开发和验证基于颅超声成像的脑室周围-脑室内出血检测和分级的深度学习模型:一项双中心研究。

IF 2.3 3区 医学 Q2 PEDIATRICS
Yahui Peng, Zhensheng Hu, Mianmian Wen, Yishu Deng, Dan Zhao, Yuwei Yu, Weixiang Liang, Xianhua Dai, Yi Wang
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引用次数: 0

摘要

背景:脑室周围-脑室内出血(IVH)是最常见的新生儿颅内出血类型。它对早产儿尤其具有威胁性,早产儿的发病率和死亡率都很高。颅脑超声已成为婴幼儿室周IVH筛查的重要手段。人工智能与新生儿超声的整合有望提高诊断的准确性,减少医生的工作量,从而改善心室周围IVH的结果。目的:研究基于深度学习的婴儿颅脑超声图像分析能否检测和分级室内外IVH。材料和方法:本多中心观察性研究包括来自两家医院的1,060例病例和健康对照。回顾性建模数据集包括773名参与者,从2020年1月到2023年7月,而前瞻性双中心验证数据集包括287名参与者,从2023年8月到2024年1月。建立了一种结合卷积块注意模块机制的深度学习模型——心室周围IVH网络模型。通过随机将回顾性数据分为训练集和验证集来评估模型的有效性,然后使用前瞻性双中心数据进行独立验证。为了评价该模型,我们测量了其召回率、精密度、准确度、f1评分和曲线下面积(AUC)。将影响深度学习模型检测的感兴趣区域(ROI)可视化到显著性图中,并使用t分布随机邻居嵌入(t-SNE)算法可视化模型检测参数的聚类。结果:最终的回顾性数据集包括773名参与者(平均(标准差(SD))胎龄,32.7(4.69)周;平均(SD)重量,1862.60 (855.49)g)。对于回顾性数据,模型的AUC为0.99(95%可信区间(CI) 0.98 ~ 0.99),精密度为0.92(0.89 ~ 0.95),召回率为0.93 (0.89 ~ 0.95),f1评分为0.93(0.90 ~ 0.95)。对于前瞻性双中心验证数据,模型的AUC为0.961 (95% CI, 0.94-0.98),准确度为0.89 (95% CI, 0.86-0.92)。结论:脑室周围IVH网络模型的双中心前瞻性验证结果显示其在儿科临床应用的巨大潜力。人工智能与儿科超声相结合,可提高脑室周围IVH诊断的准确性和效率,特别是在基层医院或社区医院。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development and validation of a cranial ultrasound imaging-based deep learning model for periventricular-intraventricular haemorrhage detection and grading: a two-centre study.

Background: Periventricular-intraventricular haemorrhage (IVH) is the most prevalent type of neonatal intracranial haemorrhage. It is especially threatening to preterm infants, in whom it is associated with significant morbidity and mortality. Cranial ultrasound has become an important means of screening periventricular IVH in infants. The integration of artificial intelligence with neonatal ultrasound is promising for enhancing diagnostic accuracy, reducing physician workload, and consequently improving periventricular IVH outcomes.

Objectives: The study investigated whether deep learning-based analysis of the cranial ultrasound images of infants could detect and grade periventricular IVH.

Materials and methods: This multicentre observational study included 1,060 cases and healthy controls from two hospitals. The retrospective modelling dataset encompassed 773 participants from January 2020 to July 2023, while the prospective two-centre validation dataset included 287 participants from August 2023 to January 2024. The periventricular IVH net model, a deep learning model incorporating the convolutional block attention module mechanism, was developed. The model's effectiveness was assessed by randomly dividing the retrospective data into training and validation sets, followed by independent validation with the prospective two-centre data. To evaluate the model, we measured its recall, precision, accuracy, F1-score, and area under the curve (AUC). The regions of interest (ROI) that influenced the detection by the deep learning model were visualised in significance maps, and the t-distributed stochastic neighbour embedding (t-SNE) algorithm was used to visualise the clustering of model detection parameters.

Results: The final retrospective dataset included 773 participants (mean (standard deviation (SD)) gestational age, 32.7 (4.69) weeks; mean (SD) weight, 1,862.60 (855.49) g). For the retrospective data, the model's AUC was 0.99 (95% confidence interval (CI), 0.98-0.99), precision was 0.92 (0.89-0.95), recall was 0.93 (0.89-0.95), and F1-score was 0.93 (0.90-0.95). For the prospective two-centre validation data, the model's AUC was 0.961 (95% CI, 0.94-0.98) and accuracy was 0.89 (95% CI, 0.86-0.92).

Conclusion: The two-centre prospective validation results of the periventricular IVH net model demonstrated its tremendous potential for paediatric clinical applications. Combining artificial intelligence with paediatric ultrasound can enhance the accuracy and efficiency of periventricular IVH diagnosis, especially in primary hospitals or community hospitals.

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来源期刊
Pediatric Radiology
Pediatric Radiology 医学-核医学
CiteScore
4.40
自引率
17.40%
发文量
300
审稿时长
3-6 weeks
期刊介绍: Official Journal of the European Society of Pediatric Radiology, the Society for Pediatric Radiology and the Asian and Oceanic Society for Pediatric Radiology Pediatric Radiology informs its readers of new findings and progress in all areas of pediatric imaging and in related fields. This is achieved by a blend of original papers, complemented by reviews that set out the present state of knowledge in a particular area of the specialty or summarize specific topics in which discussion has led to clear conclusions. Advances in technology, methodology, apparatus and auxiliary equipment are presented, and modifications of standard techniques are described. Manuscripts submitted for publication must contain a statement to the effect that all human studies have been reviewed by the appropriate ethics committee and have therefore been performed in accordance with the ethical standards laid down in an appropriate version of the 1964 Declaration of Helsinki. It should also be stated clearly in the text that all persons gave their informed consent prior to their inclusion in the study. Details that might disclose the identity of the subjects under study should be omitted.
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