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Learning discriminative distance functions for valve retrieval and improved decision support in valvular heart disease

机译:学习阀门检索的鉴别距离函数和瓣膜心脏病中的改进决策支持

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Disorders of the heart valves constitute a considerable health problem and often require surgical intervention. Recently various approaches were published seeking to overcome the shortcomings of current clinical practice,that still relies on manually performed measurements for performance assessment. Clinical decisions are still based on generic information from clinical guidelines and publications and personal experience of clinicians. We present a framework for retrieval and decision support using learning based discriminative distance functions and visualization of patient similarity with relative neighborhood graphsbased on shape and derived features. We considered two learning based techniques, namely learning from equivalence constraints and the intrinsic Random Forest distance. The generic approach enables for learning arbitrary user-defined concepts of similarity depending on the application. This is demonstrated with the proposed applications, including automated diagnosis and inter-ventional suitability classification, where classification rates of up to 88.9% and 85.9% could be observed on a set of valve models from 288 and 102 patients respectively.
机译:心脏瓣膜的疾病构成了相当的健康问题,并且通常需要手术干预。最近出版了各种方法,寻求克服目前临床实践的缺点,仍然依赖于手动对性能评估进行测量。临床决策仍然基于临床指南和出版物以及临床医生的个人经验的通用信息。我们使用基于学习的鉴别距离函数和与形状和衍生特征的相对邻域的患者相似性的可视化来提出检索和决策支持的框架。我们考虑了两种基于学习的技术,即从等同的限制和内在随机森林距离学习。根据应用,通用方法能够学习任意用户定义的相似概念。拟议的应用,包括自动诊断和常规适用性分类,可以在288和102名患者的一套阀门模型上观察到高达88.9%和85.9%的分类率。

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