Using Machine Learning to Investigate Factors Influencing the Efficacy of“Shoulder Tri-needles Therapy”in Treatment of Shoulder-hand Syndrome in 586Stroke Patients
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Using Machine Learning to Investigate Factors Influencing the Efficacy of“Shoulder Tri-needles Therapy”in Treatment of Shoulder-hand Syndrome in 586Stroke Patients
CUI Shao-yang, LUO Xiao-zhou, HE Jia-yang, et al. Using Machine Learning to Investigate Factors Influencing the Efficacy of“Shoulder Tri-needles Therapy”in Treatment of Shoulder-hand Syndrome in 586Stroke Patients[J]. Acupuncture research, 2018, 43(11): 733-737.
DOI:
CUI Shao-yang, LUO Xiao-zhou, HE Jia-yang, et al. Using Machine Learning to Investigate Factors Influencing the Efficacy of“Shoulder Tri-needles Therapy”in Treatment of Shoulder-hand Syndrome in 586Stroke Patients[J]. Acupuncture research, 2018, 43(11): 733-737. DOI: 10.13702/j.1000-0607.170231.
Using Machine Learning to Investigate Factors Influencing the Efficacy of“Shoulder Tri-needles Therapy”in Treatment of Shoulder-hand Syndrome in 586Stroke Patients
Objective To analyze the factors influencing the therapeutic effect of"Shoulder Tri-needles therapy"in the treatment of shoulder-hand syndrome of stroke patients by using machine learning approach
so as to provide a feasibility for improving clinical efficacy.Methods A total of 586 stroke patients with shoulder-hand syndrome eligible for this study were involved in our machine learning experiments for classification of the influential factors.Their data including the age
gender
pulse condition
complexion
tongue quality
tongue coating
disease stage
body mass index(BMI)
blood pressure
blood glucose
blood triglyceride
blood total cholesterol
smoking history
drinking history
and final outcomes were extracted from the medical record system(from Oct.of 2014 to Jan.of 2017 in the First Affiliated Hospital and Shenzhen Futian Hospital of Guangzhou University of Chinese Medicine).The single rule algorithm(1 R)was adopted to learn
followed by optimization with Repeated Incremental Pruning to Produce Error Reduction(RIPPER)algorithm
and C 5.0 decision tree algorithm.Results The accurate classification rates of 1 R
RIPPER and decision tree model were 87.37%(512/586)
95.90%(562/586)
and 97.10%(569/586)
respectively.The final outcomes of machine learning of this study showed that the disease stage(acute or recovery stage)
complexion difference
tongue coating difference
blood pressure level
consumption of alcohol
BMI
and smoking habit were the most important factors influencing the therapeutic effect of"Shoulder Tri-needles"in the treatment of shoulder-hand syndrome of stroke patients.Conclusion The disease stage
complexion and tongue identification
blood pressure level
alcohol drinking and smoking habits
and BMI are the principal factors affecting the therapeutic effect of"Shoulder Tri-needles therapy"in the treatment of shoulder-hand syndrome of stroke patients.