基于机器学习的脑血管痉挛发生率人工智能预测模型。

IF 0.9 4区 医学 Q4 CLINICAL NEUROLOGY Journal of neurological surgery. Part A, Central European neurosurgery Pub Date : 2024-11-21 DOI:10.1055/a-2402-6136
Konstantinos Lintas, Stefan Rohde, Anna Mpoukouvala, Boris El Hamalawi, Robert Sarge, Oliver Marcus Mueller
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引用次数: 0

摘要

背景和研究目的 无症状脑血管痉挛是脑动脉瘤破裂的有害并发症,可能致命。现有的用于对蛛网膜下腔出血(SAH)的初始表现进行分类的量表可对结果和发生症状性脑血管痉挛的可能性进行预测。总之,它们既不足以可靠地预测结果或事件的发生,也不能提供统一的前沿。本研究通过基于人工智能的算法,对常见的分级标准和影响结果的因素进行测试,以建立一个可靠的脑血管痉挛发生预测模型。材料与方法 应用 R 环境编写了一个易于操作的命令行,用于预测血管痉挛的发生。研究对象包括 87 名在 24 个月内患有动脉瘤性 SAH 的患者。研究采用了保留和交叉验证方法对算法进行评估(65 名患者验证集,22 名患者测试集)。支持向量机(ksvm)分类方法的准确率很高。医疗数据集包括人口统计学数据、Hunt & Hess 量表、Fisher 分级、BNI 量表、动脉瘤修复干预时间等。结果 我们基于人工智能算法的预测模型对无症状血管痉挛事件的准确率为 61%-86%。在亚组分析中,手术组有 28.8%(13 人)的患者出现了症状性血管痉挛,其中 Fisher 评分 4 级的患者占 50%(7 人),H&H 5 级的患者占 37.5%(5 人),BNI 5 级的患者占 28.5%(4 人)。血管内治疗组中,血管痉挛发生率为 31.8%(14 人),其中费舍尔 4 级占 69%(9 人),H&H 5 级占 23%(3 人),BNI 5 级占 7%(1 人)。结论 从我们的数据中,我们可以相信所提出的算法有助于识别 SAH 患者发生症状性血管痉挛的 "高风险 "或 "低风险"。通过这种风险平衡,主治医生可以进一步采取早期干预措施,防止永久性后遗症的发生。当然,随着病例数和统计系数的增加,准确性也会提高。
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Artificial Intelligence Prediction Model of Occurrence of Cerebral Vasospasms Based on Machine Learning.

Background:  Symptomatic cerebral vasospasms are deleterious complication of the rupture of a cerebral aneurysm and potentially lethal. The existing scales used to classify the initial presentation of a subarachnoid hemorrhage (SAH) offer a blink of the outcome and the possibility of occurrence of symptomatic cerebral vasospasms. Altogether, neither are they sufficient to predict outcome or occurrence of events reliably nor do they offer a united front. This study tests the common grading scales and factors that otherwise affect the outcome, in an artificial intelligence (AI) based algorithm to create a reliable prediction model for the occurrence of cerebral vasospasms.

Methods:  Applying the R environment, an easy-to-operate command line was programmed to prognosticate the occurrence of vasospasms. Eighty-seven patients with aneurysmal SAH during a 24-month period of time were included for study purposes. The holdout and cross-validation methods were used to evaluate the algorithm (65 patients constituted the validation set and 22 patients constituted the test set). The Support Vector Machines (ksvm) classification method provided a high accuracy. The medical dataset included demographic data, the Hunt and Hess scale (H&H), Fisher grade, Barrow Neurological Institute (BNI) scale, length of intervention for aneurysmal repair, etc. RESULTS:  Our prediction model based on the AI algorithm demonstrated an accuracy of 61 to 86% for the event of symptomatic vasospasms. For subgroup analysis, 28.8% (n = 13) patients in the surgical cohort developed symptomatic vasospasm. Of these, 50% (n = 7) were admitted with Fisher scale grade 4, 37.5% (n = 5) with H&H 5, and 28.5% (n = 4) with BNI 5. In the endovascular cohort, vasospasms occurred in 31.8% (n = 14) patients. Of these, 69% (n = 9) patients were admitted with Fisher grade 4, 23% (n = 3) patients with H&H 5, and 7% (n = 1) patients with BNI 5.

Conclusion:  From our data, we may believe that the algorithm presented can help in identifying patients with SAH who are at "high" or "low" risk of developing symptomatic vasospasms. This risk balancing might further allow the treating physician to go for an earlier intervention trying to prevent permanent sequelae. Certainly, accuracy will improve with a higher caseload and more statistical coefficients.

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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
90
期刊介绍: The Journal of Neurological Surgery Part A: Central European Neurosurgery (JNLS A) is a major publication from the world''s leading publisher in neurosurgery. JNLS A currently serves as the official organ of several national neurosurgery societies. JNLS A is a peer-reviewed journal publishing original research, review articles, and technical notes covering all aspects of neurological surgery. The focus of JNLS A includes microsurgery as well as the latest minimally invasive techniques, such as stereotactic-guided surgery, endoscopy, and endovascular procedures. JNLS A covers purely neurosurgical topics.
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