Gkantzios Aimilios, Kokkotis Christos, Tsiptsios Dimitrios, Moustakidis Serafeim, Gkartzonika Elena, Avramidis Theodoros, Aggelousis Nikolaos, Vadikolias Konstantinos
Department of Neurology, School of Medicine, University Hospital of Alexandroupolis, Democritus University of Thrace, 68100 Alexandroupolis, Greece.
Department of Neurology, Korgialeneio-Benakeio "Hellenic Red Cross" General Hospital of Athens, 11526 Athens, Greece.
Diagnostics (Basel). 2023 Feb 1;13(3):532. doi: 10.3390/diagnostics13030532.
Despite therapeutic advancements, stroke remains a leading cause of death and long-term disability. The quality of current stroke prognostic models varies considerably, whereas prediction models of post-stroke disability and mortality are restricted by the sample size, the range of clinical and risk factors and the clinical applicability in general. Accurate prognostication can ease post-stroke discharge planning and help healthcare practitioners individualize aggressive treatment or palliative care, based on projected life expectancy and clinical course. In this study, we aimed to develop an explainable machine learning methodology to predict functional outcomes of stroke patients at discharge, using the Modified Rankin Scale (mRS) as a binary classification problem. We identified 35 parameters from the admission, the first 72 h, as well as the medical history of stroke patients, and used them to train the model. We divided the patients into two classes in two approaches: "Independent" vs. "Non-Independent" and "Non-Disability" vs. "Disability". Using various classifiers, we found that the best models in both approaches had an upward trend, with respect to the selected biomarkers, and achieved a maximum accuracy of 88.57% and 89.29%, respectively. The common features in both approaches included: age, hemispheric stroke localization, stroke localization based on blood supply, development of respiratory infection, National Institutes of Health Stroke Scale (NIHSS) upon admission and systolic blood pressure levels upon admission. Intubation and C-reactive protein (CRP) levels upon admission are additional features for the first approach and Erythrocyte Sedimentation Rate (ESR) levels upon admission for the second. Our results suggest that the said factors may be important predictors of functional outcomes in stroke patients.
尽管治疗技术有所进步,但中风仍然是导致死亡和长期残疾的主要原因。当前中风预后模型的质量差异很大,而中风后残疾和死亡率的预测模型受到样本量、临床和风险因素范围以及总体临床适用性的限制。准确的预后评估可以简化中风后的出院计划,并帮助医护人员根据预期寿命和临床病程,对积极治疗或姑息治疗进行个性化安排。在本研究中,我们旨在开发一种可解释的机器学习方法,以改良Rankin量表(mRS)作为二分类问题,预测中风患者出院时的功能结局。我们从中风患者的入院信息、最初72小时以及病史中识别出35个参数,并使用它们来训练模型。我们通过两种方法将患者分为两类:“独立”与“非独立”以及“无残疾”与“残疾”。使用各种分类器,我们发现两种方法中最佳模型在所选择的生物标志物方面都呈上升趋势,分别达到了88.57%和89.29%的最高准确率。两种方法中的共同特征包括:年龄、半球性中风定位、基于血液供应的中风定位、呼吸道感染的发生、入院时的美国国立卫生研究院卒中量表(NIHSS)以及入院时的收缩压水平。入院时的插管和C反应蛋白(CRP)水平是第一种方法的额外特征,入院时的红细胞沉降率(ESR)水平是第二种方法的额外特征。我们的结果表明,上述因素可能是中风患者功能结局的重要预测指标。