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Optimized Naive-Bayes and Decision Tree Approaches for fMRI Smoking Cessation Classification

机译:fMRI吸烟戒断分类的优化朴素贝叶斯和决策树方法

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This paper aims at developing new theory-driven biomarkers by implementing and evaluating novel techniques from resting-state scans that can be used in relapse prediction for nicotine-dependent patients and future treatment efficacy. Two classes of patients were studied. One class took the drug N-acetylcysteine and the other class took a placebo. Then, the patients underwent a double-blind smoking cessation treatment and the resting-state fMRI scans of their brains before and after treatment were recorded. The scientific research goal of this study was to interpret the fMRI connectivity maps based on machine learning algorithms to predict the patient who will relapse and the one who will not. In this regard, the feature matrix was extracted from the image slices of brain employing voxel selection schemes and data reduction algorithms. Then, the feature matrix was fed into the machine learning classifiers including optimized CART decision tree and Naive-Bayes classifier with standard and optimized implementation employing 10-fold cross-validation. Out of all the data reduction techniques and the machine learning algorithms employed, the best accuracy was obtained using the singular value decomposition along with the optimized Naive-Bayes classifier. This gave an accuracy of 93% with sensitivity-specificity of 99% which suggests that the relapse in nicotine-dependent patients can be predicted based on the resting-state fMRI images. The use of these approaches may result in clinical applications in the future.
机译:本文旨在通过实施和评估来自静息状态扫描的新技术来开发新的理论驱动的生物标记物,这些技术可用于尼古丁依赖患者的复发预测和未来治疗效果。研究了两类患者。一类服用了N-乙酰半胱氨酸药物,另一类服用了安慰剂。然后,对患者进行了双盲戒烟治疗,并记录了治疗前后大脑的静止状态fMRI扫描。这项研究的科学研究目标是基于机器学习算法来解释功能磁共振成像连通性图,以预测将复发的患者和不会复发的患者。在这方面,使用体素选择方案和数据约简算法从大脑的图像切片中提取特征矩阵。然后,将特征矩阵输入到机器学习分类器中,包括优化的CART决策树和Naive-Bayes分类器,以及采用10倍交叉验证的标准和优化实现。在所有采用的数据约简技术和机器学习算法中,使用奇异值分解以及优化的Naive-Bayes分类器可获得最佳精度。这提供了93%的准确度和99%的敏感性特异性,这表明可以根据静息状态fMRI图像预测尼古丁依赖性患者的复发。这些方法的使用可能会导致将来的临床应用。

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