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用于快速检测I级脑小血管病(cSVD)的计算成像

Computational imaging for rapid detection of grade-I cerebral small vessel disease (cSVD).

作者信息

Shahid Saman, Wali Aamir, Iftikhar Sadaf, Shaukat Suneela, Zikria Shahid, Rasheed Jawad, Asuroglu Tunc

机构信息

Department of Sciences & Humanities, National University of Computer & Emerging Sciences (NUCES)-FAST Lahore Campus, Punjab, Pakistan.

Department of Data Sciences, National University of Computer & Emerging Sciences (NUCES)-FAST Lahore Campus, Punjab, Pakistan.

出版信息

Heliyon. 2024 Sep 11;10(18):e37743. doi: 10.1016/j.heliyon.2024.e37743. eCollection 2024 Sep 30.

Abstract

An early identification and subsequent management of cerebral small vessel disease (cSVD) grade 1 can delay progression into grades II and III. Machine learning algorithms have shown considerable promise in medical image interpretation automation. An experimental cross-sectional study aimed to develop an automated computer-aided diagnostic system based on AI (artificial intelligence) tools to detect grade 1-cSVD with improved accuracy. Patients with Fazekas grade 1 cSVD on Non-Contrast Magnetic Resonance Imaging (MRI) Brain of age >40 years of both genders were included. The dataset was pre-processed to be fed into a 3D convolutional neural network (CNN) model. A 3D stack with the shape (120, 128, 128, 1) containing axial slices from the brain magnetic resonance image was created. The model was created from scratch and contained four convolutional and three fully connected (FC) layers. The dataset was preprocessed by making a 3D stack, and normalizing, resizing, and completing the stack was performed. A 3D-CNN model architecture was designed to train and test preprocessed images. We achieved an accuracy of 93.12 % when 2D axial slices were used. When the 2D slices of a patient were stacked to form a 3D image, an accuracy of 85.71 % was achieved on the test set. Overall, the 3D-CNN model performed very well on the test set. The earliest and the most accurate diagnosis from computational imaging methods can help reduce the huge burden of cSVD and its associated morbidity in the form of vascular dementia.

摘要

早期识别并随后管理1级脑小血管疾病(cSVD)可延缓其进展至2级和3级。机器学习算法在医学图像解释自动化方面已显示出巨大潜力。一项实验性横断面研究旨在开发一种基于人工智能(AI)工具的自动化计算机辅助诊断系统,以提高检测1级cSVD的准确性。纳入年龄>40岁、非增强磁共振成像(MRI)脑部显示为Fazekas 1级cSVD的男女患者。对数据集进行预处理后输入到三维卷积神经网络(CNN)模型中。创建了一个形状为(120, 128, 128, 1)的三维堆栈,其中包含来自脑磁共振图像的轴向切片。该模型从零开始创建,包含四个卷积层和三个全连接(FC)层。通过制作三维堆栈对数据集进行预处理,并进行归一化、调整大小和完成堆栈操作。设计了一个三维卷积神经网络(3D-CNN)模型架构来训练和测试预处理后的图像。当使用二维轴向切片时,我们实现了93.12%的准确率。当将患者的二维切片堆叠形成三维图像时,测试集的准确率达到了85.71%。总体而言,三维卷积神经网络(3D-CNN)模型在测试集上表现非常出色。计算成像方法最早且最准确的诊断有助于减轻cSVD及其以血管性痴呆形式出现的相关发病率的巨大负担。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9159/11416517/5635d2867a70/gr1.jpg

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