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Segmentation and computer-aided diagnosis of cardiac MR images using four-dimensional active appearance models.

机译:使用二维主动外观模型对心脏MR图像进行分割和计算机辅助诊断。

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摘要

The four-dimensional (4-D) cardiac MR images contain rich information about the static and dynamic properties of the heart, which were not fully utilized in clinical practice for quantitative analysis---a difficult task for humans, which can be achieved by computer-aided image analysis and diagnosis. In this thesis, the 4-D Active Appearance Model (AAM) was used to achieve highly automated computer segmentation of the left and right ventricles (LV and RV) and the diagnosis of normal and tetralogy of Fallot (TOF) patients. The whole process was implemented in four stages: data construction, model construction, computer segmentation, and computer-aided diagnosis.;The data construction stage overcame most inherent limitations of cardiac MR imaging and produced high-quality 4-D ventricular image with isotropic voxels, complete coverage and no respiratory motion artifacts. A manual tracing application was developed to trace the ventricular surfaces in a true 4-D context and produced accurate independent standard for model construction and segmentation validation.;In the model construction stage, the 4-D AAMs were constructed using a custom designed automatic landmarking and texture mapping procedure with high efficiency.;In the computer segmentation stage, the 4-D AAMs were applied to segment the left and right ventricles of 25 normal and 25 TOF patient scans. The segmentation achieved accurate results measured by signed surface positioning errors. On normal hearts, the average signed errors were 0.3+/-2.3 mm for LV and 0.1+/-3.4 mm for RV. On TOF hearts with large shape variability, the errors were -1.5+/-3.2 mm for LV and -0.9+/-4.3 mm for RV. Other error metrics such as relative overlapping also indicated good segmentation accuracies.;In the computer-aided diagnosis stage, 100% normal/TOF classification was achieved using the novel 4-D ventricular function indices---the shape modal indices. The longitudinal analysis performed on subjects with multiple annual scans showed that the normal subjects exhibited smaller variances of these 4-D indices than TOF patients, which demonstrated the potential of using them as disease status determinants. In addition, the quantitative 4-D indices provided more information about the dynamic properties of the heart and identified patient-specific features that were not sensed by human expert observers.
机译:二维(4-D)心脏MR图像包含有关心脏静态和动态特性的丰富信息,这些信息在临床实践中并未完全用于定量分析,这对于人类来说是一项艰巨的任务,可以通过以下方法来实现计算机辅助图像分析和诊断。本文采用4-D主动外观模型(AAM)实现左心室和右心室(LV和RV)的高度计算机化分割以及法洛(TOF)患者的正常和四联症的诊断。整个过程分为四个阶段:数据构建,模型构建,计算机细分和计算机辅助诊断。;数据构建阶段克服了心脏MR成像的大多数固有局限性,并生成了各向同性体素的高质量4-D心室图像,完全覆盖且无呼吸运动伪影。开发了手动跟踪应用程序以在真实的4-D环境中跟踪心室表面,并为模型构建和分割验证提供了准确的独立标准。;在模型构建阶段,使用定制设计的自动地标来构建4-D AAM在计算机分割阶段,将4-D AAM用于分割25例正常扫描和25例TOF扫描的左右心室。通过有符号的表面定位误差,分割获得了准确的结果。在正常心脏上,LV的平均符号误差为0.3 +/- 2.3 mm,RV的平均符号误差为0.1 +/- 3.4 mm。在形状变异性较大的TOF心脏上,LV的误差为-1.5 +/- 3.2 mm,RV的误差为-0.9 +/- 4.3 mm。其他误差指标,例如相对重叠,也表明了良好的分割准确性。在计算机辅助诊断阶段,使用新颖的4D心室功能指标-形状模态指标,实现了100%正常/ TOF分类。对具有多次年度扫描的受试者进行的纵向分析显示,正常受试者的这些4-D指数方差比TOF患者小,这表明将其用作疾病状况决定因素的潜力。此外,定量的4-D指数还提供了有关心脏动态特性的更多信息,并确定了人类专家观察者无法感知的特定于患者的特征。

著录项

  • 作者

    Zhang, Honghai.;

  • 作者单位

    The University of Iowa.;

  • 授予单位 The University of Iowa.;
  • 学科 Engineering Biomedical.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 130 p.
  • 总页数 130
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;无线电电子学、电信技术;
  • 关键词

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