Towards AI Based Diagnosis of Rheumatic Heart Disease: Data Annotation and View Classification

Lorna Mugambi, L. Zühlke, C. Maina
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引用次数: 2

Abstract

Rheumatic Heart Disease is a cardiovascular disease highly prevalent in developing countries partially because of inadequate healthcare infrastructure to treat Group A streptococcus pharyngitis and thereafter diagnose and document every case of Acute Rheumatic Fever, the immune-mediated antecedent of rheumatic heart disease. Secondary antibiotic treatment with penicillin injections after a diagnosis of Acute Rheumatic Fever and Rheumatic Heart Disease is used to prevent further attacks of Strep A, preferably prior to any heart valve damage. Echocardiographic screening for early detection of Rheumatic Heart Disease has been proposed as a method to improve outcomes but it is time-consuming, costly and few people are skilled enough to reach a correct diagnosis. Machine Learning is an emerging tool in analysing medical images; our aim is to automate the screening process of diagnosing rheumatic heart disease. In this paper, we present a web application to be used to label echocardiography data. These labelled data can then be used to develop machine learning models that can classify echocardiographic views of the heart and damaged valves from the echocardiograms.
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基于人工智能的风湿性心脏病诊断:数据标注与视图分类
风湿性心脏病是一种心血管疾病,在发展中国家非常普遍,部分原因是医疗基础设施不足,无法治疗a群链球菌咽炎,随后诊断和记录每一例急性风湿热(风湿性心脏病的免疫介导的前体)。在诊断为急性风湿热和风湿性心脏病后,用青霉素注射进行二次抗生素治疗,以防止甲型链球菌的进一步发作,最好是在任何心脏瓣膜损伤之前。超声心动图筛查早期发现风湿性心脏病已被提议作为一种改善预后的方法,但它耗时,昂贵,很少有人有足够的技能来达到正确的诊断。机器学习是分析医学图像的新兴工具;我们的目标是自动化诊断风湿性心脏病的筛选过程。在本文中,我们提出了一个用于标记超声心动图数据的web应用程序。然后,这些标记的数据可用于开发机器学习模型,该模型可以从超声心动图中对心脏和受损瓣膜的超声心动图视图进行分类。
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