Legacy of a molecular dynamics trailblazer — ScienceDaily
Life is motion. And so, to understand how living organisms function, one must understand the movement and reorganisation of the atoms and molecules that compose them. The approach called “molecular dynamics simulation” enables scientists to use computer programmes to simulate the dynamic motion of all the atoms in a molecular system as a function of time.
In a new paper in EPJ Historical Perspectives on Contemporary Physics, Daniele Macuglia from Peking University in Beijing, China, Benoît Roux from the University of Chicago in Chicago, USA, and Giovanni Ciccotti from the University of Rome in Rome, Italy, explain how the theoretical chemist Martin Karplus and his team carried out the first molecular dynamics simulation of a large biological molecule, a protein, deeply impacting biology and the physical sciences in the 20th and 21st centuries. Currently, machine learning researchers are using biomolecular simulations to better understand their time-dependent motions and the function that governs the forces between them.
In the early 1970s, physicists and physical chemists started to use molecular dynamics simulation to study the behaviour of simple substances such as water and liquids formed from noble gases. Martin Karplus and his team took this method further by applying it for the first time to a large biological molecule — a protein.
Proteins can be thought of as miniature machines whose function arises, in part, from the way they fold and contort into different shapes over time. Because of their complexity, simulating their changes over time was a particular challenge. Karplus first publicised this approach with a 1977 paper showing the first molecular dynamics simulation of a protein. More recently, the deep impact of his contribution to accurately modelling chemical reactions was acknowledged through being awarded the 2013 Nobel Prize in Chemistry together with Arieh Warshel and Michael Levitt.
The authors conclude that Karplus’s 1977 article opened the door to pursue a line of research that led him to successfully merge computational statistical mechanics with biochemistry.