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AI cuts waiting times for cancer patients in NHS first

Artificial intelligence developed by and for the NHS at Addenbrooke’s is reducing the amount of time cancer patients wait for radiotherapy treatment.

WATCH: Dr Raj Jena

Link: https://www.youtube.com/watch?v=B3zf6GAOr_w

Video transcript: Raj Jena

00:00:00:03 - 00:00:01:13

I think it's fantastic, the

00:00:01:13 - 00:00:02:23

idea that we can collaborate with

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some of the finest minds at Microsoft

00:00:05:18 - 00:00:08:04

and then take their tools, train

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an AI in hospital

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using data from our own patients,

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and actually deploy it

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across the NHS for wider patient benefit.

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Just the sheer talent

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and the appetite for innovation

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is what differentiates

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the NHS from other systems.

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I started working in healthcare

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almost nine years ago and

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healthcare offers the possibility

00:00:28:02 - 00:00:29:10

not only to have technical impact

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but also societal impact,

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so I’m really thrilled about this.

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I'd love to see it being deployed

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more widely across the NHS directly.

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We've got 60 radiotherapy

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centres, big and small,

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and if we can get OSAIRIS out there

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into those centres

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for more patient benefit,

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there's more benefit back to the NHS.

OSAIRIS is the first cloud-based AI technology to be developed and deployed within the NHS.

Dr Raj Jena

“OSAIRIS” is saving many hours of doctors’ time in preparing scans and helping to cut the time patients have to wait between referral for radiotherapy and starting treatment.

Working alongside this AI technology, specialists can plan for radiotherapy treatments approximately two and half times faster than if they were working alone, ensuring more patients can get treatment sooner and improving the likelihood of cure.

The technology is currently being used at Addenbrooke’s for prostate and head and neck cancers, but has the potential to work for many other types of cancer, benefitting patients across the NHS.

Dr Raj Jena, oncologist at Cambridge University Hospitals NHS Foundation Trust, led the research for the NHS and University of Cambridge.

How OSAIRIS saves time

OSAIRIS works by significantly cutting the amount of time a doctor needs to spend drawing around healthy organs on scans before radiotherapy.

Outlining the organs, known as ‘segmentation’, is critical in order to protect the healthy tissue around the cancer from radiation.

It can take a doctor between 20 minutes and three hours to perform this task, per patient. This complex but routine task is ideally suited to AI with the oncologist in control, checking every scan after OSAIRIS has done the segmentation.

Dr Raj Jena said:

“OSAIRIS does much of the work in the background so that when the doctor sits down to start planning treatment, most of the heavy lifting is done.

"It is the first cloud-based AI technology to be developed and deployed within the NHS."

“We’ve already started to work on a model that works in the chest, so that will work for lung cancer and breast cancer particularly.

“And also, from my perspective as a neuro-oncologist, I’m interested that we’re building the brain model as well so that we’ve got something that works for brain tumours as well.”

Working with Microsoft

Dr Raj Jena's research includes long-term collaborations with Microsoft Research on an AI research project known as Project InnerEye to develop machine learning techniques to support the global medical imaging community.

To broaden access to research in this field, Microsoft Research made available Project InnerEye toolkits as open-source software.

With a £500,000 grant from the NHS AI Lab, Dr Jena’s team created a new AI tool, OSAIRIS, using open-source software from Project InnerEye and data from patients who had previously been treated in the hospital and agreed to contribute to the research.

Aditya Nori, General Manager of Healthcare for Microsoft Research, said:

“By combining the power of AI with the world-class clinical expertise of the NHS, we have an amazing opportunity for revolutionising healthcare together, while preserving the human element that is the essence of high-quality and safe care.”

WATCH: Dr Raj Jena, Aditya Nori and Amy Edwards

Link: https://www.youtube.com/watch?v=YdkVgoelOeU

Video transcript: Dr Raj Jena, Aditya Nori and Amy Edwards

00:00:00:10 - 00:00:01:23

I started working in healthcare

00:00:01:23 - 00:00:03:04

almost nine years ago,

00:00:03:04 - 00:00:05:22

and healthcare offers the possibility

00:00:05:22 - 00:00:07:04

not only to have technical impact

00:00:07:04 - 00:00:08:13

but also societal impact,

00:00:08:13 - 00:00:11:13

so I’m really thrilled about this.

00:00:11:18 - 00:00:14:13

I really hope that this project

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would be applied across multiple diseases

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and also be deployed

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across multiple hospitals

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so that it truly reduces the waiting time

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for cancer treatment.

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And more broadly speaking,

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I think

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the fact that we have AI finally in

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the NHS also,

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will open the doors

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for other kinds

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of AI technologies

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to really reduce the burden

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that's placed on clinicians

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and more importantly,

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improve patient safety,

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outcomes and experiences.

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We’re already starting to work on a model

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that works in the chest,

00:00:48:15 - 00:00:50:13

so that will work for lung cancer

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and breast cancer particularly.

00:00:52:09 - 00:00:53:22

And also from my perspective

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as a neuro-oncologist,

00:00:55:00 - 00:00:56:07

I'm interested that we're building

00:00:56:07 - 00:00:57:12

the brain model as well,

00:00:57:12 - 00:00:59:00

so we've got something that works

00:00:59:00 - 00:01:00:13

for brain tumours as well.

00:01:00:13 - 00:01:02:10

I'm tremendously excited

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from the clinicians perspective.

00:01:05:07 - 00:01:06:14

I think it's fantastic

00:01:06:14 - 00:01:08:03

the idea that we can collaborate with

00:01:08:03 - 00:01:10:22

some of the finest minds at Microsoft

00:01:10:22 - 00:01:13:08

and then take their tools, train

00:01:13:08 - 00:01:14:13

an AI in hospital

00:01:14:13 - 00:01:16:16

using data from our own patients

00:01:16:16 - 00:01:17:13

and actually deploy it

00:01:17:13 - 00:01:20:12

across the NHS for wider patient benefit.

00:01:20:12 - 00:01:20:22

Myself

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and the team essentially sit together

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and think of all of the risks

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with this device,

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anything that could go wrong

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any ways of which

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it could be used incorrectly.

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And then we have to come up

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with some solutions to those risks

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and we have to make sure

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that the device is safe

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to be used in all patients,

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no matter what type of type of person

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we're looking at.

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Just the sheer talent

00:01:38:09 - 00:01:40:24

and the appetite for innovation

00:01:40:24 - 00:01:43:20

is what differentiates the NHS from,

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you know, other systems.

Safety

Rigorous tests and risk assessments have been carried out to ensure OSAIRIS is safe and can be used in the day-to-day care of radiotherapy patients across the NHS.

In masked tests, known as ‘Turing tests’, doctors were unable to tell the difference between the work of OSAIRIS and the work of a doctor colleague.

Amy Edwards is a clinical engineer at CUH and was involved in the testing. She said:

"Myself and the team essentially sit together and think of all the risks with this device, anything that could go wrong, any way in which it could be used incorrectly.

"And then we have to come up with some solutions to those risks and we have to make sure the device is safe to be used in all patients, no matter what type of patient we're looking at."

Dr Raj Jena added:

"18 months of rigorous testing will enable us to share this technology safely across the NHS for patient benefit.”

In the year the NHS turns 75 we are investing in its future and last week announced a new £21 million fund for Trusts to deploy AI tools in a safe and controlled way to speed up the diagnosis and treatment for a range of conditions.

Steve Barclay, Health and Social Care Secretary

Health and Social Care Secretary Steve Barclay said:

“Cutting edge technology can help us reduce waiting times for cancer patients, free up time for staff so they can focus on patient care, and ultimately save lives – and artificial intelligence is playing an increasingly important role.

“Backed by £500,000 in government funding, the team at Addenbrooke’s Hospital are utilising the innovative OSAIRIS tool to speed up radiotherapy scans at more than twice the normal rate - reducing the time it takes to start potentially life-saving treatment.

“It will also help ease the pressure on the NHS and cut waiting lists, one of the government’s five priorities.

“In the year the NHS turns 75 we are investing in its future and last week announced a new £21 million fund for Trusts to deploy AI tools in a safe and controlled way to speed up the diagnosis and treatment for a range of conditions.”

Professor Sir Stephen Powis, NHS national medical director said:

"Ever since the NHS was founded 75 years ago, it has been at the forefront of testing new technologies that could improve patient care and save lives – the NHS continues to take the lead in new AI technologies, like this one, to ensure our patients are among the first in the world to benefit."