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UMass Chan Medical School chancellor to step down after nearly 20 years
UMass Chan Medical School chancellor to step down after nearly 20 years

Boston Globe

time24-06-2025

  • Health
  • Boston Globe

UMass Chan Medical School chancellor to step down after nearly 20 years

The turmoil around federal funding did not influence his decision to leave, Collins said. Advertisement 'It's been obvious to me that my 70th birthday was coming,' Collins said. 'I feel a responsibility to the institution that, if you're good at the job you do, you should also be good when you decide you're going to go.' Collins will stay as chancellor through 2025-2026 school year to give the UMass Chan time to select his successor. He alerted UMass President Marty Meehan of his intentions a few months ago. 'The medical school has far exceeded expectations when it first opened with a small number of students,' Meehan said. 'No one could have imagined how the medical school has grown or the impact it's had, and Michael Collins' fingerprints are on so many of its achievements.' Advertisement As much as the 2024-2025 academic year was marked by low lows for the state's only public medical school, it has also been defined by the highest highs. UMass Chan researcher Victor Ambros UMass Chan Medical School researcher Victor Ambros, PhD, (right) was awarded the 2024 Nobel Prize in Physiology or Medicine Media, He was joined by colleague and fellow Nobel Prize winner Craig Mello. Jessica Rinaldi/Globe Staff Then, in February, UMass announced a Collins is also responsible for the largest-ever gift at UMass: graduate schools were renamed after the parents of billionaire investor Gerald Chan. Under Collins, enrollment at the school has grown nearly 50 percent to about 1,500 in 2024 from about 1,000 in 2007. The incoming medical school class has more than doubled from 100 to 233 students, producing more doctors to combat a national physician workforce shortage. Collin's also added 55 new endowed chairs, prestigious, permanent professorships funded by donors. They're part of his strategy to recruit and retain top-notch faculty. The team he's built, he said, is the legacy he's proudest to leave behind. Kate Fitzgerald, now vice provost for basic science research at the school, recalled that in 2015 she was being recruited to other medical centers in her home country of Ireland. Collins found out and summoned Fitzgerald to his office and laid out his vision of a leading medical research center that would make an impact locally, nationally and globally. Advertisement 'He said, 'We're not done yet here. There's still a lot more to do and this is a place where you can have an impact,'' Fitzgerald said. 'He saw it in me, that leadership potential and really helped me realize it.' The uncertain times as Collins prepares to exit mirror those at the beginning of his tenure. Collins saw the institution through the uncertainty of the Great Recession after he was tapped to serve as interim chancellor of the medical school in June 2007 and appointed to the position in September 2008 -- the same month the global financial system plunged into crisis. Before arriving at UMass Chan, Collins served as CEO of Caritas Christi Health Care for 10 years, followed by a two-year stint as chancellor of UMass Boston. He is a tenured professor of population and quantitative health sciences and medicine and serves as senior vice president for health sciences for the UMass system. Collins, an internal medicine physician by training, emphasized that he's 'not really leaving' when his chancellorship ends. He plans to teach, mentor and continue to raise money for the school. 'He's been a trusted advisor,' said Gov. Maura Healey 'I'm glad that he's not going far.' The Education and Research Building at the UMass Chan Medical School in Worcester. Faith Ninivaggi In this final year, Collins is advocating for federal grants and finding alternative funding. He said he believes the school will eventually receive the funding already allocated by the National Institutes of Health. The funding has sat in limbo as the NIH navigates new priorities and staffing changes under President Trump. Advertisement That sense of hope is a hallmark of Collins' leadership, said UMass Chan Provost Dr. Terry Flotte, who has worked with Collins for 18 years. 'I value the approach that he's taught really all of us, which is to be prepared for difficulties' Flotte said, 'but at the same time be planning for success.' Marin Wolf can be reached at

‘Minimal' model captures neurons, flow of opinions, exotic matter
‘Minimal' model captures neurons, flow of opinions, exotic matter

The Hindu

time20-05-2025

  • Science
  • The Hindu

‘Minimal' model captures neurons, flow of opinions, exotic matter

Biologists have the fruit fly. Botanists have the thale cress. Neurologists have the roundworm. These are model organisms: plants and animals that scientists in each of these fields study to make sense of almost all other plants and animals in the world. For example, in the 1990s, Victor Ambros and Gary Ruvkun discovered a new form of RNA called microRNA (miRNA) in the roundworm Caenorhabditis elegans. For revealing that miRNA regulates genes and allows certain physiological processes in all organisms — including humans — to function properly, Ambros and Ruvkun received the medicine Nobel Prize in 2024. Similarly, scientists studying recombinant DNA have Escherichia coli, toxicologists have rats, anatomists have zebrafish, those studying hepatitis have rhesus macaques, and so on. In the same vein, condensed-matter physicists have the Ising model. A simple, powerful model The German physicist Ernst Ising created the Ising model in 1924 following a suggestion by his PhD supervisor Wilhelm Lenz. The Ising model provides a simple way to solve problems involving systems where different types of units interact with each other. For example, say there's a gas of a few million hydrogen atoms trapped in a chamber and a magnetic field is applied. You need to find out how much the energy of the gas has changed. Since each of these atoms itself is like a tiny magnet and has a north pole (or south pole) pointing in some direction, you can represent it as a grid of atoms: ↑ ↑ ↓ ↑ ↑ ↓ ↑ ↑ ↓ ↓ ↑ ↓ … where ↑ means 'north is pointing up' and ↓ means 'north is pointing down'. This is a basic instance of the Ising model. You can say that if two neighbouring atoms are ↑↓ or ↓↑ (anti-aligned), it entails an energy of X, and if they're ↑↑ or ↓↓ (aligned), an energy of Y. This way, you have a simple mathematical way to estimate various values of X and Y throughout the grid and use them to quickly calculate the overall energy. The Ising model has been used to understand the properties of many solids and liquids in various conditions — including magnetism in metals and alloys and the motion of atoms. Scientists have also used it to simulate land-use change, the flow of opinions in families and religious congregations, and to make sense of neural networks and lay the foundations of modern artificial intelligence (AI). Such work won the US physicist John Hopfield a share of the physics Nobel Prize last year. Not a two-way street But for the great applicability and ease of use of the Ising model, there are also many natural systems whose dynamics it doesn't capture. This is disappointing. One important class of systems is where the direction of effect matters. In the first neural network that Hopfield designed, for example, information could flow in either direction in a connection between two nodes in a network. But in a subsequent version called a feedforward neural network, information could only flow from node A to node B, not from B to A. Such networks were important to build AI models with memory. A new study published in Physical Review Letters has introduced a new form of the classic Ising model that, by incorporating non-reciprocal interactions, could recreate many properties of one-way networks. As a result, the new model can simulate a larger variety of real-world systems, including social networks, political strategies, and ecological dynamics. Scientists develop models to understand the simplest set of rules required to explain how a given system works at different scales. 'While minimalistic,' the researchers wrote in their paper, the new model 'contains features arising in models of the human brain, opinion dynamics, … and micromechanical oscillators'. This means these features' properties can now be explored using the model. The researchers are Yael Avni, David Martin, Daniel Seara, and Vincenzo Vitelli of the University of Chicago and Michel Fruchart of ESPCI Paris. If a system has non-reciprocal interactions, it means the relationship between two components is asymmetric. For example, the way atom A affects atom B won't be the same way atom B affects atom A. Such interactions are prevalent in the real world, including in neuroscience, ecology, and active matter. For example, in a hierarchical network like a political party, party members are influenced by the leader's decision but the leader isn't affected by the members' decisions. In biology, the population of a parasite species could affect the well-being of the host but the reverse relationship need not hold. Similarly, power grids often use one-way signals to manage small parts of the network — including to adjust power flow, detect faults, and to send updates between substations. To understand the behaviour of any of these systems, physicists and engineers need models that can anticipate the effects of asymmetric relationships. Non-reciprocal systems also often display a phenomenon called a limit cycle: as changes propagate within a system, the entire system develops sustained, time-dependent oscillations. Models like the new non-reciprocal Ising model are required to understand how they evolve over time. Two rules and one condition In the new study, the researchers developed a non-reciprocal Ising model with two kinds of atoms, P and Q, each of which can be ↑ or ↓. These atoms are arranged on two grids, one in two dimensions and the other in three dimensions. Both grids follow two rules: (i) Ps next to Ps and Qs next to Qs tend to align. This means that over time Ps and Qs can form islands of uniform alignment. (ii) If a P is next to a Q, then the P will try to align with the Q (↑ to ↑ or ↓ to ↓). However, a Q next to a P will tend to become anti-aligned with the P (↑ to ↓ or ↓ to ↑). This is the non-reciprocal interaction. In the reciprocal Ising model, neighbouring atoms being ↑↓ or ↓↑ entailed an energy of X and being ↑↑ or ↓↓ entailed an energy of Y. This meant the overall energy of the system would have been some combination of X and Y. When he created his neural network in the 1980s, John Hopfield set up a similar grid, then gave each node in the grid a condition to follow: whether it was ↑ or ↓ depended on which state made sure the system's overall energy was lower. By minimising that energy, all the nodes in the network settled down into a given pattern of ↑ and ↓. Similarly, in the new study, the researchers gave their Ps and Qs a rule to follow. Rather than minimise the overall energy of the grid, each P or Q would have to minimise its own 'selfish energy'. A clock in the grid The properties of this non-reciprocal Ising model, whatever they are, also tell us about real-world setups that are constructed the same way, e.g. information flowing in political parties and parasites and hosts interacting in an ecosystem. So what did the researchers find? First, they found that at any given time, the non-reciprocal Ising model could have one of three phases: disordered, where the ↑s and ↓s are all arranged too randomly for there to be an overall 'order'; ordered, where the ↑s and ↓s have a fixed arrangement that doesn't keep varying; and the swap phase, where which species has the most order — Ps or Qs — keeps alternating over time, like the tick-tock of a clock. The researchers also found important differences between the 2D and 3D versions of the model. In 2D, both the ordered and the swap phases were suppressed whereas in 3D, the swap phase was able to attain a stable state. (According to another paper by the same group of researchers published in Physical Review E, the 3D swap phase had the properties of a time crystal. This is wonderfully strange: time crystals are an unusual state of matter in which a material has a stable, oscillating state.) Finally, the researchers found that if they introduced an asymmetry between Ps and Qs in some form — e.g. the rate at which they flipped from ↑ to ↓ or vice versa — the ordered phase was able to stabilise in the 2D grid. Wealth of applications The Ising model and various revisions to it revolutionised the study of condensed-matter physics — often by revealing the simple rules lying at the obscured heart of seemingly complex systems. By extending the Ising model to include non-reciprocal interactions, the researchers behind the new studies have now expanded the model's usefulness to more domains across scientific fields. The phase transitions found in the new model may now reveal hitherto unrecognised dynamics in these domains. The findings also have potential applications in understanding rhythmic activities in biological systems and designing synthetic 'active materials' — which take in energy and perform some function, like bacteria swimming in water, starlings murmurating in mesmerising patterns in the sky, and even microscopic robots figuring out which formation to fly in.

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