基于深度学习的心脏核磁共振成像患者疾病分类

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Athira J Jacob, Teodora Chitiboi, U Joseph Schoepf, Puneet Sharma, Jonathan Aldinger, Charles Baker, Carla Lautenschlager, Tilman Emrich, Akos Varga-Szemes
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引用次数: 0

摘要

背景:目的:开发一种基于核磁共振成像的深度学习(DL)疾病分类算法,以区分正常人(NORM)、扩张型心肌病(DCM)、肥厚型心肌病(HCM)和缺血性心脏病(IHD)患者:研究类型:回顾性研究:共有 1337 名受试者(55% 为女性),包括正常受试者(N = 568)、DCM 患者(N = 151)、HCM 患者(N = 177)和 IHD 患者(N = 441):场强/序列:1.5/3.0 T 的平衡稳态自由前序椎体序列:评估:从短轴和长轴电影图像中自动提取双心室形态和功能特征以及整体和节段左心室应变特征。根据提取的特征训练变异自动编码器模型,并与两位专家读者(分别有 13 年和 14 年经验)提供的共识疾病标签进行比较。为了提高 NORM 类别的特异性,还探索了在训练中添加未标记的正常数据:分类指标:曲线下面积(AUC)、混淆矩阵、准确率、特异性、精确度、召回率;95% 置信区间;曼-惠特尼 U 检验表示显著性:使用 SAX 和 LAX 特征,NORM 类的 AUC 为 0.952,DCM 为 0.881,HCM 为 0.908,IHD 为 0.856,总准确率为 0.778,特异性为 0.908。除 HCM-AUC 外,纵向应变特征略微提高了分类指标 0.001 至 0.03 个点。NORM 类别和 HCM-AUC 的准确率、指标差异具有统计学意义。使用未标记数据进行的 Cotraining 将 NORM 类别的特异性提高到 0.961:数据结论:从电影磁共振成像中自动提取的心脏功能特征有望用于疾病分类,尤其是正常-非正常分类。特征分析表明,应变特征对疾病标记很重要。使用未标记数据进行训练可能有助于提高正常-异常分类的特异性:3 技术效率:第 1 阶段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep-Learning-Based Disease Classification in Patients Undergoing Cine Cardiac MRI.

Background: Automated approaches may allow for fast, reproducible clinical assessment of cardiovascular diseases from MRI.

Purpose: To develop an MRI-based deep learning (DL) disease classification algorithm to distinguish among normal subjects (NORM), patients with dilated cardiomyopathy (DCM), hypertrophic cardiomyopathy (HCM), and ischemic heart disease (IHD).

Study type: Retrospective.

Population: A total of 1337 subjects (55% female), comprising normal subjects (N = 568), and patients with DCM (N = 151), HCM (N = 177), and IHD (N = 441).

Field strength/sequence: Balanced steady-state free precession cine sequence at 1.5/3.0 T.

Assessment: Bi-ventricular morphological and functional features and global and segmental left ventricular strain features were automatically extracted from short- and long-axis cine images. Variational autoencoder models were trained on the extracted features and compared against consensus disease label provided by two expert readers (13 and 14 years of experience). Adding unlabeled, normal data to the training was explored to increase specificity of NORM class.

Statistical tests: Tenfold cross-validation for model development; mean, standard deviation (SD) for measurements; classification metrics: area under the curve (AUC), confusion matrix, accuracy, specificity, precision, recall; 95% confidence intervals; Mann-Whitney U test for significance.

Results: AUCs of 0.952 for NORM, 0.881 for DCM, 0.908 for HCM, and 0.856 for IHD and overall accuracy of 0.778 were obtained, with specificity of 0.908 for the NORM class using both SAX and LAX features. Longitudinal strain features slightly improved classification metrics by 0.001 to 0.03 points, except for HCM-AUC. Differences in accuracy, metrics for NORM class and HCM-AUC were statistically significant. Cotraining using unlabeled data increased the specificity for the NORM class to 0.961.

Data conclusion: Cardiac function features automatically extracted from cine MRI have potential to be used for disease classification, especially for normal-abnormal classification. Feature analyses showed that strain features were important for disease labeling. Cotraining using unlabeled data may help to increase specificity for normal-abnormal classification.

Level of evidence: 3 TECHNICAL EFFICACY: Stage 1.

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