Biomedical Applications of Wavelet Transform Algorithm on Deep Learning Ultrasonic Image Optimization as a Prognosis Model for Acute Myocarditis

IF 2.9 4区 医学 Q1 Medicine
Fan Mei, Dan Qian, Yujun Nie, Bin Wang, Aimin Liang, Hua Li
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Abstract

We aimed to investigate the biomedical methods of wavelet transform algorithm on ultrasonic image denoising algorithm and the risk factors for the adverse prognostic events of patients with myocarditis and analyse its correlation with free triiodothyronine (FT3) level. A retrospective study was performed to include 68 patients diagnosed with acute myocarditis (AM). The included patients were enrolled into adverse event (AE) group (n = 7) and non-adverse event (NAE) group (n = 61). The clinical data, laboratory examination indicators, echocardiographic parameters, and thyroid functions between the patients in the two groups at admission were compared. Besides, wavelet transform (WT) algorithm was employed to process ultrasonic images containing noises. Univariate and multivariate analysis were performed using Logistic regression model. It was demonstrated that peak signal-to-noise ratio (PSNR) and structural similarity (SSIM) (35.279, 0.847) of wavelet transform algorithm were higher than those of denoising convolutional neural network (DnCNN) algorithm (30.673, 0.582) and Red-Net algorithm (28.489, 0.638). In the AE group, the QRS interval was longer ([102 (93, 135) ms] versus [86 (79, 102) ms]), the proportion of prolonged QRS period was higher (28.57%, 9.83%), and the creatine kinase isoenzyme, a marker of myocardial injury, was higher [32.87 (13.64, 78.62) U/L] versus 12.02 (9.89, 27.65) U/L], and the level of FT3 was lower [1.87 (1.23, 2.36) pg/mL versus 2.83 (1.83, 3.45) pg/mL] compared to the NAE group. The left ventricular ejection fraction (LVEF) in the adverse event group was lower than that in the non-adverse event group [45.78 (36.18, 54.32) % versus 63.72 (54.82, 64.68)]. Multivariate Logistic regression analysis showed that the risk factors for adverse events in patients with acute myocarditis included QRS interval > 120 ms (OR = 1.021), creatine kinase isoenzyme > 24 U/L (OR = 1.024), FT3 (OR = 0.067), and LVEF < 50% (OR = 0.973). This work confirmed that the wavelet transform algorithm can optimize the image quality of echocardiography, improve the clarity, and provide a feasible idea for improving the prognosis of patients with acute myocarditis.
深度学习超声波图像优化中的小波变换算法作为急性心肌炎预后模型的生物医学应用
我们旨在研究小波变换算法对超声波图像去噪算法的生物医学方法以及心肌炎患者不良预后事件的风险因素,并分析其与游离三碘甲状腺原氨酸(FT3)水平的相关性。这项回顾性研究纳入了68名被诊断为急性心肌炎(AM)的患者。纳入的患者分为不良事件(AE)组(7 人)和非不良事件(NAE)组(61 人)。比较两组患者入院时的临床数据、实验室检查指标、超声心动图参数和甲状腺功能。此外,还采用了小波变换(WT)算法来处理含有噪声的超声波图像。采用 Logistic 回归模型进行单变量和多变量分析。结果表明,小波变换算法的峰值信噪比(PSNR)和结构相似度(SSIM)(35.279,0.847)高于去噪卷积神经网络(DnCNN)算法(30.673,0.582)和Red-Net算法(28.489,0.638)。在 AE 组中,QRS 间期更长([102 (93, 135) ms] 对 [86 (79, 102) ms]),QRS 间期延长的比例更高(28.57%,9.83%),心肌损伤的标志物肌酸激酶同工酶更高[32.87(13.64,78.62)U/L]对12.02(9.89,27.65)U/L],与NAE组相比,FT3水平较低[1.87(1.23,2.36)pg/mL对2.83(1.83,3.45)pg/mL]。不良事件组的左心室射血分数(LVEF)低于非不良事件组[45.78 (36.18, 54.32) % 对 63.72 (54.82, 64.68)]。多变量逻辑回归分析显示,急性心肌炎患者发生不良事件的危险因素包括 QRS 间期 > 120 ms(OR = 1.021)、肌酸激酶同工酶 > 24 U/L(OR = 1.024)、FT3(OR = 0.067)和 LVEF < 50%(OR = 0.973)。这项工作证实了小波变换算法可以优化超声心动图的图像质量,提高清晰度,为改善急性心肌炎患者的预后提供了可行的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.30
自引率
17.20%
发文量
145
审稿时长
2.3 months
期刊介绍: Information not localized
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