Intracranial hemorrhage detection and classification from CT images based on multiple features and machine learning approaches

Mohammad A. Abdul Majeed, Omar Munthir Al Okashi, Azmi Tawfeq Alrawi
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Abstract

The regulating organ of the body is the brain. Early diagnosis of brain disorders can have a significant impact on efforts to treat them. A brain hemorrhage is a form of stroke caused by a bursting artery in the brain, resulting in bleeding in the surrounding tissues. Through a brain Computed Tomography (CT) scan, brain hemorrhage can be identified. CT is the most extensively used diagnostic imaging technology for identifying brain illnesses due to its speed, low cost, and wide variety of uses. During a CT scan, a small X-ray beam revolves around the body to capture a sequence of images from different angles. The computer then produces a cross-sectional representation of the body. Intracranial hemorrhage (ICH) is a medical condition that requires prompt identification and treatment. Since ICH early detection and therapy can improve health outcomes, there is a need for a triage system that can immediately identify and speed up the treatment process. In this paper, we will use standard machine learning (Support Vector Machine, Random Forest and Decision Tree) methodologies to present a method for automatically detecting the ICH in a two-dimensional reduced form of a CT scan of the brain. Four main steps make up the method. First, a preprocessing pipeline that can successfully remove the bone from the skull is put into place. The following step is applying a feature extraction method. Then, a suitable feature-selection (PCA) model is proposed, which will enhance the model's performance by minimizing any redundancy produced by the selected feature extraction. The data set from the CT scans is classified into normal and abnormal in the last stage, which involves training and testing a machine learning model. The accuracy for our proposed model using Random Forest (RF), is 92.5%. RF achieves higher performance than other used ML methods.
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基于多特征和机器学习方法的CT图像颅内出血检测与分类
身体的调节器官是大脑。脑部疾病的早期诊断对治疗有重大影响。脑出血是一种中风,由大脑动脉破裂引起,导致周围组织出血。通过脑部计算机断层扫描(CT),可以识别脑出血。CT因其速度快、成本低、用途广泛,是目前应用最广泛的脑部疾病诊断成像技术。在CT扫描过程中,一个小的x射线束围绕身体旋转,从不同的角度捕捉一系列图像。然后,计算机生成人体的横截面图。颅内出血(ICH)是一种需要及时识别和治疗的疾病。由于脑出血的早期发现和治疗可以改善健康结果,因此需要一种能够立即识别和加快治疗过程的分诊系统。在本文中,我们将使用标准的机器学习(支持向量机,随机森林和决策树)方法来提出一种以二维简化形式的大脑CT扫描自动检测ICH的方法。该方法由四个主要步骤组成。首先,一个可以成功地从颅骨中移除骨头的预处理管道被放置到位。接下来的步骤是应用特征提取方法。然后,提出了一个合适的特征选择(PCA)模型,该模型通过最小化所选特征提取产生的冗余来提高模型的性能。CT扫描的数据集在最后阶段被分为正常和异常,这涉及到机器学习模型的训练和测试。我们使用随机森林(RF)提出的模型的准确率为92.5%。RF实现了比其他ML方法更高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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