Fine-tuning has received much attention in physics, and it states that the fundamental constants of physics are finely tuned to precise values for a rich chemistry and life permittance. It has not yet been applied in a broad manner to molecular biology. However, in this paper we argue that biological systems present fine-tuning at different levels, e.g. functional proteins, complex biochemical machines in living cells, and cellular networks. This paper describes molecular fine-tuning, how it can be used in biology, and how it challenges conventional Darwinian thinking. We also discuss the statistical methods underpinning fine-tuning and present a framework for such analysis
Abstract. In this paper we present a qualitative outlook of mesoscopic biology where the typical len...
The central question of systems biology is to understand how individual components of a biological s...
Because the components of genetic networks are present in small quantities, the detailed behavior of...
We highlight the role of statistical inference techniques in providing biological insights from anal...
The traditional boundary between hard sciences (physics and mathematics) and soft sciences (chemistr...
Negative feedback is common in biological processes and can increase a system’s stability to interna...
Negative feedback is common in biological processes and can increase a system's stability to interna...
Evolution of biological systems requires players of multiple layers, from atoms and molecules to org...
At the molecular level biology is intrinsically noisy. The forces that regulate the myriad of molecu...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Physics, 2004.Includes bibliographi...
Evolution is the defining feature of living matter. It occurs most fundamentally on the scale of bi...
Statistical mechanics is one of the most powerful and elegant tools in the quantita-tive sciences. O...
The pace of biological research continues to grow at a staggering pace as high-throughput experiment...
Systems and Synthetic biology are emerging fields at the intersection of Biology, Physics and Engine...
Most aspects of molecular biology can be understood in terms of biological design principles. These ...
Abstract. In this paper we present a qualitative outlook of mesoscopic biology where the typical len...
The central question of systems biology is to understand how individual components of a biological s...
Because the components of genetic networks are present in small quantities, the detailed behavior of...
We highlight the role of statistical inference techniques in providing biological insights from anal...
The traditional boundary between hard sciences (physics and mathematics) and soft sciences (chemistr...
Negative feedback is common in biological processes and can increase a system’s stability to interna...
Negative feedback is common in biological processes and can increase a system's stability to interna...
Evolution of biological systems requires players of multiple layers, from atoms and molecules to org...
At the molecular level biology is intrinsically noisy. The forces that regulate the myriad of molecu...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Physics, 2004.Includes bibliographi...
Evolution is the defining feature of living matter. It occurs most fundamentally on the scale of bi...
Statistical mechanics is one of the most powerful and elegant tools in the quantita-tive sciences. O...
The pace of biological research continues to grow at a staggering pace as high-throughput experiment...
Systems and Synthetic biology are emerging fields at the intersection of Biology, Physics and Engine...
Most aspects of molecular biology can be understood in terms of biological design principles. These ...
Abstract. In this paper we present a qualitative outlook of mesoscopic biology where the typical len...
The central question of systems biology is to understand how individual components of a biological s...
Because the components of genetic networks are present in small quantities, the detailed behavior of...