Friday, April 03, 2026

 

MIT researchers measure traffic emissions, to the block, in real-time




A new study pieces together existing data sources in order to develop a detailed, dynamic picture of auto emissions.





Massachusetts Institute of Technology





In a study focused on New York City, MIT researchers have shown that existing sensors and mobile data can be used to generate a near real-time, high-resolution picture of auto emissions, which could be used to develop local transportation and decarbonization policies. 

The new method produces much more detailed data than some other common approaches, which use intermittent samples of vehicle emissions. The researchers say it is also more practical and scales up better than some studies that have aimed for very granular emissions data from a small number of automobiles at once. The work helps bridge the gap between less-detailed citywide emissions inventories and highly detailed analyses based on individual vehicles. 

“Our model, by combining real-time traffic cameras with multiple data sources, allows extrapolating very detailed emission maps, down to a single road and hour of the day,” says Paolo Santi, a principal research scientist in the MIT Senseable City Lab and co-author of a new paper detailing the project’s results. “Such detailed information can prove very helpful to support decision-making and understand effects of traffic and mobility interventions.” 

Carlo Ratti, director of the MIT Senseable City Lab, notes that the research “is part of our lab’s ongoing quest into hyperlocal measurements of air quality and other environmental factors. By integrating multiple streams of data, we can reach a level of precision that was unthinkable just a few years ago — giving policymakers powerful new tools to understand and protect human health.”

The new method also protects privacy, since it uses computer vision techniques to recognize types of vehicles, but without compiling license plate numbers. The study leverages technologies, including those already installed at intersections, to yield richer data about vehicle movement and pollution. 

“The very basic idea is just to estimate traffic emissions using existing data sources in a cost-effective way,” says Songhua Hu, a former postdoc in the Senseable City Lab, and now an assistant professor at City University of Hong Kong. 

The paper, “Ubiquitous Data-driven Framework for Traffic Emission Estimation and Policy Evaluation,” is published in Nature Sustainability

The authors are Hu; Santi; Tom Benson, a researcher in the Senseable City Lab; Xuesong Zhou, a professor of transportation engineering at Arizona State University; An Wang, an assistant professor at Hong Kong Polytechnic University; Ashutosh Kumar, a visiting doctoral student at the Senseable City Lab; and Ratti. The MIT Senseable City Lab is part of MIT’s Department of Urban Studies and Planning.

Manhattan measurements

To conduct the study, the researchers used images from 331 cameras already in use in Manhattan intersections, along with anonymized location records from over 1.75 million mobile phones. Applying vehicle-recognition programs and defining 12 broad categories of automobiles, the scholars found they could correctly place 93 percent of vehicles in the right category. The imaging also yielded important information about the specific ways traffic signals affect traffic flow. That matters because traffic signals are a major reason for stop-and-go driving patterns, which strongly affect urban emissions but are often omitted in conventional inventories.

The mobile phone data then provided rich information about the overall patterns of traffic and movement of individual vehicles throughout the city. The scholars combined the camera and phone data with known information about emissions rates to arrive at their own emissions estimates for New York City.

“We just need to input all emission-related information based on existing urban data sources, and we can estimate the traffic emissions,” Hu says. 

Moreover, the researchers evaluated the changes in emissions that might occur in different scenarios when traffic patterns, or vehicle types, also change. 

For one, they modeled what would happen to emissions if a certain percentage of travel demand shifted from private vehicles to buses. In another scenario, they looked at what would happen if morning and evening rush hour times were spread out a bit longer, leaving fewer vehicles on the road at once. They also modeled the effects of replacing fine-grained emissions inputs with citywide averages — finding that the rougher emissions estimates could vary widely, from −49 percent to 25 percent of the more fine-tuned results. That underscores how seemingly small simplifications can introduce large errors into emission estimates.

Major emissions drop

On one level, this work involved altering inputs into the model and seeing what emerged. But one scenario the researchers studied is based on a real-world change: In January 2025, New York City implemented congestion pricing south of 60th Street in Manhattan. 

To study that, the researchers looked at what happened to vehicle traffic at intervals of two, four, six, and eight weeks after the program began. Overall, congestion pricing lowered traffic volume by about 10 percent — but there was a corresponding drop in emissions of 16-22 percent.

This finding aligns with a previous study by researchers at Cornell University, which reported a 22 percent reduction in particulate matter (PM2.5) levels within the pricing zone. The MIT team also found that these reductions were not evenly distributed across the network, with larger declines on some major streets and more mixed effects outside the pricing zone.

“We see these kinds of huge changes after the congestion pricing began, Hu says. “I think that’s a demonstration that our model can be very helpful if a government really wants to know if a new policy converts into real-world impact.”

There are additional forms of data that could be fed into the researchers’ new method. For instance, in related work in Amsterdam, the team leveraged dashboard cams from vehicles to yield rich information about vehicle movement. 

“With our model we can make any camera used in cities, from the hundreds of traffic cameras to the thousands of dash cams, a powerful device to estimate traffic emissions in real-time,” says Fábio Duarte, the associate director of research and design at the MIT Senseable City Lab, who has worked on multiple related studies. 

The research was supported by the MIT Senseable City Consortium, which consists of Atlas University, the cityof Laval, the city of Rio de Janeiro, Consiglio per la Ricerca in Agricoltura e l’Analisi dell’Economia Agraria, the Dubai Future Foundation, FAE Technology, KAIST Center for Advanced Urban Systems, Sondotecnica, Toyota, and Volkswagen Group America.

###

Written by Peter Dizikes, MIT News

 

Portable eye scanner powered by AI expands access to low-cost community screening






Tohoku University

Figure 1 

image: 

Portable AI-powered scanning slit-light device brings low-cost eye screening closer to everyday life. The figure illustrates how a single handheld system could support community-based screening in settings such as supermarkets, pharmacies, care homes, railway or bus stations, hospitals, and remote eye-screening camps. From one short scanning-slit video, the device performs on-device AI analysis of anatomical eye features and supports screening for cataract, glaucoma risk, keratoconus, corneal opacity, lens dislocation, and iris abnormalities.

view more 

Credit: ©Kaushik et al.






Imagine being able to assess how healthy the front of our eyes are not only in hospitals, but also in remote eye-screening camps, elderly-care facilities, pharmacies, or even train stations. That is the future a research team led by Professor Toru Nakazawa at the Graduate School of Medicine, Tohoku University is working towards with a newly developed portable AI-powered scanning slit-light device. This convenient device hopes to make ophthalmic care more accessible, so patients can be assessed any place, and any time.

The findings are reported in Scientific Reports, published on March 17, 2026.

Diseases such as cataracts that affect the front of the eye (also called the anterior segment) are among the leading causes of visual impairment worldwide. Losing your vision reduces independence, mobility, and overall quality of life. Unfortunately, many people are not screened until vision loss symptoms becomes more severe - and in some cases, irreversible.

"It is in a patient's best interests to undergo regular check-ups, but this isn't always easy," explains Nakazawa. "The instruments needed to conduct these exams are expensive, bulky, and largely confined to clinical settings. Patients in rural areas or with low mobility may not be able to access these vital screening tools - leaving them in the dark."

Anterior-segment optical coherence tomography (AS-OCT) machines can reach the tens-of-millions-of-yen price range. The research team designed an ultra-low-cost system to work as an alternative, with reliable results that show strong agreement with AS-OCT scans. They determined the device was sufficient for screening-oriented assessment, while also being able to directly visualize clinically important features such as the cornea, iris, lens, ocular surface, pigment variations, and capsular changes--features that are often difficult to appreciate with grayscale OCT alone.

The device can also assess angle-closure glaucoma risk, which is a major concern in Asia. It is particularly important to catch early, as it can lead to sudden, profound vision loss if a full angle-closure event occurs.

By capturing a single scanning-slit video, the system can provide both quantitative measurements and qualitative or AI-assisted evaluation of anterior-segment abnormalities. A key feature of the platform is its lightweight AI model (LWBNA-unet), which segments important anatomical structures of the eye and supports further screening-oriented disease classification. Because the model is lightweight, accurate analysis can be performed directly on the device itself, without relying on cloud computing. This helps reduce operator dependence while improving portability, privacy, and real-world usability.

The low cost, portability, quantitative capability, true-color visible-light imaging, and on-device AI make the platform a practical candidate for bringing anterior-segment screening closer to everyday life.


Video 1 [VIDEO] 

Demonstration of self-scanning with the portable AI-powered scanning slit-light device. The main video shows a normal eye with a clear lens, while the upper inset shows a cataract case with marked lens opacity. The video also illustrates frame-by-frame detection of key anatomical features--including the cornea, iris, and pupil boundary--using a lightweight AI model for on-device analysis. 

Credit

©Kaushik et al.

 

Conclusions often diverge when hundreds of researchers reanalyze the same data



A large-scale, multi-analyst study on the objectivity of statistical analyses has now been published. Jan Landwehr, Professor of Marketing at Goethe University Frankfurt, says the findings highlight the critical role of collaboration and exchange across 





Goethe University Frankfurt





FRANKFURT. A new study published in Nature, “Estimating the Analytic Robustness of Social and Behavioural Sciences,” finds that scientific conclusions can shift dramatically depending on who conducts the analysis. The results come from a large-scale international collaboration led by Balázs AczĂ©l and Barnabás Szászi (Eötvös Loránd University and Corvinus University), conducted as part of the Systematizing Confidence in Open Research and Evidence (SCORE) program. A team of 457 independent analysts from institutions around the world conducted 504 re-analyses of data from 100 previously published studies across the social and behavioral sciences. All analysts received the same dataset and the same key research question but were given freedom in how to conduct the analysis based on their informed judgment.

Over the past decade, the social and behavioral sciences have undergone substantial reforms aimed at making research more transparent, rigorous, and reliable. Preregistration, registered reports, replication studies, and checks of analytical reproducibility all seek to reduce the prevalence of chance findings and biased results. One important question, however, has received relatively little attention: to what extent do research findings depend on the specific way in which data are analyzed?

In standard scientific practice, a dataset is typically analyzed by a single researcher or research team, and the resulting publication presents the outcome of one particular analytical pathway. While peer review assesses methodological acceptability, it rarely reveals what results might have emerged under alternative, yet equally defensible, statistical decisions.

Yet empirical research involves numerous decision points: how data are cleaned, how variables are defined, which statistical models or software are used, and how results are interpreted. Together, these choices constitute what is known as analytic variability – the flexibility that can fundamentally influence final conclusions.

Key Findings
The study now published in Nature shows substantial variation in the outcomes of independent analyses of the same question using the same data across 100 studies. Although most re-analyses broadly supported the main claims of the original studies, effect sizes, statistical estimates, and levels of uncertainty often differed meaningfully. All analysts reached the same conclusion as the original authors in about one third of cases.

Importantly, these discrepancies were not due to a lack of expertise. Experienced researchers with strong statistical backgrounds were just as likely to arrive at divergent results as others. At the same time, observational studies proved less robust than experimental ones, suggesting that more complex data structures allow greater analytical flexibility – and thus greater uncertainty.

Prof. Dr. Jan Landwehr of Goethe University Frankfurt, who was involved in the study as an analyst, explains the findings: “Just as major decisions should not rest on a single study, they should not depend on a single data analysis either. Only when different, well-founded analytical approaches converge on a consistent pattern can a result be considered truly robust. In that sense, our study is also a call for stronger collaboration across research teams and for more intensive scientific exchange.”

 

Governments, beware: Why it's so hard to invest in risk prevention




Radboud University Nijmegen





Governments cutting hundreds of millions of euros in pandemic funding, just a few years after a pandemic. Billions spent on compensation after a flood, rather than on prevention beforehand. Governments find it difficult to deal effectively with major, but not acute, risks. Why is this such a challenge? This was researched by Bas Heerma van Voss, who will be defending his PhD thesis at Radboud University on 13 April.

It's better to prevent than to cure; rationally speaking, we all know that. But due to predictable cognitive biases, political systems and international dynamics, governments often find themselves playing catch-up, as Heerma van Voss points out. He investigated the behaviour of states when it comes to major but non-acute risks, such as nuclear disasters, climate change, and pandemics.

Confirmation bias even among experts

To this end, he looked, among other things, at the behaviour of risk analysts – experts who advise the government on threats to society. “Just like everyone else, this group proved susceptible to, for example, confirmation bias, the tendency to seek out information that primarily confirms one’s own judgement.” The experts were (slightly) less susceptible to this than a ‘regular’ group of students whom Heerma van Voss also studied, but these professionals were still prone to systematic cognitive biases.

Something can be done about this: through so-called ‘debiasing’ training, experts can learn to recognise their own biases more quickly and avoid them. But in practice, such training is hardly ever implemented systematically. “Everyone considers themselves just a little less biased than others, and experts find it uncomfortable to hear that their judgement may also be skewed. As a result, a simple solution has remained underutilised to date.”

Prevention cycle

Heerma van Voss also looked at how governments spend money in the wake of major disasters and observed a cyclical pattern. “After an incident, such as a pandemic or a flood, spending on prevention in that area shoots up. But a few years later, it drops again for a long time, until a new disaster strikes and the “prevention cycle” starts all over again.”

“That is remarkable, because the average euro spent on prevention yields much more than a euro spent on recovery.” Why does this happen? “The risk does not change, but the perception does. The impact of a crisis remains just as great, but politicians, policymakers and voters alike quickly lose sight of the urgency.”

Because a crisis often affects not just a single country but has global implications, Heerma van Voss also examined the dynamics within international organisations based on the budgets they received, such as the World Health Organisation (WHO) and the International Monetary Fund (IMF). “After a crisis, countries scale back their own contributions to these organisations. Whilst they do not give less money overall, that money is more often earmarked. The pledged funds must then be spent by the organisation on very specific projects and programmes. This gives a country more control over the money spent, but as a result, the organisation has very little room for manoeuvre, whereas that flexibility is desperately needed for prevention.”

Acting pragmatically and more rationally

According to the economist, there is much to be gained by tackling these problems more seriously. “This can already be achieved through relatively small, quickly implementable measures, such as tailored training for risk analysts. But it is also worth looking at larger, institutional changes. Where possible, decouple prevention from day-to-day politics, so that you are less at the mercy of the dynamics of the media and parliament.”

“We’re already doing this successfully in the Netherlands with our water policy, for example, and we are taking steps in this direction with our climate policy. We have a climate council of scientists that helps make well-considered, future-proof choices, but also experiments with citizens’ assemblies for democratic legitimacy. We must ensure that we approach prevention just as rationally; the stakes are high enough to warrant it.”

 

Microscopic coils and coffee trees lead to an amazing new fungal discovery




Pensoft Publishers
Neohelicomyces coffeae 

image: 

Neohelicomyces coffeae (GMB-W1490, holotype). a, b. Colonies on the host surface; c. Conidiophores, conidiogenous cells and conidia; d. Conidiogenous cells and conidia; e, f. Conidiogenous cells; g–l. Conidia; m. Germinated conidium; n, o. Surface and reverse colonies on PDA; n is the surface side, o is the reverse side. Scale bars: 50 ÎĽm (c); 25 mm (n, o); 20 ÎĽm (d, m); 10 ÎĽm (e–l).

view more 

Credit: Han M-Y, Yang J-Y, Karunarathna SC, Kumla J, Lu L, Zheng D-G, Elgorban AM, Alfagham AT, Yu F-Q, Dai D-Q, Zhang L-J, Suwannarach N, Tibpromma S (2026) Two new Neohelicomyces species (Tubeufiaceae, Tubeufiales) associated with Coffea arabica L. in Yunnan Province, China. MycoKeys 127: 343-362. https://doi.org/10.3897/mycokeys.127.173937





Yunnan Province in southwestern China is a global biodiversity hotspot, accommodating an incredible variety of plants and animals. It is also the heart of China’s coffee industry, with Yunnan accounting for almost all of the country’s coffee production. However, coffee plants are very common hosts for many types of fungi, which can act as harmful diseases, harmless residents, or natural recyclers - these factors can impact the plant's health and how much coffee it produces. 

A new study published in the open-access journal MycoKeys, and led by Mei-Yan Han of Chiang Mai University, revealed two novel species of Neohelicomyces fungi: Neohelicomyces coffeae and Neohelicomyces puerensis. While studying the fungi that live on Coffea arabica, the team spotted these unique organisms growing on dead coffee branches. This discovery underscores the need for further investigations into the fungal diversity of the region.

Both species are characterised by their coil-shaped structures which appear as glistening white patches on coffee plants. Specifically, N. coffeae features short stems and small, multi-sectioned spores, while N. puerensis is distinguished by its tightly coiled filaments and unbranched stems. While the former is named after the host genus Coffea, the latter references the locality in which both species were found: Pu’er City.

Importantly, these fungi are classified as saprophytic because they were found growing exclusively on the dead branches of coffee plants rather than on living tissue. Functioning as nature’s essential recyclers, they obtain their energy by breaking down complex organic materials like wood and cellulose. Therefore, by decomposing this dead matter, both play a vital role in the coffee ecosystem by unlocking trapped nutrients and returning them to the soil. This incentive subsequently helps support the growth of the surrounding living coffee plants.

Saprophytic fungi are additionally being studied as potential sources for new medicines and agricultural tools. Scientists have found that the family to which these new species belong, Tubeufiaceae, can produce natural chemicals that fight off bacteria, other fungi, and even certain types of cancer. Specifically, researchers have already discovered compounds related to Neohelicomyces species that show promise in slowing the growth of human cancer cells. 

As of 2026, there are 36 known species of Neohelicomyces, with the vast majority found in China - particularly in Guizhou and Yunnan provinces - though they also appear in Europe and North America. By expanding their known diversity specifically in agricultural environments, researchers have shed light on their ecological potentials, and have called attention to their future biotechnological applications.

Following these discoveries, it is certain that the future of fungal research is starting to brew.

Original source:

Han M-Y, Yang J-Y, Karunarathna SC, Kumla J, Lu L, Zheng D-G, Elgorban AM, Alfagham AT, Yu F-Q, Dai D-Q, Zhang L-J, Suwannarach N, Tibpromma S (2026) Two new Neohelicomyces species (Tubeufiaceae, Tubeufiales) associated with Coffea arabica L. in Yunnan Province, China. MycoKeys 127: 343-362. https://doi.org/10.3897/mycokeys.127.173937