A self-inspected adaptive SMOTE algorithm (SASMOTE) for highly imbalanced data classification in healthcare.

IF 4 3区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY Biodata Mining Pub Date : 2023-04-25 DOI:10.1186/s13040-023-00330-4
Tanapol Kosolwattana, Chenang Liu, Renjie Hu, Shizhong Han, Hua Chen, Ying Lin
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引用次数: 4

Abstract

In many healthcare applications, datasets for classification may be highly imbalanced due to the rare occurrence of target events such as disease onset. The SMOTE (Synthetic Minority Over-sampling Technique) algorithm has been developed as an effective resampling method for imbalanced data classification by oversampling samples from the minority class. However, samples generated by SMOTE may be ambiguous, low-quality and non-separable with the majority class. To enhance the quality of generated samples, we proposed a novel self-inspected adaptive SMOTE (SASMOTE) model that leverages an adaptive nearest neighborhood selection algorithm to identify the "visible" nearest neighbors, which are used to generate samples likely to fall into the minority class. To further enhance the quality of the generated samples, an uncertainty elimination via self-inspection approach is introduced in the proposed SASMOTE model. Its objective is to filter out the generated samples that are highly uncertain and inseparable with the majority class. The effectiveness of the proposed algorithm is compared with existing SMOTE-based algorithms and demonstrated through two real-world case studies in healthcare, including risk gene discovery and fatal congenital heart disease prediction. By generating the higher quality synthetic samples, the proposed algorithm is able to help achieve better prediction performance (in terms of F1 score) on average compared to the other methods, which is promising to enhance the usability of machine learning models on highly imbalanced healthcare data.

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一种用于医疗保健高度不平衡数据分类的自检查自适应SMOTE算法(SASMOTE)。
在许多医疗保健应用中,由于目标事件(如疾病发作)的罕见发生,用于分类的数据集可能高度不平衡。SMOTE (Synthetic Minority oversampling Technique)算法通过对少数类样本进行过采样,作为一种有效的非平衡数据分类重采样方法。然而,SMOTE生成的样本可能是模糊的,低质量的,并且与大多数类别不可分离。为了提高生成样本的质量,我们提出了一种新的自检自适应SMOTE (SASMOTE)模型,该模型利用自适应最近邻选择算法来识别“可见”的最近邻,这些最近邻用于生成可能属于少数类的样本。为了进一步提高生成样本的质量,在提出的SASMOTE模型中引入了通过自检消除不确定度的方法。它的目的是过滤掉生成的样本,这些样本是高度不确定的,与大多数类是不可分割的。将该算法与现有基于smote的算法进行了比较,并通过两个现实世界的医疗案例研究证明了该算法的有效性,包括风险基因发现和致命先天性心脏病预测。通过生成更高质量的合成样本,与其他方法相比,所提出的算法能够帮助实现更好的预测性能(就F1分数而言),这有望增强机器学习模型在高度不平衡的医疗保健数据上的可用性。
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来源期刊
Biodata Mining
Biodata Mining MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
7.90
自引率
0.00%
发文量
28
审稿时长
23 weeks
期刊介绍: BioData Mining is an open access, open peer-reviewed journal encompassing research on all aspects of data mining applied to high-dimensional biological and biomedical data, focusing on computational aspects of knowledge discovery from large-scale genetic, transcriptomic, genomic, proteomic, and metabolomic data. Topical areas include, but are not limited to: -Development, evaluation, and application of novel data mining and machine learning algorithms. -Adaptation, evaluation, and application of traditional data mining and machine learning algorithms. -Open-source software for the application of data mining and machine learning algorithms. -Design, development and integration of databases, software and web services for the storage, management, retrieval, and analysis of data from large scale studies. -Pre-processing, post-processing, modeling, and interpretation of data mining and machine learning results for biological interpretation and knowledge discovery.
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