The data-driven approach was formally introduced
in the field of computational mechanics just a few
years ago, but it has gained increasing interest and application
as disruptive technology in many other fields of physics
and engineering. Although the fundamental bases of the
method have been already settled, there are still many
challenges to solve, which are often inherently linked to the
problem at hand. In this paper, the data-driven methodology
is applied to a particular problem in tissue biomechanics, a
context where this approach is particularly suitable due to
the difficulty in establishing accurate and general constitutive
models, due to the intrinsic intra and inter-individual
variability of the microstructure and associated mechanical
properties of biological tissues. The problem addressed here
corresponds to the characterization and mechanical simulation
of a piece of cortical bone tissue. Cortical horse bone
tissue was mechanically tested using a biaxial machine. The
displacement field was obtained by means of digital image
correlation and then transformed into strains by approximating
the displacement derivatives in the bone virtual
geometric image. These results, together with the approximated
stress state, assumed as uniform in the small pieces
tested, were used as input in the flowchart of the data-driven
methodology to solve several numerical examples, which
were compared with the corresponding classical model-based
fitted solution. From these results, we conclude that the datadriven
methodology is a useful tool to directly simulate
problems of biomechanical interest without the imposition
(model-free) of complex spatial and individually-varying
constitutive laws. The presented data-driven approach recovers
the natural spatial variation of the solution, resulting
from the complex structure of bone tissue, i.e. heterogeneity,
microstructural hierarchy and multifactorial architecture,
making it possible to add the intrinsic stochasticity of
biological tissues into the data set and into the numerical
approach.