Crynodeb
This paper describes a novel approach to modelling a specific orthopaedic condition, Hallux Valgus; it is a complex deformity resulting in more than 140 possible surgical correction procedures, each focusing on different components of the deformity. Modelling it involves a level of complexity that cannot be readily tackled by techniques traditionally available in the medical domain. It was, therefore, appropriate for us to utilise machine learning techniques; namely through neural network detection and isolation, complemented by angle detection. We present results of running a machine learning algorithm to detect the deformity and end with recommendations as to how it may be utilised in judging successful surgical outcomes.
| Iaith wreiddiol | Saesneg |
|---|---|
| Dynodwyr Gwrthrych Digidol (DOIs) | |
| Statws | Cyhoeddwyd - 25 Maw 2020 |
| Digwyddiad | UKSim-AMSS 22nd International Conference on Modelling and Simulation - Emmanuel College, Cambridge, Y Deyrnas Unedig Hyd: 25 Maw 2020 → 27 Maw 2020 https://uksim.info/uksim2020/uksim2020.htm |
Cynhadledd
| Cynhadledd | UKSim-AMSS 22nd International Conference on Modelling and Simulation |
|---|---|
| Teitl cryno | UKSim2020 |
| Gwlad/Tiriogaeth | Y Deyrnas Unedig |
| Dinas | Cambridge |
| Cyfnod | 25/03/20 → 27/03/20 |
| Cyfeiriad rhyngrwyd |
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