基于卷积神经网络的核心学SPECT心肌灌注图像可解释分类方法

Nikolaos I. Papandrianos, Anna Feleki, S. Moustakidis, E. Papageorgiou
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引用次数: 0

摘要

本研究旨在开发一种可解释的卷积神经网络(CNN)管道,以手工制作的CNN的形式来识别患者的冠状动脉疾病状态(正常、缺血或梗死)。提出的RGB-CNN模型利用各种预处理和后处理工具,并部署了最先进的可解释性工具,在决策任务中产生更多可解释的预测。所提供的数据集包括630例处于压力和休息状态的患者病例,其中包括257例正常病例、241例缺血病例和127例梗死病例,之前由医生分类。成像数据集分为20%用于测试,80%用于训练,其中15%进一步用于验证目的。采用数据增强来提高泛化。基于Grad-CAM的颜色可视化方法也被用于在SPECT-MPI图像中检测缺血和梗死提供具有可解释性的预测,抵消了cnn提取结果中缺乏基本原理的任何不足。该模型的准确率为94.06%,AUC为0.9541%,具有良好的性能和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Convolutional Neural Network-based explainable classification method of SPECT myocardial perfusion images in nuclear cardiology
This study targets on the development of an explainable Convolutional Neural Network (CNN) pipeline in the form of a handcrafted CNN to identify patients’ coronary artery disease status (normal, ischemia or infarction). The proposed RGB-CNN model utilizes various pre- and post-processing tools and deploys a state-of-the-art explainability tool to produce more interpretable predictions in the task of decision making. The provided dataset includes 630 patients’ cases in stress and rest representations and comprises 257 normal, 241 ischemic and 127 infarction cases, previously classified by a doctor. The imaging dataset was split into 20% for testing and 80% for training, whose 15% was further used for validation purposes. Data augmentation was employed to increase generalization. Grad-CAM based color visualization approach was also utilized to provide predictions with interpretability in the detection of ischemia and infarction in SPECT-MPI images, counterbalancing any lack of rationale in the results extracted by CNNs. The proposed model achieved 94,06% accuracy and 0.9541% AUC, demonstrating efficient performance and stability.
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