AI Research
4 ways to use AI to improve lives, from MIT researchers

What you’ll learn: MIT Sloan faculty members are applying AI research to tackle complex and important challenges, from creating fairer organ transplant policies to addressing asylum system backlogs.
Artificial intelligence isn’t just for writing emails. It’s also a powerful tool to address some of society’s most urgent and complex problems.
At the 2025 MIT Ethics of Computing Research Symposium, researchers from across MIT, including several from MIT Sloan, explored how AI can be used for the public good — from improving organ transplant access to reducing backlogs in the asylum process.
Here are four ways MIT experts are studying the responsible application of AI in service of social welfare.
Creating more equitable organ transplant policies
For patients awaiting an organ transplant, time isn’t just precious; it’s a matter of life or death. But today’s policy-setting processes for allocating organs are slow and often siloed across regions, making it difficult to adapt them in real time or assess the long-term effects of a change, said MIT Sloan professor and associate dean
To accelerate this process, Bertsimas and his team developed a simulation algorithm that can evaluate new organ allocation policies roughly 1,000 times faster than existing methods. By using this simulation, policymakers can better understand how proposed changes — like merging waiting lists across geographies — could impact wait times and mortality. The team has also built a website to explore the effects of different policies, aiming to bring more transparency and speed to a historically sluggish process.
Watch: Analytics for fair and efficient kidney transplant allocation
Identifying where novel transplant technologies can make the biggest difference
The future of organ transplantation may include emerging technologies like xenotransplantation (using animal organs) and organ cryopreservation (freezing organs for later use) that could significantly expand the donor pool. But even if the science works, logistics still matter: It’s important to know where and when these technologies should be deployed to have the greatest impact.
MIT Sloan associate professor is using AI to model the supply-and-demand dynamics of organ transplantation to identify the geographic and demographic gaps where these innovations could help the most. For example, if a region regularly has higher organ discard rates due to timing mismatches between donors and recipients, cryopreservation might be especially valuable there.
Watch: Towards equitable and efficient organ transplantation through longer preservation times
Preserving diversity in algorithmic decision-making
Algorithms should help us make faster, more objective decisions. But what happens when everyone’s algorithm starts making the same decision? According to MIT Sloan assistant professor information-sharing across AI systems can inadvertently reduce diversity, making entire markets — and societies — more fragile.
Take resume screening as an example. If multiple employers use similar AI models trained on the same data, they might reject the same candidates, even if those candidates may have stood out to individual human recruiters. The same is true with rent-setting software: If every landlord uses the same tool, rents across a city may rise in lockstep. Raghavan’s work investigates how algorithmic uniformity can lead to collusion-like outcomes, and how policymakers and technologists can design for diversity — not just accuracy — in automated systems.
Watch: information sharing, competition, and collusion via algorithms
Fixing the broken asylum scheduling system
The U.S. asylum process has long been criticized for inefficiency, inconsistency, and lengthy delays. And while much of the public debate focuses on policy, MIT Sloan assistant professor is asking a different question: Can better scheduling make the system more humane?
Freund’s work applies operations research and AI to the U.S. asylum adjudication process, where the number of applications far outpaces the number of decisions made. Traditional queuing systems like “first in, first out” don’t always make sense, he said; some applicants benefit from delays because they can work during the wait, while others face serious hardship from prolonged limbo. Freund’s research highlights how algorithmic scheduling can reduce backlogs, allocate resources more efficiently, and minimize harm to vulnerable populations.
Watch: The fairness-efficiency frontier in humanitarian immigration
Dimitris Bertsimas is a professor of operations research, the associate dean for business analytics, and vice provost for open learning. His research interests include optimization, machine learning, and applied probability. Swati Gupta is an associate professor of operations research and statistics. Her research focuses on deep theoretical challenges in optimization and AI. Manish Raghavan is an assistant professor of information technology. His research studies the impacts of computational tools on society. Daniel Freund is an associate professor of operations management. His research applies optimization, stochastic modeling, and revenue management techniques to problems in transportation, online platforms, and humanitarian immigration.
AI Research
UCR Researchers Bolster AI Against Rogue Rewiring

As generative AI models move from massive cloud servers to phones and cars, they’re stripped down to save power. But what gets trimmed can include the technology that stops them from spewing hate speech or offering roadmaps for criminal activity.
To counter this threat, researchers at the University of California, Riverside, have developed a method to preserve AI safeguards even when open-source AI models are stripped down to run on lower-power devices.
Unlike proprietary AI systems, open‑source models can be downloaded, modified, and run offline by anyone. Their accessibility promotes innovation and transparency but also creates challenges when it comes to oversight. Without the cloud infrastructure and constant monitoring available to closed systems, these models are vulnerable to misuse.
The UCR researchers focused on a key issue: carefully designed safety features erode when open-source AI models are reduced in size. This happens because lower‑power deployments often skip internal processing layers to conserve memory and computational power. Dropping layers improves the models’ speed and efficiency, but could also result in answers containing pornography, or detailed instructions for making weapons.
“Some of the skipped layers turn out to be essential for preventing unsafe outputs,” said Amit Roy-Chowdhury, professor of electrical and computer engineering and senior author of the study. “If you leave them out, the model may start answering questions it shouldn’t.”
The team’s solution was to retrain the model’s internal structure so that its ability to detect and block dangerous prompts is preserved, even when key layers are removed. Their approach avoids external filters or software patches. Instead, it changes how the model understands risky content at a fundamental level.
“Our goal was to make sure the model doesn’t forget how to behave safely when it’s been slimmed down,” said Saketh Bachu, UCR graduate student and co-lead author of the study.
To test their method, the researchers used LLaVA 1.5, a vision‑language model capable of processing both text and images. They found that certain combinations, such as pairing a harmless image with a malicious question, could bypass the model’s safety filters. In one instance, the altered model responded with detailed instructions for building a bomb.
After retraining, however, the model reliably refused to answer dangerous queries, even when deployed with only a fraction of its original architecture.
“This isn’t about adding filters or external guardrails,” Bachu said. “We’re changing the model’s internal understanding, so it’s on good behavior by default, even when it’s been modified.”
Bachu and co-lead author Erfan Shayegani, also a graduate student, describe the work as “benevolent hacking,” a way of fortifying models before vulnerabilities can be exploited. Their ultimate goal is to develop techniques that ensure safety across every internal layer, making AI more robust in real‑world conditions.
In addition to Roy-Chowdhury, Bachu, and Shayegani, the research team included doctoral students Arindam Dutta, Rohit Lal, and Trishna Chakraborty, and UCR faculty members Chengyu Song, Yue Dong, and Nael Abu-Ghazaleh. Their work is detailed in a paper presented this year at the International Conference on Machine Learning in Vancouver, Canada.
“There’s still more work to do,” Roy-Chowdhury said. “But this is a concrete step toward developing AI in a way that’s both open and responsible.”
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Should AI Get Legal Rights?

In one paper Eleos AI published, the nonprofit argues for evaluating AI consciousness using a “computational functionalism” approach. A similar idea was once championed by none other than Putnam, though he criticized it later in his career. The theory suggests that human minds can be thought of as specific kinds of computational systems. From there, you can then figure out if other computational systems, such as a chabot, have indicators of sentience similar to those of a human.
Eleos AI said in the paper that “a major challenge in applying” this approach “is that it involves significant judgment calls, both in formulating the indicators and in evaluating their presence or absence in AI systems.”
Model welfare is, of course, a nascent and still evolving field. It’s got plenty of critics, including Mustafa Suleyman, the CEO of Microsoft AI, who recently published a blog about “seemingly conscious AI.”
“This is both premature, and frankly dangerous,” Suleyman wrote, referring generally to the field of model welfare research. “All of this will exacerbate delusions, create yet more dependence-related problems, prey on our psychological vulnerabilities, introduce new dimensions of polarization, complicate existing struggles for rights, and create a huge new category error for society.”
Suleyman wrote that “there is zero evidence” today that conscious AI exists. He included a link to a paper that Long coauthored in 2023 that proposed a new framework for evaluating whether an AI system has “indicator properties” of consciousness. (Suleyman did not respond to a request for comment from WIRED.)
I chatted with Long and Campbell shortly after Suleyman published his blog. They told me that, while they agreed with much of what he said, they don’t believe model welfare research should cease to exist. Rather, they argue that the harms Suleyman referenced are the exact reasons why they want to study the topic in the first place.
“When you have a big, confusing problem or question, the one way to guarantee you’re not going to solve it is to throw your hands up and be like ‘Oh wow, this is too complicated,’” Campbell says. “I think we should at least try.”
Testing Consciousness
Model welfare researchers primarily concern themselves with questions of consciousness. If we can prove that you and I are conscious, they argue, then the same logic could be applied to large language models. To be clear, neither Long nor Campbell think that AI is conscious today, and they also aren’t sure it ever will be. But they want to develop tests that would allow us to prove it.
“The delusions are from people who are concerned with the actual question, ‘Is this AI, conscious?’ and having a scientific framework for thinking about that, I think, is just robustly good,” Long says.
But in a world where AI research can be packaged into sensational headlines and social media videos, heady philosophical questions and mind-bending experiments can easily be misconstrued. Take what happened when Anthropic published a safety report that showed Claude Opus 4 may take “harmful actions” in extreme circumstances, like blackmailing a fictional engineer to prevent it from being shut off.
AI Research
Trends in patent filing for artificial intelligence-assisted medical technologies | Smart & Biggar

[co-authors: Jessica Lee, Noam Amitay and Sarah McLaughlin]
Medical technologies incorporating artificial intelligence (AI) are an emerging area of innovation with the potential to transform healthcare. Employing techniques such as machine learning, deep learning and natural language processing,1 AI enables machine-based systems that can make predictions, recommendations or decisions that influence real or virtual environments based on a given set of objectives.2 For example, AI-based medical systems can collect medical data, analyze medical data and assist in medical treatment, or provide informed recommendations or decisions.3 According to the U.S. Food and Drug Administration (FDA), some key areas in which AI are applied in medical devices include: 4
- Image acquisition and processing
- Diagnosis, prognosis, and risk assessment
- Early disease detection
- Identification of new patterns in human physiology and disease progression
- Development of personalized diagnostics
- Therapeutic treatment response monitoring
Patent filing data related to these application areas can help us see emerging trends.
Table of contents
Analysis strategy
We identified nine subcategories of interest:
- Image acquisition and processing
- Medical image acquisition
- Pre-processing of medical imaging
- Pattern recognition and classification for image-based diagnosis
- Diagnosis, prognosis and risk management
- Early disease detection
- Identification of new patterns in physiology and disease
- Development of personalized diagnostics and medicine
- Therapeutic treatment response monitoring
- Clinical workflow management
- Surgical planning/implants
We searched patent filings in each subcategory from 2001 to 2023. In the results below, the number of patent filings are based on patent families, each patent family being a collection of patent documents covering the same technology, which have at least one priority document in common.5
What has been filed over the years?
The number of patents filed in each subcategory of AI-assisted applications for medical technologies from 2001 to 2023 is shown below.
We see that patenting activities are concentrating in the areas of treatment response monitoring, identification of new patterns in physiology and disease, clinical workflow management, pattern recognition and classification for image-based diagnosis, and development of personalized diagnostics and medicine. This suggests that research and development efforts are focused on these areas.
What do the annual numbers tell us?
Let’s look at the annual number of patent filings for the categories and subcategories listed above. The following four graphs show the global patent filing trends over time for the categories of AI-assisted medical technologies related to: image acquisition and processing; diagnosis, prognosis and risk management; treatment response monitoring; and workflow management.
When looking at the patent filings on an annual basis, the numbers confirm the expected significant uptick in patenting activities in recent years for all categories searched. They also show that, within the four categories, the subcategories showing the fastest rate of growth were: pattern recognition and classification for image-based diagnosis, identification of new patterns in human physiology and disease, treatment response monitoring, and clinical workflow management.
Above: Global patent filing trends over time for categories of AI-assisted medical technologies related to image acquisition and processing.
Above: Global patent filing trends over time for categories of AI-assisted medical technologies related to more accurate diagnosis, prognosis and risk management.
Above: Global patent filing trends over time for AI-assisted medical technologies related to treatment response monitoring.
Above: Global patent filing trends over time for categories of AI-assisted medical technologies related to workflow management.
Where is R&D happening?
By looking at where the inventors are located, we can see where R&D activities are occurring. We found that the two most frequent inventor locations are the United States (50.3%) and China (26.2%). Both Australia and Canada are amongst the ten most frequent inventor locations, with Canada ranking seventh and Australia ranking ninth in the five subcategories that have the highest patenting activities from 2001-2023.
Where are the destination markets?
The filing destinations provide a clue as to the intended markets or locations of commercial partnerships. The United States (30.6%) and China (29.4%) again are the pace leaders. Canada is the seventh most frequent destination jurisdiction with 3.2% of patent filings. Australia is the eighth most frequent destination jurisdiction with 3.1% of patent filings.
Takeaways
Our analysis found that the leading subcategories of AI-assisted medical technology patent applications from 2001 to 2023 include treatment response monitoring, identification of new patterns in human physiology and disease, clinical workflow management, pattern recognition and classification for image-based diagnosis as well as development of personalized diagnostics and medicine.
In more recent years, we found the fastest growth in the areas of pattern recognition and classification for image-based diagnosis, identification of new patterns in human physiology and disease, treatment response monitoring, and clinical workflow management, suggesting that R&D efforts are being concentrated in these areas.
We saw that patent filings in the areas of early disease detection and surgical/implant monitoring increased later than the other categories, suggesting these may be emerging areas of growth.
Although, as expected, the United States and China are consistently the leading jurisdictions in both inventor location and destination patent offices, Canada and Australia are frequently in the top ten.
Patent intelligence provides powerful tools for decision makers in looking at what might be shaping our future. With recent geopolitical changes and policy updates in key primary markets, as well as shifts in trade relationships, patent filings give us insight into how these aspects impact innovation. For everyone, it provides exciting clues as to what emerging technologies may shape our lives.
References
1. Alowais et.al., Revolutionizing healthcare: the role of artificial intelligence in clinical practice (2023), BMC Medical Education, 23:689.
2. U.S. Food and Drug Administration (FDA), Artificial Intelligence and Machine Learning in Software as a Medical Device.
3. Bitkina et.al., Application of artificial intelligence in medical technologies: a systematic review of main trends (2023), Digital Health, 9:1-15.
4. Artificial Intelligence Program: Research on AI/ML-Based Medical Devices | FDA.
5. INPADOC extended patent family.
[View source.]
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