MIT Technology Review Narrated

Can quantum computers now solve health care problems? We’ll soon find out.

13 min
Apr 1, 202618 days ago
Listen to Episode
Summary

The episode explores whether today's noisy, error-prone quantum computers can solve real healthcare problems through the Quantum for Bio competition, which offers up to $5 million to teams developing quantum algorithms that outperform classical computers in medical applications. Six finalist teams are using hybrid quantum-classical approaches to tackle challenges ranging from cancer drug simulation to genetic diversity mapping, with winners to be announced in April 2026.

Insights
  • Quantum computing's near-term value lies in hybrid quantum-classical systems that offload computational bottlenecks to quantum processors while leveraging classical computers for scalable tasks, rather than pure quantum solutions.
  • Current quantum computers are too error-prone for standalone applications, but researchers have developed ingenious workarounds to make them useful for specific healthcare problems that classical methods struggle to solve at scale.
  • The quantum computing field faces credibility challenges due to competing claims about performance; structured competitions with strict judging criteria are emerging as a way to validate real-world applications.
  • Quantum computing's healthcare applications are narrowing toward specific use cases (drug simulation, genomic analysis, cancer pattern detection) rather than broad transformative solutions, indicating a pragmatic shift in expectations.
  • Even if teams don't win the competition, their algorithms may still prove valuable on future, more powerful quantum machines, suggesting the field is building foundational tools for a longer-term transition.
Trends
Hybrid quantum-classical computing architectures becoming the dominant practical approach for near-term quantum applicationsShift from pure quantum solutions toward quantum-accelerated classical computing for healthcare and life sciencesStructured competitions and performance benchmarks replacing hype-driven claims as validation mechanisms in quantum computingQuantum computing applications narrowing to domain-specific problems (drug design, genomics, pattern recognition) rather than general-purpose computingNeutral atom and superconducting qubit technologies competing for healthcare application leadershipQuantum computing moving from theoretical research to clinical collaboration (e.g., Cleveland Clinic partnerships)Error mitigation and algorithmic innovation becoming more valuable than raw qubit counts for near-term quantum advantageQuantum computing timelines extending; focus shifting to useful applications on 50-100 qubit machines rather than waiting for fault-tolerant systemsInterdisciplinary teams (quantum engineers, biologists, clinicians) becoming standard for quantum healthcare applicationsIntellectual property and NDA protection increasing around quantum computing healthcare applications due to competitive advantage potential
Topics
Quantum Computing for Drug DiscoveryHybrid Quantum-Classical AlgorithmsCancer Genomics and Pattern RecognitionPhotodynamic Drug Therapy SimulationMyotonic Dystrophy Treatment DevelopmentQuantum Error Mitigation TechniquesGenetic Diversity Mapping with Quantum ComputersQubit Scaling and Performance BenchmarksQuantum Computing Competition and ValidationNeutral Atom Quantum ProcessorsSuperconducting Qubit TechnologyHealthcare Algorithm DevelopmentComputational GenomicsQuantum-Classical Hybrid SystemsQuantum Computing Timelines and Expectations
Companies
Inflection
Colorado-based quantum computing company competing in Q4Bio with a neutral atom quantum computer to identify cancer s...
Welcome Leap
Nonprofit organization running the Quantum for Bio competition offering $5 million in prizes to validate quantum comp...
Algorithmic
Helsinki-based company using IBM's superconducting quantum computer to simulate photodynamic cancer drugs in collabor...
Quera
Boston-based quantum computing company developing neutral atom quantum computers, collaborating with Nottingham team ...
IBM
Provides superconducting quantum computer used by Algorithmic for cancer drug simulation in Q4Bio competition.
Cleveland Clinic
Healthcare institution collaborating with Algorithmic on quantum-simulated photodynamic drug therapy for cancer treat...
University of Nottingham
UK institution leading Q4Bio team developing quantum algorithms to identify drug candidates for myotonic dystrophy tr...
Stanford University
Institution with Q4Bio team investigating quantum properties of ATP molecules powering biological cells.
Oxford University
UK institution leading Q4Bio team using quantum computers to map genetic diversity on graph-based structures for trea...
University of Chicago
Collaborator with Inflection on quantum algorithm for mining cancer genome atlas data to identify cancer signatures.
MIT
Collaborator with Inflection on quantum algorithm development for cancer pattern detection in large medical datasets.
National Quantum Computing Center
UK facility housing Inflection's neutral atom quantum computer used for Q4Bio competition research.
People
Matt Honan
Host and editor-in-chief introducing the episode and MIT Technology Review Narrated podcast series.
Michael Brooks
Journalist who wrote the article about quantum computers solving healthcare problems, narrated in this episode.
Jonathan D. Hurst
Leading Nottingham Q4Bio team developing quantum algorithms for myotonic dystrophy drug discovery.
Grant Rotskopf
Stanford Q4Bio team member investigating quantum properties of ATP molecules in biological cells.
Sergei Streltschak
Leading Oxford Q4Bio team using quantum computers to map genetic diversity and identify treatment pathways.
Guillermo Garcia Perez
Algorithmic executive explaining quantum simulation of photodynamic cancer drugs in collaboration with Cleveland Clinic.
Sabrina Menoscalco
Algorithmic CEO confident of Q4Bio prize money and describing transformational potential of quantum chemistry simulat...
Teague Tomesh
Inflection's Q4Bio project lead developing quantum algorithm for mining cancer genome atlas data.
David Brooke
Nottingham team member who identified myotonic dystrophy gene in 1992, now using quantum computing for drug discovery.
Sheehan Sajeed
Q4Bio program director and quantum computing entrepreneur assessing likelihood of competition winners and quantum com...
Quotes
"I think we're in with a good shout"
Jonathan D. HurstMid-episode
"This is really at the very edge of doable"
Grant RotskopfMid-episode
"It is very difficult to achieve something with a noisy quantum computer that a classical machine can't do"
Sheehan SajeedLate episode
"What we've done in the period of the Q4Bio program is something unique that can change how to simulate chemistry for health care and life sciences"
Sabrina MenoscalcoMid-episode
"Missing the mark doesn't mean your algorithm won't be useful on a future quantum computer. It just means the machine you need doesn't exist yet"
Sheehan SajeedLate episode
Full Transcript
Welcome to MIT Technology Review Narrated. My name is Matt Honan. I'm our editor-in-chief. Every week, we'll bring you a fascinating, new, in-depth story for the leading edge of science and technology, covering topics like AI, biotech, climate, energy, robotics, and more. Here's this week's story. I hope you enjoy it. Narrated by NOAA. Listen to more of the best articles from the world's biggest publishers on the NOAA app, or at newsoveraudio.com. Michael Brooks writes, can quantum computers now solve health care problems? We'll soon find out. I'm standing in front of a quantum computer built out of atoms and light at the UK's National Quantum Computing Center on the outskirts of Oxford. On a laboratory table, a complex matrix of mirrors and lenses surrounds a Rubik's Cube-sized cell, where 100 cesium atoms are suspended in grid formation by carefully manipulated laser beam. The cesium atom setup is so compact that I could pick it up, carry it out of the lab, and put it on the back seat of my car to take home. I'd be unlikely to get very far, though. It's small, but powerful. And it's so very valuable. Inflection, the Colorado-based company that owns it, is hoping the machine's abilities will win $5 million in March, 2026 at an event to be held in Marina Del Rey, California. Inflection is one of six teams that have made it to the final stage of a 30-month-long quantum computing competition called Quantum for Bio, Q4 Bio. Run by the nonprofit Welcome Leap, it aims to show that today's quantum computers, though messy and error-prone and far from the large-scale machines engineers hope to build, could actually benefit human health. Success would be a significant step forward, improving the worth of quantum computers. But for now, it turns out, that worth seems to be linked to harnessing and improving the performance of conventional, also called classical, computers in tandem, creating a quantum classical hybrid that can exceed what's possible on classical machines by themselves. There are two prize categories. A prize of $2 million will go to any and all teams that can run a significantly useful health care algorithm on computers with 50 or more qubits. A qubit is the basic processing unit in a quantum computer. To win the $5 million grand prize, a team must successfully run a quantum algorithm that solves a significant real-world problem in health care. And the work must use 100 or more qubits. Winners have to meet strict performance criteria, and they must solve a health care problem that can't be solved with conventional computers. A tough task. Despite the scale of the challenge, most of the teams think some of this money could be theirs. I think we're in with a good shout, says Jonathan D. Hurst, a computational chemist at the University of Nottingham, UK. We're very firmly within the criteria for the $2 million prize, says Stanford University's Grant Rotskopf, whose collaboration is investigating the quantum properties of the ATP molecule that powers biological cells. The grand prize is perhaps less of a sure thing. This is really at the very edge of doable, Rotskopf says. Insiders say the challenge is so difficult, given the state of quantum computing technology, that much of the money could stay in Welcome Leap's account. With most of the Q4Bio work unpublished and protected by NDAs, and the quantum computing field already rife with claims and counterclaims about performance and achievements, only the judges will be in a position to decide who's right. The idea behind quantum computers is that they can use small scale objects that obey the laws of quantum mechanics, such as atoms and photons of light, to simulate real world processes too complex to model on our everyday classical machines. Researchers have been working for decades to build such systems, which could deliver insights for creating new materials, developing pharmaceuticals, and improving chemical processes, such as fertilizer production. But dealing with quantum stuff like atoms is excruciatingly difficult. The biggest, shiniest applications require huge, robust machines, capable of a standing in the environmental noise that can very easily disrupt delicate quantum systems. We don't have those yet, and it's unclear when we will. Welcome Leap wanted to find out if the smaller scale machines we have today can be made to do something, anything, useful for health care while we wait for the era of powerful, large scale quantum computers. The group started the competition in 2024, offering $1.5 million in funding to each group of 12 selected teams. The six Q4 bio finalists have taken a range of approaches. Crucially, they've all come up with ingenious ways to overcome quantum computing strawbacks. Faced with noisy, limited machines, they have learned how to outsource much of the computational load to classical processors, running newly developed algorithms that are, in many cases, better than the previous state of the art. The quantum processors are then required only for the parts of the problem where classical methods don't scale well enough as the calculation gets bigger. For example, a team led by Sergei Streltschak of Oxford University is using a quantum computer to map genetic diversity among humans and pathogens on complex graph-based structures. These will, the researchers hope, expose hidden connections and potential treatment pathways. You can think about it as a platform for solving difficult problems and computational genomics, Streltschak says. The corresponding classical tools struggle with even modest scale-up to large databases. Streltschak's team has built an automated pipeline that provides a way of determining whether classical solvers will struggle with a particular problem and how a quantum algorithm might be able to formulate the data so that it becomes solvable on a classical computer or handleable on a noisy quantum one. You can do all this before you start spending money on computing, Streltschak says. In a collaboration with Cleveland Clinic, Helsinki-based Algorithmic has used a superconducting quantum computer built by IBM to simulate a cancer drug that is triggered by specific types of light. The idea is you take the drug, and it's everywhere in your body, but it's doing nothing, just sitting there, until there's light on it of a certain wavelength, says Guillermo Garcia Perez, Algorithmic's chief scientific officer. Then it acts as a molecular bullet, attacking the tumor only at the location in the body where that light is directed. The drug with which Algorithmic began its work is already in phase two clinical trials for treating bladder cancers. The quantum-computed simulation, which adapts and improves on classical algorithms, will allow it to be redesigned for treating other conditions. It has remained a niche treatment precisely because it can't be simulated classically, says Sabrina Menoscalco, Algorithmic's CEO and co-founder. Menoscalco, who is also confident of walking away from the competition with prize money, believes the methods used to create the algorithm will have wide applications. What we've done in the period of the Q4Bio program is something unique that can change how to simulate chemistry for health care and life sciences. Inflection's entry, running on its SESI-empowered machine, is an effort to improve the identification of cancer signatures in medical data. Together with collaborators at the University of Chicago and MIT, the company's scientists have developed a quantum algorithm that mines huge data sets, such as the cancer genome Atlas. The aim is to find patterns that allow clinicians to determine factors such as the likely origin of a patient's metastasized cancer. It's very important to know where it came from, because that can inform the best treatment, says Teague Tomesh, a quantum software engineer who is inflection's Q4Bio project lead. Unfortunately, those patterns are hidden inside data sets so large that they overwhelm classical solvers. Inflection uses the quantum computer to find correlations in the data that can reduce the size of the computation. Then we hand the reduced problem back to the classical solver, Teague says. I'm basically trying to use the best of my quantum and my classical resources. The Nottingham-based team, meanwhile, is using quantum computing to nail down a drug candidate that can cure myotonic dystrophy, the most common adult set form of muscular dystrophy. One member of the team, David Brooke, played a role in identifying the gene behind this condition in 1992. Over 30 years later, Brooke, Hearst, and the others in their group, which includes Quera, a Boston company developing a quantum computer based on neutral atoms, has now quantum computed away in which drugs can form chemical bonds with the protein that brings on the disease, blocking the mechanism that causes the problem. The entrance confidence might be high, but Sheehan's Sajeeds is much lower. Sajeed, a quantum computing entrepreneur based in Waterloo, Ontario, is program director for Q4Bio. He believes the error-prone quantum machines the researchers must work with are unlikely to deliver on all the grand prize criteria. It is very difficult to achieve something with a noisy quantum computer that a classical machine can't do, he says. That said, he has been surprised by the progress. When we started the program, people didn't know about any use cases where quantum can definitely impact biology, he says. But the teams have found promising applications. He adds, we now know the fields where quantum can matter. And the developments in hybrid quantum classical processing that the entrants are using are transformational, Sajeed reckons. Will it be enough to make him part with Welcome Leap's money? That's down to a judging panel, whose members' identities are a closely guarded secret to ensure that no one tailors their presentation to a particular kind of approach. But we won't know the outcome for a while. The winner, or winners, will be announced in mid-April, 2026. If it does turn out that there are no winners, Sajeed has some words of comfort for the competitors. The goal has always been about running a useful algorithm on a machine that exists today, he points out. Missing the mark doesn't mean your algorithm won't be useful on a future quantum computer. It just means the machine you need doesn't exist yet. You were listening to MIT Technology Review, where Michael Brooks writes, can quantum computers now solve health care problems? We'll soon find out. This article was published on the 19th of March, 2026, and was read by Adrian Walker for NOAA. The article you just listened to was narrated by the team at NOAA. Continue listening to more great journalism on the NOAA app or by visiting newsoveraudio.com.