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Biomechanical comparison of two surgical methods for Hallux Valgus deformity: exploring the use of artificial neural networks as a decision-making tool for orthopedists

Kaczmarczyk Katarzyna, Zakynthinaki Maria, Barton Gabor, Baran Mateusz, Wit Andrzej

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URI: http://purl.tuc.gr/dl/dias/C5CD8EFA-CAB6-471A-BF07-4931FFA32393
Year 2024
Type of Item Peer-Reviewed Journal Publication
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Bibliographic Citation K. Kaczmarczyk, M. Zakynthinaki, G. Barton, M. Baran and A. Wit, “Biomechanical comparison of two surgical methods for Hallux Valgus deformity: exploring the use of artificial neural networks as a decision-making tool for orthopedists,” PLOS ONE, 2024, doi: 10.1371/journal.pone.0297504. https://doi.org/10.1371/journal.pone.0297504
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Summary

Hallux Valgus foot deformity affects gait performance. Common treatment options include distal oblique metatarsal osteotomy and chevron osteotomy. Nonetheless, the current process of selecting the appropriate osteotomy method poses potential biases and risks, due to its reliance on subjective human judgment andinterpretation. The inherent variability among clinicians, the potential influence of individual clinical experiences, or inherent measurement limitations may contribute to inconsistent evaluations. To address this, incorporating objective tools like neural networks, renowned for effective classification and decision makingsupport, holds promise in identifying optimal surgical approaches. The objective of this cross sectional study was twofold. Firstly, it aimed to investigate the feasibility of classifying patients based on the type of surgery. Secondly, it sought to explore the development of a decision-making tool to assist orthopedists in selecting the optimal surgical approach. To achieve this, gait parameters of twenty-threewomen with moderate to severe Hallux Valgus were analyzed. These patients underwent either distal oblique metatarsal osteotomy or chevron osteotomy. The parameters exhibiting differences in preoperative and postoperative values were identified through various statistical tests such as normalization, Shapiro- Wilk, non-parametric Wilcoxon, Student t, and paired difference tests. Two artificial neural networks were constructed for patient classification based on the type of surgery and to simulate an optimal surgery type considering postoperative walking speed. The results of the analysis demonstrated a strong correlation between surgery type and postoperative gait parameters, with the first neural network achieving a remarkable 100% accuracy in classification. Additionally, cases were identified where there was a mismatch with the surgeon's decision. Our findings highlight the potential of artificial neural networks as a complementary tool for surgeons in making informed decisions. Addressing the study’s limitations, futureresearch may investigate a wider range of orthopedic procedures, examine additional gait parameters and use more diverse and extensive datasets to enhance statistical robustness.

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