| Literature DB >> 36100897 |
Fan Zhang1, Wei Hu1, Yirong Liu2.
Abstract
BACKGROUND: The main focus of in silico drug repurposing, which is a promising area for using artificial intelligence in drug discovery, is the prediction of drug-disease relationships. Although many computational models have been proposed recently, it is still difficult to reliably predict drug-disease associations from a variety of sources of data.Entities:
Keywords: Attention mechanism; Computational drug repurposing; Graph convolutional network; Heterogeneous information
Mesh:
Year: 2022 PMID: 36100897 PMCID: PMC9469552 DOI: 10.1186/s12859-022-04911-8
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.307
Fig. 1Architecture of GCMM. a The construction of HN, which contains multi-source drug and disease information. b 1st GCN encoder. It takes HN of drug and disease nodes as input, fuses their neighbor information, and generates embeddings under different views. c 2nd GCN encoder. d Multichannel attention mechanism on drug and disease. e Fully connected feature extractor. f Matrix completion decoder
Fig. 2An illustration of GCN encoder
Fig. 3An illustration of Attention layer
Performance of GCMM on 5FCCV
| Auc | Aupr | F1 | ACC | Recall | Precision | Specificity | |
|---|---|---|---|---|---|---|---|
| Fold 1 | 0.8990 | 0.9110 | 0.8142 | 0.8178 | 0.7984 | 0.8306 | 0.8372 |
| Fold 2 | 0.9000 | 0.9114 | 0.8150 | 0.8130 | 0.8236 | 0.8065 | 0.8023 |
| Fold 3 | 0.9069 | 0.9190 | 0.8168 | 0.8137 | 0.8207 | 0.8043 | 0.7878 |
| Fold 4 | 0.9035 | 0.9135 | 0.8178 | 0.8159 | 0.8266 | 0.8093 | 0.8052 |
| Fold 5 | 0.9002 | 0.9108 | 0.8163 | 0.8169 | 0.8140 | 0.8187 | 0.8198 |
| Mean |
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The mean experimental results of 5FCCV are shown in bold font
Performance comparsion on the ratio of positive and negative samples is 1:1
| Auc | Aupr | F1 | ACC | Recall | Precision | Specificity | |
|---|---|---|---|---|---|---|---|
| GCMM |
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| 0.8167 |
| 0.8105 |
| DeepDR | 0.8574 | 0.8810 | 0.7844 | 0.7705 |
| 0.7539 | 0.8860 |
| NeoDTI | 0.7501 | 0.7531 | 0.7149 | 0.6804 | 0.8015 | 0.6452 | 0.9908 |
| LAGCN | 0.8367 | 0.8470 | 0.7643 | 0.7521 | 0.8100 | 0.7495 | 0.9878 |
| NIMGCN | 0.7784 | 0.7807 | 0.7287 | 0.7064 | 0.7888 | 0.6772 |
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The mean experimental results of 5FCCV are shown in bold font
Fig. 4Performance of GCMM and baselines. a Validation AUC values of GCMM with other methods. b Validation AUPR values of GCMM with other methods
Performance comparsion on all instances
| Auc | Aupr | F1 | ACC | Recall | Precision | Specificity | |
|---|---|---|---|---|---|---|---|
| GCMM |
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| 0.9984 |
| DeepDR | 0.8433 | 0.2123 | 0.2864 | 0.9931 | 0.2151 | 0.4332 |
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| NeoDTI | 0.7162 | 0.0717 | 0.0352 | 0.9621 | 0.1094 | 0.3048 | 0.9905 |
| LAGCN | 0.8270 | 0.1710 | 0.1303 | 0.9921 | 0.2010 | 0.4295 | 0.9818 |
| NIMGCN | 0.7587 | 0.1018 | 0.0718 | 0.9874 | 0.1348 | 0.3572 | 0.9818 |
The mean experimental results of 5FCCV are shown in bold font
Performance comparsion between GCMM and its variants
| Auc | Aupr | F1 | ACC | Recall | Precision | Specificity | |
|---|---|---|---|---|---|---|---|
| GCMM |
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| GCMM_no_att | 0.8671 | 0.8793 | 0.7949 | 0.7897 | 0.8149 | 0.7758 | 0.7645 |
| GCMM_no_lin | 0.8606 | 0.8526 | 0.7844 | 0.7752 | 0.8178 | 0.7536 | 0.7326 |
The mean experimental results of 5FCCV are shown in bold font
Fig. 5Result with GCMM and its variants
Performance of multi-source information
| Auc | Aupr | F1 | ACC | Recall | Precision | Specificity | |
|---|---|---|---|---|---|---|---|
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| 0.8105 |
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| 0.8734 | 0.8891 | 0.7890 | 0.7951 | 0.7665 | 0.8129 |
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| 0.8685 | 0.8771 | 0.7918 | 0.7844 | 0.8198 | 0.7656 | 0.7490 |
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| 0.8432 | 0.8444 | 0.7744 | 0.7452 | 0.8750 | 0.6946 | 0.6153 |
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| 0.8657 | 0.8758 | 0.7913 | 0.7912 | 0.7917 | 0.7909 | 0.7907 |
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| 0.8698 | 0.8781 | 0.7926 | 0.7776 | 0.8491 | 0.7426 | 0.7054 |
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| 0.8651 | 0.8757 | 0.7900 | 0.7917 | 0.7839 | 0.7963 | 0.7994 |
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| 0.8827 | 0.8928 | 0.8000 | 0.7955 | 0.8178 | 0.7829 | 0.7733 |
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| 0.8800 | 0.8908 | 0.8051 | 0.8018 | 0.8188 | 0.7919 | 0.7849 |
The mean experimental results of 5FCCV are shown in bold font
Fig. 6Results of different hyper-parameters
New top5 drugs predicted by GCMM for Alzheimer’s disease
| Candidate drug | Evidences | |
|---|---|---|
| 1 | Dexamethasone | [ |
| 2 | Cysteamine | [ |
| 3 | Aripiprazole | [ |
| 4 | Rifapentine | [ |
| 5 | Meticillin | NA |
Fig. 7Chemical structure of Meticillin