人工智能在弥散MRI诊断急性缺血性脑卒中中的作用:一项多中心外部验证研究。

IF 2.7 4区 医学 Q3 NEUROSCIENCES
Beyza Nur Kuzan, Ali Abbasian Ardakani, Mahmut Esat Aykan, Mustafa Demir, Servan Yaşar, Mehmet Semih Çakır, Afshin Mohammadi, Taha Yusuf Kuzan
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引用次数: 0

摘要

背景:急性缺血性脑卒中是一种时效性较强的急症,需要快速准确的诊断来改善患者的预后。磁共振成像(MRI)上的弥散加权成像(DWI)非常敏感,而人工智能(AI)为提高诊断速度和准确性提供了潜在的解决方案。在这项研究中,我们旨在评估和外部验证一种基于dwi - mri的深度学习模型,用于卒中自动检测,并将其多中心诊断性能与放射科专家进行比较,以确定其普遍性和临床实用性。方法:本回顾性研究纳入了来自三个不同中心的732例患者(急性缺血性卒中和非卒中对照)。使用中心1的数据开发、训练和内部验证深度卷积神经网络(CNN)模型(n = 452用于训练,n = 80用于验证)。然后使用来自中心2 (n = 100)和中心3 (n = 100)的独立外部验证数据集测试模型的可泛化性。将该模型的诊断性能(敏感性、特异性、准确性和受试者工作特征曲线下面积(AUC))与三位放射专家的诊断性能进行系统比较。结果:深度学习模型具有良好的诊断性能。在内部验证中,该模型达到了100%的灵敏度、100%的特异性和100%的准确性(AUC = 1.000)。至关重要的是,它在外部验证队列中保持了高性能,在中心2 (AUC = 0.987)和中心3 (AUC = 0.986)均实现了100%的灵敏度、98%的特异性和99%的准确性。这一表现与放射科专家相当,他们在所有数据集上也达到了很高的准确性。可视化技术(梯度加权类激活图(gradient-weighted class activation map, Grad-CAM))证实了人工智能模型在进行分类时关注的是正确的病理区域。结论:基于dwi - mri的深度学习模型对急性缺血性脑卒中的诊断准确率高、可靠,与放射科专家的诊断准确率相当。其跨多中心数据的强大性能突出了其作为急诊科可靠的决策支持工具的潜力,特别是在专家可用性有限的情况下,促进更快和更一致的中风诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Role of Artificial Intelligence in Diagnosing Acute Ischemic Stroke Using Diffusion MRI: A Multicenter External Validation Study.

Background: Acute ischemic stroke is a time-sensitive medical emergency requiring rapid and accurate diagnosis to improve patient outcomes. While Diffusion-Weighted Imaging (DWI) on magnetic resonance imaging (MRI) is highly sensitive, artificial intelligence (AI) offers a potential solution to enhance diagnostic speed and accuracy. In this study we aimed to evaluate and externally validate a DWI-MRI-based deep learning model for automated stroke detection and compare its multicenter diagnostic performance with expert radiologists to determine generalizability and clinical utility.

Methods: This retrospective study involved 732 patient cases (acute ischemic stroke and non-stroke controls) from three different centers. A deep convolutional neural network (CNN) model was developed, trained, and internally validated using data from center 1 (n = 452 for training, n = 80 for validation). The model's generalizability was then tested using independent external validation datasets from center 2 (n = 100) and center 3 (n = 100). The model's diagnostic performance (sensitivity, specificity, accuracy, and area under the receiver operating characteristic (ROC) curve (AUC)) was systematically compared with that of three expert radiologists.

Results: The deep learning model demonstrated excellent diagnostic performance. In the internal validation, the model achieved 100% sensitivity, 100% specificity, and 100% accuracy (AUC = 1.000). Crucially, it maintained high performance on the external validation cohorts, achieving 100% sensitivity, 98% specificity, and 99% accuracy for both center 2 (AUC = 0.987) and center 3 (AUC = 0.986). This performance was comparable with the expert radiologists, who also achieved high accuracy across all datasets. Visualization techniques (gradient-weighted class activation map (Grad-CAM)) confirmed that the AI model focused on the correct pathological regions when making its classifications.

Conclusions: The DWI-MRI-based deep learning model provides high and reliable diagnostic accuracy for acute ischemic stroke, with performance comparable with that of expert radiologists. Its robust performance across multicenter data highlights its potential as a dependable decision-support tool in emergency departments, especially in settings with limited specialist availability, to facilitate faster and more consistent stroke diagnoses.

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来源期刊
CiteScore
2.80
自引率
5.60%
发文量
173
审稿时长
2 months
期刊介绍: JIN is an international peer-reviewed, open access journal. JIN publishes leading-edge research at the interface of theoretical and experimental neuroscience, focusing across hierarchical levels of brain organization to better understand how diverse functions are integrated. We encourage submissions from scientists of all specialties that relate to brain functioning.
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