4.7 Article

Diagnosis of Breast Hyperplasia and Evaluation of RuXian-I Based on Metabolomics Deep Belief Networks

期刊

出版社

MDPI
DOI: 10.3390/ijms20112620

关键词

breast cancer; deep belief networks; Mongolian medicine; metabolomic data

资金

  1. National Natural Science Foundation of China [61572228, 61602207, 61672301, 81460655]
  2. Guangdong Premier Key-Discipline Enhancement Scheme [2016GDYSZDXK036]
  3. Guangdong Key-Project for Applied Fundamental Research [2018KZDXM076]
  4. Key Technological Research Projects in Jilin Province [20190302107GX]
  5. Special Research and Development of Industrial Technology of Jilin Province [2019C053-7]
  6. Program for Young Talents of Science and Technology in Universities of Inner Mongolia Autonomous Region [NJYT-19-B18]
  7. Industry-University-Research Innovation Fund of Ministry of Education Science and Technology Development Center [2018A01027]

向作者/读者索取更多资源

Breast cancer is estimated to be the leading cancer type among new cases in American women. Core biopsy data have shown a close association between breast hyperplasia and breast cancer. The early diagnosis and treatment of breast hyperplasia are extremely important to prevent breast cancer. The Mongolian medicine RuXian-I is a traditional drug that has achieved a high level of efficacy and a low incidence of side effects in its clinical use. However, for detecting the efficacy of RuXian-I, a rapid and accurate evaluation method based on metabolomic data is still lacking. Therefore, we proposed a framework, named the metabolomics deep belief network (MDBN), to analyze breast hyperplasia metabolomic data. We obtained 168 samples of metabolomic data from an animal model experiment of RuXian-I, which were averaged from control groups, treatment groups, and model groups. In the process of training, unlabelled data were used to pretrain the Deep Belief Networks models, and then labelled data were used to complete fine-tuning based on a limited-memory Broyden Fletcher Goldfarb Shanno (L-BFGS) algorithm. To prevent overfitting, a dropout method was added to the pretraining and fine-tuning procedures. The experimental results showed that the proposed model is superior to other classical classification methods that are based on positive and negative spectra data. Further, the proposed model can be used as an extension of the classification method for metabolomic data. For the high accuracy of classification of the three groups, the model indicates obvious differences and boundaries between the three groups. It can be inferred that the animal model of RuXian-I is well established, which can lay a foundation for subsequent related experiments. This also shows that metabolomic data can be used as a means to verify the effectiveness of RuXian-I in the treatment of breast hyperplasia.

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