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Segmentation of Lesions with Improved Specificity in Computer-Aided Diagnosis Using a Massive-Training Artificial Neural Network (MTANN)

机译:利用大规模培训人工神经网络(MTANN)对计算机辅助诊断的特异性改善病变的分割

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Segmentation of lesions plays an important role in computer-aided diagnostic (CAD) schemes, because the accuracy of segmentation affects the accuracy of the feature extraction and analysis based on segmented lesions, and therefore, the final accuracy of classification. Accurate segmentation is difficult especially for complicated patterns such as lesions overlapping or touching normal structures, low-contrast lesions, and subtle opacities.  With standard segmentation methods, normal structures overlapping or touching lesions are often erroneously included in segmented regions. In addition, normal structures are often segmented erroneously as lesions. Thus, improving the specificity of segmentation methods is very important in the development of a CAD scheme. Our purpose in this study was to develop a supervised lesion segmentation method based on a massive-training artificial neural network (MTANN) filter in a CAD scheme for detection of lung nodules in CT. The MTANN filter was trained with actual nodules in CT images to segment nodules with improved specificity. With the MTANN-based segmentation method, the specificity of the segmentation was improved; thus, the overall performance of our CAD scheme was improved substantially.
机译:病变的分割在计算机辅助诊断(CAD)方案中起着重要作用,因为分割的准确性影响了基于分段病变的特征提取和分析的准确性,因此,分类的最终精度。精确的分割尤其尤其适用于复杂的模式,例如病变重叠或触摸正常结构,低对比度病变和微妙的不透明度。通过标准分段方法,重叠或触摸病变的正常结构通常被错误地包括在分段区域中。另外,正常结构通常被错误地将正常分割为病变。因此,改善分割方法的特异性在CAD方案的发展中非常重要。我们本研究中的目的是在CAD方案中制定基于大规模训练人工神经网络(MTANN)滤波器的监督病变分割方法,用于检测CT中的肺结节。 MTANN滤波器培训,用CT图像中的实际结节培训,以改善特异性的分段结节。利用基于M纳的分割方法,改善了分割的特异性;因此,我们的CAD方案的整体性能大大提高。

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