论文标题
使用带有贝叶斯推断的神经网络对天然T1映射的心肌组织特征的自动定量,以基于不确定性的质量控制
Automated quantification of myocardial tissue characteristics from native T1 mapping using neural networks with Bayesian inference for uncertainty-based quality-control
论文作者
论文摘要
用CMR参数映射进行组织表征具有检测和量化心肌结构的局灶性和弥漫性改变,而无法通过增强后期的gadolinium来评估。尤其是本地T1映射已显示为支持缺血性和非缺血性心肌病中诊断,治疗和预后决策的有用生物标志物。带有贝叶斯推理的卷积神经网络是对网络输出不确定性进行建模的人工神经网络类别。这项研究提出了一个使用概率层次分割(Phiseg)网络从天然SHMOLLI T1映射的组织表征的自动框架。此外,我们在新型的自动化质量控制(QC)步骤中使用Phiseg网络提供的不确定性信息来识别不确定的T1值。 Phiseg网络和质量控制对包含健康受试者和慢性心肌病患者的英国生物库的手动分析进行了验证。我们使用了所提出的方法来获得健康受试者左心室心肌以及常见临床心脏病的参考T1范围。根据自动分割计算出的T1值高度相关(r = 0.97)。 Bland-Altman分析表明自动化和手动测量之间有很好的一致性。左心室心肌的平均骰子度量为0.84。检测错误输出的敏感性为91%。最后,T1值自动从英国生物库中的14,683 cmr考试得出。所提出的管道允许对心肌T1映射进行自动分析,并包括一个QC过程,以检测可能错误的结果。使用T1映射图像,介绍了从最大的队列中的健康受试者和常见的临床心脏条件的T1参考值。
Tissue characterisation with CMR parametric mapping has the potential to detect and quantify both focal and diffuse alterations in myocardial structure not assessable by late gadolinium enhancement. Native T1 mapping in particular has shown promise as a useful biomarker to support diagnostic, therapeutic and prognostic decision-making in ischaemic and non-ischaemic cardiomyopathies. Convolutional neural networks with Bayesian inference are a category of artificial neural networks which model the uncertainty of the network output. This study presents an automated framework for tissue characterisation from native ShMOLLI T1 mapping at 1.5T using a Probabilistic Hierarchical Segmentation (PHiSeg) network. In addition, we use the uncertainty information provided by the PHiSeg network in a novel automated quality control (QC) step to identify uncertain T1 values. The PHiSeg network and QC were validated against manual analysis on a cohort of the UK Biobank containing healthy subjects and chronic cardiomyopathy patients. We used the proposed method to obtain reference T1 ranges for the left ventricular myocardium in healthy subjects as well as common clinical cardiac conditions. T1 values computed from automatic and manual segmentations were highly correlated (r=0.97). Bland-Altman analysis showed good agreement between the automated and manual measurements. The average Dice metric was 0.84 for the left ventricular myocardium. The sensitivity of detection of erroneous outputs was 91%. Finally, T1 values were automatically derived from 14,683 CMR exams from the UK Biobank. The proposed pipeline allows for automatic analysis of myocardial native T1 mapping and includes a QC process to detect potentially erroneous results. T1 reference values were presented for healthy subjects and common clinical cardiac conditions from the largest cohort to date using T1-mapping images.