Evaluating the effect of noise reduction strategies in CT perfusion imaging for predicting infarct core with deep learning.

IF 1.3 Q4 NEUROIMAGING
James J F Crouch, Timothé Boutelier, Adam Davis, Mohammad Mahdi Shiraz Bhurwani, Kenneth V Snyder, Christos Papageorgakis, Dorian Raguenes, Ciprian N Ionita
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引用次数: 0

Abstract

This study evaluates the efficacy of deep learning models in identifying infarct tissue on computed tomography perfusion (CTP) scans from patients with acute ischemic stroke due to large vessel occlusion, specifically addressing the potential influence of varying noise reduction techniques implemented by different vendors. We analyzed CTP scans from 60 patients who underwent mechanical thrombectomy achieving a modified thrombolysis in cerebral infarction (mTICI) score of 2c or 3, ensuring minimal changes in the infarct core between the initial CTP and follow-up MR imaging. Noise reduction techniques, including principal component analysis (PCA), wavelet, non-local means (NLM), and a no denoising approach, were employed to create hemodynamic parameter maps. Infarct regions identified on follow-up diffusion-weighted imaging (DWI) within 48 hours were co-registered with initial CTP scans and refined with ADC maps to serve as ground truth for training a data-augmented U-Net model. The performance of this convolutional neural network (CNN) was assessed using Dice coefficients across different denoising methods and infarct sizes, visualized through box plots for each parameter map. Our findings show no significant differences in model accuracy between PCA and other denoising methods, with minimal variation in Dice scores across techniques. This study confirms that CNNs are adaptable and capable of handling diverse processing schemas, indicating their potential to streamline diagnostic processes and effectively manage CTP input data quality variations.

评价CT灌注成像降噪策略在深度学习预测梗死核心中的效果。
本研究评估了深度学习模型在识别由大血管闭塞引起的急性缺血性卒中患者的计算机断层扫描灌注(CTP)扫描中的梗死组织方面的功效,特别是解决了不同供应商实施的不同降噪技术的潜在影响。我们分析了60例接受机械取栓的患者的CTP扫描,这些患者的改良脑梗死溶栓(mTICI)评分为2c或3分,确保了初始CTP和随访MR成像之间梗死核心的最小变化。降噪技术,包括主成分分析(PCA)、小波、非局部均值(NLM)和无去噪方法,被用于创建血流动力学参数图。48小时内通过后续弥散加权成像(DWI)确定的梗死区域与初始CTP扫描共同注册,并使用ADC图进行细化,作为训练数据增强U-Net模型的基础事实。该卷积神经网络(CNN)的性能通过不同去噪方法和梗死面积的Dice系数进行评估,并通过每个参数图的箱形图进行可视化。我们的研究结果表明,PCA和其他去噪方法之间的模型准确性没有显着差异,不同技术之间的Dice分数变化最小。该研究证实,cnn具有适应性,能够处理各种处理模式,这表明它们具有简化诊断过程和有效管理CTP输入数据质量变化的潜力。
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
Neuroradiology Journal
Neuroradiology Journal NEUROIMAGING-
CiteScore
2.50
自引率
0.00%
发文量
101
期刊介绍: NRJ - The Neuroradiology Journal (formerly Rivista di Neuroradiologia) is the official journal of the Italian Association of Neuroradiology and of the several Scientific Societies from all over the world. Founded in 1988 as Rivista di Neuroradiologia, of June 2006 evolved in NRJ - The Neuroradiology Journal. It is published bimonthly.
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