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SVM and Statistical Technique Method Applying in Primary Open Angle Glaucoma Diagnosis

机译:支持向量机和统计技术方法在原发性开角型青光眼诊断中的应用

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The Primary Open Angle Glaucoma(POAG) discriminated model using support vector machine(SVC) method is presented to distinguish the primary open-angle glaucoma disease ,which is not clear in early symptoms and involves in various risk factors, moreover easy to blind with prolonged intraocular hypertension. Through case study of clinical diagnosis, SVM classifier with a radial basis inner function was established to predict and discriminate some unknown patients in the paper. At the same time, Bayes angle discriminated model and Logistic regression, which are traditional statistical classification approaches , are set up to compare with SVM methods in POAG diagnosis. In the end, we conclude that SVM method is reliable and superior in many respects to statistical classification methods in the POAG recognition.
机译:提出了使用支持向量机(SVC)方法对原发性开角型青光眼(POAG)进行鉴别的模型,以区分原发性开角型青光眼疾病,该病早期症状尚不明确,涉及多种危险因素,而且长期易致盲眼内高血压。通过临床诊断的案例研究,建立了具有径向基内部函数的SVM分类器,以预测和区分一些未知患者。同时,建立了传统的统计分类方法Bayes角判别模型和Logistic回归方法,以与SVM方法进行POAG诊断。最后,我们得出结论,在POAG识别中,SVM方法在很多方面都优于统计分类方法。

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