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Investigating the Use of Support Vector Machine Classification on Structural Brain Images of Preterm–Born Teenagers as a Biological Marker

机译:研究支持向量机分类在早产青少年结构性脑图像上作为生物标记物的用途

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Preterm birth has been shown to induce an altered developmental trajectory of brain structure and function. With the aid support vector machine (SVM) classification methods we aimed to investigate whether MRI data, collected in adolescence, could be used to predict whether an individual had been born preterm or at term. To this end we collected T1–weighted anatomical MRI data from 143 individuals (69 controls, mean age 14.6y). The inclusion criteria for those born preterm were birth weight ≤ 1500g and gestational age < 37w. A linear SVM was trained on the grey matter segment of MR images in two different ways. First, all the individuals were used for training and classification was performed by the leave–one–out method, yielding 93% correct classification (sensitivity = 0.905, specificity = 0.942). Separately, a random half of the available data were used for training twice and each time the other, unseen, half of the data was classified, resulting 86% and 91% accurate classifications. Both gestational age (R = –0.24, p<0.04) and birth weight (R = –0.51, p < 0.001) correlated with the distance to decision boundary within the group of individuals born preterm. Statistically significant correlations were also found between IQ (R = –0.30, p < 0.001) and the distance to decision boundary. Those born small for gestational age did not form a separate subgroup in these analyses. The high rate of correct classification by the SVM motivates further investigation. The long–term goal is to automatically and non–invasively predict the outcome of preterm–born individuals on an individual basis using as early a scan as possible.
机译:早产已被证明可导致大脑结构和功能的发展轨迹改变。使用辅助支持向量机(SVM)分类方法,我们旨在调查青春期收集的MRI数据是否可用于预测某人早产或足月出生。为此,我们收集了143位患者(69位对照者,平均年龄14.6y)的T1加权MRI解剖数据。早产者的入选标准为出生体重≤1500g和胎龄≤37w。线性SVM以两种不同方式在MR图像的灰质部分上训练。首先,将所有个体用于训练,并通过留一法进行分类,得出正确分类的93%(敏感性= 0.905,特异性= 0.942)。单独地,将可用数据的随机一半用于两次训练,并且每次对另一部分看不见的一半数据进行分类,则得出86%和91%的准确分类。早产儿组中的胎龄(R = –0.24,p <0.04)和出生体重(R = –0.51,p <0.001)均与决策边界距离相关。在智商(R = –0.30,p <0.001)与决策边界距离之间也发现了统计学上显着的相关性。在这些分析中,那些胎龄较小的婴儿没有形成单独的亚组。支持向量机的正确分类率很高,这推动了进一步的研究。长期目标是使用尽可能早的扫描方法,以个体为基础自动,无创地预测早产儿的结果。

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