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Optimized Double-Regional Filtering Algorithm on MRI Three-Dimensional Reconstructed Images for the Evaluation of Effects of Delivery on the Pelvis of Primiparas

机译:MRI三维重建图像的优化双区域过滤算法,用于评估Priparas骨盆骨盆效果的评估

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摘要

This study was to explore the denoising and segmentation effect of dual-domain image denoising (DDID) algorithm, and the Galois field (GF) and nonlocal means (NLM) algorithms were introduced for comparative analysis. 40 primiparas in the hospital from January 2018 to January 2020 were divided into an experimental group (caesarean section (CS), group E) and a control group (vaginal delivery (VD), group C). The peak signal-to-noise ratio (PSNR) and segmentation parameters of DDID algorithm were compared with GF algorithm and NLM algorithm. It was found that the DDID showed higher overall accuracy (OA) and lower false positive rate (FPR) and false negative rate (FNR). The PSNR of DDID was higher than the other two algorithms. GF algorithm showed the highest edge retention index (ERI). The incidence of pelvic organ prolapse (POP) in group E and group C was 9/20 (45%) and 5/20 (25%), respectively, with extreme difference ( ). Evaluation of the effects of delivery on the pelvis of primiparas with MRI three-dimensional (3D) reconstructed images based on the optimized DDID showed a superior and stable denoising effect and good segmentation, so it was worthy of clinical promotion and application.
机译:本研究是探讨双域图像去噪(DDID)算法的去噪和分割效果,并引入了Galois场(GF)和非局部手段(NLM)算法进行比较分析。从2018年1月到1月2020年的医院中的40名初级脂肪酶分为实验组(凯撒段(CS),组E)和对照组(阴道分娩(VD),C组)。与GF算法和NLM算法进行了比较了DDID算法的峰值信噪比(PSNR)和分割参数。发现DDID显示出更高的总体精度(OA)和较低的假阳性率(FPR)和假负速率(FNR)。 DDID的PSNR高于其他两种算法。 GF算法显示了最高的边缘保留索引(ERI)。 e和C组中盆腔器官脱垂(POP)的发生率分别为9/20(45%)和5/20(25%),具有极端差异()。评估基于优化DdID的MRI立体(3D)重建图像对Priparas骨盆骨盆对骨盆的影响显示出优异且稳定的去噪效果和良好的分割,因此值得临床促进和应用。

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