Optimizing Automated Hematoma Expansion Classification from Baseline and Follow-Up Head Computed Tomography.

IF 2.5 4区 综合性期刊 Q2 CHEMISTRY, MULTIDISCIPLINARY
Applied Sciences-Basel Pub Date : 2025-01-01 Epub Date: 2024-12-27 DOI:10.3390/app15010111
Anh T Tran, Dmitriy Desser, Tal Zeevi, Gaby Abou Karam, Julia Zietz, Andrea Dell'Orco, Min-Chiun Chen, Ajay Malhotra, Adnan I Qureshi, Santosh B Murthy, Shahram Majidi, Guido J Falcone, Kevin N Sheth, Jawed Nawabi, Seyedmehdi Payabvash
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引用次数: 0

Abstract

Hematoma expansion (HE) is an independent predictor of poor outcomes and a modifiable treatment target in intracerebral hemorrhage (ICH). Evaluating HE in large datasets requires segmentation of hematomas on admission and follow-up CT scans, a process that is time-consuming and labor-intensive in large-scale studies. Automated segmentation of hematomas can expedite this process; however, cumulative errors from segmentation on admission and follow-up scans can hamper accurate HE classification. In this study, we combined a tandem deep-learning classification model with automated segmentation to generate probability measures for false HE classifications. With this strategy, we can limit expert review of automated hematoma segmentations to a subset of the dataset, tailored to the research team's preferred sensitivity or specificity thresholds and their tolerance for false-positive versus false-negative results. We utilized three separate multicentric cohorts for cross-validation/training, internal testing, and external validation (n = 2261) to develop and test a pipeline for automated hematoma segmentation and to generate ground truth binary HE annotations (≥3, ≥6, ≥9, and ≥12.5 mL). Applying a 95% sensitivity threshold for HE classification showed a practical and efficient strategy for HE annotation in large ICH datasets. This threshold excluded 47-88% of test-negative predictions from expert review of automated segmentations for different HE definitions, with less than 2% false-negative misclassification in both internal and external validation cohorts. Our pipeline offers a time-efficient and optimizable method for generating ground truth HE classifications in large ICH datasets, reducing the burden of expert review of automated hematoma segmentations while minimizing misclassification rate.

从基线和后续头部计算机断层扫描优化自动血肿扩展分类。
血肿扩张(HE)是脑出血(ICH)预后不良的独立预测因子和可修改的治疗靶点。在大数据集中评估HE需要对入院时的血肿和后续CT扫描进行分割,这一过程在大规模研究中既耗时又费力。血肿的自动分割可以加快这一过程;然而,入院和随访扫描的分割累积错误会妨碍准确的HE分类。在本研究中,我们将串联深度学习分类模型与自动分割相结合,以生成错误HE分类的概率度量。通过这种策略,我们可以将专家对自动血肿分割的审查限制在数据集的一个子集上,根据研究团队的首选灵敏度或特异性阈值以及他们对假阳性和假阴性结果的容忍度进行定制。我们利用三个独立的多中心队列进行交叉验证/训练、内部测试和外部验证(n = 2261),以开发和测试自动化血肿分割管道,并生成基础真值二进制HE注释(≥3、≥6、≥9和≥12.5 mL)。采用95%灵敏度阈值进行HE分类是一种实用而有效的方法。该阈值排除了专家对不同HE定义的自动分割的47-88%的检测阴性预测,在内部和外部验证队列中都少于2%的假阴性错误分类。我们的产品线提供了一种高效且可优化的方法,用于在大型ICH数据集中生成真实HE分类,减少了自动血肿分割专家审查的负担,同时最大限度地减少了错误分类率。
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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来源期刊
Applied Sciences-Basel
Applied Sciences-Basel CHEMISTRY, MULTIDISCIPLINARYMATERIALS SCIE-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
5.30
自引率
11.10%
发文量
10882
期刊介绍: Applied Sciences (ISSN 2076-3417) provides an advanced forum on all aspects of applied natural sciences. It publishes reviews, research papers and communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Electronic files and software regarding the full details of the calculation or experimental procedure, if unable to be published in a normal way, can be deposited as supplementary electronic material.
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