论文标题

使用B模式超声图像上的可解释的深度学习方法对颈动脉动脉瘤菌斑的分层

Stratification of carotid atheromatous plaque using interpretable deep learning methods on B-mode ultrasound images

论文作者

Ganitidis, Theofanis, Athanasiou, Maria, Dalakleidi, Kalliopi, Melanitis, Nikos, Golemati, Spyretta, Nikita, Konstantina S

论文摘要

颈动脉粥样硬化是缺血性中风的主要原因,导致每年的死亡率和残疾率很高。这种情况的早期诊断非常重要,因为它使临床医生能够采用更有效的治疗策略。本文介绍了颈动脉超声图像的一种可解释的分类方法,以评估颈动脉粥样硬化斑块患者的风险评估和分层。为了解决有症状和无症状类别之间患者分布的高度不平衡的分布(分别为16 vs 58),采用了基于子采样方法的合奏学习方案,并使用了两相,成本敏感的学习策略,该策略使用了原始和重新采样的数据集。卷积神经网络(CNN)用于构建合奏的主要模型。使用六层深的CNN从图像中自动提取特征,然后是两个完全连接层的分类阶段。获得的结果(ROC曲线下的面积(AUC):73%,灵敏度:75%,特异性:70%)表明所提出的方法实现了可接受的歧视性能。 Finally, interpretability methods were applied on the model's predictions in order to reveal insights on the model's decision process as well as to enable the identification of novel image biomarkers for the stratification of patients with carotid atheromatous plaque.Clinical Relevance-The integration of interpretability methods with deep learning strategies can facilitate the identification of novel ultrasound image biomarkers for the stratification of patients with carotid atheromatous plaque.

Carotid atherosclerosis is the major cause of ischemic stroke resulting in significant rates of mortality and disability annually. Early diagnosis of such cases is of great importance, since it enables clinicians to apply a more effective treatment strategy. This paper introduces an interpretable classification approach of carotid ultrasound images for the risk assessment and stratification of patients with carotid atheromatous plaque. To address the highly imbalanced distribution of patients between the symptomatic and asymptomatic classes (16 vs 58, respectively), an ensemble learning scheme based on a sub-sampling approach was applied along with a two-phase, cost-sensitive strategy of learning, that uses the original and a resampled data set. Convolutional Neural Networks (CNNs) were utilized for building the primary models of the ensemble. A six-layer deep CNN was used to automatically extract features from the images, followed by a classification stage of two fully connected layers. The obtained results (Area Under the ROC Curve (AUC): 73%, sensitivity: 75%, specificity: 70%) indicate that the proposed approach achieved acceptable discrimination performance. Finally, interpretability methods were applied on the model's predictions in order to reveal insights on the model's decision process as well as to enable the identification of novel image biomarkers for the stratification of patients with carotid atheromatous plaque.Clinical Relevance-The integration of interpretability methods with deep learning strategies can facilitate the identification of novel ultrasound image biomarkers for the stratification of patients with carotid atheromatous plaque.

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