A DEEP LEARNING-BASED CAD SYSTEM FOR RENAL ALLOGRAFT ASSESSMENT: DIFFUSION, BOLD, AND CLINICAL BIOMARKERS.

Mohamed Shehata, Mohammed Ghazal, Hadil Abu Khalifeh, Ashraf Khalil, Ahmed Shalaby, Amy C Dwyer, Ashraf M Bakr, Robert Keynton, Ayman El-Baz
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引用次数: 3

Abstract

Recently, studies for non-invasive renal transplant evaluation have been explored to control allograft rejection. In this paper, a computer-aided diagnostic system has been developed to accommodate with an early-stage renal transplant status assessment, called RT-CAD. Our model of this system integrated multiple sources for a more accurate diagnosis: two image-based sources and two clinical-based sources. The image-based sources included apparent diffusion coefficients (ADCs) and the amount of deoxygenated hemoglobin (R2*). More specifically, these ADCs were extracted from 47 diffusion weighted magnetic resonance imaging (DW-MRI) scans at 11 different b-values (b0, b50, b100, …, b1000 s/mm2), while the R2* values were extracted from 30 blood oxygen level-dependent MRI (BOLD-MRI) scans at 5 different echo times (2ms, 7ms, 12ms, 17ms, and 22ms). The clinical sources included serum creatinine (SCr) and creatinine clearance (CrCl). First, the kidney was segmented through the RT-CAD system using a geometric deformable model called a level-set method. Second, both ADCs and R2* were estimated for common patients (N = 30) and then were integrated with the corresponding SCr and CrCl. Last, these integrated biomarkers were considered the discriminatory features to be used as trainers and testers for future deep learning-based classifiers such as stacked auto-encoders (SAEs). We used a k-fold cross-validation criteria to evaluate the RT-CAD system diagnostic performance, which achieved the following scores: 93.3%, 90.0%, and 95.0% in terms of accuracy, sensitivity, and specificity in differentiating between acute renal rejection (AR) and non-rejection (NR). The reliability and completeness of the RT-CAD system was further accepted by the area under the curve score of 0.92. The conclusions ensured that the presented RT-CAD system has a high reliability to diagnose the status of the renal transplant in a non-invasive way.

基于深度学习的异体肾移植评估cad系统:扩散、大胆和临床生物标志物。
近年来,人们对无创肾移植评价进行了探索,以控制异体移植排斥反应。在这篇论文中,一种计算机辅助诊断系统被开发出来,以适应早期肾移植状态评估,称为RT-CAD。我们的系统模型集成了多个来源,以获得更准确的诊断:两个基于图像的来源和两个基于临床的来源。图像来源包括表观扩散系数(adc)和脱氧血红蛋白量(R2*)。更具体地说,这些adc是从47个弥散加权磁共振成像(DW-MRI)扫描中提取的,在11个不同的b值(b0, b50, b100,…,b1000 s/mm2),而R2*值是从30个血氧水平依赖MRI (BOLD-MRI)扫描中提取的,在5个不同的回波时间(2ms, 7ms, 12ms, 17ms和22ms)。临床来源包括血清肌酐(SCr)和肌酐清除率(CrCl)。首先,通过RT-CAD系统使用称为水平集方法的几何可变形模型对肾脏进行分割。其次,对普通患者(N = 30)分别估计adc和R2*,并与相应的SCr和CrCl进行综合。最后,这些集成的生物标记物被认为是未来基于深度学习的分类器(如堆叠自编码器(sae))的训练器和测试器的歧视性特征。我们使用k-fold交叉验证标准来评估RT-CAD系统的诊断性能,在区分急性肾排斥反应(AR)和非排斥反应(NR)方面,其准确性、敏感性和特异性分别达到93.3%、90.0%和95.0%。曲线下面积得分为0.92,进一步认可了RT-CAD系统的可靠性和完整性。这些结论保证了RT-CAD系统在无创诊断肾移植状态方面具有较高的可靠性。
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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