深度学习检测急性颈部感染患者的MRI咽后水肿。

IF 3.7 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Oona Rainio, Heidi Huhtanen, Jari-Pekka Vierula, Janne Nurminen, Jaakko Heikkinen, Mikko Nyman, Riku Klén, Jussi Hirvonen
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引用次数: 0

摘要

背景:在急性颈部感染中,磁共振成像(MRI)显示咽后水肿(RPE),这是严重病程的预后成像生物标志物。本研究旨在开发一种基于深度学习的RPE自动检测算法。方法:我们开发了一个由两部分组成的深度神经网络,使用479例急性颈部感染患者的轴向t2加权纯水Dixon MRI图像,由放射科医生在切片和患者水平上进行注释。首先,卷积神经网络(CNN)对单个切片进行分类;其次,基于一堆切片的算法对患者进行分类。将模型性能与放射科医师的评估作为参考标准进行比较。计算准确度、灵敏度、特异性和受试者工作特征曲线下面积(AUROC)。将提出的CNN与InceptionV3进行比较,将患者级分类算法与传统机器学习模型进行比较。结果:479例患者中,RPE阳性244例(51%),阴性235例(49%)。我们的模型在切片水平上的准确性、敏感性、特异性和AUROC分别为94.6%、83.3%、96.2%和94.1%,在患者水平上分别为87.4%、86.5%、88.2%和94.8%。提出的CNN比InceptionV3更快,但同样准确。我们的患者分类算法优于传统的机器学习模型。结论:基于弱注释数据和计算可管理的训练的深度学习模型在急性颈部感染患者的MRI上自动检测RPE方面取得了很高的准确性。相关声明:我们的自动检测相关MRI结果的方法经过了有效的训练,可以很容易地在实践中应用于临床适用性的研究。这种方法可能提高对急性颈部感染高风险患者的早期发现。重点:深度学习自动检测急性颈部感染的MRI咽后水肿。受者工作特征曲线下面积在切片水平为94.1%,在患者水平为94.8%。所提出的卷积神经网络是轻量级的,只需要弱注释的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning detects retropharyngeal edema on MRI in patients with acute neck infections.

Background: In acute neck infections, magnetic resonance imaging (MRI) shows retropharyngeal edema (RPE), which is a prognostic imaging biomarker for a severe course of illness. This study aimed to develop a deep learning-based algorithm for the automated detection of RPE.

Methods: We developed a deep neural network consisting of two parts using axial T2-weighted water-only Dixon MRI images from 479 patients with acute neck infections annotated by radiologists at both slice and patient levels. First, a convolutional neural network (CNN) classified individual slices; second, an algorithm classified patients based on a stack of slices. Model performance was compared with the radiologists' assessment as a reference standard. Accuracy, sensitivity, specificity, and area under receiver operating characteristic curve (AUROC) were calculated. The proposed CNN was compared with InceptionV3, and the patient-level classification algorithm was compared with traditional machine learning models.

Results: Of the 479 patients, 244 (51%) were positive and 235 (49%) negative for RPE. Our model achieved accuracy, sensitivity, specificity, and AUROC of 94.6%, 83.3%, 96.2%, and 94.1% at the slice level, and 87.4%, 86.5%, 88.2%, and 94.8% at the patient level, respectively. The proposed CNN was faster than InceptionV3 but equally accurate. Our patient classification algorithm outperformed traditional machine learning models.

Conclusion: A deep learning model, based on weakly annotated data and computationally manageable training, achieved high accuracy for automatically detecting RPE on MRI in patients with acute neck infections.

Relevance statement: Our automated method for detecting relevant MRI findings was efficiently trained and might be easily deployed in practice to study clinical applicability. This approach might improve early detection of patients at high risk for a severe course of acute neck infections.

Key points: Deep learning automatically detected retropharyngeal edema on MRI in acute neck infections. Areas under the receiver operating characteristic curve were 94.1% at the slice level and 94.8% at the patient level. The proposed convolutional neural network was lightweight and required only weakly annotated data.

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来源期刊
European Radiology Experimental
European Radiology Experimental Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
6.70
自引率
2.60%
发文量
56
审稿时长
18 weeks
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