Design of Biodegradable Mg Alloy for Abdominal Aortic Aneurysm Repair (AAAR) Using ANFIS Regression Model
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Date
2022Author
Hammam, Rania E.Solyman, Ahmad Amin Ahmad
Alsharif, Mohammed H.
Uthansakul, Peerapong
Deif, Mohanad A.
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ABSTRACT Abdominal aortic aneurysm (AAA) is among the most widespread and dangerous diseases that
may cause death. Recently, Endovascular Aneurysm Repair outperformed open aortic surgery, since it is a
safe and reliable technique where a stent graft system is placed within the aortic aneurysm. It was aimed to
design an Mg biodegradable alloy with bio-friendly alloying elements that enhance the corrosion resistance
and mechanical properties of the alloy for the design of stents for Abdominal Aortic Aneurysm (AAA)
repair. Adaptive Neuro-Fuzzy Inference System (ANFIS) was proposed for the design of the Mg alloy and
compared to other traditional machine learning regression models (Multiple Linear Regression (MLR) and
Gradient Boosting (GB). The dataset utilized in this work consisted of 600 samples of Mg alloys that were
collected from the mat web database and additional papers from Google Scholar. The results revealed the
superior prediction capability of the ANFIS model since it attained maximum R
2
scores of 0.926, 0.958, and
0.988 for the prediction of UTS, YS, and Ductility respectively. Furthermore, the ANFIS model was capable
of designing an Mg biodegradable alloy having a UTS, YS, and Ductility of 346.148 Mpa, 230.8 Mpa, and
15.4% respectively which are excellent mechanical properties satisfying vascular stents requirements The
ANFIS model can be further applied to speed up the design of other alloys in the future for various medical
applications, reducing the time, cost, and effort of large searching space.
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