Explanation and prediction of clinical data with imbalanced class distribution based on pattern discovery and disentanglement

被引:7
|
作者
Zhou, Pei-Yuan [1 ]
Wong, Andrew K. C. [1 ]
机构
[1] Univ Waterloo, Syst Design Engn, Waterloo, ON, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Pattern discovery; Disentanglement; Clinical decision-making; Imbalance classification; ASSOCIATIONS;
D O I
10.1186/s12911-020-01356-y
中图分类号
R-058 [];
学科分类号
摘要
Background: Statistical data analysis, especially the advanced machine learning (ML) methods, have attracted considerable interest in clinical practices. We are looking for interpretability of the diagnostic/prognostic results that will bring confidence to doctors, patients and their relatives in therapeutics and clinical practice. When datasets are imbalanced in diagnostic categories, we notice that the ordinary ML methods might produce results overwhelmed by the majority classes diminishing prediction accuracy. Hence, it needs methods that could produce explicit transparent and interpretable results in decision-making, without sacrificing accuracy, even for data with imbalanced groups. Methods: In order to interpret the clinical patterns and conduct diagnostic prediction of patients with high accuracy, we develop a novel method, Pattern Discovery and Disentanglement for Clinical Data Analysis (cPDD), which is able to discover patterns (correlated traits/indicants) and use them to classify clinical data even if the class distribution is imbalanced. In the most general setting, a relational dataset is a large table such that each column represents an attribute (trait/indicant), and each row contains a set of attribute values (AVs) of an entity (patient). Compared to the existing pattern discovery approaches, cPDD can discover a small succinct set of statistically significant high-order patterns from clinical data for interpreting and predicting the disease class of the patients even with groups small and rare. Results: Experiments on synthetic and thoracic clinical dataset showed that cPDD can 1) discover a smaller set of succinct significant patterns compared to other existing pattern discovery methods; 2) allow the users to interpret succinct sets of patterns coming from uncorrelated sources, even the groups are rare/small; and 3) obtain better performance in prediction compared to other interpretable classification approaches. Conclusions: In conclusion, cPDD discovers fewer patterns with greater comprehensive coverage to improve the interpretability of patterns discovered. Experimental results on synthetic data validated that cPDD discovers all patterns implanted in the data, displays them precisely and succinctly with statistical support for interpretation and prediction, a capability which the traditional ML methods lack. The success of cPDD as a novel interpretable method in solving the imbalanced class problem shows its great potential to clinical data analysis for years to come.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] Gamma distribution-based sampling for imbalanced data
    Kamalov, Firuz
    Denisov, Dmitry
    KNOWLEDGE-BASED SYSTEMS, 2020, 207
  • [22] Ensemble learning method based on CNN for class imbalanced data
    Xin Zhong
    Nan Wang
    The Journal of Supercomputing, 2024, 80 : 10090 - 10121
  • [23] Ensemble learning method based on CNN for class imbalanced data
    Zhong, Xin
    Wang, Nan
    JOURNAL OF SUPERCOMPUTING, 2024, 80 (07): : 10090 - 10121
  • [24] Clustering-based undersampling in class-imbalanced data
    Lin, Wei-Chao
    Tsai, Chih-Fong
    Hu, Ya-Han
    Jhang, Jing-Shang
    INFORMATION SCIENCES, 2017, 409 : 17 - 26
  • [25] Undersampling method based on minority class density for imbalanced data
    Sun, Zhongqiang
    Ying, Wenhao
    Zhang, Wenjin
    Gong, Shengrong
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 249
  • [28] Addressing the Classification with Imbalanced Data: Open Problems and New Challenges on Class Distribution
    Fernandez, A.
    Garcia, S.
    Herrera, F.
    HYBRID ARTIFICIAL INTELLIGENT SYSTEMS, PART I, 2011, 6678 : 1 - +
  • [29] An Empirical Study of Bagging Predictors for Imbalanced Data with Different Levels of Class Distribution
    Liang, Guohua
    Zhu, Xingquan
    Zhang, Chengqi
    AI 2011: ADVANCES IN ARTIFICIAL INTELLIGENCE, 2011, 7106 : 213 - 222
  • [30] Classifying antibodies using flow cytometry data: Class prediction and class discovery
    Salganik, MP
    Milford, EL
    Hardie, DL
    Shaw, S
    Wand, MP
    BIOMETRICAL JOURNAL, 2005, 47 (05) : 740 - 754