Niels Wessel, M. Sprincean, Ludmila Sidorenko, N. Revenco, S. Hadjiu
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引用次数: 0
摘要
儿童中风可导致终身残疾。制定及时识别临床和辅助临床症状的算法对于确保及时诊断中风和减少决策时间至关重要。本研究旨在描述儿童和新生儿卒中的临床和副临床症状,作为临床实践中遇到的相关诊断标准,从而开发出及时诊断卒中的算法。分析包括 2010 年至 2016 年的 402 例儿科病历数据和 2017 年至 2020 年的 108 例前瞻性中风病例数据。脑卒中病例主要在新生儿中确诊,其中362例(71%,95% CI 68.99-73.01)发生在出生后28天内,148例(29%,95% CI 26.99-31.01)发生在28天后。研究结果有助于制定及时识别中风的算法,为新生儿和各年龄组儿童选择最佳治疗方案提供便利。逻辑回归是推导这些算法的基础,旨在启动早期治疗,降低儿童的终生发病率和死亡率。研究成果包括制定了及时识别新生儿中风的算法,并计划采用这些算法,利用机器学习技术训练基于模糊分类器的诊断模型,以高效识别中风。
Pediatric Ischemic Stroke: Clinical and Paraclinical Manifestations—Algorithms for Diagnosis and Treatment
Childhood stroke can lead to lifelong disability. Developing algorithms for timely recognition of clinical and paraclinical signs is crucial to ensure prompt stroke diagnosis and minimize decision-making time. This study aimed to characterize clinical and paraclinical symptoms of childhood and neonatal stroke as relevant diagnostic criteria encountered in clinical practice, in order to develop algorithms for prompt stroke diagnosis. The analysis included data from 402 pediatric case histories from 2010 to 2016 and 108 prospective stroke cases from 2017 to 2020. Stroke cases were predominantly diagnosed in newborns, with 362 (71%, 95% CI 68.99–73.01) cases occurring within the first 28 days of birth, and 148 (29%, 95% CI 26.99–31.01) cases occurring after 28 days. The findings of the study enable the development of algorithms for timely stroke recognition, facilitating the selection of optimal treatment options for newborns and children of various age groups. Logistic regression serves as the basis for deriving these algorithms, aiming to initiate early treatment and reduce lifelong morbidity and mortality in children. The study outcomes include the formulation of algorithms for timely recognition of newborn stroke, with plans to adopt these algorithms and train a fuzzy classifier-based diagnostic model using machine learning techniques for efficient stroke recognition.