How we're using AI to discover new antibiotics
-
0:01 - 0:04So how are we going to beat
this novel coronavirus? -
0:04 - 0:07By using our best tools:
-
0:07 - 0:09our science and our technology.
-
0:10 - 0:13In my lab, we're using
the tools of artificial intelligence -
0:13 - 0:14and synthetic biology
-
0:14 - 0:17to speed up the fight
against this pandemic. -
0:18 - 0:20Our work was originally designed
-
0:20 - 0:23to tackle the antibiotic
resistance crisis. -
0:23 - 0:28Our project seeks to harness
the power of machine learning -
0:28 - 0:29to replenish our antibiotic arsenal
-
0:29 - 0:33and avoid a globally devastating
postantibiotic era. -
0:34 - 0:37Importantly, the same
technology can be used -
0:37 - 0:39to search for antiviral compounds
-
0:39 - 0:41that could help us fight
the current pandemic. -
0:42 - 0:46Machine learning is turning
the traditional model of drug discovery -
0:46 - 0:47on its head.
-
0:47 - 0:49With this approach,
-
0:49 - 0:53instead of painstakingly testing
thousands of existing molecules -
0:53 - 0:54one by one in a lab
-
0:54 - 0:56for their effectiveness,
-
0:56 - 1:01we can train a computer
to explore the exponentially larger space -
1:01 - 1:04of essentially all possible molecules
that could be synthesized, -
1:04 - 1:10and thus, instead of looking
for a needle in a haystack, -
1:10 - 1:14we can use the giant magnet
of computing power -
1:14 - 1:17to find many needles
in multiple haystacks simultaneously. -
1:18 - 1:20We've already had some early success.
-
1:21 - 1:26Recently, we used machine learning
to discover new antibiotics -
1:26 - 1:29that can help us fight off
the bacterial infections -
1:29 - 1:33that can occur alongside
SARS-CoV-2 infections. -
1:33 - 1:37Two months ago, TED's Audacious Project
approved funding for us -
1:37 - 1:40to massively scale up our work
-
1:40 - 1:44with the goal of discovering
seven new classes of antibiotics -
1:44 - 1:48against seven of the world's
deadly bacterial pathogens -
1:48 - 1:50over the next seven years.
-
1:50 - 1:52For context:
-
1:52 - 1:54the number of new class of antibiotics
-
1:54 - 1:57that have been discovered
over the last three decades is zero. -
1:58 - 2:02While the quest for new antibiotics
is for our medium-term future, -
2:02 - 2:06the novel coronavirus poses
an immediate deadly threat, -
2:06 - 2:10and I'm excited to share that we think
we can use the same technology -
2:10 - 2:13to search for therapeutics
to fight this virus. -
2:13 - 2:15So how are we going to do it?
-
2:15 - 2:18Well, we're creating
a compound training library -
2:18 - 2:24and with collaborators applying these
molecules to SARS-CoV-2-infected cells -
2:24 - 2:28to see which of them exhibit
effective activity. -
2:28 - 2:31These data will be use to train
a machine learning model -
2:31 - 2:35that will be applied to an in silico
library of over a billion molecules -
2:35 - 2:40to search for potential
novel antiviral compounds. -
2:40 - 2:43We will synthesize and test
the top predictions -
2:43 - 2:46and advance the most promising
candidates into the clinic. -
2:46 - 2:48Sound too good to be true?
-
2:48 - 2:50Well, it shouldn't.
-
2:50 - 2:53The Antibiotics AI Project is founded
on our proof of concept research -
2:53 - 2:56that led to the discovery
of a novel broad-spectrum antibiotic -
2:56 - 2:58called halicin.
-
2:58 - 3:01Halicin has potent antibacterial activity
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3:01 - 3:05against almost all antibiotic-resistant
bacterial pathogens, -
3:05 - 3:09including untreatable
panresistant infections. -
3:10 - 3:12Importantly, in contrast
to current antibiotics, -
3:12 - 3:16the frequency at which bacteria
develop resistance against halicin -
3:16 - 3:17is remarkably low.
-
3:18 - 3:23We tested the ability of bacteria
to evolve resistance against halicin -
3:23 - 3:25as well as Cipro in the lab.
-
3:25 - 3:27In the case of Cipro,
-
3:27 - 3:30after just one day, we saw resistance.
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3:30 - 3:32In the case of halicin,
-
3:32 - 3:34after one day,
we didn't see any resistance. -
3:34 - 3:38Amazingly, after even 30 days,
-
3:38 - 3:40we didn't see any resistance
against halicin. -
3:41 - 3:47In this pilot project, we first tested
roughly 2,500 compounds against E. coli. -
3:47 - 3:50This training set included
known antibiotics, -
3:50 - 3:52such as Cipro and penicillin,
-
3:52 - 3:54as well as many drugs
that are not antibiotics. -
3:55 - 3:58These data we used to train a model
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3:58 - 4:02to learn molecular features
associated with antibacterial activity. -
4:02 - 4:05We then applied this model
to a drug-repurposing library -
4:05 - 4:07consisting of several thousand molecules
-
4:07 - 4:10and asked the model to identify molecules
-
4:10 - 4:13that are predicted
to have antibacterial properties -
4:13 - 4:15but don't look like existing antibiotics.
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4:16 - 4:21Interestingly, only one molecule
in that library fit these criteria, -
4:21 - 4:24and that molecule
turned out to be halicin. -
4:24 - 4:28Given that halicin does not look
like any existing antibiotic, -
4:28 - 4:32it would have been impossible for a human,
including an antibiotic expert, -
4:32 - 4:34to identify halicin in this manner.
-
4:35 - 4:37Imagine now what we could do
with this technology -
4:37 - 4:39against SARS-CoV-2.
-
4:40 - 4:41And that's not all.
-
4:41 - 4:44We're also using the tools
of synthetic biology, -
4:44 - 4:47tinkering with DNA
and other cellular machinery, -
4:47 - 4:51to serve human purposes
like combating COVID-19, -
4:51 - 4:54and of note, we are working
to develop a protective mask -
4:54 - 4:58that can also serve
as a rapid diagnostic test. -
4:58 - 5:00So how does that work?
-
5:00 - 5:01Well, we recently showed
-
5:01 - 5:04that you can take the cellular
machinery out of a living cell -
5:04 - 5:08and freeze-dry it along with
RNA sensors onto paper -
5:08 - 5:13in order to create low-cost
diagnostics for Ebola and Zika. -
5:14 - 5:19The sensors are activated when
they're rehydrated by a patient sample -
5:19 - 5:22that could consist of blood
or saliva, for example. -
5:22 - 5:25It turns out, this technology
is not limited to paper -
5:25 - 5:28and can be applied
to other materials, including cloth. -
5:29 - 5:31For the COVID-19 pandemic,
-
5:31 - 5:35we're designing RNA sensors
to detect the virus -
5:35 - 5:38and freeze-drying these
along with the needed cellular machinery -
5:38 - 5:41into the fabric of a face mask,
-
5:41 - 5:43where the simple act of breathing,
-
5:43 - 5:46along with the water vapor
that comes with it, -
5:46 - 5:47can activate the test.
-
5:48 - 5:52Thus, if a patient is infected
with SARS-CoV-2, -
5:52 - 5:54the mask will produce
a fluorescent signal -
5:54 - 5:58that could be detected by a simple,
inexpensive handheld device. -
5:59 - 6:03In one or two hours, a patient
could thus be diagnosed -
6:03 - 6:06safely, remotely and accurately.
-
6:07 - 6:09We're also using synthetic biology
-
6:09 - 6:12to design a candidate
vaccine for COVID-19. -
6:13 - 6:16We are repurposing the BCG vaccine,
-
6:16 - 6:19which had been used against TB
for almost a century. -
6:19 - 6:20It's a live attenuated vaccine,
-
6:20 - 6:25and we're engineering it
to express SARS-CoV-2 antigens, -
6:25 - 6:28which should trigger the production
of protective antibodies -
6:28 - 6:29by the immune system.
-
6:29 - 6:32Importantly, BCG
is massively scalable -
6:32 - 6:37and has a safety profile that's among
the best of any reported vaccine. -
6:38 - 6:43With the tools of synthetic biology
and artificial intelligence, -
6:43 - 6:46we can win the fight
against this novel coronavirus. -
6:47 - 6:50This work is in its very early stages,
but the promise is real. -
6:51 - 6:54Science and technology
can give us an important advantage -
6:54 - 6:57in the battle of human wits
versus the genes of superbugs, -
6:57 - 6:59a battle we can win.
-
7:00 - 7:01Thank you.
- Title:
- How we're using AI to discover new antibiotics
- Speaker:
- Jim Collins
- Description:
-
Before the coronavirus pandemic, bioengineer Jim Collins and his team combined the power of AI with synthetic biology in an effort to combat a different looming crisis: antibiotic-resistant superbugs. Collins explains how they pivoted their efforts to begin developing a series of tools and antiviral compounds to help fight COVID-19 -- and shares their plan to discover seven new classes of antibiotics over the next seven years. (This ambitious plan is a part of The Audacious Project, TED's initiative to inspire and fund global change.)
- Video Language:
- English
- Team:
closed TED
- Project:
- TEDTalks
- Duration:
- 07:15
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Erin Gregory
English transcript correction:
Halocin --> halicin