| Literature DB >> 32851068 |
Di Wang1, Yan Cui2, Yuxuan Cao2, Yuehan He3, Hui Chen2.
Abstract
Microorganisms in the human body play a vital role in metabolism, immune defense, nutrient absorption, cancer control, and prevention of pathogen colonization. More and more biological and clinical studies have shown that the imbalance of microbial communities is closely related to the occurrence and development of various complex human diseases. Finding potential microbial-disease associations is critical for understanding the pathology of a few diseases and thus further improving disease diagnosis and prognosis. In this study, we proposed a novel computational model to predict disease-associated microbes. Specifically, we first constructed a heterogeneous interconnection network based on known microbe-disease associations deposited in a few databases, the similarity between diseases, and the similarity between microorganisms. We then predicted novel microbe-disease associations by a new method called the double-ended restart random walk model (DRWHMDA) implemented on the interconnection network. In addition, we performed case studies of colon cancer and asthma for further evaluation. The results indicate that 10 and 9 of the top 10 microorganisms predicted to be associated with colorectal cancer and asthma were validated by relevant literatures, respectively. Our method is expected to be effective in identifying disease-related microorganisms and will help to reveal the relationship between microorganisms and complex human diseases.Entities:
Mesh:
Year: 2020 PMID: 32851068 PMCID: PMC7439206 DOI: 10.1155/2020/3978702
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1The workflow of DRWHMDA for inferring potential microbe-disease associations.
Figure 2The ROC curves for DRWHMDA and other approaches in microbe-disease association prediction for 5-fold cross-validation and global LOOCV.
Prediction AUCs of DRWHMDA at different choices of restart probability r.
| DRWHMDA | AUC | DRWHMDA | AUC |
|---|---|---|---|
|
| 0.8511 |
| 0.8684 |
|
| 0.8513 |
| 0.8674 |
|
| 0.8525 |
| 0.8666 |
|
| 0.8597 |
| 0.8590 |
|
| 0.8695 |
The 10 microbes predicted to be most likely to be associated with colon cancer.
| Microbe | Evidence |
|---|---|
|
| PMID:21152135 |
|
| PMID:22294430 |
|
| PMID:25699023 |
|
| PMID:25699024 |
|
| Unconfirmed |
|
| PMID:18237311 |
|
| PMID:25699024 |
|
| PMID:25699024 |
|
| PMID:26811603 |
|
| PMID:19807912 |
The 10 microbes predicted to be most likely to be associated with asthma.
| Microbe | Evidence |
|---|---|
|
| PMID:25974301 |
|
| PMID:23265859 |
|
| PMID:21477358 |
|
| PMID:23265859 |
|
| PMID:12743582 |
|
| PMID:20592920 |
|
| PMID:21477358 |
|
| PMID:24451910 |
|
| PMID:17433177 |
|
| PMID: 27433177 |
Figure 3The network of the top 10 predicted associations for the two diseases via DRWHMDA. The dotted line indicates that it has not been confirmed by the literature.