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A hybrid neural system for the automatic segmentation of the interventricular septum in echocardiographic images

机译:用于超声心动图图像中心室间隔自动分割的混合神经系统

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Echocardiographic exams allow the observation and extraction of measures related to cardiac structures. In the longitudinal parasternal view, these measures include the left ventricle end-diastolic and end-systolic diameters, end-diastolic interventricular septum thickness (IVSd), and end-diastolic left ventricle posterior wall thickness (LVPWd). Among these measures, the IVSd is important for diagnosing pathologies like hypertrophic cardiomyopathy, aneurysms, abnormal movement and structural faults. This work presents a hybrid neural network system to segment interventricular septum in echocardiographic images of parasternal longitudinal view. The hybrid system developed here consist of a Self-Organizing Map and a Multilayer Perceptron (MLP) neural network. The approach has two phases: clustering and classification. First, the Self-Organizing Map clusters image patches that are previously labeled as Septum and Non-septum. Later, an MLP is trained with information generated by the map. The MLP is then employed to classify patches of a new image resulting in a mask that indicates the probable septum regions. To validate the results, we did a semi-automatic extraction of septum thickness. The average error between the septum thicknesses obtained by the algorithm and the one manually traced was 0.5477mm ± 0.5277mm. Future recommendations are presented to improve the hybrid system performance to get more accurate results.
机译:超声心动图检查可以观察和提取与心脏结构有关的量度。在胸骨旁纵观中,这些措施包括左心室舒张末期和收缩末期直径,舒张末期室间隔厚度(IVSd)和舒张末期左心室后壁厚度(LVPWd)。在这些措施中,IVSd对于诊断诸如肥厚型心肌病,动脉瘤,异常运动和结构缺陷的病理非常重要。这项工作提出了一种混合神经网络系统,以分割胸骨旁纵波的超声心动图图像中的室间隔。这里开发的混合系统包括一个自组织图和一个多层感知器(MLP)神经网络。该方法分为两个阶段:聚类和分类。首先,自组织图将以前标记为隔垫和非隔垫的图像块聚类。之后,使用地图生成的信息对MLP进行训练。然后,使用MLP对新图像的补丁进行分类,从而得到表示可能的隔膜区域的蒙版。为了验证结果,我们对隔垫厚度进行了半自动提取。通过该算法获得的间隔厚度与手动跟踪的间隔厚度之间的平均误差为0.5477mm±0.5277mm。提出了未来的建议,以改善混合动力系统的性能以获得更准确的结果。

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