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Simultaneous Modelling and Clustering of Visual Field Data

机译:视野数据的同时建模和聚类

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Visual Field (VF) tests and their corresponding data are commonly used in clinical practices to manage glaucoma. The data represents patient visual acuity, which determines whether the patient has good or impaired vision. Developing machine learning and data mining algorithms that explore the spatial and temporal aspects of visual filed data could vastly improve early diagnosis as well as assisting practitioners in providing appropriate treatments. The objective of this study is to explore the simultaneous modelling and clustering of VF data so that a better understanding of the relationship between VF points can be made, as well as the generation of models that can better predict glaucoma progression. The spatial clusters over the visual field are determined by using heuristic search techniques which are scored based upon the prediction accuracy of glaucoma deterioration. This is compared to methods using standard clusters that are based upon physiological traits (the six optic nerve fiber bundles). Our results demonstrate an improvement in prediction accuracy for some of the models.
机译:视野(VF)测试及其相应数据通常在临床实践中用于治疗青光眼。数据代表患者的视敏度,该视敏度确定患者的视力是否良好。开发探索视觉归档数据的空间和时间方面的机器学习和数据挖掘算法可以极大地改善早期诊断,并帮助从业人员提供适当的治疗方法。这项研究的目的是探索VF数据的同时建模和聚类,以便可以更好地了解VF点之间的关系,以及可以更好地预测青光眼进展的模型的产生。通过使用启发式搜索技术确定视野上的空间簇,该启发式搜索技术是基于青光眼恶化的预测准确性进行评分的。这与使用基于生理特征(六个视神经纤维束)的标准簇的方法进行了比较。我们的结果表明,某些模型的预测准确性有所提高。

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