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Predicting rehabilitation treatment helpfulness to stroke patients: A supervised learning approach

机译:预测康复治疗有助于抚摸患者:监督学习方法

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摘要

Stroke (Cerebral vascular accident, CVA) is a common and serious disease. Most of the survivals would be disabled after their illness recovery, causes serious burden on caregivers. It is said that rehabilitation could help functional recovery of stroke patients, regain independence after stroke. Due to the long course of stroke, how to prevent survivals from recurrence is an important issue. This study attempts to examine the relationship between stroke recurrence and strength of rehabilitation, and build a stroke recurrence prediction model utilizing a number of supervised learning techniques to assist physicians with making clinical decisions. In the past, most of the related work used the samples from a single hospital as a sample, but it cannot fully catch all the clinic information of the patients. Therefore, this study used the Longitudinal Health Insurance Database 2010 of the NHIRD as the data source, to examine the effectiveness of rehabilitation. In terms of accuracy rate of all classifiers, we get the best effectiveness (78%) while adopting the inpatient admission dataset and C4.5 to predict recurrence. We also find physical therapy, occupational therapy and speech therapy treatments during inpatient admission are the key factors to decrease the chance to recrudesce in the rehabilitation periods. The higher strength and frequency rehabilitation treatment is also the key influence variables in our high accuracy prediction model which means that is useful to lower the recurrence rate of stroke patients.
机译:中风(脑血管事故,CVA)是一种常见和严重的疾病。大多数幸存者都会在他们的疾病恢复后残疾,导致护理人员的严重负担。据说康复有助于卒中患者的功能性回收,卒中后重新获得独立性。由于中风的长期,如何防止幸存者从复发中是一个重要问题。本研究试图研究冲程复发和康复强度之间的关系,并利用许多监督学习技术建立冲程复发预测模型,以帮助医生进行临床决策。在过去,大多数相关工作都使用了从单个医院的样本作为样品,但它不能完全捕获患者的所有诊所信息。因此,本研究使用了纽尔德的纵向健康保险数据库2010作为数据源,来检查康复的有效性。就所有分类器的准确率而言,我们获得最佳效果(78%),同时采用住院入住的数据集和C4.5来预测再现。我们还发现住院入住期间的物理治疗,职业治疗和言语治疗治疗是减少康复期间收入机会的关键因素。更高的强度和频率康复处理也是我们高精度预测模型中的关键影响变量,这意味着降低卒中患者的复发率是有用的。

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