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Joint learning of ultrasonic backscattering statistical physics and signal confidence primal for characterizing atherosclerotic plaques using intravascular ultrasound

机译:超声波散射统计物理学的联合学习及信号置信原版用血管内超声表征动脉粥样硬化斑块

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摘要

Intravascular Ultrasound (IVUS) is a predominant imaging modality in interventional cardiology. It provides real-time cross-sectional images of arteries and assists clinicians to infer about atherosclerotic plaques composition. These plaques are heterogeneous in nature and constitute fibrous tissue, lipid deposits and calcifications. Each of these tissues backscatter ultrasonic pulses and are associated with a characteristic intensity in B-mode IVUS image. However, clinicians are challenged when colocated heterogeneous tissue backscatter mixed signals appearing as non-unique intensity patterns in B-mode IVUS image. Tissue characterization algorithms have been developed to assist clinicians to identify such heterogeneous tissues and assess plaque vulnerability. In this paper, we propose a novel technique coined as Stochastic Driven Histology (SDH) that is able to provide information about co-located heterogeneous tissues. It employs learning of tissue specific ultrasonic backscattering statistical physics and signal confidence primal from labeled data for predicting heterogeneous tissue composition in plaques. We employ a random forest for the purpose of learning such a primal using sparsely labeled and noisy samples. In clinical deployment, the posterior prediction of different lesions constituting the plaque is estimated. Folded cross-validation experiments have been performed with 53 plaques indicating high concurrence with traditional tissue histology. On the wider horizon, this framework enables learning of tissue-energy interaction statistical physics and can be leveraged for promising clinical applications requiring tissue characterization beyond the application demonstrated in this paper.
机译:血管内超声(IVUS)是介入心脏病学中的主要成像模型。它提供动脉的实时横截面图像,并帮助临床医生推断出动脉粥样硬化斑块组成。这些斑块本质上是异质的,构成纤维组织,脂质沉积物和钙化。这些组织中的每一个反向散射超声波脉冲,并且与B模式IVUS图像中的特征强度相关联。然而,当Colocated异构组织反向散射混合信号在B模式IVUS图像中出现非独特强度模式时,临床医生受到挑战。已经开发了组织表征算法以帮助临床医生鉴定这种异质组织并评估斑块脆弱性。在本文中,我们提出了一种作为随机驱动组织学的新技术,其能够提供关于共同定位的异构组织的信息。它采用学习组织特异性超声波反向散射统计物理学和信号置信度原版,从标记数据预测斑块中的异质组织组成。我们使用随机森林,以使用稀疏标记和嘈杂的样品学习此类原始。在临床部署中,估计构成斑块的不同病变的后预测。已经用53个斑块进行了折叠的交叉验证实验,其表明具有传统组织组织学的高同时进行。在更宽的地平线上,该框架能够学习组织能相互作用统计物理学,并且可以利用,以便有前途的临床应用,需要在本文中证明的应用中的组织表征。

著录项

  • 来源
    《Medical image analysis》 |2014年第1期|共15页
  • 作者单位

    Computer Aided Medical Procedures Technische Universit?t München Germany School of Medical;

    Computer Aided Medical Procedures Technische Universit?t München Germany;

    Computer Aided Medical Procedures Technische Universit?t München Germany;

    Department of Radiology Technische Universit?t München Germany;

    School of Medical Science and Technology Indian Institute of Technology Kharagpur India;

    Department of Electronics and Electrical Communication Engineering Indian Institute of Technology;

    Department of Biomedical Engineering Columbia University NY United States;

    Department of Cardiology Universitair Ziekenhuis Brussel Belgium;

    Computer Aided Medical Procedures Technische Universit?t München Germany;

    Computer Aided Medical Procedures Technische Universit?t München Germany Department of;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 影像诊断学;
  • 关键词

    Intravascular ultrasound; Machine learning; Nakagami distribution; Tissue characterization; Ultrasound signal confidence;

    机译:血管内超声;机器学习;Nakagami分布;组织表征;超声信号置信度;

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