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Photographic Analysis and Machine Learning for Diagnostic Prediction of Adenoid Hypertrophy

机译:摄影分析和机器学习对腺样体肥大的诊断预测

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Physiognomy has long been recorded in ancient Greece and ancient China. It predicts a person’s character and health through facial features because some traits of diseases may illustrate in face. Based on this, we apply a multidisciplinary method to investigate face appearance in photograph, identify adenoidal face, and early treatment in nasal respiratory obstruction. By using computer vision in feature selection, we identified most salient feature points of adenoid face including lip thickness, inner and outer eye distances. Through machine learning techniques, predictive models are constructed to discriminate adenoid face and non-adenoid face. The model-based analytical methods this article employed included decision tree, support vector machines, KNN and XGBoost. The reliability of forecasts was assessed by 5-fold cross validation. Two specific challenges were addressed in the study: Challenge 1, solve the problem of head orientation and different illumination direction; Challenge 2, identify relevant facial prediction features which could be convert into regression problem; Our research suggests that, compared to other approaches, computer vision feature selection provides a more reliable outcome forecasting of adenoids face, for example with a best specificity 89.19%, and sensitivity 88.24%.
机译:面相学在古希腊和中国古代已有很长的记录。它可以通过面部特征预测人的性格和健康状况,因为某些疾病特征可能会在面部显示出来。在此基础上,我们采用了一种多学科的方法来调查照片中的面部外观,识别腺样体的面部以及鼻呼吸阻塞的早期治疗。通过在特征选择中使用计算机视觉,我们确定了腺样体面部的最显着特征点,包括嘴唇厚度,内眼和外眼距离。通过机器学习技术,可以构建预测模型来区分腺样体和非腺样体。本文采用的基于模型的分析方法包括决策树,支持向量机,KNN和XGBoost。预测的可靠性通过5倍交叉验证进行了评估。研究中解决了两个具体挑战:挑战1,解决头部方向和不同照明方向的问题;挑战2,确定可转换为回归问题的相关面部预测特征;我们的研究表明,与其他方法相比,计算机视觉特征选择可提供对腺样体面部更可靠的结果预测,例如,最佳特异性为89.19%,敏感性为88.24%。

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