Predicting hematoma expansion after intracerebral hemorrhage: a comparison of clinician prediction with deep learning radiomics models.

IF 3.6 3区 医学 Q2 CLINICAL NEUROLOGY Neurocritical Care Pub Date : 2025-08-01 Epub Date: 2025-02-07 DOI:10.1007/s12028-025-02214-3
Boyang Yu, Kara R Melmed, Jennifer Frontera, Weicheng Zhu, Haoxu Huang, Adnan I Qureshi, Abigail Maggard, Michael Steinhof, Lindsey Kuohn, Arooshi Kumar, Elisa R Berson, Anh T Tran, Seyedmehdi Payabvash, Natasha Ironside, Benjamin Brush, Seena Dehkharghani, Narges Razavian, Rajesh Ranganath
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Abstract

Background: Early prediction of hematoma expansion (HE) following nontraumatic intracerebral hemorrhage (ICH) may inform preemptive therapeutic interventions. We sought to identify how accurately machine learning (ML) radiomics models predict HE compared with expert clinicians using head computed tomography (HCT).

Methods: We used data from 900 study participants with ICH enrolled in the Antihypertensive Treatment of Acute Cerebral Hemorrhage 2 Study. ML models were developed using baseline HCT images, as well as admission clinical data in a training cohort (n = 621), and their performance was evaluated in an independent test cohort (n = 279) to predict HE (defined as HE by 33% or > 6 mL at 24 h). We simultaneously surveyed expert clinicians and asked them to predict HE using the same initial HCT images and clinical data. Area under the receiver operating characteristic curve (AUC) were compared between clinician predictions, ML models using radiomic data only (a random forest classifier and a deep learning imaging model) and ML models using both radiomic and clinical data (three random forest classifier models using different feature combinations). Kappa values comparing interrater reliability among expert clinicians were calculated. The best performing model was compared with clinical predication.

Results: The AUC for expert clinician prediction of HE was 0.591, with a kappa of 0.156 for interrater variability, compared with ML models using radiomic data only (a deep learning model using image input, AUC 0.680) and using both radiomic and clinical data (a random forest model, AUC 0.677). The intraclass correlation coefficient for clinical judgment and the best performing ML model was 0.47 (95% confidence interval 0.23-0.75).

Conclusions: We introduced supervised ML algorithms demonstrating that HE prediction may outperform practicing clinicians. Despite overall moderate AUCs, our results set a new relative benchmark for performance in these tasks that even expert clinicians find challenging. These results emphasize the need for continued improvements and further enhanced clinical decision support to optimally manage patients with ICH.

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预测脑出血后血肿扩张:临床医生预测与深度学习放射组学模型的比较。
背景:早期预测非外伤性脑出血(ICH)后的血肿扩张(HE)可能为先发制人的治疗干预提供信息。我们试图确定机器学习(ML)放射组学模型与使用头部计算机断层扫描(HCT)的专家临床医生相比预测HE的准确性。方法:我们使用了900名参加急性脑出血降压治疗研究的脑出血患者的数据。使用基线HCT图像以及训练队列(n = 621)的入院临床数据开发ML模型,并在独立测试队列(n = 279)中评估其性能,以预测HE(定义为HE在24小时内增加33%或bbb6ml)。我们同时调查了专家临床医生,并要求他们使用相同的初始HCT图像和临床数据预测HE。比较临床医生预测、仅使用放射组学数据的ML模型(随机森林分类器和深度学习成像模型)和同时使用放射组学和临床数据的ML模型(使用不同特征组合的三种随机森林分类器模型)之间的受试者工作特征曲线下面积(AUC)。计算比较专家临床医生间的信度Kappa值。将最佳模型与临床预测进行比较。结果:与仅使用放射组学数据的ML模型(使用图像输入的深度学习模型,AUC为0.680)和同时使用放射组学和临床数据的ML模型(随机森林模型,AUC为0.677)相比,专家临床医生预测HE的AUC为0.591,互变率kappa为0.156。临床判断与最佳ML模型的类内相关系数为0.47(95%置信区间0.23 ~ 0.75)。结论:我们引入了监督ML算法,证明HE预测可能优于临床医生。尽管总体上auc适中,但我们的研究结果为这些任务的表现设定了一个新的相对基准,即使是专家临床医生也觉得具有挑战性。这些结果强调需要持续改进和进一步加强临床决策支持,以最佳地管理脑出血患者。
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来源期刊
Neurocritical Care
Neurocritical Care 医学-临床神经学
CiteScore
7.40
自引率
8.60%
发文量
221
审稿时长
4-8 weeks
期刊介绍: Neurocritical Care is a peer reviewed scientific publication whose major goal is to disseminate new knowledge on all aspects of acute neurological care. It is directed towards neurosurgeons, neuro-intensivists, neurologists, anesthesiologists, emergency physicians, and critical care nurses treating patients with urgent neurologic disorders. These are conditions that may potentially evolve rapidly and could need immediate medical or surgical intervention. Neurocritical Care provides a comprehensive overview of current developments in intensive care neurology, neurosurgery and neuroanesthesia and includes information about new therapeutic avenues and technological innovations. Neurocritical Care is the official journal of the Neurocritical Care Society.
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