首页> 美国卫生研究院文献>Journal of Clinical Medicine >Deep Convolutional Neural Network-Assisted Feature Extraction for Diagnostic Discrimination and Feature Visualization in Pancreatic Ductal Adenocarcinoma (PDAC) versus Autoimmune Pancreatitis (AIP)
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Deep Convolutional Neural Network-Assisted Feature Extraction for Diagnostic Discrimination and Feature Visualization in Pancreatic Ductal Adenocarcinoma (PDAC) versus Autoimmune Pancreatitis (AIP)

机译:深度卷积神经网络辅助特征提取用于胰腺导管腺癌(PDAC)与自身免疫胰腺炎(AIP)的诊断辨别和特征可视化

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摘要

The differentiation of autoimmune pancreatitis (AIP) and pancreatic ductal adenocarcinoma (PDAC) poses a relevant diagnostic challenge and can lead to misdiagnosis and consequently poor patient outcome. Recent studies have shown that radiomics-based models can achieve high sensitivity and specificity in predicting both entities. However, radiomic features can only capture low level representations of the input image. In contrast, convolutional neural networks (CNNs) can learn and extract more complex representations which have been used for image classification to great success. In our retrospective observational study, we performed a deep learning-based feature extraction using CT-scans of both entities and compared the predictive value against traditional radiomic features. In total, 86 patients, 44 with AIP and 42 with PDACs, were analyzed. Whole pancreas segmentation was automatically performed on CT-scans during the portal venous phase. The segmentation masks were manually checked and corrected if necessary. In total, 1411 radiomic features were extracted using PyRadiomics and 256 features (deep features) were extracted using an intermediate layer of a convolutional neural network (CNN). After feature selection and normalization, an extremely randomized trees algorithm was trained and tested using a two-fold shuffle-split cross-validation with a test sample of 20% (n = 18) to discriminate between AIP or PDAC. Feature maps were plotted and visual difference was noted. The machine learning (ML) model achieved a sensitivity, specificity, and ROC-AUC of 0.89 ± 0.11, 0.83 ± 0.06, and 0.90 ± 0.02 for the deep features and 0.72 ± 0.11, 0.78 ± 0.06, and 0.80 ± 0.01 for the radiomic features. Visualization of feature maps indicated different activation patterns for AIP and PDAC. We successfully trained a machine learning model using deep feature extraction from CT-images to differentiate between AIP and PDAC. In comparison to traditional radiomic features, deep features achieved a higher sensitivity, specificity, and ROC-AUC. Visualization of deep features could further improve the diagnostic accuracy of non-invasive differentiation of AIP and PDAC.
机译:自身免疫性胰腺炎(AIP)和胰腺导管腺癌(PDAC)的分化构成了相关的诊断挑战,可以导致误诊,因此患者结果不佳。最近的研究表明,基于射出的模型可以在预测两个实体方面实现高灵敏度和特异性。然而,射线特征只能捕获输入图像的低电平表示。相比之下,卷积神经网络(CNNS)可以学习和提取更复杂的表示,这些表示已被用于图像分类。在我们的回顾性观察研究中,我们使用两个实体的CT扫描进行了基于深度学习的特征提取,并将预测值与传统的射出物特征进行了比较。分析了总共86名患者,44例用AIP和42例,具有PDACs。在门静脉期在CT扫描上自动对整个胰腺分段进行自动进行。必要时手动检查和纠正分段掩模。总共使用蜡状组织提取1411个射出特征,并使用卷积神经网络(CNN)的中间层提取256个特征(深度特征)。在特征选择和归一化之后,使用具有20%(n = 18)的测试样本来训练和测试极其随机的树木算法,并使用20%(n = 18)的测试样本来区分AIP或PDAC。绘制了特征贴图,并注意到了视觉差异。机器学习(ML)模型实现了0.89±0.11,0.83±0.11,0.83±0.06,0.90±0.02的灵敏度,特异性和Roc-Auc,为辐射瘤的0.72±0.11,0.72±0.06和0.80±0.01特征。特征映射的可视化表明AIP和PDAC的不同激活模式。我们使用CT-Images的深色特征提取成功地培训了机器学习模型,以区分AIP和PDAC。与传统的射线特征相比,深度特征达到了更高的灵敏度,特异性和Roc-Auc。深度特征的可视化可以进一步提高AIP和PDAC非侵入性分化的诊断准确性。

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