Development of Talus Implant based on Artificial Neural Network prediction of Talus Morphological Parameters
The design philosophies of current talus implant focus too much on mechanical simplicity and usually based on certain population which tends to ignore the bony geometry difference between populations. Thus, the talus implant for particular population was developed based on artificial neural network...
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my.ump.umpir.112262018-01-31T06:56:29Z http://umpir.ump.edu.my/id/eprint/11226/ Development of Talus Implant based on Artificial Neural Network prediction of Talus Morphological Parameters R., Daud Mohammed Rafiq, Abdul Kadir Sudin, Izman Mas Ayu, Hassan Hanumantharao, Balaji Raghavendran Tunku, Kamarul TJ Mechanical engineering and machinery The design philosophies of current talus implant focus too much on mechanical simplicity and usually based on certain population which tends to ignore the bony geometry difference between populations. Thus, the talus implant for particular population was developed based on artificial neural network (ANN) prediction of talus morphometrics. By using Finite Element Method (FEM), numerical models that include mainly the talus bone and the talus implants are created to compare the performance of newly develop talus implant with the three different kind of current talus implant designs. The study demonstrates that not all current talus implant are perfect match for this particular population. While, the ANN method showed a greater capacity of prediction regarding on the low percentage of error and high correlative values with the measurements obtained through Computer Tomographic (CT) scan. ANN is highly accurate predictive methods and has the potential to be used as assisting tools in designing talus implant. For FEM results, only BOX and newly develop talus implant exceeded the contact stress recommended for the superior articular surface compared to the others. The results also showed that the stress increased near the resected surface. Thus, it is agreed that excessive bone resection may not support the force at the ankle which consequently may contribute to early loosening and subsidence of the talus implant. It is concluded that the excessive bone resection can be avoided by perfectly match talus implant which only can be achieved by designing talus implant for a particular population. 2015 Conference or Workshop Item PeerReviewed application/pdf en http://umpir.ump.edu.my/id/eprint/11226/1/Development%20of%20Talus%20Implant%20based%20on%20Artificial%20Neural%20Network%20prediction%20of%20Talus%20Morphological%20Parameters.pdf R., Daud and Mohammed Rafiq, Abdul Kadir and Sudin, Izman and Mas Ayu, Hassan and Hanumantharao, Balaji Raghavendran and Tunku, Kamarul (2015) Development of Talus Implant based on Artificial Neural Network prediction of Talus Morphological Parameters. In: 1st International Conference on Materials and Manufacturing Engineering and Technology, 28-31 July 2015 , Korea. . (Unpublished) |
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TJ Mechanical engineering and machinery R., Daud Mohammed Rafiq, Abdul Kadir Sudin, Izman Mas Ayu, Hassan Hanumantharao, Balaji Raghavendran Tunku, Kamarul Development of Talus Implant based on Artificial Neural Network prediction of Talus Morphological Parameters |
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The design philosophies of current talus implant focus too much on mechanical simplicity and usually based on certain population which tends to ignore the bony geometry difference between populations. Thus, the talus implant for particular population was developed based on artificial neural network (ANN) prediction of talus morphometrics. By using Finite Element Method (FEM), numerical models that include mainly the talus bone and the talus implants are created to compare the performance of newly develop talus implant with the three different kind of current talus implant designs. The study demonstrates that not all current talus implant are perfect match for this particular population. While, the ANN method showed a greater capacity of prediction regarding on the low percentage of error and high correlative values with the measurements obtained through Computer Tomographic (CT) scan. ANN is highly accurate predictive methods and has the potential to be used as assisting tools in designing talus implant. For FEM results, only BOX and newly develop talus implant exceeded the contact stress recommended for the superior articular surface compared to the others. The results also showed that the stress increased near the resected surface. Thus, it is agreed that excessive bone resection may not support the force at the ankle which consequently may contribute to early loosening and subsidence of the talus implant. It is concluded that the excessive bone resection can be avoided by perfectly match talus implant which only can be achieved by designing talus implant for a particular population. |
format |
Conference or Workshop Item |
author |
R., Daud Mohammed Rafiq, Abdul Kadir Sudin, Izman Mas Ayu, Hassan Hanumantharao, Balaji Raghavendran Tunku, Kamarul |
author_facet |
R., Daud Mohammed Rafiq, Abdul Kadir Sudin, Izman Mas Ayu, Hassan Hanumantharao, Balaji Raghavendran Tunku, Kamarul |
author_sort |
R., Daud |
title |
Development of Talus Implant based on Artificial Neural Network prediction of Talus Morphological Parameters |
title_short |
Development of Talus Implant based on Artificial Neural Network prediction of Talus Morphological Parameters |
title_full |
Development of Talus Implant based on Artificial Neural Network prediction of Talus Morphological Parameters |
title_fullStr |
Development of Talus Implant based on Artificial Neural Network prediction of Talus Morphological Parameters |
title_full_unstemmed |
Development of Talus Implant based on Artificial Neural Network prediction of Talus Morphological Parameters |
title_sort |
development of talus implant based on artificial neural network prediction of talus morphological parameters |
publishDate |
2015 |
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http://umpir.ump.edu.my/id/eprint/11226/1/Development%20of%20Talus%20Implant%20based%20on%20Artificial%20Neural%20Network%20prediction%20of%20Talus%20Morphological%20Parameters.pdf http://umpir.ump.edu.my/id/eprint/11226/ |
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