Analysis with support vector machine shows HIV-positive subjects without infectious retinitis have mfERG deficiencies compared to normal eyes.

Michael H Goldbaum, Irina Falkenstein, Igor Kozak, Jiucang Hao, Dirk-Uwe Bartsch, Terrance Sejnowski, William R Freeman
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Abstract

Purpose: To test the following hypotheses: (1) eyes from individuals with human immunodeficiency virus (HIV) have electrophysiologic abnormalities that manifest as multifocal electroretinogram (mfERG) abnormalities; (2) the retinal effects of HIV in immune-competent HIV individuals differ from the effects in immune-incompetent HIV individuals; (3) strong machine learning classifiers (MLCs), like support vector machine (SVM), can learn to use mfERG abnormalities in the second-order kernel (SOK) to distinguish HIV from normal eyes; and (4) the mfERG abnormalities fall into patterns that can be discerned by MLCs. We applied a supervised MLC, SVM, to determine if mfERGs in eyes from patients with HIV differ from mfERGs in HIV-negative controls.

Methods: Ninety-nine HIV-positive patients without visible retinopathy were divided into 2 groups: (1) 59 high-CD4 individuals (H, 104 eyes), 48.5 +/- 7.7 years, whose CD4 counts were never observed below 100, and (2) 40 low-CD4 individuals (L, 61 eyes), 46.2 +/- 5.6 years, whose CD4 counts were below 100 for at least 6 months. The normal group (N, 82 eyes) had 41 age-matched HIV-negative individuals, 46.8 +/- 6.2 years. The amplitude and latency of the first positive curve (P1, hereafter referred to as a) and the first negative curve (N1, referred to as b) in the SOK of 103 hexagon patterns of the central 28 degrees of the retina were recorded from the eyes in each group. SVM was trained and tested with cross-validation to distinguish H from N and L from N. SOK was chosen as a presumed detector of inner retinal abnormalities. Classifier performance was measured with the area under the receiver operating characteristic (AUROC) curve to permit comparison of MLCs. Improvement in performance and identification of subsets of the most important features were sought with feature selection by backward elimination.

Results: In general, the SOK b-parameters separated L from N and H from N better than a-parameters, and latency separated L from N and H from N better than amplitude. In the HIV groups, on average, amplitude was diminished and latency was extended. The parameter that most consistently separated L from N and H from N was b-latency. With b-latency, SVM learned to distinguish L from N (AUROC = 0.7.30 +/- 0.044, P = .001 against chance [0.500 +/- 0.051]) and H from N (0.732 +/- 0.038, P = .0001 against chance) equally well. With best-performing subsets (21 out of 103 hexagons) derived by backward elimination, SVM distinguished L from N (0.869 +/- 0.030, P < .00005 against chance) and H from N (0.859 +/- 0.029, P <.00005 against chance) better than SVM with the full set of hexagons. Mapping the top 10 hexagon locations for L vs N and H vs N produced no apparent pattern.

Conclusions: This study confirms that mfERG SOK abnormalities develop in the retina of HIV-positive individuals. The new finding of equal severity of b-latency abnormalities in the low- and high-CD4 groups indicates that good immune status under highly active antiretroviral therapy may not protect against retinal damage and, by extension, damage elsewhere. SOKs are difficult for human experts to interpret. Machine learning classifiers, such as SVM, learn from the data without human intervention, reducing the need to rely on human skills to interpret this test.

支持向量机分析显示,与正常眼睛相比,无感染性视网膜炎的hiv阳性受试者存在mfERG缺陷。
目的:验证以下假设:(1)人类免疫缺陷病毒(HIV)感染者的眼睛存在多焦视网膜电图(mfERG)异常的电生理异常;(2)免疫正常的HIV感染者对视网膜的影响不同于免疫不正常的HIV感染者;(3)与支持向量机(SVM)类似的强机器学习分类器(mlc)可以学习利用二阶核(SOK)中的mfERG异常来区分HIV和正常眼睛;(4) mfERG异常属于mlc可以识别的模式。我们应用监督MLC, SVM,来确定HIV患者眼睛中的mferg是否与HIV阴性对照中的mferg不同。方法:99例无明显视网膜病变的hiv阳性患者分为两组:(1)高CD4患者59例(H, 104眼),48.5 +/- 7.7岁,CD4计数从未低于100;(2)低CD4患者40例(L, 61眼),46.2 +/- 5.6岁,CD4计数低于100至少6个月。正常组(N, 82眼)有41例年龄匹配的hiv阴性个体,46.8±6.2岁。记录各组视网膜中央28度103个六边形图的SOK中第一条阳性曲线(P1,以下简称a)和第一条阴性曲线(N1,以下简称b)的幅值和潜伏期。我们对支持向量机进行训练并进行交叉验证,以区分H和N、L和N。我们选择SOK作为视网膜内部异常的假定检测器。分类器的性能用接受者工作特征(AUROC)曲线下的面积来衡量,以便对mlc进行比较。采用反向消去的方法进行特征选择,以提高性能和识别最重要特征的子集。结果:总的来说,SOK b参数比a参数更能区分L和N、H和N,潜伏期比振幅更能区分L和N、H和N。在HIV组中,平均而言,振幅减小,潜伏期延长。区分L和N、H和N最一致的参数是b-latency。在b-latency条件下,SVM学习到L和N (AUROC = 0.7.30 +/- 0.044, P = 0.001)和H和N (0.732 +/- 0.038, P = 0.0001)的区别同样好。支持向量机将L和N区分出来(0.869 +/- 0.030,P < 0.00005),将H和N区分出来(0.859 +/- 0.029,P)。结论:本研究证实hiv阳性个体视网膜中存在mfERG SOK异常。新发现的低和高cd4组的b潜伏期异常的严重程度相同,这表明在高活性抗逆转录病毒治疗下的良好免疫状态可能不能保护视网膜免受损伤,并延伸到其他地方的损伤。SOKs很难被人类专家解读。机器学习分类器,如SVM,在没有人工干预的情况下从数据中学习,减少了依赖人类技能来解释该测试的需要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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