right.

Thank
you Jenny. Thank you for tuning in. Yes.

Thank you Jenny, thank you.

Thank you so much. Great to have you.

Well, that wraps

up this episode of Proteomics
in Proximity.

Huge thanks to our guests and authors
of such impactful publications.

I also want to thank you for tuning in.

Really appreciate you being here.

If you enjoyed the content of this

episode, please think about sharing it
with friends or colleagues

you think might be interested
in the content.

In addition, if you'd be willing
to head over to Apple or Spotify

or wherever you digest your podcasts
and give us a rating and review,

this will help others find the podcast

when they're searching for proteomics
or precision medicine podcasts.

And mostly I want to say
we would love to hear from you.

So we have a dedicated email address.

pip@olink.com please reach out.

Let us know what you're interested
in hearing, about what you care about

and any feedback on the episodes
that we have already done so far.

This is all about you,
and so we're really keen

to make sure that we're meeting
what you'd like to hear about.

Thank you so much, and we'll see you soon.