Doğan Kamil, Selçuk Turab, Yılmaz Abdurrahman
Radiology Department, Bursa City Hospital, 16110 Bursa, Turkey.
Department of Electrical and Electronics Engineering, Kahramanmaras Sutcu Imam University, 46200 Kahramanmaraş, Turkey.
J Clin Med. 2024 Aug 15;13(16):4800. doi: 10.3390/jcm13164800.
: Pes planus, commonly known as flatfoot, is a condition in which the medial arch of the foot is abnormally low or absent, leading to the inner part of the foot having less curvature than normal. Symptom recognition and errors in diagnosis are problems encountered in daily practice. Therefore, it is important to improve how a diagnosis is made. With the availability of large datasets, deep neural networks have shown promising capabilities in recognizing foot structures and accurately identifying pes planus. : In this study, we developed a novel fusion model by combining the Vgg16 convolutional neural network (CNN) model with the vision transformer ViT-B/16 to enhance the detection of pes planus. This fusion model leverages the strengths of both the CNN and ViT architectures, resulting in improved performance compared to that in reports in the literature. Additionally, ensemble learning techniques were employed to ensure the robustness of the model. : Through a 10-fold cross-validation, the model demonstrated high sensitivity, specificity, and F1 score values of 97.4%, 96.4%, and 96.8%, respectively. These results highlight the effectiveness of the proposed model in quickly and accurately diagnosing pes planus, making it suitable for deployment in clinics or healthcare centers. : By facilitating early diagnosis, the model can contribute to the better management of treatment processes, ultimately leading to an improved quality of life for patients.
扁平足,通常被称为平足,是一种足部内侧足弓异常低或缺失的病症,导致足部内侧的弯曲度低于正常水平。症状识别和诊断错误是日常实践中遇到的问题。因此,改进诊断方法很重要。随着大型数据集的出现,深度神经网络在识别足部结构和准确识别扁平足方面显示出了有前景的能力。
在本研究中,我们通过将Vgg16卷积神经网络(CNN)模型与视觉Transformer ViT-B/16相结合,开发了一种新型融合模型,以增强对扁平足的检测。这种融合模型利用了CNN和ViT架构的优势,与文献报道相比性能有所提高。此外,采用了集成学习技术来确保模型的稳健性。
通过10折交叉验证,该模型分别展示出了97.4%、96.4%和96.8%的高灵敏度、特异性和F1分数值。这些结果突出了所提出模型在快速准确诊断扁平足方面的有效性,使其适合在诊所或医疗中心部署。
通过促进早期诊断,该模型有助于更好地管理治疗过程,最终提高患者的生活质量。