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Development and Validation of an Improved Neurological Hemifield Test to Identify Chiasmal and Postchiasmal Lesions by Automated Perimetry

机译:改进的神经学半场试验的开发和验证,以通过自动视野检查法识别手足和脚后跟病变

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Purpose.: To improve the neurological hemifield test (NHT) using visual field data from both eyes to detect and classify visual field loss caused by chiasmal or postchiasmal lesions. Methods.: Visual field and clinical data for 633 patients were divided into a training set (474 cases) and a validation set (159 cases). Each set had equal numbers of neurological, glaucoma, or glaucoma suspect cases, matched for age and for mean deviation between neurological and glaucoma cases. NHT scores as previously described and a new NHT laterality score were calculated. The ability of these scores to distinguish neurological from other fields was assessed with receiver operating characteristic (ROC) analysis. Three machine classifier algorithms were also evaluated: decision tree, random forest, and least absolute shrinkage and selection operator (LASSO). We also evaluated the ability of NHT to identify the type of neurological field defect (homonymous or bitemporal). Results.: The area under the ROC curve (AUC) for the maximum NHT score was 0.92 (confidence interval [CI]: 0.87, 0.97). Using NHT laterality scores from each eye combined with the sum of NHT scores, the AUC improved to 0.93 (CI: 0.88, 0.98). The largest AUC for machine learning algorithms was for the LASSO method (0.96, CI: 0.92, 0.99). The NHT scores identified the type of neurological defect in 96% (158/164) of patients. Conclusions.: The new NHT distinguished neurological field defects from those of glaucoma and glaucoma suspects, providing accurate categorization of defect type. Its implementation may identify unsuspected neurological disease in clinical visual field testing.
机译:目的:利用两只眼睛的视野数据来改善神经半球检查(NHT),以检测和分类由手足或后足病变引起的视野损失。方法:将633例患者的视野和临床数据分为训练组(474例)和验证组(159例)。每组的神经病,青光眼或可疑青光眼病例数量相等,其年龄和神经病与青光眼病例之间的平均偏差相匹配。如前所述,计算了NHT分数和一个新的NHT偏侧分数。用接收者操作特征(ROC)分析评估了这些评分区分神经学和其他领域的能力。还评估了三种机器分类器算法:决策树,随机森林和最小绝对收缩与选择算子(LASSO)。我们还评估了NHT识别神经系统缺损类型(同形或双时态)的能力。结果:最大NHT值在ROC曲线下的面积(AUC)为0.92(置信区间[CI]:0.87、0.97)。使用每只眼睛的NHT偏侧评分和NHT评分总和,AUC改善为0.93(CI:0.88、0.98)。用于机器学习算法的最大AUC用于LASSO方法(0.96,CI:0.92,0.99)。 NHT评分确定了96%(158/164)的患者的神经功能缺损类型。结论:新的NHT可以将神经系统缺损与青光眼和可疑青光眼区分开,从而对缺损类型进行准确分类。它的实施可以在临床视野测试中识别出未被怀疑的神经系统疾病。

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