Application of convolutional network models in detection of intracranial aneurysms: A systematic review and meta-analysis.

S. Abdollahifard, A. Farrokhi, Fateme Kheshti, Mahtab Jalali, A. Mowla
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引用次数: 2

Abstract

Introduction Intracranial aneurysms have a high prevalence in human population. It also has a heavy burden of disease and high mortality rate in the case of rupture. Convolutional neural network(CNN) is a type of deep learning architecture which has been proven powerful to detect intracranial aneurysms. Methods Four databases were searched using artificial intelligence, intracranial aneurysms, and synonyms to find eligible studies. Articles which had applied CNN for detection of intracranial aneurisms were included in this review. Sensitivity and specificity of the models and human readers regarding modality, size, and location of aneurysms were sought to be extracted. Random model was the preferred model for analyses using CMA 2 to determine pooled sensitivity and specificity. Results Overall, 20 studies were used in this review. Deep learning models could detect intracranial aneurysms with a sensitivity of 90/6% (CI: 87/2–93/2%) and specificity of 94/6% (CI: 0/914–0/966). CTA was the most sensitive modality (92.0%(CI:85/2–95/8%)). Overall sensitivity of the models for aneurysms more than 3 mm was above 98% (98%-100%) and 74.6 for aneurysms less than 3 mm. With the aid of AI, the clinicians’ sensitivity increased to 12/8% and interrater agreement to 0/193. Conclusion CNN models had an acceptable sensitivity for detection of intracranial aneurysms, surpassing human readers in some fields. The logical approach for application of deep learning models would be its use as a highly capable assistant. In essence, deep learning models are a groundbreaking technology that can assist clinicians and allow them to diagnose intracranial aneurysms more accurately.
卷积网络模型在颅内动脉瘤检测中的应用:系统综述和荟萃分析。
颅内动脉瘤在人群中发病率很高。它还具有沉重的疾病负担和破裂时的高死亡率。卷积神经网络(Convolutional neural network, CNN)是一种深度学习架构,在检测颅内动脉瘤方面已被证明具有强大的功能。方法采用人工智能、颅内动脉瘤和同义词对四个数据库进行检索,寻找符合条件的研究。本文纳入应用CNN检测颅内动脉瘤的文章。模型和人类读者对动脉瘤的形态、大小和位置的敏感性和特异性被寻求提取。随机模型是cma2分析的首选模型,以确定合并敏感性和特异性。结果本综述共纳入20项研究。深度学习模型检测颅内动脉瘤的灵敏度为90/6% (CI: 87/2 ~ 93/2%),特异性为94/6% (CI: 0/914 ~ 0/966)。CTA是最敏感的方式(92.0%(CI:85/2-95/8%))。模型对大于3mm动脉瘤的总体敏感性在98%(98% ~ 100%)以上,对小于3mm动脉瘤的总体敏感性为74.6。在人工智能的帮助下,临床医生的敏感性提高到12/8%,解释者的一致性提高到0/193。结论cnn模型对颅内动脉瘤的检测灵敏度可接受,在某些领域优于人类读者。应用深度学习模型的逻辑方法是将其作为一个高能力的助手使用。从本质上讲,深度学习模型是一项突破性的技术,可以帮助临床医生更准确地诊断颅内动脉瘤。
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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