Graphic Intelligent Diagnosis of Hypoxic-Ischemic Encephalopathy Using MRI-Based Deep Learning Model.

IF 2.6 3区 医学 Q1 PEDIATRICS Neonatology Pub Date : 2023-01-01 DOI:10.1159/000530352
Tian Tian, Tongjia Gan, Jun Chen, Jun Lu, Guiling Zhang, Yiran Zhou, Jia Li, Haoyue Shao, Yufei Liu, Hongquan Zhu, Di Wu, Chengcheng Jiang, Jianbo Shao, Jingjing Shi, Wenzhong Yang, Wenzhen Zhu
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Abstract

Introduction: Heterogeneous MRI manifestations restrict the efficiency and consistency of neuroradiologists in diagnosing hypoxic-ischemic encephalopathy (HIE) due to complex injury patterns. This study aimed to develop and validate an intelligent HIE identification model (termed as DLCRN, deep learning clinical-radiomics nomogram) based on conventional structural MRI and clinical characteristics.

Methods: In this retrospective case-control study, full-term neonates with HIE and healthy controls were collected in two different medical centers from January 2015 to December 2020. Multivariable logistic regression analysis was implemented to establish the DLCRN model based on conventional MRI sequences and clinical characteristics. Discrimination, calibration, and clinical applicability were used to evaluate the model in the training and validation cohorts. Grad-class activation map algorithm was implemented to visualize the DLCRN.

Results: 186 HIE patients and 219 healthy controls were assigned to the training, internal validation, and independent validation cohorts. Birthweight was incorporated with deep radiomics signatures to create the final DLCRN model. The DLCRN model achieved better discriminatory power than simple radiomics models, with an area under the curve (AUC) of 0.868, 0.813, and 0.798 in the training, internal validation, and independent validation cohorts, respectively. The DLCRN model was well calibrated and has clinical potential. Visualization of the DLCRN highlighted the lesion areas that conformed to radiological identification.

Conclusion: Visualized DLCRN may be a useful tool in the objective and quantitative identification of HIE. Scientific application of the optimized DLCRN model may save time for screening early mild HIE, improve the consistency of HIE diagnosis, and guide timely clinical management.

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基于mri深度学习模型的缺氧缺血性脑病的图形智能诊断。
由于复杂的损伤模式,MRI表现的异质性限制了神经放射科医生诊断缺氧缺血性脑病(HIE)的效率和一致性。本研究旨在开发和验证基于常规结构MRI和临床特征的HIE智能识别模型(称为DLCRN,深度学习临床放射组学nomogram)。方法:采用回顾性病例对照研究,收集2015年1月至2020年12月在两家不同医疗中心就诊的HIE足月新生儿和健康对照组。基于常规MRI序列和临床特征,采用多变量logistic回归分析建立DLCRN模型。在培训和验证队列中,采用鉴别、校准和临床适用性来评估模型。采用分级激活图算法实现DLCRN的可视化。结果:186名HIE患者和219名健康对照者被分配到训练、内部验证和独立验证队列。出生体重与深度放射组学特征相结合,以创建最终的DLCRN模型。DLCRN模型的鉴别能力优于简单放射组学模型,在训练组、内部验证组和独立验证组的曲线下面积(AUC)分别为0.868、0.813和0.798。DLCRN模型校正良好,具有临床应用潜力。DLCRN的可视化显示了符合放射学鉴定的病变区域。结论:可视化DLCRN可作为客观定量鉴别HIE的有效工具。科学应用优化后的DLCRN模型,可以节省早期轻度HIE筛查的时间,提高HIE诊断的一致性,指导临床及时管理。
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来源期刊
Neonatology
Neonatology 医学-小儿科
CiteScore
0.60
自引率
4.00%
发文量
91
审稿时长
6-12 weeks
期刊介绍: This highly respected and frequently cited journal is a prime source of information in the area of fetal and neonatal research. Original papers present research on all aspects of neonatology, fetal medicine and developmental biology. These papers encompass both basic science and clinical research including randomized trials, observational studies and epidemiology. Basic science research covers molecular biology, molecular genetics, physiology, biochemistry and pharmacology in fetal and neonatal life. In addition to the classic features the journal accepts papers for the sections Research Briefings and Sources of Neonatal Medicine (historical pieces). Papers reporting results of animal studies should be based upon hypotheses that relate to developmental processes or disorders in the human fetus or neonate.
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