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Different models for predicting driving performance in people with brain disorders

机译:预测脑部疾病患者驾驶性能的不同模型

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Data from performance on a computerized battery of driving-related sensory-motor and cognitive tests (SMCTests™) were used to predict outcome on a blinded on-road driving assessment in 501 people with brain disorders. Six modelling approaches were assessed: discriminant analysis (DA), binary logistic regression (BLR), nonlinear causal resource analysis (NCRA), and three kernel methods (product kernel density (PK), kernel-product density (KP), and support vector machine (SVM)). At the classification level, the three kernel methods were more accurate for predicting on-road Pass or Fail (SVM 99%, PK 99%, KP 80%) than the other models (DA 75%, BLR 77%, NCRA 66%). However, accuracy decreased substantially across the kernel models when leave-one-out cross-validation was used to estimate how accurately the models would predict on-road Pass or Fail in an independent referral group (SVM 76%, PK 73%, KP 72%) but remained fairly constant for DA (74%) and BLR (76%). Cross-validation of NCRA was not possible. While kernel-based models are successful at modelling complex data at a classification level, this appears to be due to overfitting of the data which does not improve accuracy in an independent data set over and above the accuracy of other modelling techniques.
机译:来自与驾驶相关的感觉运动和认知测试的计算机电池组(SMCTests™)的性能数据用于预测501名脑部疾病的盲人道路驾驶评估的结果。评估了六种建模方法:判别分析(DA),二进制逻辑回归(BLR),非线性因果资源分析(NCRA)和三种核仁方法(产品核仁密度(PK),核仁-产物密度(KP)和支持向量机器(SVM))。在分类级别,三种内核方法比其他模型(DA 75%,BLR 77%,NCRA 66%)更准确地预测道路通过或失败(SVM 99%,PK 99%,KP 80%)。 。但是,当使用留一法交叉验证来评估模型在独立推荐组中预测道路通过或失败的准确性时,整个内核模型的准确性将大大降低(SVM 76%,PK 73%,KP 72 %),但DA(74%)和BLR(76%)保持相当稳定。无法对NCRA进行交叉验证。尽管基于内核的模型可以成功地在分类级别上对复杂数据进行建模,但这似乎是由于数据的过度拟合无法在独立数据集中提高准确性,其准确性超出了其他建模技术的准确性。

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