基于深度学习的脑出血临床决策支持系统:基于图像的人工智能驱动的自动血肿分割和轨迹规划框架。

IF 3 2区 医学 Q2 CLINICAL NEUROLOGY
Zhichao Gan, Xinghua Xu, Fangye Li, Ron Kikinis, Jiashu Zhang, Xiaolei Chen
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引用次数: 0

摘要

目的:脑出血(ICH)是一种严重的神经外科急症,具有高死亡率和长期残疾。尽管微创技术取得了进步,但手术精度仍然受到血肿复杂性和资源差距的限制,特别是在服务不足的地区,全球68%的脑出血病例发生在这些地区。因此,作者旨在引入一种基于深度学习的决策支持和计划系统,使手术计划民主化,减少对操作者的依赖。方法:回顾性分析某医院2016年3月至2024年6月的347例患者(31,024张CT切片)。该框架集成了基于nnu - net的血肿和颅骨分割、通过眼部标志(平均角度校正20.4°[SD 8.7°])的CT重新定位、双解剖走廊的安全区划分以及优先考虑最大血肿穿越和避免关键结构的轨迹优化。采用经过验证的评分系统进行风险分层。结果:在人工智能(AI)驱动的系统下,自动分割精度达到了临床级的性能(血肿的Dice相似系数为0.90 [SD 0.14],颅骨的Dice相似系数为0.99 [SD 0.035]),具有较强的组间信度(类内相关系数0.91)。对于幕上血肿的轨迹规划,该系统在80.8%(252/312)的患者中实现了低风险轨迹,在15.4%(48/312)的患者中实现了中等风险轨迹,而在3.8%(12/312)的患者中由于高风险而需要重新规划。结论:这种人工智能驱动的系统对幕上脑出血显示出强大的疗效,可解决60%的流行出血亚型。虽然幕下血肿的局限性仍然存在,但这种新型的自动血肿分割和手术计划系统可以帮助初级卫生保健机构中资源有限的经验不足的神经外科医生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-based clinical decision support system for intracerebral hemorrhage: an imaging-based AI-driven framework for automated hematoma segmentation and trajectory planning.

Objective: Intracerebral hemorrhage (ICH) remains a critical neurosurgical emergency with high mortality and long-term disability. Despite advancements in minimally invasive techniques, procedural precision remains limited by hematoma complexity and resource disparities, particularly in underserved regions where 68% of global ICH cases occur. Therefore, the authors aimed to introduce a deep learning-based decision support and planning system to democratize surgical planning and reduce operator dependence.

Methods: A retrospective cohort of 347 patients (31,024 CT slices) from a single hospital (March 2016-June 2024) was analyzed. The framework integrated nnU-Net-based hematoma and skull segmentation, CT reorientation via ocular landmarks (mean angular correction 20.4° [SD 8.7°]), safety zone delineation with dual anatomical corridors, and trajectory optimization prioritizing maximum hematoma traversal and critical structure avoidance. A validated scoring system was implemented for risk stratification.

Results: With the artificial intelligence (AI)-driven system, the automated segmentation accuracy reached clinical-grade performance (Dice similarity coefficient 0.90 [SD 0.14] for hematoma and 0.99 [SD 0.035] for skull), with strong interrater reliability (intraclass correlation coefficient 0.91). For trajectory planning of supratentorial hematomas, the system achieved a low-risk trajectory in 80.8% (252/312) and a moderate-risk trajectory in 15.4% (48/312) of patients, while replanning was required due to high-risk designations in 3.8% of patients (12/312).

Conclusions: This AI-driven system demonstrated robust efficacy for supratentorial ICH, addressing 60% of prevalent hemorrhage subtypes. While limitations remain in infratentorial hematomas, this novel automated hematoma segmentation and surgical planning system could be helpful in assisting less-experienced neurosurgeons with limited resources in primary healthcare settings.

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来源期刊
Neurosurgical focus
Neurosurgical focus CLINICAL NEUROLOGY-SURGERY
CiteScore
6.30
自引率
0.00%
发文量
261
审稿时长
3 months
期刊介绍: Information not localized
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