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基于临床、影像学和放射组学特征的可解释机器学习模型,用于预测轻度脑出血患者的神经功能恶化和90天预后。

Clinical, radiological, and radiomics feature-based explainable machine learning models for prediction of neurological deterioration and 90-day outcomes in mild intracerebral hemorrhage.

作者信息

Zeng Weixiong, Chen Jiaying, Shen Linling, Xia Genghong, Xie Jiahui, Zheng Shuqiong, He Zilong, Deng Limei, Guo Yaya, Yang Jingjing, Lv Yijun, Qin Genggeng, Chen Weiguo, Yin Jia, Wu Qiheng

机构信息

Department of Neurology, Nanfang Hospital, Southern Medical University, Guangzhou, China.

Department of Radiology, Nanfang Hospital, Southern Medical University, Guangzhou, China.

出版信息

BMC Med Imaging. 2025 May 26;25(1):184. doi: 10.1186/s12880-025-01717-x.

DOI:10.1186/s12880-025-01717-x
PMID:40420050
Abstract

BACKGROUND

The risks and prognosis of mild intracerebral hemorrhage (ICH) patients were easily overlooked by clinicians. Our goal was to use machine learning (ML) methods to predict mild ICH patients' neurological deterioration (ND) and 90-day prognosis.

METHODS

This prospective study recruited 257 patients with mild ICH for this study. After exclusions, 148 patients were included in the ND study and 144 patients in the 90-day prognosis study. We trained five ML models using filtered data, including clinical, traditional imaging, and radiomics indicators based on non-contrast computed tomography (NCCT). Additionally, we incorporated the Shapley Additive Explanation (SHAP) method to display key features and visualize the decision-making process of the model for each individual.

RESULTS

A total of 21 (14.2%) mild ICH patients developed ND, and 35 (24.3%) mild ICH patients had a 90-day poor prognosis. In the validation set, the support vector machine (SVM) models achieved an AUC of 0.846 (95% confidence intervals (CI), 0.627-1.000) and an F1-score of 0.667 for predicting ND, and an AUC of 0.970 (95% CI, 0.928-1.000), and an F1-score of 0.846 for predicting 90-day prognosis. The SHAP analysis results indicated that several clinical features, the island sign, and the radiomics features of the hematoma were of significant value in predicting ND and 90-day prognosis.

CONCLUSION

The ML models, constructed using clinical, traditional imaging, and radiomics indicators, demonstrated good classification performance in predicting ND and 90-day prognosis in patients with mild ICH, and have the potential to serve as an effective tool in clinical practice.

CLINICAL TRIAL NUMBER

Not applicable.

摘要

背景

轻度脑出血(ICH)患者的风险和预后很容易被临床医生忽视。我们的目标是使用机器学习(ML)方法来预测轻度ICH患者的神经功能恶化(ND)和90天预后。

方法

这项前瞻性研究招募了257例轻度ICH患者。排除后,148例患者纳入ND研究,144例患者纳入90天预后研究。我们使用过滤后的数据训练了五个ML模型,包括基于非增强计算机断层扫描(NCCT)的临床、传统影像和影像组学指标。此外,我们采用Shapley加性解释(SHAP)方法来展示关键特征,并可视化每个个体模型的决策过程。

结果

共有21例(14.2%)轻度ICH患者发生神经功能恶化,35例(24.3%)轻度ICH患者90天预后不良。在验证集中,支持向量机(SVM)模型预测ND的AUC为0.846(95%置信区间(CI),0.627 - 1.000),F1分数为0.667;预测90天预后的AUC为0.970(95%CI,0.928 - 1.000),F1分数为0.846。SHAP分析结果表明,一些临床特征、岛征和血肿的影像组学特征在预测ND和90天预后方面具有重要价值。

结论

使用临床、传统影像和影像组学指标构建的ML模型在预测轻度ICH患者的ND和90天预后方面表现出良好的分类性能,并且有可能成为临床实践中的有效工具。

临床试验编号

不适用。

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METhodological RadiomICs Score (METRICS): a quality scoring tool for radiomics research endorsed by EuSoMII.
方法学放射组学评分(METRICS):一种由欧洲医学影像信息学会(EuSoMII)认可的放射组学研究质量评分工具。
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Peak Edema Extension Distance: An Edema Measure Independent from Hematoma Volume Associated with Functional Outcome in Intracerebral Hemorrhage.峰值水肿扩展距离:与脑出血功能结局相关的血肿体积之外的水肿测量指标。
Neurocrit Care. 2024 Jun;40(3):1089-1098. doi: 10.1007/s12028-023-01886-z. Epub 2023 Nov 29.
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