特征选择器和分类器在高维转录组学数据上预测2型糖尿病风险菲律宾裔美国人体重减轻的预测性能。

IF 1.9 4区 医学 Q2 NURSING Biological research for nursing Pub Date : 2023-07-01 Epub Date: 2023-01-04 DOI:10.1177/10998004221147513
Lisa Chang, Yoshimi Fukuoka, Bradley E Aouizerat, Li Zhang, Elena Flowers
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引用次数: 0

摘要

背景:由于复杂的潜在病因,准确预测2型糖尿病(T2D)等慢性疾病的风险具有挑战性。整合来自传感器的更复杂的数据类型,并利用收集组学数据集的技术,可以更好地了解复杂疾病的具体风险状况。方法:我们进行了一项文献综述,以确定先前完成的一项临床试验(NCT02278939)中用于预测T2D风险菲律宾人体重减轻的特征选择方法和机器学习模型。特征包括人口统计学和临床特征、饮食因素、体育活动和转录组学。结果:我们确定了四种特征选择方法:基于相关性的特征子集选择(CfsSubsetEval)和BestFirst,Kolmogorov-Smirnov(KS)测试和相关特征选择(CFS),DESeq2,最大相关性最小相关性(MRMR)和线性前向搜索和互信息(MI),以及四种机器学习算法:支持向量机、决策树、随机森林,以及适用于使用指定特征类型预测体重减轻的额外树。结论:通过利用传感器和组学数据集的复杂数据类型,可以更准确地预测T2D和其他复杂疾病的风险。新兴的特征选择方法和机器学习算法使这种类型的建模变得可行。
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Prediction Performance of Feature Selectors and Classifiers on Highly Dimensional Transcriptomic Data for Prediction of Weight Loss in Filipino Americans at Risk for Type 2 Diabetes.

Background: Accurate prediction of risk for chronic diseases like type 2 diabetes (T2D) is challenging due to the complex underlying etiology. Integration of more complex data types from sensors and leveraging technologies for collection of -omics datasets may provide greater insights into the specific risk profile for complex diseases.Methods: We performed a literature review to identify feature selection methods and machine learning models for prediction of weight loss in a previously completed clinical trial (NCT02278939) of a behavioral intervention for weight loss in Filipinos at risk for T2D. Features included demographic and clinical characteristics, dietary factors, physical activity, and transcriptomics.Results: We identified four feature selection methods: Correlation-based Feature Subset Selection (CfsSubsetEval) with BestFirst, Kolmogorov-Smirnov (KS) test with correlation featureselection (CFS), DESeq2, and max-relevance-min-relevance (MRMR) with linear forward search and mutual information (MI) and four machine learning algorithms: support vector machine, decision tree, random forest, and extra trees that are applicable to prediction of weight loss using the specified feature types.Conclusion: More accurate prediction of risk for T2D and other complex conditions may be possible by leveraging complex data types from sensors and -omics datasets. Emerging methods for feature selection and machine learning algorithms make this type of modeling feasible.

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来源期刊
CiteScore
5.10
自引率
4.00%
发文量
58
审稿时长
>12 weeks
期刊介绍: Biological Research For Nursing (BRN) is a peer-reviewed quarterly journal that helps nurse researchers, educators, and practitioners integrate information from many basic disciplines; biology, physiology, chemistry, health policy, business, engineering, education, communication and the social sciences into nursing research, theory and clinical practice. This journal is a member of the Committee on Publication Ethics (COPE)
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