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Improved DenseNet-Based MRI in Pulmonary Nodules Diagnosis and Benign and Malignant Differentiation

机译:改进的肺结结诊断和良性和恶性分化中的基于Densenet的MRI

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To explore the performance of the improved DenseNet network in diagnosing pulmonary nodules (PNs) and differentiating benign and malignant PNs, improved DenseNet network was applied to segment MRI images of 60 PN patients, which were defined as the test group, while those segmented by the traditional one were undertaken as the control group. The MRI results were compared with the pathological diagnostic results, and the segmentation effects were evaluated factoring in precision, recall, Dice similarity coefficient, and intersection-over-union (IoU). The results showed that the improved DenseNet network algorithm showed higher accuracy, recall rate, Dice coefficient, and IoU versus the traditional one, and the difference was notable ( ). The improved DenseNet network algorithm had higher diagnostic accuracy in terms of the PN volume, lobes, burrs, edges, and adhesion to surrounding tissue, with notable differences noted ( ). The accuracy in differentiating benign and malignant PNs in the test group was higher (92.38?±?8.74% vs. 75.56?±?7.56%) versus the control group, and the difference was notable ( ). In short, the MRI image segmentation algorithm based on the improved DenseNet network shows high accuracy in diagnosing PNs and differentiating benign and malignant PNs, and it is worthy of further promotion in the clinic.
机译:为了探讨改进的DenSenet网络在诊断肺结核(PNS)和区分良性和恶性PNS方面的性能,将改进的DENSENET网络应用于60pN患者的段MRI图像,其被定义为试验组,而那些由传统是作为对照组进行的。将MRI结果与病理诊断结果进行比较,并且在精确度,召回,骰子相似度系数和交叉口(IOU)中评估分割效果。结果表明,改进的DenSenet网络算法表现出更高的精度,召回率,骰子系数,并且IOU与传统的骰子,并且差异是值得注意的()。改进的DenSenet网络算法在Pn体积,叶片,毛刺,边缘和周围组织的粘附方面具有更高的诊断精度,并注意到()显着差异()。在试验组中差异的良性和恶性PNS的准确性更高(92.38?±8.74%与75.56?±7.56%)与对照组,差异是值得注意的()。简而言之,基于改进的DenSenet网络的MRI图像分割算法显示了诊断PNS和差异良性和恶性PNS的高精度,并且值得在诊所进一步推广。

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