A regression method based on non-invasive clinical data to predict the mechanical behavior of ascending aorta aneurysmal tissue
Academic Article
Publication Date:
2017
abstract:
Ascending aorta aneurysms represent a severe
life-threatening condition associated with asymptomatic risk of
rupture. Prediction of aneurysm evolution and rupture is one
of the hottest investigation topics in cardiovascular science, and
the decision on when and whether to surgically operate is still
an open question. We propose an approach for estimating the
patient-specific ultimate mechanical properties and stress-stretch
characteristics based on non-invasive data. Methods: As for the
characteristics, we consider a non-linear constitutive model of
the aortic wall and assume patient-specific model coefficients.
Through a regression model, we build the response surfaces
of ultimate stress, ultimate stretch and model coefficients in
function of patient data that are commonly available in the
clinical practice. We apply the approach to a dataset of 59
patients. Results: The approach is fair and accurate response
surfaces can be obtained for both ultimate properties and model
coefficients. Conclusion: Prediction errors are acceptable, even
though a larger patient dataset will be required to stabilize
the surfaces, making it possible to apply the approach in the
clinical practice. Significance: A fair prediction of the patient
aortic mechanical behavior, based on clinical information non-
invasively acquired, would improve the decision process and lead
to more effective treatments.
Iris type:
01.01 Articolo in rivista
Keywords:
Ascending Aorta Aneurysm; Uniaxial Tests; Ultimate Mechanical Properties; Stress-Stretch Characteristics; Response Surface
List of contributors:
Auricchio, Ferdinando; Lanzarone, Ettore
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