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Thyroid nodule detection using attenuation value based on non-enhancement CT images

机译:基于非增强CT图像的衰减值检测甲状腺结节

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Purpose: To validate the feasibility of thyroid nodule detection using attenuation value based on non-enhancement computed tomography (CT) images. Materials and Methods: One hundred and thirty-four transverse CT images with nodules from 58 inpatients and 128 normal images from 55 outpatients (healthy controls) were enrolled in this study. The inpatients with thyroid nodules (50 malignant, 84 benign) underwent nodule excision operation and final diagnoses were confirmed by histopathology. Thyroid regions of interest (ROIs) from axial CT images were delineated manually by a radiologist. The CT values of every thyroid pixels were extracted from the DICOM images. Median and average filter were applied to reduce image noise. Attenuation values of every 2*2 matrix were compared to the high and low density thresholding to identify the presence of the low density area such as cyst and necrosis or the high density area like calcification. The parameters, thresholding and filter type, were optimized according to accuracy and sensitivity. To evaluate the performance of the proposed method, accuracy, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) were considered. Result: The experimental results demonstrate that our proposed method offers exceptional accuracy (ACC=0.8511), sensitivity (SEN=0.8060), specification (SPC=0.8984), positive predictive value (PPV=0.8926) and negative predictive value (NPV=0.8156) respectively. Conclusion: Our study provides a practical strategy for addressing thyroid nodule detection. The proposed and deployed thresholding optimization approach could serve as computer-aided diagnosis method in clinical application.
机译:目的:验证使用基于非增强型计算机断层扫描(CT)图像的衰减值检测甲状腺结节的可行性。材料和方法:纳入本研究的58例住院患者的134例横向CT图像和55例门诊患者(健康对照)的128例正常图像。甲状腺结节(恶性50例,良性84例)的患者接受了结节切除术,并通过组织病理学证实了最终诊断。放射线科医生手动画出了轴向CT图像中的感兴趣的甲状腺区域(ROIs)。从DICOM图像中提取每个甲状腺像素的CT值。应用中值和平均滤波器以减少图像噪声。将每个2 * 2矩阵的衰减值与高密度阈值和低密度阈值进行比较,以识别低密度区域(如囊肿和坏死)或高密度区域(如钙化)的存在。根据准确度和灵敏度对参数(阈值和滤波器类型)进行了优化。为了评估该方法的性能,考虑了准确性,敏感性,特异性,阳性预测值(PPV)和阴性预测值(NPV)。结果:实验结果表明,我们提出的方法具有出色的准确性(ACC = 0.8511),灵敏度(SEN = 0.8060),规格(SPC = 0.8984),阳性预测值(PPV = 0.8926)和阴性预测值(NPV = 0.8156)分别。结论:我们的研究提供了解决甲状腺结节检测的实用策略。提出并部署的阈值优化方法可作为临床应用中的计算机辅助诊断方法。

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