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Sparse learning and stability selection for predicting MCI to AD conversion using baseline ADNI data

机译:使用基线ADNI数据预测MCI到AD转换的稀疏学习和稳定性选择

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Background Patients with Mild Cognitive Impairment (MCI) are at high risk of progression to Alzheimer’s dementia. Identifying MCI individuals with high likelihood of conversion to dementia and the associated biosignatures has recently received increasing attention in AD research. Different biosignatures for AD (neuroimaging, demographic, genetic and cognitive measures) may contain complementary information for diagnosis and prognosis of AD. Methods We have conducted a comprehensive study using a large number of samples from the Alzheimer’s Disease Neuroimaging Initiative (ADNI) to test the power of integrating various baseline data for predicting the conversion from MCI to probable AD and identifying a small subset of biosignatures for the prediction and assess the relative importance of different modalities in predicting MCI to AD conversion. We have employed sparse logistic regression with stability selection for the integration and selection of potential predictors. Our study differs from many of the other ones in three important respects: (1) we use a large cohort of MCI samples that are unbiased with respect to age or education status between case and controls (2) we integrate and test various types of baseline data available in ADNI including MRI, demographic, genetic and cognitive measures and (3) we apply sparse logistic regression with stability selection to ADNI data for robust feature selection. Results We have used 319 MCI subjects from ADNI that had MRI measurements at the baseline and passed quality control, including 177 MCI Non-converters and 142 MCI Converters. Conversion was considered over the course of a 4-year follow-up period. A combination of 15 features (predictors) including those from MRI scans, APOE genotyping, and cognitive measures achieves the best prediction with an AUC score of 0.8587. Conclusions Our results demonstrate the power of integrating various baseline data for prediction of the conversion from MCI to probable AD. Our results also demonstrate the effectiveness of stability selection for feature selection in the context of sparse logistic regression.
机译:背景患有轻度认知障碍(MCI)的患者极有可能发展为阿尔茨海默氏痴呆症。最近,在AD研究中,识别出MCI个体转化为痴呆症的可能性及其相关生物特征的可能性越来越高。 AD的不同生物签名(神经影像学,人口统计学,遗传学和认知指标)可能包含用于AD诊断和预后的补充信息。方法我们使用来自阿尔茨海默氏病神经影像学计划(ADNI)的大量样本进行了全面的研究,以测试整合各种基线数据以预测从MCI转化为可能的AD的能力并确定一小部分生物特征进行预测的能力并评估不同方式在预测MCI到AD转换中的相对重要性。我们采用了具有稳定性选择的稀疏逻辑回归来集成和选择潜在的预测变量。我们的研究在三个重要方面与其他许多研究有所不同:(1)我们使用大量的MCI样本,病例和对照之间在年龄或受教育程度方面没有偏见(2)我们整合并测试各种类型的基线ADNI中的可用数据包括MRI,人口统计学,遗传学和认知测量,以及(3)我们将具有稳定性选择的稀疏logistic回归应用于ADNI数据以进行可靠的特征选择。结果我们使用了来自ADNI的319位MCI受试者,这些受试者在基线进行了MRI测量并通过了质量控制,包括177位MCI非转化者和142位MCI转化者。在为期4年的随访过程中考虑了转换。包括MRI扫描,APOE基因分型和认知测量在内的15种特征(预测因子)的组合,AUC得分为0.8587,可实现最佳预测。结论我们的结果证明了整合各种基准数据以预测从MCI到可能的AD的转化的能力。我们的结果还证明了在稀疏逻辑回归的情况下稳定性选择对于特征选择的有效性。

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