Peteiro-Barral Diego, Remeseiro Beatriz, Méndez Rebeca, Penedo Manuel G
Departamento de Computación, Universidade da Coruña, Campus de Elviña s/n, 15071, A Coruña, Spain.
Med Biol Eng Comput. 2017 Apr;55(4):527-536. doi: 10.1007/s11517-016-1534-5. Epub 2016 Jun 16.
Dry eye is an increasingly common disease in modern society which affects a wide range of population and has a negative impact on their daily activities, such as working with computers or driving. It can be diagnosed through an automatic clinical test for tear film lipid layer classification based on color and texture analysis. Up to now, researchers have mainly focused on the improvement of the image analysis step. However, there is still large room for improvement on the machine learning side. This paper presents a methodology to optimize this problem by means of class binarization, feature selection, and classification. The methodology can be used as a baseline in other classification problems to provide several solutions and evaluate their performance using a set of representative metrics and decision-making methods. When several decision-making methods are used, they may offer disagreeing rankings that will be solved by conflict handling in which rankings are merged into a single one. The experimental results prove the effectiveness of the proposed methodology in this domain. Also, its general purpose allows to adapt it to other classification problems in different fields such as medicine and biology.
干眼症是现代社会中一种日益常见的疾病,它影响着广泛的人群,并对他们的日常活动产生负面影响,比如使用电脑工作或驾驶。它可以通过基于颜色和纹理分析的泪膜脂质层分类自动临床测试来诊断。到目前为止,研究人员主要集中在图像分析步骤的改进上。然而,在机器学习方面仍有很大的改进空间。本文提出了一种通过类别二值化、特征选择和分类来优化这个问题的方法。该方法可以作为其他分类问题的基线,以提供多种解决方案,并使用一组代表性指标和决策方法评估它们的性能。当使用多种决策方法时,它们可能会给出不一致的排名,这将通过冲突处理来解决,即把排名合并为一个单一的排名。实验结果证明了所提出方法在该领域的有效性。此外,其通用性使其能够适应医学和生物学等不同领域的其他分类问题。