drug-drug interaction prediction through systems pharmacology analysis (poster)

1
Drug Drug Interaction Prediction through Systems Pharmacology Analysis Xiaochen Sun 1 , Nicholas P. Tatonetti 1 Department of Biomedical Informatics, Columbia University, New York, NY Introduction Tatonetti Lab at Columbia University Medical Center Tatonetti Lab at Columbia University Medical Center Model Drug-drug interactions (DDI) is important! -play an important role in explaining drug side effects and facilitating drug design. DDI mechanism -integrative pathway analysis advances our understanding of DDI by revealing the molecular basis of drug action. DDI prediction -The emergence of pharmacogenomics knowledge bases (PharmGKB and DrugBank) and pathway databases (KEGG), provide an opportunity to improve DDI prediction methods Method Result Conclusions and discussion 1. Get drug, gene, pathway data from KEGG and Drugbank. 2. Integrate data 3. Find pathway pairs that share at least one gene. 4. Download detail pathway files from KEGG and convert them to text format. *The pathway are not represented as a complete path but individual interactions. From To Relationship 356 355 activation 8743 8793 activation 5566 57 inhibiton ... ... ... ... ... ... 5. Construct pathways as python sets with genes comprising them. *Each pathway has multiple path leading from the first upstream gene to the sharing gene for the two pathways. hsa04012 [ [['374', '1956', '1398', '25'], ['374', '1956', '1399', '25']], [['2069', '1956', '1398', '25'], ['2069', '1956', '1399', '25']], [['685', '1956', '1398', '25'], ['685', '1956', '1399', '25']]] hsa04360 [['1945', '2046', '25'], ['1945', '285220', '25']], [['2050', '25']], [['2046', '25']], [['2047', '25']], [['2044', '25']], [['2045', '25']], [['2042', '25']], [['2043', '25']], [['2041', '25']], [['2048', '25']]] 6. Link drugs to the genes in pathways pairs and produce DDI pairs. *If the drug A targets one gene in one of the pathway pair. Drug B targets one gene in the other pathway of the pair. Then drug A and drug B forms a DDI. : Genes in the left pathway : Interactions between genes : Genes in the right pathway : Drug interact with genes : Genes shared by both pathways Assumption: If two pathways come across each other, the drug that target the upstream of the two pathways will likely to interact each other and form a DDI pair. Explanation: In this case, the left pathway is targeted by drug A and right pathway is targeted by drug B. Since drug effect signal pass downstream, the shared genes by the two pathways get mixed signals from two drugs. This may cause unexpected changes in the drug response. The two drugs here are hypothesized to form a drug-drug interaction pair. A B Department of Biomedical Informatics Columbia University Medical Center 622 West 168th St. VC5 New York, NY 10032 Contacts: Xiaochen Sun Nicholas P Tatonetti [email protected] [email protected] 6464603859 212-305-2055 Conclusions: 1.Two random drugs will have somewhat interactions more than half of the time. Drug of similar class tend to interact with each other. 2.The incompleteness of pathway data is limiting the research result. 3.Standardization is still a big issue in data integration. Future Work: 1. Filter results, improve model. 2. Combine EHR clinical data to confirm the hypothesis. 3. Look into other discoveries from the results. Limitation: 1.Data from KEGG and Drugbank are biased and sparse. Model is not determinant. 2.Didn’t filter compounds (not drugs) from the database. Pathway Gene Gene ID Drug Drug ID hsa00010 HK1 3098 AlphaDGlucose6Phosphate DB02007 hsa00010 HK1 3098 BetaDGlucose DB02379 hsa00010 HK1 3098 Adenosine5'Diphosphate DB03431 hsa00010 GPI 2821 Erythose4Phosphate DB03937 hsa00010 FBP1 2203 Adenosine monophosphate DB00131 hsa00010 GAPDH 2597 NADH DB00157 hsa00010 GAPDH 2597 NicoInamideAdenineDinucleoIde DB01907 hsa00010 PKM2 5315 Pyruvic acid DB00119 hsa00010 PKLR 5313 Pyruvic acid DB00119 gene_id a_pathwayid b_pathwayid 18 hsa00250 hsa00280 25 hsa04012 hsa04110 26 hsa00330 hsa00340 27 hsa04012 hsa05416 31 hsa00061 hsa00620 32 hsa00061 hsa00620 34 hsa00071 hsa00280 35 hsa00071 hsa00280 36 hsa00071 hsa00280 38 hsa00071 hsa00072 39 hsa00071 hsa00072 90 hsa04060 hsa04350 91 hsa04010 hsa04060 94 hsa04060 hsa04350 100 hsa00230 hsa05340 107 hsa00230 hsa04020 113 hsa00230 hsa04020 124 hsa00010 hsa00071 125 hsa00010 hsa00071 Drug-drug interactions 121 unique drugs 5202 unique DDIs drug1 drug2 Desipramine Labetalol Desipramine Isoetharine Desipramine Levobunolol Desipramine Esmolol Desipramine Oxprenolol Desipramine Risperidone Desipramine Penbutolol Desipramine Isoproterenol Desipramine Nadolol Atropine Danazol Atropine Desipramine Atropine Dibucaine Atropine Diprenorphine Atropine Dobutamine 5202 3943 2726 143 0 1000 2000 3000 4000 5000 6000 >0 >2 >4 >8 Repeat Times >0 >2 >4 >8 False positive rate ROC area =0.67 Drug-Class Interactions True positive rate labetalol Class-class Interactions N06 (Psychoanaleptics) tends to interact with nerve system drugs L01 (Antineoplastic agents) tends to interact with antineoplastic agents Wednesday, April 3, 13

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2013 Summit on Translational Bioinformatics

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Page 1: Drug-Drug Interaction Prediction Through Systems Pharmacology Analysis (Poster)

Drug Drug Interaction Prediction through Systems Pharmacology Analysis

Xiaochen Sun1, Nicholas P. Tatonetti1Department of Biomedical Informatics, Columbia University, New York, NY

Introduction

Tatonetti Labat Columbia University Medical Center

3

THE UNIVERSITY IDENTITY

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Black

Pantone 286

4-color Process100% Cyan72% Magenta

White or Pantone 290 (Columbia Blue)Background: Pantone 286

For photographs, use the logo in white against a darker area, posi-tioning it either at top left/right or bottom left/right.

Tatonetti Labat Columbia University Medical Center

Model

Drug-drug interactions (DDI) is important!-play an important role in explaining drug side effects and facilitating drug design.

DDI mechanism-integrative pathway analysis advances our understanding of DDI by revealing the molecular basis of drug action.

DDI prediction-The emergence of pharmacogenomics knowledge bases (PharmGKB and DrugBank) and pathway databases (KEGG), provide an opportunity to improve DDI prediction methods

Method Result

Conclusions and discussion

1. Get drug, gene, pathway data from KEGG and Drugbank.

2. Integrate data

3. Find pathway pairs that share at least one gene.

4. Download detail pathway files from KEGG and convert them to text format.*The pathway are not represented as a complete path but individual interactions.

From To Relationship356 355 activation8743 8793 activation5566 57 inhibiton

... ... ...

... ... ...

5. Construct pathways as python sets with genes comprising them.*Each pathway has multiple path leading from the first upstream gene to the sharing gene for the two pathways.

hsa04012 [ [['374', '1956', '1398', '25'], ['374', '1956', '1399', '25']], [['2069', '1956', '1398', '25'], ['2069', '1956', '1399', '25']], [['685', '1956', '1398', '25'], ['685', '1956', '1399', '25']]]hsa04360 [['1945', '2046', '25'], ['1945', '285220', '25']], [['2050', '25']], [['2046', '25']], [['2047', '25']], [['2044', '25']], [['2045', '25']], [['2042', '25']], [['2043', '25']], [['2041', '25']], [['2048', '25']]]

6. Link drugs to the genes in pathways pairs and produce DDI pairs. *If the drug A targets one gene in one of the pathwaypair. Drug B targets one gene in the other pathway of the pair. Then drug A and drug B forms a DDI.

: Genes in the left pathway : Interactions between genes

: Genes in the right pathway : Drug interact with genes

: Genes shared by both pathways

Assumption:

If two pathways come across each other, the drug that target the upstream of the two pathways will likely to interact each other and form a DDI pair.

Explanation:In this case, the left pathway is targeted by drug A and right pathway is targeted by drug B. Since drug effect signal pass downstream, the shared genes by the two pathways get mixed signals from two drugs. This may cause unexpected changes in the drug response. The two drugs here are hypothesized to form a drug-drug interaction pair.

A

B

Department of Biomedical Informatics Columbia University Medical Center 622 West 168th St. VC5 New York, NY 10032

Contacts:Xiaochen Sun Nicholas P [email protected] [email protected] 212-305-2055

Conclusions:

1.Two random drugs will have somewhat interactions more than half of the time. Drug of similar class tend to interact with each other.

2.The incompleteness of pathway data is limiting the research result.

3.Standardization is still a big issue in data integration.

Future Work:

1. Filter results, improve model.

2. Combine EHR clinical data to confirm the hypothesis.

3. Look into other discoveries from the results.

Limitation:1.Data from KEGG and Drugbank are biased and sparse. Model is not determinant.

2.Didn’t filter compounds (not drugs) from the database.

Pathway   Gene   Gene  ID Drug   Drug  ID

hsa00010 HK1 3098 Alpha-­‐D-­‐Glucose-­‐6-­‐Phosphate DB02007

hsa00010 HK1 3098 Beta-­‐D-­‐Glucose DB02379

hsa00010 HK1 3098 Adenosine-­‐5'-­‐Diphosphate DB03431

hsa00010 GPI 2821 Erythose-­‐4-­‐Phosphate DB03937

hsa00010 FBP1 2203 Adenosine  monophosphate DB00131

hsa00010 GAPDH 2597 NADH DB00157

hsa00010 GAPDH 2597 NicoInamide-­‐Adenine-­‐DinucleoIde DB01907

hsa00010 PKM2 5315 Pyruvic  acid DB00119

hsa00010 PKLR 5313 Pyruvic  acid DB00119

gene_id a_pathwayid b_pathwayid18 hsa00250 hsa0028025 hsa04012 hsa0411026 hsa00330 hsa0034027 hsa04012 hsa0541631 hsa00061 hsa0062032 hsa00061 hsa0062034 hsa00071 hsa0028035 hsa00071 hsa0028036 hsa00071 hsa0028038 hsa00071 hsa0007239 hsa00071 hsa0007290 hsa04060 hsa0435091 hsa04010 hsa0406094 hsa04060 hsa04350100 hsa00230 hsa05340107 hsa00230 hsa04020113 hsa00230 hsa04020124 hsa00010 hsa00071125 hsa00010 hsa00071

Drug-drug interactions121 unique drugs5202 unique DDIs

drug1 drug2

Desipramine Labetalol

Desipramine Isoetharine

Desipramine Levobunolol

Desipramine Esmolol

Desipramine Oxprenolol

Desipramine Risperidone

Desipramine Penbutolol

Desipramine Isoproterenol

Desipramine Nadolol

Atropine Danazol

Atropine Desipramine

Atropine Dibucaine

Atropine Diprenorphine

Atropine Dobutamine

5202$

3943$

2726$

143$0$

1000$

2000$

3000$

4000$

5000$

6000$

>0$ >2$ >4$ >8$

Repeat&Times&

>0$

>2$

>4$

>8$

False positive rate

ROC area=0.67

Drug-Class Interactions

True positive

rate

labetalol

Class-class Interactions

N06 (Psychoanaleptics) tends to interact with nerve system drugsL01 (Antineoplastic agents) tends to interact with antineoplastic agents

Wednesday, April 3, 13