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Distinguishing Stroke patients with and without Unilateral Spatial Neglect by means of Clinical Features: a Tree-based Machine Learning Approach

机译:通过临床特征区分卒中患者和没有单侧空间疏忽的卒中患者:基于树的机器学习方法

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Unilateral Spatial Neglect is a cognitive impairment of neuropsychological interest that is a consequence of stroke able to influence negatively the rehabilitation outcome of patients with stroke. The aim of the study is to explore the feasibility of machine learning to classify stroke patients with and without unilateral spatial neglect using clinical features. We performed the study using a machine learning approach by means the following tree-based algorithms: Decision Tree, Random Forest, Rotation Forest, AdaBoost of decision stumps and Gradient Boost tree using six clinical features both numerical and nominal: Montreal Cognitive Assessment, Functional Independence Measure scale, Barthel Index, aetiology, site of brain lesion and presence of hemiparesis at lower limbs. Tree-based Machine learning analysis achieved interesting results in terms of evaluation metrics scores; the best algorithm was Random Forest with an Accuracy, Sensitivity, Specificity, Precision and Area under the Receiver Operating Characteristic curve equal to 0.92, 0.83, 1.00, 1.00, 0.95 respectively. The study demonstrated the proposed combination of clinical features and algorithms represents a valuable approach to automatically classify stroke patients with and without Unilateral Spatial Neglect. The future investigations on enriched datasets will further confirm the potential application of this methodology as prognostic support to be chosen among those already implemented in the clinical field.
机译:单侧空间疏忽是神经心理学利益的认知障碍,这是卒中能够对卒中患者的康复结果产生负面影响的结果。该研究的目的是探讨机器学习的可行性,以使用临床特征对卒中患者进行分类脑卒中患者。我们通过机器学习方法进行了研究,方法是以下基于树的算法:决策树,随机森林,旋转林,决策树桩和梯度升压树的Adaboost使用六个临床特征,既有数值和标称特征:蒙特利尔认知评估,功能独立测量尺度,条形指数,病症,脑病变部位和下肢在血管内发生的存在。基于树的机器学习分析在评估度量分数方面取得了有趣的结果;最佳算法是随机林,具有精度,灵敏度,特异性,精度和面积,接收器操作特性曲线等于0.92,0.83,1.00,1.00,0.95。该研究证明了临床特征和算法的拟议组合代表了一种有价值的方法,可以自动对中风患者进行分类,无需单方面空间忽视。未来对丰富的数据集的调查将进一步证实该方法的潜在应用,作为在临床领域中已经实施的那些中选择的预后支撑。

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