首页> 外文期刊>Investigative ophthalmology & visual science >Using machine learning classifiers to identify glaucomatous change earlier in standard visual fields.
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Using machine learning classifiers to identify glaucomatous change earlier in standard visual fields.

机译:在标准视野中,使用机器学习分类器更早地识别青光眼改变。

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PURPOSE: To compare the ability of several machine learning classifiers to predict development of abnormal fields at follow-up in ocular hypertensive (OHT) eyes that had normal visual fields in baseline examination. METHODS: The visual fields of 114 eyes of 114 patients with OHT with four or more visual field tests with standard automated perimetry over three or more years and for whom stereophotographs were available were assessed. The mean (+/-SD) number of visual field tests was 7.89 +/- 3.04. The mean number of years covered (+/-SD) was 5.92 +/- 2.34 (range, 2.81-11.77). Fields were classified as normal or abnormal based on Statpac-like methods (Humphrey Instruments, Dublin, CA) and by several machine learning classifiers. The machine learning classifiers were two types of support vector machine (SVM), a mixture of Gaussian (MoG) classifier, a constrained MoG, and a mixture of generalized Gaussian (MGG). Specificity was set to 96% for all classifiers, using data from 94 normal eyes evaluated longitudinally. Specificity cutoffs required confirmation of abnormality. RESULTS: Thirty-two percent (36/114) of the eyes converted to abnormal fields during follow-up based on the Statpac-like methods. All 36 were identified by at least one machine classifier. In nearly all cases, the machine learning classifiers predicted the confirmed abnormality, on average, 3.92 +/- 0.55 years earlier than traditional Statpac-like methods. CONCLUSIONS: Machine learning classifiers can learn complex patterns and trends in data and adapt to create a decision surface without the constraints imposed by statistical classifiers. This adaptation allowed the machine learning classifiers to identify abnormality in visual field converts much earlier than the traditional methods.
机译:目的:比较几种机器学习分类器预测在基线检查中具有正常视野的高眼压(OHT)眼随访时异常视野发展的能力。方法:对114名OHT患者的114只眼的视野进行了3年或4年以上的标准自动视野检查,并进行了4次或更多次视野测试,并为其提供了立体照片。视野测试的平均值(+/- SD)为7.89 +/- 3.04。涵盖的平均年数(+/- SD)为5.92 +/- 2.34(范围2.81-11.77)。根据类似Statpac的方法(Humphrey Instruments,都柏林,加利福尼亚州)以及几种机器学习分类器,将字段分为正常字段或异常字段。机器学习分类器是支持向量机(SVM)的两种类型,一种是高斯(MoG)分类器的混合,一种是受约束的MoG,另一种是广义高斯(MGG)的混合。使用来自94只正常眼睛的纵向评估数据,所有分类器的特异性均设置为96%。特异性临界值要求确认异常。结果:根据Statpac样方法,有32%(36/114)的眼睛在随访期间转换为异常视野。至少一个机器分类器识别了全部36个。在几乎所有情况下,机器学习分类器预测的确诊异常平均比传统Statpac类方法早3.92 +/- 0.55年。结论:机器学习分类器可以学习复杂的数据模式和数据趋势,并适应创建决策面而不受统计分类器施加的约束。这种适应性使机器学习分类器能够比传统方法更早地识别视野转换中的异常。

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