Automated Detection of Black Hole Sign for Intracerebral Hemorrhage Patients Using Self-Supervised Learning.

Hanyin Wang, Tim Schwirtlich, Ethan J Houskamp, Meghan R Hutch, Julianne X Murphy, Juliana S do Nascimento, Andrea Zini, Laura Brancaleoni, Sebastiano Giacomozzi, Yuan Luo, Andrew M Naidech
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引用次数: 0

Abstract

Background and purpose: Intracerebral Hemorrhage (ICH) is a devastating form of stroke. Hematoma expansion (HE), growth of the hematoma on interval scans, predicts death and disability. Accurate prediction of HE is crucial for targeted interventions to improve patient outcomes. The black hole sign (BHS) on non-contrast computed tomography (CT) scans is a predictive marker for HE. An automated method to recognize the BHS and predict HE could speed precise patient selection for treatment.

Materials and methods: In. this paper, we presented a novel framework leveraging self-supervised learning (SSL) techniques for BHS identification on head CT images. A ResNet-50 encoder model was pre-trained on over 1.7 million unlabeled head CT images. Layers for binary classification were added on top of the pre-trained model. The resulting model was fine-tuned using the training data and evaluated on the held-out test set to collect AUC and F1 scores. The evaluations were performed on scan and slice levels. We ran different panels, one using two multi-center datasets for external validation and one including parts of them in the pre-training RESULTS: Our model demonstrated strong performance in identifying BHS when compared with the baseline model. Specifically, the model achieved scan-level AUC scores between 0.75-0.89 and F1 scores between 0.60-0.70. Furthermore, it exhibited robustness and generalizability across an external dataset, achieving a scan-level AUC score of up to 0.85 and an F1 score of up to 0.60, while it performed less well on another dataset with more heterogeneous samples. The negative effects could be mitigated after including parts of the external datasets in the fine-tuning process.

Conclusions: This study introduced a novel framework integrating SSL into medical image classification, particularly on BHS identification from head CT scans. The resulting pre-trained head CT encoder model showed potential to minimize manual annotation, which would significantly reduce labor, time, and costs. After fine-tuning, the framework demonstrated promising performance for a specific downstream task, identifying the BHS to predict HE, upon comprehensive evaluation on diverse datasets. This approach holds promise for enhancing medical image analysis, particularly in scenarios with limited data availability.

Abbreviations: ICH = Intracerebral Hemorrhage; HE = Hematoma Expansion; BHS = Black Hole Sign; CT = Computed Tomography; SSL = Self-supervised Learning; AUC = Area Under the receiver operator Curve; CNN = Convolutional Neural Network; SimCLR = Simple framework for Contrastive Learning of visual Representation; HU = Hounsfield Unit; CLAIM = Checklist for Artificial Intelligence in Medical Imaging; VNA = Vendor Neutral Archive; DICOM = Digital Imaging and Communications in Medicine; NIfTI = Neuroimaging Informatics Technology Initiative; INR = International Normalized Ratio; GPU= Graphics Processing Unit; NIH= National Institutes of Health.

基于自监督学习的脑出血患者黑洞信号自动检测。
背景和目的:脑出血(ICH)是一种毁灭性的中风形式。血肿扩张(HE),间隔扫描血肿的增长,预测死亡和残疾。准确预测HE对于有针对性的干预措施以改善患者预后至关重要。非对比计算机断层扫描(CT)上的黑洞标志(BHS)是HE的预测标志。一种识别BHS并预测HE的自动化方法可以加速精确的患者选择治疗。材料与方法:In。本文提出了一种利用自监督学习(SSL)技术对头部CT图像进行BHS识别的新框架。在170多万张未标记的头部CT图像上预训练了ResNet-50编码器模型。在预训练模型的基础上增加二值分类层。使用训练数据对生成的模型进行微调,并在hold -out测试集上进行评估,以收集AUC和F1分数。在扫描和切片水平上进行评估。我们运行了不同的面板,一个使用两个多中心数据集进行外部验证,另一个在预训练中包括其中的部分数据集。结果:与基线模型相比,我们的模型在识别BHS方面表现出很强的性能。具体来说,该模型的扫描级AUC得分在0.75-0.89之间,F1得分在0.60-0.70之间。此外,它在外部数据集上表现出鲁棒性和泛化性,实现了高达0.85的扫描级AUC分数和高达0.60的F1分数,而在另一个具有更多异质样本的数据集上表现不佳。在微调过程中包括部分外部数据集后,可以减轻负面影响。结论:本研究引入了一个将SSL集成到医学图像分类中的新框架,特别是在头部CT扫描的BHS识别上。由此产生的预训练头部CT编码器模型显示出最大限度地减少人工注释的潜力,这将显著减少人工、时间和成本。经过微调,在不同数据集的综合评估后,该框架在特定的下游任务中表现出了良好的性能,确定了BHS来预测HE。这种方法有望增强医学图像分析,特别是在数据可用性有限的情况下。缩写词:ICH =脑出血;HE =血肿扩张;黑洞标志;计算机断层扫描;自监督学习;AUC =接收算子曲线下面积;卷积神经网络;视觉表征对比学习的简单框架Hounsfield单位;CLAIM =医学成像中的人工智能清单;供应商中立档案;医学中的数字成像和通信;神经影像信息技术倡议;国际标准化比率;图形处理单元;美国国立卫生研究院。
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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