Scientists make digital breakthrough in chemistry that could revolutionize the 
drug industry

PUBLISHED SAT, OCT 24 2020 By Charlie Wood 
https://www.cnbc.com/2020/10/24/how-a-digital-breakthrough-could-revolutionize-drug-industry.html

Key Points

* At the Cronin Lab at the University of Glasgow chemists developed software 
that translates a chemist’s words into recipes for molecules that a robot can 
understand.
* Professor Lee Cronin, the lab’s principal investigator, has designed a 
robotic chemist called a “chemputer” that can produce chemicals from XDL 
programs, including the drug remdesivir, a FDA-approved antiviral treatment for 
the coronavirus.
* Cronin and his colleagues represent one of many groups rushing to bring 
chemistry into the digital age.


In June, the U.S. government purchased the vast majority of world’s supply of 
remdesivir―a FDA-approved antiviral treatment for Covid-19―for July through 
September.

Gilead, the company that makes the compound, recently announced that it would 
meet international demand by the end of October.

Yet all along, digital instructions for whipping up a batch of the nearly 
400-atom molecule at the push of a button have been sitting on Github, an 
online software repository, freely available to anyone with the hardware needed 
to execute the chemical “program.”


A dozen such chemical computers or “chemputers” sit in the University of 
Glasgow lab of Lee Cronin, the chemist who designed the bird’s nest of tubing, 
pumps, and flasks .. and wrote the remdesivir code that runs on it.

He’s spent years dreaming of a future where researchers can distribute and 
produce molecules as easily as they email and print PDFs, making not being able 
to order a drug as archaic as not being able to locate a modern text.

“If we have standard way of discovering molecules, making molecules, and then 
manufacturing them, suddenly nothing goes out of print,” he says. “It’s like an 
ebook reader for chemistry.”


Cronin and his colleagues described their machine’s capability to produce 
multiple molecules last year, and now they’ve taken a second major step toward 
digitizing chemistry with an accessible way to program with the machine.

Their software turns academic papers into chemputer-executable programs that 
researchers can edit without learning to code, they announced earlier this 
month in Science. And they’re not alone. The team represents one of dozens of 
groups spread across academia and industry all racing to bring chemistry into 
the digital age, a development that could lead to safer drugs, more efficient 
solar panels, and a disruptive new industry.

A chemical computer or "chemputer" sits in the University of Glasgow lab of 
Leroy Cronin, the chemist who designed the bird's nest of tubing, pumps, and 
flasks, and wrote the remdesivir code that runs on it. He's spent years 
dreaming of a future where researchers can distribute and produce molecules as 
easily as they email and print PDFs.

The Cronin team hopes their work will enable what they describe as “Spotify for 
chemistry”― an online repository of downloadable recipes for important 
molecules that they say could help developing countries more easily access 
medications, enable more efficient international scientific collaboration, and 
even support the human exploration of space.

“The majority of chemistry hasn’t changed from the way we’ve been doing it for 
the last 200 years. It’s very manual, artisan driven process,” says Nathan 
Collins, the chief strategy officer of SRI Biosciences, a division of SRI 
International, a research company developing another automated chemistry system 
that’s not involved in the Glasgow research.

“There’s billions of dollars of opportunity there.”

At the heart of Cronin’s new work lies what he calls a chemical description 
language or XDL (the “X” is pronounced “kai” after the first letter in the 
Greek word for chemistry). XDL is to the “chemputer” as HTML is to a browser―it 
tells the machine what to do.

The group has also created software called SynthReader that scans a chemical 
recipe in peer-reviewed literature ― like the six-step process for cooking up 
remdemisvir ― and uses natural language processing to pick out verbs like 
“add,” “stir,” or “heat;” modifiers like “dropwise;” and other details like 
durations and temperatures.

The system translates those instructions into XDL, which directs the chemputer 
to execute mechanical actions with its heaters and test tubes.

One of the framework’s strengths, according to Cronin, is that chemists can 
edit the chemical protocol in plain English.

This feature lets researchers operate the machine with little training, and, 
crucially, harness their chemistry expertise to spot bugs in the code. 
Chemputer crashes can be serious affairs. “The human will always need to be 
there to make sure you don’t have a dumpster on fire,” he says.

The researchers tested the system, and no dumpsters burned. The group reported 
extracting 12 demonstration recipes from the chemical literature, such as the 
numbing anesthetic lidocaine, all of which the chemputer carried out at 
efficiencies similar to those of human chemists.

Robotic transformation of chemistry

Cronin built a company called Chemify to sell the chemisty robots and XDL 
package, although he’s also posted free instructions online for building and 
programming the machine. And already the device is making inroads in the 
chemical world. In May of 2019, the group installed a prototype at the 
pharmaceutical company GlaxoSmithKline.

“The chemputer as a concept and the work [Cronin]’s done is really quite 
transformational,” says Kim Branson, the global head of artificial intelligence 
and machine learning at GSK. The company is exploring various automation 
technologies to help it make a wide array of chemicals more efficiently, but 
Cronin’s work in particular, Branson says, may let GSK “teleport expertise” 
around the company. Once a chemist designs a promising molecular recipe, rather 
than writing up a report or teaching a colleague, they’ll just press the share 
button.

Researchers say that while Chemify isn’t the most sophisticated automated 
chemistry platform, it might be the most accessible. It’s built around the 
traditional tools of beakers and test tubes and functions in the step-by-step 
“batch” paradigm that chemists have used for centuries. Cronin also intends it 
to be universal: compatible with any batch chemistry robot. Researchers with 
their own machines just need tell the software what parts they have and give it 
figures like how hot their heater can go.

Other groups are betting on a more dramatic break from chemistry’s roots.

At SRI, Collins oversees the development of a platform called AutoSyn, which 
uses an alternative approach called “flow” chemistry. Rather than mixing up a 
batch of one substance in one beaker, and then moving it to another flask, in 
flow chemistry reactions play out continuously. Chemicals stream together in 
tubing, react there, and get carried off. With more than 3,000 pathways, 
AutoSyn, which Collins and colleagues described in a publication in June, can 
recreate almost any kind of liquid based reaction.

Doing chemistry in flow requires specialized hardware and extra effort to 
translate chemical procedures from their batch descriptions, but that 
investment buys an “exquisite” control over aspects like heat transfer and 
mixing, Collins says.

If machines like AutoSyn can automatically run hundreds of subtle variations on 
a published reaction, the detailed datasets they generate could highlight the 
best way to make a chemical.

The literature may be a good place to start, but many published experiments 
have flaws. Collins estimates that chemists spend 30% to 70% of their time just 
working out missing details in known reactions. ”[A reaction] is written up by 
someone who sits down and bases it on their notes from something they were 
doing the day before, or maybe something they did six months ago,” he says.

While AutoSyn and the Chemputer are both able to reproduce the majority of 
published reactions today, the next step will be making the machines reliable 
and “Apple groovy,” as Cronin puts it.

Collins says that AutoSyn used to need an engineer to keep it functioning for 
more than half of its runs, but now needs fixing less than 10% of the time. 
Eventually, he hopes, users will troubleshoot the system over the phone.

“This is still a very new science,” he says. “It’s started to explode really in 
the last 18 months.”

One force driving that explosion has been the Defense Advanced Research 
Projects Agency (DARPA). It’s wrapping up a four-year program called Make-It, 
of which both the Chemputer and AutoSyn are alumni.

The long-term goal of the program’s manager, Anne Fischer, is to speed up the 
discovery of useful molecules, which has historically involved a lot of waiting 
around while chemists laboriously smithed atoms into novel configurations.

“The slow step is always making and testing the molecules,” she says.

But now that Make-It has helped produce robotic tools to build molecules like 
the Chemputer, AutoSyn, and others, she’s directing a new DARPA program, 
Accelerated Molecular Discovery, that looks to the next stage: developing 
smarter software to tell the robots what molecules to make, and how to make 
them.

This is still a very new science. It’s started to explode really in the last 18 
months.

″We’re now trying now to harness what we’ve done in Make-It and expand it out 
so we can teach computers how to discover new molecules,” she says.

The secret to doing so, many believe, is machine learning. And some machines 
capable of rudimentary chemical learning are well underway. Connor Conley, a 
chemist at MIT, is a member of a team that last year paired an automated flow 
chemistry system with an algorithm to direct it.

The algorithm trained on databases of hundreds of thousands of reactions and 
was able to predict recipes for new products. “It tries to understand, based on 
those patterns, what kind of transformations should work for new molecules it’s 
never seen before,” Conley said.

He stresses that the system has a long way to go. Its predictions were based on 
similar molecules and human chemists needed to flesh out details missing from 
the machine-generated outline. Nevertheless, the work supported the notion that 
software can come up with useful recipes.

MIT is collaborating with more than a dozen chemical and pharmaceutical 
companies to advance its molecule-predicting algorithms, and some companies 
have already put the software to use.

Juan Alvarez, the Assistant Vice President of computational and structural 
chemistry at Merck, says that Conley’s machine learning algorithm is one of a 
variety of chemistry prediction tools that the company has made available to 
its internal researchers.

“It’s absolutely being deployed to impact our timeline today,” he says.

While each group approaches automation from a different angle, they’re all 
tackling the same problem.

A near infinite diversity of possible molecules exist―some of which are surely 
life-saving drugs or revolutionary new materials―but precious few human beings 
have the specialized skillset to analyze, make, and test these compounds.

They aim to keep those rare skills from going to waste.

In some ways the work of chemists still resembles the work of scribes, who once 
painstakingly copied and corrected the writings of others. Researchers like 
Cronin hope that with the chemical equivalents of the printing press, word 
processor, and autocorrect in hand, tomorrow’s chemists will spend less time 
recreating, and more time composing.

“It’s not about replacing chemists,” Fischer says. “It’s about giving chemists 
the tools to allow them to implement and apply the chemistry and allow them to 
be creative high-level thinkers.”


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