Biomolecules & Biomedicine (Oct 2022)

An improved joint non-negative matrix factorization for identifying surgical treatment timing of neonatal necrotizing enterocolitis

  • Guoqiang Qi,
  • Shoujiang Huang,
  • Dengming Lai,
  • Jing Li,
  • Yonggen Zhao,
  • Chen Shen,
  • Jian Huang,
  • Tianmei Liu,
  • Kai Wei,
  • Jinfa Tou,
  • Qiang Shu,
  • Gang Yu

DOI
https://doi.org/10.17305/bjbms.2022.7046
Journal volume & issue
Vol. 22, no. 6

Abstract

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Neonatal necrotizing enterocolitis is a severe neonatal intestinal disease. Timely identification of surgical indications is essential for newborns in order to seek the best time for treatment and improve prognosis. This paper attempts to establish an algorithm model based on multimodal clinical data to determine the features of surgical indications and construct an auxiliary diagnosis model. The proposed algorithm adds hypergraph constraints on the two modal data based on Joint Nonnegative Matrix Factorization (JNMF), aiming to mine the higher-order correlations of the two data features. In addition, the adjacency matrix of the two kinds of data is used as a network regularization constraint to prevent overfitting. Orthogonal and L1-norm regulations were introduced to avoid feature redundancy and perform feature selection, respectively, and confirmed 14 clinical features. Finally, we used three classifiers, random forest, support vector machine, and logistic regression, to perform binary classification of patients requiring surgery. The results show that when the features selected by the proposed algorithm model are classified by random forest, the area under the ROC curve is 0.8, which has high prediction accuracy.

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