使用CT扫描图像检测健康/出血性脑状况的框架

Seifedine Kadry, A. Gandomi
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引用次数: 0

摘要

在人体生理学中,大脑作为所有调节过程的控制中心发挥着重要作用。大脑的任何异常都可能导致各种生理和心理问题,因此需要早期发现和治疗。在治疗计划中,准确识别大脑状况是至关重要的。因此,医学成像与人工智能(AI)方案的结合被广泛应用于医院,以达到更好的检测精度。具体来说,脑出血是一种医疗紧急情况,需要立即治疗以减少其影响。因此,本研究旨在开发和实施一种轻量级深度学习(LDL)程序,将大脑计算机断层扫描(CT)切片分为健康/出血类别。该方案的各个阶段包括:(i)图像采集、调整大小和预处理;(ii) LDL特征提取;(iii)三重交叉验证的二元分类。在这项工作中,首先使用阈值滤波器对CT切片进行预处理,然后考虑基于单个和双重特征验证所提出方案的性能。本研究的实验结果证实,双特征有助于支持向量机(SVM)分类器实现bb0 96%的检测准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Framework for Healthy/Hemorrhagic Brain Condition Detection using CT Scan Images
In human physiology, the brain plays a significant role as the control center of all regulatory processes. Any abnormality in the brain could lead to various physiological and psychological problems and, thus, demands early detection and treatment. Accurate identification of a brain condition is vital during treatment planning. Hence, medical imaging combined with Artificial Intelligence (AI) schemes is widely employed in hospitals to achieve better detection accuracy. Specifically, a brain hemorrhage is a medical emergency that needs immediate treatment to reduce its impact. Therefore, this research aimed to develop and implement a Lightweight Deep Learning (LDL) procedure to classify brain Computed Tomography (CT) slices into healthy/hemorrhagic classes. The various stages of this scheme involve: (i) image collection, resizing, and preprocessing; (ii) LDL feature extraction; and (iii) binary classification with 3-fold cross-validation. In this work, the CT slices were initially preprocessed with a threshold filter and then considered to verify the performance of the proposed scheme based on individual and dual features. The experimental outcome of this study con-firms that the dual features help to achieve a detection accuracy of >96% with the Support Vector Machine (SVM) classifier.
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