1. Academic Validation
  2. Evaluation of salivary glycopatterns based diagnostic models for prediction of diabetic vascular complications

Evaluation of salivary glycopatterns based diagnostic models for prediction of diabetic vascular complications

  • Int J Biol Macromol. 2024 Jan 26:129763. doi: 10.1016/j.ijbiomac.2024.129763.
Hanjie Yu 1 Xia Li 2 Jian Shu 2 Xin Wu 2 Yuzi Wang 2 Chen Zhang 2 Junhong Wang 3 Zheng Li 4
Affiliations

Affiliations

  • 1 Laboratory for Functional Glycomics, College of Life Sciences, Northwest University, Xi'an, China; School of Medicine, Faculty of Life Science & Medicine, Northwest University, Xi'an, China.
  • 2 Laboratory for Functional Glycomics, College of Life Sciences, Northwest University, Xi'an, China.
  • 3 Department of Endocrine, Shanghai Gongli Hospital of Pudong New Area, Shanghai, China. Electronic address: 470051323@qq.com.
  • 4 Laboratory for Functional Glycomics, College of Life Sciences, Northwest University, Xi'an, China. Electronic address: zhengli@nwu.edu.cn.
Abstract

Diabetic vascular complications (DVC) are the main cause of death in diabetic patients. However, there is a lack of effective biomarkers or convenient methods for early diagnosis of DVC. In this study, the salivary glycopatterns from 130 of healthy volunteers (HV), 139 patients with type 2 diabetes mellitus (T2DM) and 167 patients with DVC were case-by-case analyzed by using lectin microarrays. Subsequently, diagnostic models were developed using logistic regression and machine learning algorithms based on the data of lectin microarrays in training set. The performance of diagnostic models was evaluated in an independent blind cohort. The results of lectin microarrays indicated that the glycopatterns identified by 16 lectins (e.g. BS-I, PWM and EEL) were significantly altered in DVC patients compared with patients with T2DM, which suggested the alterations in salivary glycopatterns could reflect onset of DVC. Notably, K-Nearest Neighbor (KNN) model exhibited better performance for distinguishing DVC (accuracy: 0.939) than other models in blind cohort. The integrated classifier, which combined three machine learning models, exhibited a higher overall accuracy (≥ 0.933) than other models in blind cohort. Our study provided a cost-effective and non-invasive method for auxiliary diagnosis DVC based on the combination of salivary glycopatterns and machine learning algorithms.

Keywords

Diabetic vascular complications; Machine learning algorithms; Salivary glycopatterns.

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