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Cas9 interrogates DNA in discrete steps modulated by mismatches and supercoiling.
The CRISPR-Cas9 nuclease has been widely repurposed as a molecular and cell biology tool for its ability to programmably target and cleave DNA. Cas9 recognizes its target site by unwinding the DNA double helix and hybridizing a 20-nucleotide section of its associated guide RNA to one DNA strand, forming an R-loop structure. A dynamic and mechanical description of R-loop formation is needed to understand the biophysics of target searching and develop rational approaches for mitigating off-target activity while accounting for the influence of torsional strain in the genome. Here we investigate the dynamics of Cas9 R-loop formation and collapse using rotor bead tracking (RBT), a single-molecule technique that can simultaneously monitor DNA unwinding with base-pair resolution and binding of fluorescently labeled macromolecules in real time. By measuring changes in torque upon unwinding of the double helix, we find that R-loop formation and collapse proceed via a transient discrete intermediate, consistent with DNA:RNA hybridization within an initial seed region. Using systematic measurements of target and off-target sequences under controlled mechanical perturbations, we characterize position-dependent effects of sequence mismatches and show how DNA supercoiling modulates the energy landscape of R-loop formation and dictates access to states competent for stable binding and cleavage. Consistent with this energy landscape model, in bulk experiments we observe promiscuous cleavage under physiological negative supercoiling. The detailed description of DNA interrogation presented here suggests strategies for improving the specificity and kinetics of Cas9 as a genome engineering tool and may inspire expanded applications that exploit sensitivity to DNA supercoiling
Motor crosslinking augments elasticity in active nematics
In active materials, uncoordinated internal stresses lead to emergent
long-range flows. An understanding of how the behavior of active materials
depends on mesoscopic (hydrodynamic) parameters is developing, but there
remains a gap in knowledge concerning how hydrodynamic parameters depend on the
properties of microscopic elements. In this work, we combine experiments and
multiscale modeling to relate the structure and dynamics of active nematics
composed of biopolymer filaments and molecular motors to their microscopic
properties, in particular motor processivity, speed, and valency. We show that
crosslinking of filaments by both motors and passive crosslinkers not only
augments the contributions to nematic elasticity from excluded volume effects
but dominates them. By altering motor kinetics we show that a competition
between motor speed and crosslinking results in a nonmonotonic dependence of
nematic flow on motor speed. By modulating passive filament crosslinking we
show that energy transfer into nematic flow is in large part dictated by
crosslinking. Thus motor proteins both generate activity and contribute to
nematic elasticity. Our results provide new insights for rationally engineering
active materials
Structuring Stress for Active Materials Control
Active materials are capable of converting free energy into mechanical work
to produce autonomous motion, and exhibit striking collective dynamics that
biology relies on for essential functions. Controlling those dynamics and
transport in synthetic systems has been particularly challenging. Here, we
introduce the concept of spatially structured activity as a means to control
and manipulate transport in active nematic liquid crystals consisting of actin
filaments and light-sensitive myosin motors. Simulations and experiments are
used to demonstrate that topological defects can be generated at will, and then
constrained to move along specified trajectories, by inducing local stresses in
an otherwise passive material. These results provide a foundation for design of
autonomous and reconfigurable microfluidic systems where transport is
controlled by modulating activity with light
Machine learning active-nematic hydrodynamics
Hydrodynamic theories effectively describe many-body systems out of
equilibrium in terms of a few macroscopic parameters. However, such
hydrodynamic parameters are difficult to derive from microscopics. Seldom is
this challenge more apparent than in active matter where the energy cascade
mechanisms responsible for autonomous large-scale dynamics are poorly
understood. Here, we use active nematics to demonstrate that neural networks
can extract the spatio-temporal variation of hydrodynamic parameters directly
from experiments. Our algorithms analyze microtubule-kinesin and actin-myosin
experiments as computer vision problems. Unlike existing methods, neural
networks can determine how multiple parameters such as activity and elastic
constants vary with ATP and motor concentration. In addition, we can forecast
the evolution of these chaotic many-body systems solely from image-sequences of
their past by combining autoencoder and recurrent networks with residual
architecture. Our study paves the way for artificial-intelligence
characterization and control of coupled chaotic fields in diverse physical and
biological systems even when no knowledge of the underlying dynamics exists.Comment: SI Movie 1: https://www.youtube.com/watch?v=9WzIT7OG9pY SI Movie 2:
https://youtu.be/Trc4RyU7-dw SI Movie 3: https://youtu.be/Epm_P_EakH