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基于朴素贝叶斯分类器的磁敏感加权成像脑图像脑微出血自动检测

Naïve Bayes classifier assisted automated detection of cerebral microbleeds in susceptibility-weighted imaging brain images.

机构信息

Department of Computer Engineering, The University of Lahore, Lahore 54000, Pakistan.

Department of Computer Science & IT, The Islamia University of Bahawalpur, Bahawalpur, Punjab 63100, Pakistan.

出版信息

Biochem Cell Biol. 2023 Dec 1;101(6):562-573. doi: 10.1139/bcb-2023-0156. Epub 2023 Aug 28.

DOI:10.1139/bcb-2023-0156
PMID:37639730
Abstract

Cerebral microbleeds (CMBs) in the brain are the essential indicators of critical brain disorders such as dementia and ischemic stroke. Generally, CMBs are detected manually by experts, which is an exhaustive task with limited productivity. Since CMBs have complex morphological nature, manual detection is prone to errors. This paper presents a machine learning-based automated CMB detection technique in the brain susceptibility-weighted imaging (SWI) scans based on statistical feature extraction and classification. The proposed method consists of three steps: (1) removal of the skull and extraction of the brain; (2) thresholding for the extraction of initial candidates; and (3) extracting features and applying classification models such as random forest and naïve Bayes classifiers for the detection of true positive CMBs. The proposed technique is validated on a dataset consisting of 20 subjects. The dataset is divided into training data that consist of 14 subjects with 104 microbleeds and testing data that consist of 6 subjects with 63 microbleeds. We were able to achieve 85.7% sensitivity using the random forest classifier with 4.2 false positives per CMB, and the naïve Bayes classifier achieved 90.5% sensitivity with 5.5 false positives per CMB. The proposed technique outperformed many state-of-the-art methods proposed in previous studies.

摘要

脑微出血 (CMBs) 是痴呆和缺血性中风等严重脑部疾病的重要指标。通常,CMBs 由专家手动检测,这是一项详尽的任务,生产力有限。由于 CMBs 具有复杂的形态特征,手动检测容易出错。本文提出了一种基于机器学习的脑磁敏感加权成像 (SWI) 扫描中 CMB 自动检测技术,该技术基于统计特征提取和分类。该方法包括三个步骤:(1)去除颅骨并提取大脑;(2) 阈值提取初始候选者;(3) 提取特征并应用分类模型(如随机森林和朴素贝叶斯分类器)检测真正的 CMB。该技术在包含 20 个对象的数据集上进行了验证。数据集分为训练数据和测试数据,其中训练数据由 14 个对象和 104 个微出血组成,测试数据由 6 个对象和 63 个微出血组成。我们使用随机森林分类器实现了 85.7%的灵敏度,每个 CMB 有 4.2 个假阳性,使用朴素贝叶斯分类器实现了 90.5%的灵敏度,每个 CMB 有 5.5 个假阳性。该技术优于之前研究中提出的许多最先进的方法。

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