使用基于脂蛋白相关磷脂酶 A2 和血小板计数的提名图评估中风复发风险。

IF 4.6 2区 医学 Q1 NEUROSCIENCES Molecular Neurobiology Pub Date : 2025-03-01 Epub Date: 2024-08-23 DOI:10.1007/s12035-024-04439-3
Yanlong Zhou, Yu Feng, Ning Xin, Jun Lu, Xingshun Xu
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引用次数: 0

摘要

脑卒中复发仍然是临床神经病学的一项重大挑战,因此有必要确定可靠的预测标志物,以便制定更好的管理和治疗策略。本研究探讨了脂蛋白相关磷脂酶 A2(Lp-PLA2)与血小板之间的相互作用,以此作为中风复发的潜在预测指标,旨在完善风险评估和治疗方法。在 580 例缺血性中风患者的回顾性队列中,我们分析了临床数据,重点是 Lp-PLA2 和血小板水平。通过使用多变量逻辑回归,我们确定了中风复发的独立预测因素。然后利用这些预测因素制定了一个综合提名图。研究确定糖尿病、高血压、低密度脂蛋白 (LDL)、Lp-PLA2 水平和血小板计数是中风复发的独立预测因素。最重要的是,交互参数 Lp-PLA2 * 血小板(Lp-PLA2 与血小板计数的乘积)的预测能力优于单独考虑的每个因素。我们的提名图纳入了糖尿病、脑梗塞原因、高血压、低密度脂蛋白以及 Lp-PLA2 * 血小板计数的交互作用,与传统的风险模型相比,在预测中风复发方面表现出更高的准确性。Lp-PLA2 与血小板之间的相互作用与传统风险因素相结合,成为中风复发的重要预测因素。所开发的提名图为分子神经生物学评估个体风险提供了一种新颖实用的工具,有助于制定个性化治疗策略。这种方法强调了多因素评估在中风治疗中的重要性,并为采取有针对性的干预措施降低复发风险开辟了途径。
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Assessing Stroke Recurrence Risk by Using a Lipoprotein-Associated Phospholipase A2 and Platelet Count-Based Nomogram.

Stroke recurrence remains a critical challenge in clinical neurology, necessitating the identification of reliable predictive markers for better management and treatment strategies. This study investigates the interaction between lipoprotein-associated phospholipase A2 (Lp-PLA2) and platelets as a potential predictor for stroke recurrence, aiming to refine risk assessment and therapeutic approaches. In a retrospective cohort of 580 ischemic stroke patients, we analyzed clinical data with a focus on Lp-PLA2 and platelet levels. By using multivariable logistic regression, we identified independent predictors of stroke recurrence. These predictors were then used to develop a comprehensive nomogram. The study established diabetes mellitus, hypertension, low-density lipoprotein (LDL), Lp-PLA2 levels, and platelet counts as independent predictors of stroke recurrence. Crucially, the interaction parameter Lp-PLA2 * platelet (multiplication of Lp-PLA2 and platelet count) exhibited superior predictive power over each factor considered separately. Our nomogram incorporated diabetes mellitus, cerebral infarction causes, hypertension, LDL, and the Lp-PLA2 * platelet count interaction and demonstrated enhanced accuracy in predicting stroke recurrence compared to traditional risk models. The interaction between Lp-PLA2 and platelets emerged as a significant predictor for stroke recurrence when integrated with traditional risk factors. The developed nomogram offers a novel and practical tool in molecular neurobiology for assessing individual risks, facilitating personalized treatment strategies. This approach underscores the importance of multifactorial assessment in stroke management and opens avenues for targeted interventions to mitigate recurrence risks.

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来源期刊
Molecular Neurobiology
Molecular Neurobiology 医学-神经科学
CiteScore
9.00
自引率
2.00%
发文量
480
审稿时长
1 months
期刊介绍: Molecular Neurobiology is an exciting journal for neuroscientists needing to stay in close touch with progress at the forefront of molecular brain research today. It is an especially important periodical for graduate students and "postdocs," specifically designed to synthesize and critically assess research trends for all neuroscientists hoping to stay active at the cutting edge of this dramatically developing area. This journal has proven to be crucial in departmental libraries, serving as essential reading for every committed neuroscientist who is striving to keep abreast of all rapid developments in a forefront field. Most recent significant advances in experimental and clinical neuroscience have been occurring at the molecular level. Until now, there has been no journal devoted to looking closely at this fragmented literature in a critical, coherent fashion. Each submission is thoroughly analyzed by scientists and clinicians internationally renowned for their special competence in the areas treated.
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