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Application of CT images in the diagnosis of lung cancer based on finite mixed model

机译:CT图像在有限混合模型的基础上肺癌诊断中的应用

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Objective Investigating the application of CT images when diagnosing lung cancer based on finite mixture model is the objective. Method: 120 clean healthy rats were taken as the research objects to establish lung cancer rat model and carry out lung CT image examination. After the successful CT image data preprocessing, the image is segmented by different methods, which include lung nodule segmentation on the basis of Adaptive Particle Swarm Optimization – Gaussian mixture model (APSO-GMM), lung nodule segmentation on the basis of Adaptive Particle Swarm Optimization – gamma mixture model (APSO-GaMM), lung nodule segmentation based on statistical information and self-selected mixed distribution model, and lung nodule segmentation based on neighborhood information and self-selected mixed distribution model. The segmentation effect is evaluated. Results: Compared with the results of lung nodule segmentation based on statistical information and self-selected mixed distribution model, the Dice coefficient of lung nodule segmentation based on neighborhood information and self-selected mixed distribution model is higher, the relative final measurement accuracy is smaller, the segmentation is more accurate, but the running time is longer. Compared with APSO-GMM and APSO-GaMM, the dice value of self-selected mixed distribution model segmentation method is larger, and the final measurement accuracy is smaller. Conclusion: Among the five methods, the dice value of the self-selected mixed distribution model based on neighborhood information is the largest, and the relative accuracy of the final measurement is the smallest, indicating that the segmentation effect of the self-selected mixed distribution model based on neighborhood information is the best.
机译:目的研究基于有限混合物模型诊断肺癌时CT图像的应用是目标。方法:将120种清洁健康大鼠作为研究对象建立肺癌大鼠模型,进行肺CT图像检查。在成功的CT图像数据预处理之后,通过不同的方法分段,其包括基于适应性粒子群 - 高斯混合模型(APSO-GMM)的肺结节分段,基于自适应粒子群优化的肺结节分段 - γ混合物模型(APSO-GAMM),基于统计信息和自选混合分布模型的肺结节分割,基于邻域信息和自选混合分布模型的肺结节分割。分段效果评估。结果:与基于统计信息和自选混合分布模型的肺结结分割结果相比,基于邻域信息和自选混合分布模型的肺结结分割骰子系数越高,相对最终测量精度较小,分段更准确,但运行时间更长。与APSO-GMM和APSO-GAMM相比,自选混合分布模型分割方法的骰子值较大,最终测量精度较小。结论:在五种方法中,基于邻域信息的自选混合分布模型的骰子值是最大的,最终测量的相对精度是最小的,表明自选混合分布的分割效果基于邻里信息的模型是最好的。

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