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Towards glaucoma detection using intraocular pressure monitoring

机译:眼压监测走向青光眼

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摘要

Diagnosing the glaucoma is a very difficult task for healthcare professionals. High intraocular pressure (IOP) remains the main treatable symptom of this degenerative disease which leads to blindness. Nowadays, new types of wearable sensors, such as the contact lens sensor Triggerfish, provide an automated recording of 24-hour profile of ocular dimensional changes related to IOP. Through several clinical studies, more and more IOP-related profiles have been recorded by those sensors and made available for elaborating data-driven experiments. The objective of such experiments is to analyse and detect IOP pattern differences between ill and healthy subjects. The potential is to provide medical doctors with analysis and detection tools allowing them to better diagnose and treat glaucoma. In this paper we present the methodologies, signal processing and machine learning algorithms elaborated in the task of automated detection of glaucomatous IOP-related profiles within a set of 100 24-hour recordings. As first convincing results, we obtained a classification ROC AUC of 81.5%.
机译:对于医疗保健专业人员而言,诊断青光眼是一项非常艰巨的任务。高眼内压(IOP)仍是该变性疾病导致失明的主要可治症状。如今,新型可穿戴式传感器(例如隐形眼镜传感器Triggerfish)可自动记录与IOP相关的眼部尺寸变化的24小时概况。通过数项临床研究,这些传感器记录了越来越多的与IOP相关的概况,并可用于详细说明数据驱动的实验。这种实验的目的是分析和检测患病和健康受试者之间的眼压模式差异。潜力是为医生提供分析和检测工具,使他们能够更好地诊断和治疗青光眼。在本文中,我们介绍了在自动检测青光眼与IOP相关的配置文件(一组100个24小时记录)中完成的方法,信号处理和机器学习算法。作为第一个令人信服的结果,我们获得了81.5%的ROC AUC分类。

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