Abstract:
The capacity of bone to optimize its structure in response to mechanical loads has been widely observed. The
mechanical load acting on a bone at the macroscopic level influences the bone cells, particularly osteocytes
within the lacunae canalicular network (LCN). Osteocytes are responsive to a range of physical signals, including
strain, interstitial fluid flow, and pore pressure. However, physiological tissue strain is known to be typically
smaller than that required to directly induce bone formation. On the other hand, as per evidence provided by this
study from the literature, models based on fluid flow alone cannot simultaneously predict bone formation at both
the periosteal and endocortical surfaces. This suggests that another component of the osteocyte's mechanical
environment, such as pore pressure, may play an essential role in bone adaptation, either alone or in combination
with other stimuli, such as tissue strain and/or interstitial fluid flow. In vitro experiments have also confirmed
that osteocytes respond to cyclic pore pressure and, thus, have a mechanism to sense the pressure, possibly
because of its viscoelasticity.
In this work, dissipation energy density, being irreversible work done per unit volume, has been successfully
used as a greater stimulus to incorporate all of the parameters of mechanical environments of the LCN, such as
waveforms of both fluid velocity and pore pressure, number of loading cycles. Mineral Apposition Rate (MAR)
has also been mathematically derived to be proportional to the square root of the dissipation energy density
minus its reference value. A hypothesis is accordingly proposed and successfully tested/validated for both
endocortical and periosteal surfaces with respect to an in-vivo study on mouse tibia available in the literature.
The constant of proportionality and the reference/threshold value of the dissipation energy density are determined through a nonlinear curve fitting. The mathematical/computational method thus developed is then successfully used to predict MAR at both endocortical and periosteal surfaces induced by a different loading
condition.
Computational implementation of the mathematical model has been done through a poroelastic finite element
analysis of bone, where bone is assumed to be porous and filled with fluid, with a boundary condition that the
periosteum is impermeable to the fluid and the endosteal surface maintains a reference zero pressure. This work
also provides evidence for these assumptions to be true based on the state-of-the-art literature on related
experimental studies. The currently developed model shows that the bone uses these conditions (assumptions) to
its advantage, as the greater stimulus, i.e., the dissipation energy due to both fluid flow and pore pressure, are of
a similar order at both the surfaces, and hence osteogenesis of the same order at both the surfaces.
As a bottom line, the resulting model is the first of its kind as it has been able to correctly predict MAR at both
endocortical and periosteal surfaces. This study thus significantly advances the modeling of cortical bone
adaptation to exogenous mechanical loading.