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Explainable Machine Learning Model for Glaucoma Diagnosis and Its Interpretation

机译:可解释的青光眼诊断机器学习模型及其解释

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摘要

The aim is to develop a machine learning prediction model for the diagnosis of glaucoma and an explanation system for a specific prediction. Clinical data of the patients based on a visual field test, a retinal nerve fiber layer optical coherence tomography (RNFL OCT) test, a general examination including an intraocular pressure (IOP) measurement, and fundus photography were provided for the feature selection process. Five selected features (variables) were used to develop a machine learning prediction model. The support vector machine, C5.0, random forest, and XGboost algorithms were tested for the prediction model. The performance of the prediction models was tested with 10-fold cross-validation. Statistical charts, such as gauge, radar, and Shapley Additive Explanations (SHAP), were used to explain the prediction case. All four models achieved similarly high diagnostic performance, with accuracy values ranging from 0.903 to 0.947. The XGboost model is the best model with an accuracy of 0.947, sensitivity of 0.941, specificity of 0.950, and AUC of 0.945. Three statistical charts were established to explain the prediction based on the characteristics of the XGboost model. Higher diagnostic performance was achieved with the XGboost model. These three statistical charts can help us understand why the machine learning model produces a specific prediction result. This may be the first attempt to apply “explainable artificial intelligence” to eye disease diagnosis.
机译:目的是开发一种用于诊断青光眼的机器学习预测模型和特定预测的解释系统。基于视野测试的患者的临床资料,视网膜神经纤维层光学相干断层扫描(RNFL OCT)试验,一般检查,包括眼压(IOP)测量,并为特征选择过程提供了眼底拍摄。使用五种选定的特征(变量)来开发机器学习预测模型。测试支持向量机,C5.0,随机林和XGBoost算法进行预测模型。用10倍交叉验证测试预测模型的性能。使用统计图表,例如仪表,雷达和福利添加剂解释(Shap)来解释预测情况。所有四种模型都实现了类似的诊断性能,精度值范围为0.903至0.947。 XGBoost模型是精度为0.947的最佳型号,灵敏度为0.941,特异性为0.950,AUC为0.945。建立了三个统计图表,以基于XGBoost模型的特征来解释预测。用XGBoost模型实现了更高的诊断性能。这三张统计图表可以帮助我们理解机器学习模型产生特定预测结果的原因。这可能是第一次尝试应用“可解释的人工智能”对眼病诊断。

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