急性出血检测与亚型分型的双分支异常结构

Muhammad Naeem Akram, Muhammad Usman Yaseen, Muhammad Waqar, Muhammad Imran, Aftab Hussain
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摘要

本研究提出了一种深度学习模型,用于非对比头部计算机断层扫描(CT)图像的高效颅内出血(ICH)检测和亚型分类。脑出血是指颅内出血,导致最严重的危及生命的健康状况,需要快速和准确的诊断。根据颅内出血位置可分为轴内出血(脑室内、脑实质内)和轴外出血(硬膜下、硬膜外、蛛网膜下)。许多基于计算机辅助诊断(CAD)的方案已被提出用于脑出血的检测和分类,在切片和扫描水平。然而,这些方法只执行二值分类,并且受到大量参数的影响,这增加了存储成本。此外,现有模型中脑出血检测的准确性在医学关键应用中明显较低。为了克服这些问题,需要一个快速有效的ICH自动检测系统。我们设计了一个基于异常架构的双分支模型,该模型提取空间和即时特征,将它们连接起来,并创建3D空间上下文(公共特征向量),并将其馈送给决策树分类器以进行最终预测。用于实验的数据是在2019年北美放射科医师协会(RSNA)脑出血检测挑战赛期间收集的。我们的模型优于基准模型,在脑室内(99.49%)、蛛网膜下腔(99.49%)、脑实质内(99.10%)和硬脑膜下(98.09%)类别中取得了更好的准确性,从而证明了所提出的双分支异常架构在ICH检测和分类中的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Double-Branch Xception Architecture for Acute Hemorrhage Detection and Subtype Classification
This study presents a deep learning model for efficient intracranial hemorrhage (ICH) detection and subtype classification on non-contrast head computed tomography (CT) images. ICH refers to bleeding in the skull, leading to the most critical life-threatening health condition requiring rapid and accurate diagnosis. It is classified as intra-axial hemorrhage (intraventricular, intraparenchymal) and extra-axial hemorrhage (subdural, epidural, subarachnoid) based on the bleeding location inside the skull. Many computer-aided diagnoses (CAD)-based schemes have been proposed for ICH detection and classification at both slice and scan levels. However, these approaches perform only binary classification and suffer from a large number of parameters, which increase storage costs. Further, the accuracy of brain hemorrhage detection in existing models is significantly low for medically critical applications. To overcome these problems, a fast and efficient system for the automatic detection of ICH is needed. We designed a double-branch model based on xception architecture that extracts spatial and instant features, concatenates them, and creates the 3D spatial context (common feature vectors) fed to a decision tree classifier for final predictions. The data employed for the experimentation was gathered during the 2019 Radiologist Society of North America (RSNA) brain hemorrhage detection challenge. Our model outperformed benchmark models and achieved better accuracy in intraventricular (99.49%), subarachnoid (99.49%), intraparenchymal (99.10%), and subdural (98.09%) categories, thereby justifying the performance of the proposed double-branch xception architecture for ICH detection and classification.
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