How math and impatient driving inspired student's award-winning startup

UWM PhD student Joel Roberts is the founder of Shepherd Traffic, a company that uses computer vision, geometry and smart algorithms to capture more detailed and accurate traffic data than what’s currently available. (UWM Photo/Laura Otto)

Joel Roberts really hates sitting at red lights – especially the ones that hold you hostage while not a single car passes in the cross-direction.

“Sitting in traffic bothers me,” said Roberts, a PhD student in civil engineering at UWM. “So, getting drivers through intersections efficiently is interesting to math guys like myself because it’s basically an optimization problem.”

Now, that everyday frustration has fueled something bigger: an award-winning startup.

Roberts is the founder of Shepherd Traffic, a company that uses computer vision, geometry and smart algorithms to capture more detailed and accurate traffic data than what’s currently available. The idea is to let the computer do the watching – and the counting.

When traffic management professionals need to time a light or redesign roads, the initial data they need are object counts and classifications, which you can take from videos.

His pitch for the company beat out top student innovators from across Wisconsin to win the $2,500 grand prize at the WiSys Big Idea Pitch Competition.

Smarter intersections, less waiting

Traffic lights usually run on fixed timing patterns that do not respond to the small nuances of traffic, Roberts said. Timings get the main gist of traffic, but they can’t optimize every exact situation. A fully adaptive system would.

“The first thing I built was an algorithm that recognizes and calculates the delay for every object – cars, trucks, bikes, pedestrians – at any given point when the light changes,” he said. “It figures out the best moment to switch to minimize everyone’s wait.”

His system doesn’t just count objects. It logs trajectories and could help predict movement.

And unlike many competitors who still rely on manual traffic counting (clipboards and all), Roberts’ approach is automated – making it faster, cheaper and more scalable.

From idea to incubator

The turning point came two years ago when Roberts took his idea to UWM’s Lubar Entrepreneurship Center. Encouraged by friends, he applied to I-Corps, a national program that helps turn university research into startups.

He applied to the program as a community member and met Xiao Qin, UWM professor of civil engineering and an expert in traffic systems. Qin not only agreed to help him but also encouraged Roberts to pursue his graduate studies at UWM, where he also received an assistantship.

As a graduate student in the department, Roberts could work on his startup as part of his academic research.

That turned out to be pivotal to advancing his goals, Roberts said.

“I needed time to work on this project, deeper expertise and a way to support myself while doing it,” he said. “I’m grateful to Dr. Qin, who also is an expert in many aspects of what I’m building my business on.”

The road ahead

Through I-Corps, Roberts learned that it’s not uncommon for 40% of traffic project budgets to be spent just on data collection. That’s a huge opportunity, he said, especially if his system can deliver better results at a lower cost.

Looking ahead, he plans to expand his data capabilities to include pedestrians — often overlooked in traffic studies — and to add the aspect of data involving “near misses,” a topic that Qin has conducted research on.

He hopes his system can one day help forecast risky driving behavior — such as the likelihood of someone running a red light. It’s the kind of insight that could transform how cities plan intersections, adjust signal timing and improve safety.

He’s also exploring two business models: selling the traffic insights directly or licensing the software behind them.For now, the demand may be modest. But as smart cities grow and infrastructure modernizes, Roberts believes his vision for data-driven intersections will be right on time. How math and impatient driving inspired student's award-winning startup
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Using artificial intelligence to tease out answers to health care disparities

Jake Luo, an associate professor in UWM’s Zilber College of Public Health and College of Engineering & Applied Science, directs the UWM Center for Health Systems Solutions. An expert in bioinformatics, Luo sifts through electronic medical records in order to spot patterns. (UWM Photo/Elora Hennessey)

By Jennifer Walter: Without computers, it would take Jake Luo a lifetime to sort through the sheer amount of data that is integral to his work. An associate professor in UWM’s Zilber College of Public Health and College of Engineering & Applied Science, Luo focuses on identifying patterns in massive, sprawling electronic health records to highlight disparities in care.

One dataset in particular, from the National Inpatient Sample, contains the data of 7 million patients across multiple years, Luo said. Even regular computers struggle to process this amount of information. “Sometimes, if the data set is too large, you can’t get a result because of the memory limitation or the CPU limitations,” he explained.

That’s why artificial intelligence is a powerful companion for Luo’s work. AI was designed to handle huge amounts of data and identify patterns. With resources from UWM’s High Performance Computing Center, Luo employs advanced AI computing techniques to efficiently process massive datasets.

These AI models can identify subtle patterns in how different patient populations access and experience health care services and their health outcomes, helping us understand where disparities exist and how to address them. The end result is organized information that researchers can leverage to draw conclusions about the state of health care — and build a roadmap for improvement.

Finding the gaps

Access to health care varies widely in the United States. Income level, insurance status, location, race, sex and level of education can affect each person’s experience with preventive and emergency care.

Making health care more equitable starts with addressing the disparities. But to prompt real change, professionals need to identify the gaps and who is most affected.

Luo, who directs the UWM Center for Health Systems Solutions, approaches this widespread problem by digging into the data. As an expert in bioinformatics, he sifts through electronic medical records in order to spot patterns. These databases are huge and have many data points on each patient.

“All the details about the patient — what kind of treatment they had, what kind of drug they’ve been taking, what kind of diagnosis and the (clinician) notes are in the electronic health record,” Luo said. “We leverage this particular dataset to do a lot of different kinds of research.”

Highlighting disparities

In many projects, Luo begins by collaborating with clinical investigators — physicians who directly work with patients — to suss out patterns and develop hypotheses.

“For example, they might observe that certain patient groups have lower response to certain treatments, and some patient groups are not adhering to the treatment … protocol as well as other patient groups,” Luo said.

Then, using patient data, the researchers determine if the hypothesis is true or not. “Clinical investigators give us some hint about potential gaps and challenges,” Luo said. “And then we basically drill into those areas and look into the pattern to see if that’s true or not.”

Other times, Luo’s group works backward; they get access to a large dataset but have to use machine learning to detect patterns within it. Such was the case when they studied disparities in telemedicine during the COVID-19 pandemic. Using sophisticated machine learning algorithms, they analyzed several factors simultaneously, from clinical outcomes and treatment patterns to socioeconomic indicators, to identify which patient populations may be underserved. For example, when studying telemedicine adoption during COVID-19, their AI systems processed millions of patient interactions to detect usage patterns across different demographic groups, revealing previously unknown disparities in virtual care access.

“We pooled all the patients who used telemedicine and then generated a control group who did not use telemedicine and looked into the pattern of those patients to see, for example, whether a specific group actually adopted telemedicine better than the other groups,” Luo said.

Some of the data confirmed their hypothesis – that more educated patients were more likely to use telemedicine. Other patterns were less obvious and more surprising, Luo says. For example, female patients were more likely to meet with their doctor virtually than male patients, as the team revealed in a 2021 paper in the journal Applied Clinical Informatics.

In another project, Luo is working on an initiative with the Medical College of Wisconsin called OTO Clinomics. It aims to help researchers better understand individual risk factors for otolaryngologic diseases and treatment to provide better care. (Otolaryngology includes conditions like head and neck cancer, tonsillitis, reflux and hearing loss.)

In 2021, Luo contributed to a report in OTO Open about the socioeconomic factors that correlate with a chronic rhinosinusitis diagnosis at a specialized clinic (as opposed to the emergency room). His team found that patients at the clinic tended to be proportionally older, educated, white and female. Conversely, clinics saw fewer patients who were Black, male, and had lower income and education levels.

These findings correlated with national trends related to race and socioeconomic status in health care access. In this case, Luo’s team won’t be the one to address the gaps with potential solutions, but drawing attention to these disparities can set the stage for other researchers to explore ways to help different patient populations.
Improving the patient experience

In other projects, Luo is working on more direct improvements for the patient experience. Under a grant from the National Institutes of Health, he helped design an AI-enabled voice system to help patients report data.

When patients start a new medication regimen or join a clinical trial, they’re not always diligent about reporting their health data. For example, a person undergoing diabetes treatments might need to log their glucose levels every day in an online portal. Clinicians rely on this data to determine if a treatment is working, yet patients aren’t necessarily consistent when it comes to recording their biomarkers.

So Luo’s team is working with a small cohort of participants who agreed to bring home an Amazon Alexa device that can talk to them when it’s time for a check-in. “It provides a very natural interface for the patient to do this task,” Luo says.

Instead of requiring patients to sit down at a computer and type in information each day, it’s a lot easier to just chat with the device on the go. The AI-enabled software can have a conversation with the patient, prompting them to share incremental health details as needed. Unlike simple reminder systems, this AI can engage in more sophisticated interactions. For example, asking clarifying questions if a patient reports concerning symptoms or offering encouragement when they’re consistently tracking their health data. The goal is to create an easier reporting system that streamlines data collection for patients and clinicians alike Using artificial intelligence to tease out answers to health care disparities
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