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Development of Hallux Valgus Classification Using Digital Foot Images with Machine Learning. | LitMetric

AI Article Synopsis

  • * A machine learning tool was developed to analyze images of feet and detect hallux valgus, with tests utilizing 507 images and two different preprocessing patterns (A and B).
  • * The study found that Pattern B preprocessing yielded better accuracy and performance metrics than Pattern A, indicating the potential for this tool to effectively screen for hallux valgus with further improvements.

Article Abstract

Hallux valgus, a frequently seen foot deformity, requires early detection to prevent it from becoming more severe. It is a medical economic problem, so a means of quickly distinguishing it would be helpful. We designed and investigated the accuracy of an early version of a tool for screening hallux valgus using machine learning. The tool would ascertain whether patients had hallux valgus by analyzing pictures of their feet. In this study, 507 images of feet were used for machine learning. Image preprocessing was conducted using the comparatively simple pattern A (rescaling, angle adjustment, and trimming) and slightly more complicated pattern B (same, plus vertical flip, binary formatting, and edge emphasis). This study used the VGG16 convolutional neural network. Pattern B machine learning was more accurate than pattern A. In our early model, Pattern A achieved 0.62 for accuracy, 0.56 for precision, 0.94 for recall, and 0.71 for F1 score. As for Pattern B, the scores were 0.79, 0.77, 0.96, and 0.86, respectively. Machine learning was sufficiently accurate to distinguish foot images between feet with hallux valgus and normal feet. With further refinement, this tool could be used for the easy screening of hallux valgus.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10222804PMC
http://dx.doi.org/10.3390/life13051146DOI Listing

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