The invention relates to the technical field of
computer vision, and provides a
pulmonary nodule image classification method when
uncertain data is contained in a
data set. The method comprises the following steps: firstly, collecting a
pulmonary nodule CT image set, determining the category of the image through a majority voting principle by utilizing an expert voting method, and preprocessing toobtain a
pulmonary nodule CT image
data set; then, based on a knowledge
distillation method, constructing a pulmonary nodule image classification model comprising a teacher model and a student model;next, obtaining a determined tag
data set, training a teacher model on the determined tag data set, and calculating a soft tag on the pulmonary nodule CT image data set; then, training a student model on the data set combining the hard
label and the soft
label; and finally, inputting the preprocessed CT image to be classified into the trained
lung nodule image classification model to obtain the category of the
lung nodule image classification model. According to the method, the uncertain
label data in the data set can be effectively utilized, the accuracy and efficiency of pulmonary nodule diagnosis are improved, and the
usability and robustness are high.